US20070005276A1 - Apparatus and method for testing state of charge in battery - Google Patents

Apparatus and method for testing state of charge in battery Download PDF

Info

Publication number
US20070005276A1
US20070005276A1 US11/452,007 US45200706A US2007005276A1 US 20070005276 A1 US20070005276 A1 US 20070005276A1 US 45200706 A US45200706 A US 45200706A US 2007005276 A1 US2007005276 A1 US 2007005276A1
Authority
US
United States
Prior art keywords
algorithm
value
neural network
battery
fuzzy
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Abandoned
Application number
US11/452,007
Inventor
Il Cho
Do Kim
Do Jung
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
LG Chem Ltd
Original Assignee
LG Chem Ltd
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by LG Chem Ltd filed Critical LG Chem Ltd
Assigned to LG CHEM, LTD. reassignment LG CHEM, LTD. ASSIGNMENT OF ASSIGNORS INTEREST (SEE DOCUMENT FOR DETAILS). Assignors: CHO, IL, JUNG, DO YANG, KIM, DO YOUN
Publication of US20070005276A1 publication Critical patent/US20070005276A1/en
Priority to US12/869,242 priority Critical patent/US8626679B2/en
Abandoned legal-status Critical Current

Links

Images

Classifications

    • GPHYSICS
    • G01MEASURING; TESTING
    • G01RMEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
    • G01R31/00Arrangements for testing electric properties; Arrangements for locating electric faults; Arrangements for electrical testing characterised by what is being tested not provided for elsewhere
    • G01R31/36Arrangements for testing, measuring or monitoring the electrical condition of accumulators or electric batteries, e.g. capacity or state of charge [SoC]
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01RMEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
    • G01R31/00Arrangements for testing electric properties; Arrangements for locating electric faults; Arrangements for electrical testing characterised by what is being tested not provided for elsewhere
    • G01R31/36Arrangements for testing, measuring or monitoring the electrical condition of accumulators or electric batteries, e.g. capacity or state of charge [SoC]
    • G01R31/382Arrangements for monitoring battery or accumulator variables, e.g. SoC
    • G01R31/3842Arrangements for monitoring battery or accumulator variables, e.g. SoC combining voltage and current measurements
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L3/00Electric devices on electrically-propelled vehicles for safety purposes; Monitoring operating variables, e.g. speed, deceleration or energy consumption
    • B60L3/0023Detecting, eliminating, remedying or compensating for drive train abnormalities, e.g. failures within the drive train
    • B60L3/0046Detecting, eliminating, remedying or compensating for drive train abnormalities, e.g. failures within the drive train relating to electric energy storage systems, e.g. batteries or capacitors
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L58/00Methods or circuit arrangements for monitoring or controlling batteries or fuel cells, specially adapted for electric vehicles
    • B60L58/10Methods or circuit arrangements for monitoring or controlling batteries or fuel cells, specially adapted for electric vehicles for monitoring or controlling batteries
    • B60L58/12Methods or circuit arrangements for monitoring or controlling batteries or fuel cells, specially adapted for electric vehicles for monitoring or controlling batteries responding to state of charge [SoC]
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L58/00Methods or circuit arrangements for monitoring or controlling batteries or fuel cells, specially adapted for electric vehicles
    • B60L58/10Methods or circuit arrangements for monitoring or controlling batteries or fuel cells, specially adapted for electric vehicles for monitoring or controlling batteries
    • B60L58/18Methods or circuit arrangements for monitoring or controlling batteries or fuel cells, specially adapted for electric vehicles for monitoring or controlling batteries of two or more battery modules
    • B60L58/21Methods or circuit arrangements for monitoring or controlling batteries or fuel cells, specially adapted for electric vehicles for monitoring or controlling batteries of two or more battery modules having the same nominal voltage
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01RMEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
    • G01R31/00Arrangements for testing electric properties; Arrangements for locating electric faults; Arrangements for electrical testing characterised by what is being tested not provided for elsewhere
    • G01R31/36Arrangements for testing, measuring or monitoring the electrical condition of accumulators or electric batteries, e.g. capacity or state of charge [SoC]
    • G01R31/367Software therefor, e.g. for battery testing using modelling or look-up tables
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L2240/00Control parameters of input or output; Target parameters
    • B60L2240/40Drive Train control parameters
    • B60L2240/54Drive Train control parameters related to batteries
    • B60L2240/545Temperature
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L2240/00Control parameters of input or output; Target parameters
    • B60L2240/40Drive Train control parameters
    • B60L2240/54Drive Train control parameters related to batteries
    • B60L2240/547Voltage
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L2240/00Control parameters of input or output; Target parameters
    • B60L2240/40Drive Train control parameters
    • B60L2240/54Drive Train control parameters related to batteries
    • B60L2240/549Current
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L2260/00Operating Modes
    • B60L2260/40Control modes
    • B60L2260/44Control modes by parameter estimation
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L2260/00Operating Modes
    • B60L2260/40Control modes
    • B60L2260/46Control modes by self learning
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B60VEHICLES IN GENERAL
    • B60LPROPULSION OF ELECTRICALLY-PROPELLED VEHICLES; SUPPLYING ELECTRIC POWER FOR AUXILIARY EQUIPMENT OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRODYNAMIC BRAKE SYSTEMS FOR VEHICLES IN GENERAL; MAGNETIC SUSPENSION OR LEVITATION FOR VEHICLES; MONITORING OPERATING VARIABLES OF ELECTRICALLY-PROPELLED VEHICLES; ELECTRIC SAFETY DEVICES FOR ELECTRICALLY-PROPELLED VEHICLES
    • B60L2260/00Operating Modes
    • B60L2260/40Control modes
    • B60L2260/48Control modes by fuzzy logic
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01RMEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
    • G01R31/00Arrangements for testing electric properties; Arrangements for locating electric faults; Arrangements for electrical testing characterised by what is being tested not provided for elsewhere
    • G01R31/36Arrangements for testing, measuring or monitoring the electrical condition of accumulators or electric batteries, e.g. capacity or state of charge [SoC]
    • G01R31/374Arrangements for testing, measuring or monitoring the electrical condition of accumulators or electric batteries, e.g. capacity or state of charge [SoC] with means for correcting the measurement for temperature or ageing
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y02TECHNOLOGIES OR APPLICATIONS FOR MITIGATION OR ADAPTATION AGAINST CLIMATE CHANGE
    • Y02TCLIMATE CHANGE MITIGATION TECHNOLOGIES RELATED TO TRANSPORTATION
    • Y02T10/00Road transport of goods or passengers
    • Y02T10/60Other road transportation technologies with climate change mitigation effect
    • Y02T10/70Energy storage systems for electromobility, e.g. batteries

Definitions

  • the present invention relates to an apparatus and method for estimating a state of charge (SOC) in a battery, and more particularly to an apparatus and method for estimating an SOC in a battery, using fusion type soft computing.
  • SOC state of charge
  • a state of charge (SOC) in a battery has a nonlinear characteristic. Hence, it is difficult to accurately detect the battery SOC in practice. As a result, the detection of the battery SOC depends on its estimation method.
  • Examples of a conventional estimation method of the battery SOC include an amp-hour (Ah) counting method, an open circuit voltage (OCV) measuring method, a battery impedance measuring method, and so on.
  • the Ah counting method is for detecting the SOC by detecting a real capacity of the battery.
  • the Ah counting method is greatly influenced by errors or precision of sensors detecting the real capacity, thereby having a great error.
  • the OCV measuring method is for reading out open voltage of the battery in an idle state, and estimating an SOC from the read open voltage. This method has problems in that it can be used only in the idle state, and it is greatly influenced by external factors such as temperature.
  • the battery impedance measuring method is for estimating an SOC of the battery from an impedance measurement value of the battery. This method has a problem in that the precision of an estimation value is lowered because it is greatly influenced by temperature.
  • C-rate refers to magnitude of the peak current that can be output in a moment.
  • SOC state of charge
  • an apparatus for estimating a state of charge (SOC) in a battery comprises a detector unit for detecting current, voltage and temperature of a battery cell; and soft computing unit for outputting a battery SOC estimation value of processing the current, the voltage and the temperature detected by the detector unit using a radial function based on a neural network algorithm.
  • the soft computing unit may combine the neural network algorithm with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm, and thereby adaptively update the parameters of the neural network algorithm.
  • a fuzzy algorithm e.g., a genetic algorithm (GA)
  • CA cellular automata
  • FIG. 1 is a block diagram of an apparatus for estimating a state of charge (SOC) in a battery in accordance with an embodiment of the present invention.
  • SOC state of charge
  • FIG. 2 illustrates a construction of a fuzzy neural network in the soft computing unit of FIG. 1 .
  • FIG. 3 is a flowchart of a method for estimating an SOC in a battery in accordance with an embodiment of the present invention.
  • FIG. 1 is a block diagram of an apparatus for estimating a state of charge (SOC) in a battery in accordance with an embodiment of the present invention.
  • the SOC estimation apparatus is comprised of a battery cell 10 , a detector unit 11 , a soft computing unit 20 , a charger-discharger 30 , and a comparator 40 .
  • the detector unit 11 includes a current detector 12 , a voltage detector 14 , and a temperature detector 16 .
  • the current detector 12 detects current i from the battery cell 10 at a point of time k.
  • the voltage detector 14 detects voltage v from the battery cell 10 at a point of time k.
  • the temperature detector 16 detects temperature T from the battery cell 10 at a point of time k.
  • Soft computing is generically called a function approximator made by engineeringly modeling brain information transfer, reasoning, learning, genetic, and immune systems of a living thing, and is widely used in control and identification fields throughout the industry.
  • the identification refers to capturing input/output characteristics of a system.
  • a soft computing algorithm is an algorithm capable of performing identification and control of a specific system while self-organizing parameters only with input/output information although accurate information and model are not known.
  • the problem is that soft computing techniques each involve different drawbacks.
  • the battery SOC estimation using any soft computing technique is relatively accurate only in a specific environment, but not in another environment.
  • the soft computing unit 20 estimates the battery SOC, using the fusion type soft computing.
  • a fusion type soft computing algorithm of which the soft computing unit 20 makes use is an algorithm in which a plurality of algorithms that can be self-organized by performing adaptive parameter update are mutually combined in a fusion type, and is subjected to bio-motive.
  • the bio-motive refers to use after the model of biological information literacy.
  • the soft computing algorithm of which the soft computing unit 20 makes use is an algorithm combining a neural network algorithm with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm.
  • the immune system algorithm is a modeling method in which an identification or control point, and disturbance are set as an antibody and an antigen respectively, and thereby any desired point can be estimated even when any disturbance is added.
  • the CA algorithm is a method of modeling a complicated algorithm in a binary type string.
  • the rough-set algorithm is a method of modeling and applying correlation of parameters in a numerical formula.
  • a neuro-fuzzy algorithm combining the neural network algorithm to the fuzzy algorithm is a type of automatically adjusting parameters by implementing a fuzzy reasoning system using a neural network.
  • the neuro-fuzzy algorithm can automatically create the expert rule base of a fuzzy theory by execution of a learning algorithm.
  • Creating the expert rule base of a fuzzy theory refers to a process of obtaining a rule composed of an IF-THEN statement from experts on a certain system in this manner.
  • the neuro-fuzzy algorithm has an advantage in that this rule base can be automatically created by using learning capability of the neural network.
  • a size of the neural network i.e. a neuron number
  • selection of an activation function, etc. have a great influence on entire performance.
  • the performance of the neural network can be optimized. To be specific, by setting the neural network size to the number of rule bases, and using any one of fuzzy functions as the activation function, the performance of the neural network can be optimized.
  • the neural network models hardware embodiment of a brain, and the fuzzy concept models human thinking.
  • a neuro-GA algorithm combining the neural network algorithm to the GA is an algorithm for performing identification of various parameters required for learning by implementing a learning algorithm of the neural network using the GA.
  • the soft computing unit 20 may make use of a neuro-CA algorithm combining the neural network algorithm to the CA algorithm, a neuro-rough set algorithm combining the neural network algorithm to the rough set algorithm, and so on.
  • the soft computing unit 20 estimates the battery SOC using the neuro-fuzzy algorithm, wherein the neuro-fuzzy algorithm is merely illustrative of the fusion type soft computing algorithm.
  • the soft computing unit 20 may estimate the battery SOC using a fusion type soft computing algorithm other than the neuro-fuzzy algorithm.
  • the soft computing unit 20 performs the neuro-fuzzy algorithm based on current i, voltage v, and temperature T detected by the detector unit 11 , and a detecting time k, and outputs an estimation value F of the battery SOC.
  • the soft computing unit 20 When receiving an algorithm update signal from the comparator 40 , the soft computing unit 20 performs a learning algorithm on the neuro-fuzzy algorithm, thereby updating the soft computing algorithm.
  • the soft computing unit 20 When the soft computing algorithm is updated, the soft computing unit 20 performs the updated soft computing algorithm, and outputs an updated estimation value F of the battery SOC.
  • the charger-discharger 30 supplies the battery cell 10 with charge/discharge current.
  • the comparator 40 compares the estimation value F output by the soft computing unit 20 with a predetermined target value F T . When a difference between the output estimation value F and the target value F T is beyond a critical range, the comparator 40 outputs the algorithm update signal to the soft computing unit 20 .
  • the target value F T is a value of the real “genuine” battery SOC.
  • a reference value obtained through a proper test under a specific condition is used.
  • the target value F T may be a value that complements an amp-hour (Ah) counting value and an open circuit voltage (OCV) value, which are input from the charger-discharger, to rated capacity of the battery.
  • Ah amp-hour
  • OCV open circuit voltage
  • FIG. 2 illustrates a construction of a fuzzy neural network in the soft computing unit 20 of FIG. 1 .
  • the fuzzy neural network is generally composed of an input layer, a hidden layer, and an output layer.
  • a fuzzy system is equivalent to a radial basis function network of FIG. 2 .
  • the radial basis function network is a concrete name of the neural network, and is a kind of neural network.
  • the soft computing unit 20 executes the neuro-fuzzy algorithm according to a structure of the fuzzy neural network.
  • the neuro-fuzzy algorithm is no other than the battery SOC estimation algorithm.
  • Final output for applying the battery SOC estimation algorithm according to the fuzzy neural network in the soft computing unit 20 has a form as expressed by Equation 1 below.
  • F ⁇ ( P,X ) W Equation 1
  • is the fuzzy radial function, or the radial basis function or the activation function in the neural network
  • P is the parameter
  • X is the input
  • W is the weight to be updated during learning.
  • Equation 1 the structure of the fuzzy neural network of FIG. 2 .
  • x d (k) (i, v, T, k).
  • i, v, and T are current, voltage, and temperature data, which are detected from the battery cell 10 at a point of time k by the detector unit 11 of FIG. 1 .
  • W is the coefficient denoting the connection strength (weight).
  • W is updated at every point of time k by a back propagation (BP) learning algorithm to be described below.
  • BP back propagation
  • the comparator 40 of FIG. 1 As a result of the comparator 40 of FIG. 1 comparing the output value F and the target value F T of the fuzzy neural network, when an error between the output value g o and the target value g T is beyond a critical range (e.g. 3%), the comparator 40 of FIG. 1 outputs the algorithm update signal to the soft computing unit 20 of FIG. 1 .
  • a critical range e.g. 3%
  • the learning algorithm is executed in the fuzzy neural network of FIG. 2 .
  • the learning algorithm will be described focused on the BP learning algorithm, but it is merely illustrative.
  • the learning algorithm may include a Kalman filter, the genetic algorithm, a fuzzy learning algorithm, or so on.
  • the neuro-fuzzy algorithm is updated by repetitively executing the BP learning algorithm. More specifically, a W value of the neuro-fuzzy algorithm is updated by repetitively executing the BP learning algorithm.
  • the fuzzy neural network outputs a new output value F determined by the updated W value to the comparator 40 again. This process is repeated until the error between the output value F and the target value F T of the fuzzy neural network falls within a predetermined range.
  • the comparator 40 of FIG. 1 When the error between the output value F and the target value F T of the fuzzy neural network does not deviate from the predetermined range, the comparator 40 of FIG. 1 does not transmit the algorithm update signal. Thereby, the execution of the learning algorithm on the fuzzy neural network is terminated. An estimation value of the battery SOC is output using the final neuro-fuzzy algorithm formula (i.e. Equation 1) obtained by the execution of the learning algorithm.
  • FIG. 3 is a flowchart of a method for estimating an SOC in a battery in accordance with an embodiment of the present invention.
  • the detector unit 11 detects current i, voltage v, and temperature T from the battery cell 10 at a point of time k (S 30 ).
  • the soft computing unit 20 performs the neuro-fuzzy algorithm using data of the current i, voltage v, and temperature T detected by the detector unit 11 and data of the time k, as input data vectors, thereby outputting a provisional estimation value g o (S 32 ).
  • the comparator 40 compares the provisional estimation value F with a target value F T , and checks whether or not the compared error is inside of 3% (S 34 ).
  • a critical range of the error is set to within 3%, but it is merely illustrative. Accordingly, the critical range of the error may be sufficiently varied by a designer. A final estimation value of the battery SOC becomes higher as the critical range of the error becomes narrower, and it becomes lower as the critical range of the error becomes wider.
  • the soft computing unit 20 When the error between the provisional estimation value F and the target value F T is outside of 3%, the soft computing unit 20 performs the above-mentioned learning algorithm on the neuro-fuzzy algorithm, thereby updating the neuro-fuzzy algorithm (S 36 ). Then, the soft computing unit 20 performs the updated soft computing algorithm to calculate an updated provisional estimation value F of the battery SOC (S 32 ).
  • the comparator 40 compares the updated provisional estimation value F with a target value F T , and checks whether or not the compared error is inside of 3% (S 34 ). When the error between the provisional estimation value F and the target value F T is outside of 3%, the soft computing unit 20 performs the learning algorithm on the neuro-fuzzy algorithm again (S 36 ), and performs the updated neuro-fuzzy algorithm (S 32 ).
  • the soft computing unit 20 performs the learning algorithm and the updated neuro-fuzzy algorithm repetitively, until the error between the provisional estimation value F and the target value F T gets inside of 3%.
  • the soft computing unit 20 When the error between the provisional estimation value F and the target value F T is inside of 3%, the soft computing unit 20 does not perform the learning algorithm. As a result, a final neuro-fuzzy algorithm formula (e.g. Equation 3) is obtained.
  • the provisional estimation value F calculated by the final neuro-fuzzy algorithm formula is determined as a fixed estimation value F of the battery SOC (S 38 ).
  • the present invention can implement a computer-readable recording medium as a computer-readable code.
  • the computer-readable recording medium includes all types of recording media in which computer-readable data is stored. Examples of the computer-readable recording media include a read only memory (ROM), a random access memory (RAM), a compact disk (CD)-ROM, a magnetic tape, a floppy disk, an optical data storage device, and so on, and furthermore what is embodied in the type of a carrier wave (e.g. transmitted through Internet). Further, the computer-readable recording media are distributed on a computer system connected through a network, and allow the code that can be read by the computer in a distributed way to be stored and executed.
  • the battery SOC can be dynamically estimated through the fusion type soft computing algorithm and the learning algorithm. Further, the battery SOC can be more accurately estimated using at least data according to the various environments such as temperature, C-rate, and so on.
  • the battery SOC can be accurately estimated in the high C-rate environment. Because the fusion type soft computing algorithm is used for estimating the battery SOC, it is possible to overcome a drawback that each single soft computing algorithm is relatively accurate only in a specific environment and is lowered in precision in another environment.
  • the fuzzy logic is implemented as the neural network. Therefore, it is possible to automatically create the fuzzy rules through learning. Due to this possibility, it is possible to exert excellent performance in connection with initial weight setting stability and system convergence, compared to the existing single neuro-fuzzy algorithm.
  • the present invention can be more broadly utilized in a field in which the estimation of the battery SOC requires higher precision as in the field of hybrid electrical vehicles.
  • the present invention can be applied to a lithium ion polymer battery (LiPB) for the hybrid electrical vehicle, as well as other batteries.
  • LiPB lithium ion polymer battery

Landscapes

  • Engineering & Computer Science (AREA)
  • Power Engineering (AREA)
  • Life Sciences & Earth Sciences (AREA)
  • Sustainable Development (AREA)
  • Sustainable Energy (AREA)
  • Transportation (AREA)
  • Mechanical Engineering (AREA)
  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Secondary Cells (AREA)

Abstract

Disclosed is an apparatus and method for estimating a state of charge (SOC) in a battery, in which the battery SOC is estimated using a fusion type soft computing algorithm, thereby accurately estimating the battery SOC in a high C-rate environment. The apparatus includes a detector unit for detecting current, voltage and temperature of a battery cell; and soft computing unit for outputting a battery SOC estimation value of processing the current, the voltage and the temperature detected by the detector unit using a radial function based on a neural network algorithm. Especially, the soft computing unit combines the neural network algorithm with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm, and thereby adaptively updates the parameters of the neural network algorithm.

Description

  • This application claims the benefit of the filing date of Korean Patent Application No. 2005-50273, filed on Jun. 13, 2005, in the Korean Intellectual Property Office, the disclosure of which is incorporated herein in its entirety by reference.
  • TECHNICAL FIELD
  • The present invention relates to an apparatus and method for estimating a state of charge (SOC) in a battery, and more particularly to an apparatus and method for estimating an SOC in a battery, using fusion type soft computing.
  • BACKGROUND ART
  • In general, a state of charge (SOC) in a battery has a nonlinear characteristic. Hence, it is difficult to accurately detect the battery SOC in practice. As a result, the detection of the battery SOC depends on its estimation method.
  • Examples of a conventional estimation method of the battery SOC include an amp-hour (Ah) counting method, an open circuit voltage (OCV) measuring method, a battery impedance measuring method, and so on.
  • The Ah counting method is for detecting the SOC by detecting a real capacity of the battery. However, the Ah counting method is greatly influenced by errors or precision of sensors detecting the real capacity, thereby having a great error.
  • The OCV measuring method is for reading out open voltage of the battery in an idle state, and estimating an SOC from the read open voltage. This method has problems in that it can be used only in the idle state, and it is greatly influenced by external factors such as temperature.
  • The battery impedance measuring method is for estimating an SOC of the battery from an impedance measurement value of the battery. This method has a problem in that the precision of an estimation value is lowered because it is greatly influenced by temperature.
  • Mobile phones, laptop computers etc. used in a low C-rate environment do not require accurate detection of the battery SOC in view of their characteristics. In these products, the battery SOC is readily estimated by the Ah counting method, the OCV measuring method, or so on. Here, the term C-rate refers to magnitude of the peak current that can be output in a moment.
  • However, in the case of hybrid electrical vehicles (HEVs), electrical vehicles (EVs) etc. used in a high C-rate environment, accurate information on the battery SOC is required like the fuel gauge of an ordinary vehicle, while a degree of non-linearity of the battery SOC is enhanced. Hence, the conventional methods for estimating the battery SOC have difficulty in estimating the battery SOC in these products.
  • DISCLOSURE OF THE INVENTION
  • It is an objective of the present invention to provide an apparatus and method for estimating a state of charge (SOC) in a battery, in which the battery SOC is estimated using a fusion type soft computing algorithm, thereby accurately estimating the battery SOC in a high C-rate environment.
  • According to an aspect of the present invention, there is provided an apparatus for estimating a state of charge (SOC) in a battery. The apparatus comprises a detector unit for detecting current, voltage and temperature of a battery cell; and soft computing unit for outputting a battery SOC estimation value of processing the current, the voltage and the temperature detected by the detector unit using a radial function based on a neural network algorithm.
  • Further, the soft computing unit may combine the neural network algorithm with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm, and thereby adaptively update the parameters of the neural network algorithm.
  • BRIEF DESCRIPTION OF THE DRAWINGS
  • FIG. 1 is a block diagram of an apparatus for estimating a state of charge (SOC) in a battery in accordance with an embodiment of the present invention.
  • FIG. 2 illustrates a construction of a fuzzy neural network in the soft computing unit of FIG. 1.
  • FIG. 3 is a flowchart of a method for estimating an SOC in a battery in accordance with an embodiment of the present invention.
  • MODE FOR CARRYING OUT THE INVENTION
  • Reference will now be made in detail to the exemplary embodiments of the present invention.
  • FIG. 1 is a block diagram of an apparatus for estimating a state of charge (SOC) in a battery in accordance with an embodiment of the present invention. Referring to FIG. 1, the SOC estimation apparatus is comprised of a battery cell 10, a detector unit 11, a soft computing unit 20, a charger-discharger 30, and a comparator 40.
  • The detector unit 11 includes a current detector 12, a voltage detector 14, and a temperature detector 16. The current detector 12 detects current i from the battery cell 10 at a point of time k. The voltage detector 14 detects voltage v from the battery cell 10 at a point of time k. The temperature detector 16 detects temperature T from the battery cell 10 at a point of time k.
  • Soft computing is generically called a function approximator made by engineeringly modeling brain information transfer, reasoning, learning, genetic, and immune systems of a living thing, and is widely used in control and identification fields throughout the industry. Here, the identification refers to capturing input/output characteristics of a system.
  • A soft computing algorithm is an algorithm capable of performing identification and control of a specific system while self-organizing parameters only with input/output information although accurate information and model are not known.
  • However, the problem is that soft computing techniques each involve different drawbacks. In other words, the battery SOC estimation using any soft computing technique is relatively accurate only in a specific environment, but not in another environment.
  • In order to solve the above-mentioned problem and to make an approximation of function more accurate, the soft computing unit 20 estimates the battery SOC, using the fusion type soft computing.
  • A fusion type soft computing algorithm of which the soft computing unit 20 makes use is an algorithm in which a plurality of algorithms that can be self-organized by performing adaptive parameter update are mutually combined in a fusion type, and is subjected to bio-motive. Here, the bio-motive refers to use after the model of biological information literacy.
  • More specifically, the soft computing algorithm of which the soft computing unit 20 makes use is an algorithm combining a neural network algorithm with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm. The immune system algorithm is a modeling method in which an identification or control point, and disturbance are set as an antibody and an antigen respectively, and thereby any desired point can be estimated even when any disturbance is added. The CA algorithm is a method of modeling a complicated algorithm in a binary type string. The rough-set algorithm is a method of modeling and applying correlation of parameters in a numerical formula.
  • A neuro-fuzzy algorithm combining the neural network algorithm to the fuzzy algorithm is a type of automatically adjusting parameters by implementing a fuzzy reasoning system using a neural network.
  • The neuro-fuzzy algorithm can automatically create the expert rule base of a fuzzy theory by execution of a learning algorithm.
  • Generally, persons who are well aware of a certain system perform a work using fuzzy information rather than accurate information. For example, a skilled welder who is well aware of a welding system performs the welding well using fuzzy information, for instance, that the welding is well done when a welding temperature should be slightly increased at about this position.
  • Creating the expert rule base of a fuzzy theory refers to a process of obtaining a rule composed of an IF-THEN statement from experts on a certain system in this manner.
  • In general, it is the most difficult work that obtains the rule base in the fuzzy algorithm. Meanwhile, the neuro-fuzzy algorithm has an advantage in that this rule base can be automatically created by using learning capability of the neural network.
  • Further, in view of the neural network, a size of the neural network (i.e. a neuron number), selection of an activation function, etc. have a great influence on entire performance. When the fuzzy theory is used in this field, the performance of the neural network can be optimized. To be specific, by setting the neural network size to the number of rule bases, and using any one of fuzzy functions as the activation function, the performance of the neural network can be optimized.
  • In the neuro-fuzzy algorithm, the neural network models hardware embodiment of a brain, and the fuzzy concept models human thinking.
  • A neuro-GA algorithm combining the neural network algorithm to the GA is an algorithm for performing identification of various parameters required for learning by implementing a learning algorithm of the neural network using the GA.
  • In addition to these algorithms, the soft computing unit 20 may make use of a neuro-CA algorithm combining the neural network algorithm to the CA algorithm, a neuro-rough set algorithm combining the neural network algorithm to the rough set algorithm, and so on.
  • In the present embodiment, the soft computing unit 20 estimates the battery SOC using the neuro-fuzzy algorithm, wherein the neuro-fuzzy algorithm is merely illustrative of the fusion type soft computing algorithm. The soft computing unit 20 may estimate the battery SOC using a fusion type soft computing algorithm other than the neuro-fuzzy algorithm.
  • The soft computing unit 20 performs the neuro-fuzzy algorithm based on current i, voltage v, and temperature T detected by the detector unit 11, and a detecting time k, and outputs an estimation value F of the battery SOC.
  • When receiving an algorithm update signal from the comparator 40, the soft computing unit 20 performs a learning algorithm on the neuro-fuzzy algorithm, thereby updating the soft computing algorithm.
  • When the soft computing algorithm is updated, the soft computing unit 20 performs the updated soft computing algorithm, and outputs an updated estimation value F of the battery SOC.
  • The charger-discharger 30 supplies the battery cell 10 with charge/discharge current.
  • The comparator 40 compares the estimation value F output by the soft computing unit 20 with a predetermined target value FT. When a difference between the output estimation value F and the target value FT is beyond a critical range, the comparator 40 outputs the algorithm update signal to the soft computing unit 20.
  • Ideally, the target value FT is a value of the real “genuine” battery SOC. However, because it is difficult to find the value, a reference value obtained through a proper test under a specific condition is used.
  • For example, the target value FT may be a value that complements an amp-hour (Ah) counting value and an open circuit voltage (OCV) value, which are input from the charger-discharger, to rated capacity of the battery.
  • FIG. 2 illustrates a construction of a fuzzy neural network in the soft computing unit 20 of FIG. 1. Referring to FIG. 2, the fuzzy neural network is generally composed of an input layer, a hidden layer, and an output layer.
  • If the number of basis functions is the same as the number of fuzzy control rules, if the consequent of a fuzzy rule is a constant, if an operator of the network is equal to a function of the output layer, and if a membership function in the fuzzy rule is the basis function of the same width (dispersion), a fuzzy system is equivalent to a radial basis function network of FIG. 2. Here, the radial basis function network is a concrete name of the neural network, and is a kind of neural network.
  • The soft computing unit 20 executes the neuro-fuzzy algorithm according to a structure of the fuzzy neural network. The neuro-fuzzy algorithm is no other than the battery SOC estimation algorithm. Final output for applying the battery SOC estimation algorithm according to the fuzzy neural network in the soft computing unit 20 has a form as expressed by Equation 1 below.
    F=Φ(P,X) W   Equation 1
  • where Φ is the fuzzy radial function, or the radial basis function or the activation function in the neural network, P is the parameter, X is the input, W is the weight to be updated during learning.
  • Now, the following is to apply Equation 1 to the structure of the fuzzy neural network of FIG. 2.
  • In FIG. 2, X=xd(k) is an input data vector input into the structure of the fuzzy neural network. In the present embodiment, xd(k)=(i, v, T, k). Here, i, v, and T are current, voltage, and temperature data, which are detected from the battery cell 10 at a point of time k by the detector unit 11 of FIG. 1.
  • In Equation 1, F, i.e. the final output is the product of the radial function, Φ=Ød(k), and W=wd(k).
  • Here, W is the coefficient denoting the connection strength (weight). W is updated at every point of time k by a back propagation (BP) learning algorithm to be described below. Thus, the function is approximated to perform identification of a non-linear function.
  • As a result of the comparator 40 of FIG. 1 comparing the output value F and the target value FT of the fuzzy neural network, when an error between the output value go and the target value gT is beyond a critical range (e.g. 3%), the comparator 40 of FIG. 1 outputs the algorithm update signal to the soft computing unit 20 of FIG. 1.
  • When the soft computing unit 20 of FIG. 1 receives the algorithm update signal, the learning algorithm is executed in the fuzzy neural network of FIG. 2. In the present embodiment, the learning algorithm will be described focused on the BP learning algorithm, but it is merely illustrative. For example, the learning algorithm may include a Kalman filter, the genetic algorithm, a fuzzy learning algorithm, or so on.
  • As for the BP learning algorithm, first, an error function is defined as follows. E = 1 2 ( F T ( k ) - F ( k ) ) Equation 2
  • where FT(k) is the desired output, i.e. the target value, and F(k) is the real output of the fuzzy neural network. Thus, final weight update is expressed by Equation 3 below. W ( t + 1 ) = W ( t ) + η ( - E W ) Equation 3
  • where η is the learning rate.
  • In this manner, the neuro-fuzzy algorithm is updated by repetitively executing the BP learning algorithm. More specifically, a W value of the neuro-fuzzy algorithm is updated by repetitively executing the BP learning algorithm.
  • The fuzzy neural network outputs a new output value F determined by the updated W value to the comparator 40 again. This process is repeated until the error between the output value F and the target value FT of the fuzzy neural network falls within a predetermined range.
  • When the error between the output value F and the target value FT of the fuzzy neural network does not deviate from the predetermined range, the comparator 40 of FIG. 1 does not transmit the algorithm update signal. Thereby, the execution of the learning algorithm on the fuzzy neural network is terminated. An estimation value of the battery SOC is output using the final neuro-fuzzy algorithm formula (i.e. Equation 1) obtained by the execution of the learning algorithm.
  • FIG. 3 is a flowchart of a method for estimating an SOC in a battery in accordance with an embodiment of the present invention. Referring to FIG. 3, the detector unit 11 detects current i, voltage v, and temperature T from the battery cell 10 at a point of time k (S30).
  • The soft computing unit 20 performs the neuro-fuzzy algorithm using data of the current i, voltage v, and temperature T detected by the detector unit 11 and data of the time k, as input data vectors, thereby outputting a provisional estimation value go(S32). In other words, the soft computing unit 20 performs the neuro-fuzzy algorithm using xd(k)=(i,v,T,k), thereby outputting a provisional estimation value F.
  • The comparator 40 compares the provisional estimation value F with a target value FT, and checks whether or not the compared error is inside of 3% (S34). In the present embodiment, a critical range of the error is set to within 3%, but it is merely illustrative. Accordingly, the critical range of the error may be sufficiently varied by a designer. A final estimation value of the battery SOC becomes higher as the critical range of the error becomes narrower, and it becomes lower as the critical range of the error becomes wider.
  • When the error between the provisional estimation value F and the target value FT is outside of 3%, the soft computing unit 20 performs the above-mentioned learning algorithm on the neuro-fuzzy algorithm, thereby updating the neuro-fuzzy algorithm (S36). Then, the soft computing unit 20 performs the updated soft computing algorithm to calculate an updated provisional estimation value F of the battery SOC (S32).
  • The comparator 40 compares the updated provisional estimation value F with a target value FT, and checks whether or not the compared error is inside of 3% (S34). When the error between the provisional estimation value F and the target value FT is outside of 3%, the soft computing unit 20 performs the learning algorithm on the neuro-fuzzy algorithm again (S36), and performs the updated neuro-fuzzy algorithm (S32).
  • In other words, the soft computing unit 20 performs the learning algorithm and the updated neuro-fuzzy algorithm repetitively, until the error between the provisional estimation value F and the target value FT gets inside of 3%.
  • When the error between the provisional estimation value F and the target value FT is inside of 3%, the soft computing unit 20 does not perform the learning algorithm. As a result, a final neuro-fuzzy algorithm formula (e.g. Equation 3) is obtained.
  • The provisional estimation value F calculated by the final neuro-fuzzy algorithm formula is determined as a fixed estimation value F of the battery SOC (S38).
  • The present invention can implement a computer-readable recording medium as a computer-readable code. The computer-readable recording medium includes all types of recording media in which computer-readable data is stored. Examples of the computer-readable recording media include a read only memory (ROM), a random access memory (RAM), a compact disk (CD)-ROM, a magnetic tape, a floppy disk, an optical data storage device, and so on, and furthermore what is embodied in the type of a carrier wave (e.g. transmitted through Internet). Further, the computer-readable recording media are distributed on a computer system connected through a network, and allow the code that can be read by the computer in a distributed way to be stored and executed.
  • INDUSTRIAL APPLICABILITY
  • As can be seen from the foregoing, according to the present invention, the battery SOC can be dynamically estimated through the fusion type soft computing algorithm and the learning algorithm. Further, the battery SOC can be more accurately estimated using at least data according to the various environments such as temperature, C-rate, and so on.
  • Thus, according to the present invention, the battery SOC can be accurately estimated in the high C-rate environment. Because the fusion type soft computing algorithm is used for estimating the battery SOC, it is possible to overcome a drawback that each single soft computing algorithm is relatively accurate only in a specific environment and is lowered in precision in another environment.
  • Especially, when the neuro-fuzzy algorithm is used as the fusion type soft computing algorithm, the fuzzy logic is implemented as the neural network. Thereby, it is possible to automatically create the fuzzy rules through learning. Due to this possibility, it is possible to exert excellent performance in connection with initial weight setting stability and system convergence, compared to the existing single neuro-fuzzy algorithm.
  • The present invention can be more broadly utilized in a field in which the estimation of the battery SOC requires higher precision as in the field of hybrid electrical vehicles. Thus, the present invention can be applied to a lithium ion polymer battery (LiPB) for the hybrid electrical vehicle, as well as other batteries.
  • While this invention has been described in connection with what is presently considered to be the most practical and exemplary embodiment, it is to be understood that the invention is not limited to the disclosed embodiment and the drawings, but, on the contrary, it is intended to cover various modifications and variations within the spirit and scope of the appended claims.

Claims (20)

1. An apparatus for estimating a state of charge (SOC) in a battery, the apparatus comprising:
a detector unit for detecting current, voltage and temperature of a battery cell; and
a soft computing unit for outputting a battery SOC estimation value of processing the current, the voltage and the temperature detected by the detector unit using a radial function based on a neural network algorithm.
2. The apparatus according to claim 1, wherein the soft computing unit:
combines the neural network algorithm with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm, all of which adaptively update parameters; and
adaptively updates the parameters of the neural network algorithm.
3. The apparatus according to claim 1, wherein the neural network algorithm is updated based on a learning algorithm in which, when a difference between the estimation value output from the soft computing unit and a predetermined target value is outside of a critical range, learning is made so as to follow the predetermined target value.
4. The apparatus according to claim 3, wherein the target value is a reference value obtained through a corresponding test on a specific condition.
5. The apparatus according to claim 3, wherein the reference value is a value of complementing an amp-hour (Ah) counting value and an open circuit voltage (OCV) value, which are input from the charger-discharger, to rated capacity of the battery.
6. The apparatus according to claim 3, wherein the learning algorithm is any one of a back propagation learning algorithm, a Kalman filter, a genetic algorithm, and a fuzzy learning algorithm.
7. The apparatus according to claim 2, wherein the neural network algorithm, which is combined with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm, is updated based on a learning algorithm in which, when a difference between the estimation value output from the soft computing unit and a predetermined target value is outside of a critical range, learning is made so as to follow the predetermined target value.
8. The apparatus according to claim 7, wherein the target value is a reference value obtained through a corresponding test on a specific condition.
9. The apparatus according to claim 8 using fusion type soft computing, wherein the reference value is a value of complementing an amp-hour (Ah) counting value and an open circuit voltage (OCV) value, which are input from the charger-discharger, to rated capacity of the battery.
10. The apparatus according to claim 7 using fusion type soft computing, wherein the learning algorithm is any one of a back propagation learning algorithm, a Kalman filter, the genetic algorithm, and a fuzzy learning algorithm.
11. A method for estimating a state of charge (SOC) in a battery, the method comprising the steps of:
detecting current, voltage and temperature of a battery cell; and
outputting a battery SOC estimation value of processing the current, voltage and temperature detected by the detector unit using a radial function based on a neural network algorithm.
12. The method according to claim 11, wherein the neural network algorithm:
is combined with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm, all of which adaptively update parameters; and
adaptively update the parameters of the neural network algorithm.
13. The method according to claim 11, wherein the neural network algorithm is updated based on a learning algorithm in which, when a difference between the estimation value and a predetermined target value is outside of a critical range, learning is made so as to follow the predetermined target value.
14. The method according to claim 13, wherein the target value is a reference value obtained through a corresponding test on a specific condition.
15. The method according to claim 13, wherein the reference value is a value of complementing an amp-hour (Ah) counting value and an open circuit voltage (OCV) value, which are input from the charger-discharger, to rated capacity of the battery.
16. The method according to claim 13, wherein the learning algorithm is any one of a back propagation learning algorithm, a Kalman filter, a genetic algorithm, and a fuzzy learning algorithm.
17. The method according to claim 12, wherein the neural network algorithm, which is combined with any one of a fuzzy algorithm, a genetic algorithm (GA), a cellular automata (CA) algorithm, an immune system algorithm, and a rough-set algorithm, is updated based on a learning algorithm in which, when a difference between the estimation value output from the soft computing unit and a predetermined target value is outside of a critical range, learning is made so as to follow the predetermined target value.
18. The method according to claim 17, wherein the target value is a reference value obtained through a corresponding test on a specific condition.
19. The method according to claim 18 using fusion type soft computing, wherein the reference value is a value of complementing an amp-hour (Ah) counting value and an open circuit voltage (OCV) value, which are input from the charger-discharger, to rated capacity of the battery.
20. The method according to claim 17 using fusion type soft computing, wherein the learning algorithm is any one of a back propagation learning algorithm, a Kalman filter, the genetic algorithm, and a fuzzy learning algorithm.
US11/452,007 2005-06-13 2006-06-13 Apparatus and method for testing state of charge in battery Abandoned US20070005276A1 (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
US12/869,242 US8626679B2 (en) 2005-06-13 2010-08-26 Apparatus and method for estimating state of charge in battery using fuzzy algorithm implemented as neural network

Applications Claiming Priority (2)

Application Number Priority Date Filing Date Title
KR20050050273 2005-06-13
KR10-2005-0050273 2005-06-13

Related Child Applications (1)

Application Number Title Priority Date Filing Date
US12/869,242 Continuation US8626679B2 (en) 2005-06-13 2010-08-26 Apparatus and method for estimating state of charge in battery using fuzzy algorithm implemented as neural network

Publications (1)

Publication Number Publication Date
US20070005276A1 true US20070005276A1 (en) 2007-01-04

Family

ID=37532491

Family Applications (2)

Application Number Title Priority Date Filing Date
US11/452,007 Abandoned US20070005276A1 (en) 2005-06-13 2006-06-13 Apparatus and method for testing state of charge in battery
US12/869,242 Active 2027-08-17 US8626679B2 (en) 2005-06-13 2010-08-26 Apparatus and method for estimating state of charge in battery using fuzzy algorithm implemented as neural network

Family Applications After (1)

Application Number Title Priority Date Filing Date
US12/869,242 Active 2027-08-17 US8626679B2 (en) 2005-06-13 2010-08-26 Apparatus and method for estimating state of charge in battery using fuzzy algorithm implemented as neural network

Country Status (7)

Country Link
US (2) US20070005276A1 (en)
EP (1) EP1896925B1 (en)
JP (1) JP5160416B2 (en)
KR (1) KR100793616B1 (en)
CN (1) CN101198922B (en)
TW (1) TWI320977B (en)
WO (1) WO2006135175A1 (en)

Cited By (20)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20080215265A1 (en) * 2007-02-05 2008-09-04 Canon Kabushiki Kaisha Electronic apparatus
US20080234956A1 (en) * 2007-03-19 2008-09-25 Nippon Soken, Inc. Method of calculating state variables of secondary battery and apparatus for estimating state variables of secondary battery
US20100283471A1 (en) * 2008-01-11 2010-11-11 Sk Energy Co., Ltd. Method for Measuring SOC of a Battery Management System and the Apparatus Thereof
US20110031938A1 (en) * 2009-08-04 2011-02-10 Yosuke Ishikawa Method of Estimating Battery State of Charge
DE102009037085A1 (en) * 2009-08-11 2011-02-17 Bayerische Motoren Werke Aktiengesellschaft Power loss determining method for e.g. lithium ion battery, involves operating energy storage with alternating current, measuring current and voltage at storage, and determining power loss of storage using measured current and voltage
US8116998B2 (en) 2009-01-30 2012-02-14 Bae Systems Controls, Inc. Battery health assessment estimator
CN102473982A (en) * 2010-05-17 2012-05-23 松下电器产业株式会社 Lithium-ion secondary battery system and battery pack
CN103413981A (en) * 2013-07-24 2013-11-27 清华大学 method and apparatus for battery pack capacity
US20140350875A1 (en) * 2013-05-27 2014-11-27 Scott Allen Mullin Relaxation model in real-time estimation of state-of-charge in lithium polymer batteries
CN106125007A (en) * 2016-08-31 2016-11-16 北京新能源汽车股份有限公司 Determination method, device and the automobile of a kind of battery dump energy
CN107972508A (en) * 2017-11-27 2018-05-01 南京晓庄学院 A kind of electric automobile charge power control method and control device
CN108656992A (en) * 2018-05-10 2018-10-16 中南大学 Automatic driving vehicle power supply wisdom prediction technique and device under a kind of Severe rainstorm environment
US20190178946A1 (en) * 2017-12-13 2019-06-13 Beijing Chuangyu Technology Co., Ltd. Battery classification method and system
CN111487541A (en) * 2019-01-25 2020-08-04 宏碁股份有限公司 Method for judging electric quantity state and electronic device thereof
CN111936876A (en) * 2018-04-06 2020-11-13 沃尔沃卡车集团 Method and system for estimating battery characteristics in vehicle drive system
CN112428878A (en) * 2019-08-26 2021-03-02 上海汽车集团股份有限公司 Software refreshing control method and device and Internet of vehicles equipment
CN112713819A (en) * 2020-12-24 2021-04-27 西安理工大学 Method for improving positioning force compensation precision of permanent magnet synchronous linear motor
CN112858929A (en) * 2021-03-16 2021-05-28 上海理工大学 Battery SOC estimation method based on fuzzy logic and extended Kalman filtering
EP3872507A4 (en) * 2019-02-22 2021-12-15 Lg Energy Solution, Ltd. Battery management system, battery management method, battery pack, and electric vehicle
US11567137B2 (en) 2019-02-22 2023-01-31 Lg Energy Solution, Ltd. Battery management system, battery management method, battery pack and electric vehicle

Families Citing this family (57)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN101067644B (en) * 2007-04-20 2010-05-26 杭州高特电子设备有限公司 Storage battery performance analytical expert diagnosing method
KR100836391B1 (en) * 2007-06-21 2008-06-09 현대자동차주식회사 Deduction method for battery state of charge in hybrid electric vehicle
KR100936892B1 (en) * 2007-09-13 2010-01-14 주식회사 엘지화학 System and method for estimating of batteries´s long term characteristics
JP5038258B2 (en) * 2008-08-25 2012-10-03 日本電信電話株式会社 Remaining capacity estimation method and remaining capacity estimation apparatus
CN101430309B (en) * 2008-11-14 2012-03-21 西安建筑科技大学 Environmental quality evaluation method based on rough set-RBF neural network
KR101020904B1 (en) * 2008-12-03 2011-03-09 현대자동차주식회사 Calculating apparatus and method of SOC of a battery in a vehicle
KR101267213B1 (en) 2009-06-03 2013-05-24 규슈덴료쿠 가부시키가이샤 Battery state of charge calculation device
TW201224485A (en) 2010-12-02 2012-06-16 Ind Tech Res Inst State-of-charge estimation method and battery control unit
FR2975501B1 (en) * 2011-05-20 2013-05-31 Renault Sas METHOD FOR ESTIMATING THE CHARGE STATE OF AN ELECTRIC BATTERY
CN102494778B (en) * 2011-11-14 2013-04-24 北京理工大学 Artificial neural network-based highest surface temperature prediction method of secondary battery
CN102364353B (en) * 2011-11-14 2013-10-16 北京理工大学 Method for assessing consistency of secondary battery based on heating effect
US9316699B2 (en) * 2012-04-05 2016-04-19 Samsung Sdi Co., Ltd. System for predicting lifetime of battery
CN102680903B (en) * 2012-05-11 2015-01-28 齐鲁工业大学 Portable storage battery state detection system and method
KR101547006B1 (en) * 2012-10-26 2015-08-24 주식회사 엘지화학 Apparatus and method for estimating state of charging of battery
TWI484682B (en) * 2012-11-16 2015-05-11 Univ Nat Cheng Kung Method of battery charging
US9244129B2 (en) * 2013-01-29 2016-01-26 Mitsubishi Electronic Research Laboratories, Inc. Method for estimating a state of charge of batteries
FR3006450B1 (en) * 2013-06-04 2015-05-22 Renault Sa METHOD FOR ESTIMATING THE HEALTH STATUS OF AN ELECTROCHEMICAL CELL FOR STORING ELECTRIC ENERGY
FR3010532B1 (en) 2013-09-11 2017-06-09 Commissariat Energie Atomique METHOD, DEVICE AND SYSTEM FOR ESTIMATING THE CHARGE STATE OF A BATTERY
TWI512647B (en) * 2014-09-10 2015-12-11 Ind Tech Res Inst Battery charging method
KR101726483B1 (en) * 2014-12-04 2017-04-12 주식회사 엘지화학 Apparatus and method for battery usage pattern analysis
CN104535934B (en) * 2014-12-31 2017-07-21 桂林电子科技大学 The electrokinetic cell state of charge method of estimation and system of online feedforward compensation
CN106501721A (en) * 2016-06-03 2017-03-15 湘潭大学 A kind of lithium battery SOC estimation method based on biological evolution
CN106383315A (en) * 2016-08-29 2017-02-08 丹阳亿豪电子科技有限公司 New energy automobile battery state of charge (SOC) prediction method
KR102636362B1 (en) 2016-11-22 2024-02-14 삼성전자주식회사 Method and apparatus for estimating state of battery
CN106646260A (en) * 2016-12-31 2017-05-10 深圳市沃特玛电池有限公司 SOC estimation method for BMS system based on genetic neural network
KR101912615B1 (en) * 2017-04-20 2018-10-29 이정환 System for monitoring and protecting batteries
CN107167741A (en) * 2017-06-06 2017-09-15 浙江大学 A kind of lithium battery SOC observation procedures based on neutral net
CN107436409B (en) * 2017-07-07 2019-12-31 淮阴工学院 Intelligent SOC prediction device for power battery of electric automobile
US11171498B2 (en) 2017-11-20 2021-11-09 The Trustees Of Columbia University In The City Of New York Neural-network state-of-charge estimation
US11637331B2 (en) 2017-11-20 2023-04-25 The Trustees Of Columbia University In The City Of New York Neural-network state-of-charge and state of health estimation
KR101965832B1 (en) * 2017-11-27 2019-04-05 (주) 페스코 Battery SOC estimation system and battery SOC estimation method using the same
KR102608468B1 (en) 2017-11-28 2023-12-01 삼성전자주식회사 Method and apparatus for estimating state of battery
CN108181591B (en) * 2018-01-08 2020-06-16 电子科技大学 Battery SOC value prediction method based on improved BP neural network
KR102458526B1 (en) * 2018-02-07 2022-10-25 주식회사 엘지에너지솔루션 Apparatus and method for estimating soc base on operating state of battery
KR20190100065A (en) 2018-02-20 2019-08-28 주식회사 엘지화학 Apparatus and method for calculating State Of Charge
CN110232432B (en) * 2018-03-05 2022-09-20 重庆邮电大学 Lithium battery pack SOC prediction method based on artificial life model
US10958082B2 (en) * 2018-04-25 2021-03-23 Microsoft Technology Licensing, Llc Intelligent battery cycling for lifetime longevity
KR102065120B1 (en) * 2018-09-27 2020-02-11 경북대학교 산학협력단 Battery charging state estimation method based on neural network
KR102225370B1 (en) * 2018-11-22 2021-03-08 제주대학교 산학협력단 Prediction system based on parameter improvement through learning and method thereof
CN109633450B (en) * 2018-11-23 2021-05-14 成都大超科技有限公司 Lithium battery charging detection system based on neural network
TWI687701B (en) * 2018-12-05 2020-03-11 宏碁股份有限公司 Method for determining state of charge and electronic device thereof
CN109828211A (en) * 2018-12-25 2019-05-31 宁波飞拓电器有限公司 A kind of emergency light battery SOC estimation method based on neural network adaptive-filtering
US11443163B2 (en) * 2019-10-11 2022-09-13 Alibaba Group Holding Limited Method and system for executing neural network
CN111103553B (en) * 2019-12-26 2021-11-23 江苏大学 Method for estimating health state of GRNN-adaptive electric vehicle lithium ion battery
CN111081067B (en) * 2019-12-27 2021-07-20 武汉大学 Vehicle collision early warning system and method based on IGA-BP neural network under vehicle networking environment
CN111220921A (en) * 2020-01-08 2020-06-02 重庆邮电大学 Lithium battery capacity estimation method based on improved convolution-long-and-short-term memory neural network
KR102387780B1 (en) * 2020-03-30 2022-04-18 주식회사 아르고스다인 Method and apparatus for estimating battery capacity based on neural network
KR102439041B1 (en) 2020-08-14 2022-09-02 주식회사 한국파워셀 Method and apparatus for diagnosing defect of battery cell based on neural network
US11555859B2 (en) 2020-09-10 2023-01-17 Toyota Research Institute, Inc. Vehicle battery analysis system
CN112051507A (en) * 2020-09-15 2020-12-08 哈尔滨理工大学 Lithium ion power battery SOC estimation method based on fuzzy control
KR20220069137A (en) 2020-11-19 2022-05-27 한국전자통신연구원 Device and method for predicting state of battery
KR102599803B1 (en) * 2020-12-10 2023-11-09 한국에너지기술연구원 Method and apparatus for diagnosing battery status through soc estimation
KR102595386B1 (en) 2020-12-21 2023-10-26 경북대학교 산학협력단 State of Charge Estimation and State of Health Monitoring of Battery Using Neural Networks
CN114280490B (en) * 2021-09-08 2024-02-09 国网湖北省电力有限公司荆门供电公司 Lithium ion battery state of charge estimation method and system
CN113655385B (en) * 2021-10-19 2022-02-08 深圳市德兰明海科技有限公司 Lithium battery SOC estimation method and device and computer readable storage medium
KR20230118235A (en) * 2022-02-04 2023-08-11 한양대학교 산학협력단 Battery soc estimation mathod and device based on meta-learning
CN114994547B (en) * 2022-08-05 2022-11-18 中汽研新能源汽车检验中心(天津)有限公司 Battery pack safety state evaluation method based on deep learning and consistency detection

Citations (10)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US5714866A (en) * 1994-09-08 1998-02-03 National Semiconductor Corporation Method and apparatus for fast battery charging using neural network fuzzy logic based control
US6011379A (en) * 1997-03-12 2000-01-04 U.S. Nanocorp, Inc. Method for determining state-of-charge using an intelligent system
US6064180A (en) * 1996-10-29 2000-05-16 General Motors Corporation Method and apparatus for determining battery state-of-charge using neural network architecture
US6285163B1 (en) * 1998-05-28 2001-09-04 Toyota Jidosha Kabushiki Kaisha Means for estimating charged state of battery and method for estimating degraded state of battery
US20010033169A1 (en) * 2000-01-12 2001-10-25 Harmohan Singh System and method for determining battery state-of-health
US6534992B2 (en) * 2001-02-17 2003-03-18 Vb Autobatterie Gmbh Method for determining the performance of a storage battery
US20030184307A1 (en) * 2002-02-19 2003-10-02 Kozlowski James D. Model-based predictive diagnostic tool for primary and secondary batteries
US20040253489A1 (en) * 2003-06-12 2004-12-16 Horgan Thomas J. Technique and apparatus to control a fuel cell system
US20050194936A1 (en) * 2003-12-18 2005-09-08 Il Cho Apparatus and method for estimating state of charge of battery using neural network
US7076350B2 (en) * 2003-12-19 2006-07-11 Lear Corporation Vehicle energy management system using prognostics

Family Cites Families (6)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
JPH06240318A (en) 1993-02-15 1994-08-30 Nkk Corp Method for controlling distribution of fed material in blast furnace
US6369545B1 (en) * 1999-08-17 2002-04-09 Lockheed Martin Corporation Neural network controlled power distribution element
DE10012964A1 (en) * 2000-03-16 2001-10-04 Implex Hear Tech Ag Device for operating re-chargeable electrical energy storage device selects current charging strategy for storage device depending on prognosis derived from model, storage device parameters
JP2003168101A (en) * 2001-12-03 2003-06-13 Mitsubishi Heavy Ind Ltd Learning device and method using genetic algorithm
US6534954B1 (en) * 2002-01-10 2003-03-18 Compact Power Inc. Method and apparatus for a battery state of charge estimator
JP3935099B2 (en) * 2003-04-15 2007-06-20 株式会社デンソー Internal state detection system for power storage device for vehicle

Patent Citations (10)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US5714866A (en) * 1994-09-08 1998-02-03 National Semiconductor Corporation Method and apparatus for fast battery charging using neural network fuzzy logic based control
US6064180A (en) * 1996-10-29 2000-05-16 General Motors Corporation Method and apparatus for determining battery state-of-charge using neural network architecture
US6011379A (en) * 1997-03-12 2000-01-04 U.S. Nanocorp, Inc. Method for determining state-of-charge using an intelligent system
US6285163B1 (en) * 1998-05-28 2001-09-04 Toyota Jidosha Kabushiki Kaisha Means for estimating charged state of battery and method for estimating degraded state of battery
US20010033169A1 (en) * 2000-01-12 2001-10-25 Harmohan Singh System and method for determining battery state-of-health
US6534992B2 (en) * 2001-02-17 2003-03-18 Vb Autobatterie Gmbh Method for determining the performance of a storage battery
US20030184307A1 (en) * 2002-02-19 2003-10-02 Kozlowski James D. Model-based predictive diagnostic tool for primary and secondary batteries
US20040253489A1 (en) * 2003-06-12 2004-12-16 Horgan Thomas J. Technique and apparatus to control a fuel cell system
US20050194936A1 (en) * 2003-12-18 2005-09-08 Il Cho Apparatus and method for estimating state of charge of battery using neural network
US7076350B2 (en) * 2003-12-19 2006-07-11 Lear Corporation Vehicle energy management system using prognostics

Cited By (27)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20080215265A1 (en) * 2007-02-05 2008-09-04 Canon Kabushiki Kaisha Electronic apparatus
US7974795B2 (en) * 2007-02-05 2011-07-05 Canon Kabushiki Kaisha Electronic apparatus
US20110221395A1 (en) * 2007-02-05 2011-09-15 Canon Kabushiki Kaisha Electronic apparatus
US9043175B2 (en) * 2007-02-05 2015-05-26 Canon Kabushiki Kaisha Electronic apparatus
US20080234956A1 (en) * 2007-03-19 2008-09-25 Nippon Soken, Inc. Method of calculating state variables of secondary battery and apparatus for estimating state variables of secondary battery
US20100283471A1 (en) * 2008-01-11 2010-11-11 Sk Energy Co., Ltd. Method for Measuring SOC of a Battery Management System and the Apparatus Thereof
US8548761B2 (en) * 2008-01-11 2013-10-01 Sk Innovation Co., Ltd. Method for measuring SOC of a battery management system and the apparatus thereof
US8116998B2 (en) 2009-01-30 2012-02-14 Bae Systems Controls, Inc. Battery health assessment estimator
US20110031938A1 (en) * 2009-08-04 2011-02-10 Yosuke Ishikawa Method of Estimating Battery State of Charge
US8207706B2 (en) 2009-08-04 2012-06-26 Honda Motor Co., Ltd. Method of estimating battery state of charge
DE102009037085A1 (en) * 2009-08-11 2011-02-17 Bayerische Motoren Werke Aktiengesellschaft Power loss determining method for e.g. lithium ion battery, involves operating energy storage with alternating current, measuring current and voltage at storage, and determining power loss of storage using measured current and voltage
CN102473982A (en) * 2010-05-17 2012-05-23 松下电器产业株式会社 Lithium-ion secondary battery system and battery pack
US20140350875A1 (en) * 2013-05-27 2014-11-27 Scott Allen Mullin Relaxation model in real-time estimation of state-of-charge in lithium polymer batteries
CN103413981A (en) * 2013-07-24 2013-11-27 清华大学 method and apparatus for battery pack capacity
CN106125007A (en) * 2016-08-31 2016-11-16 北京新能源汽车股份有限公司 Determination method, device and the automobile of a kind of battery dump energy
CN107972508A (en) * 2017-11-27 2018-05-01 南京晓庄学院 A kind of electric automobile charge power control method and control device
US20190178946A1 (en) * 2017-12-13 2019-06-13 Beijing Chuangyu Technology Co., Ltd. Battery classification method and system
US20210009002A1 (en) * 2018-04-06 2021-01-14 Volvo Truck Corporation A method and system for estimating battery properties in a vehicle drive system
US11975629B2 (en) * 2018-04-06 2024-05-07 Volvo Truck Corporation Method and system for estimating battery properties in a vehicle drive system
CN111936876A (en) * 2018-04-06 2020-11-13 沃尔沃卡车集团 Method and system for estimating battery characteristics in vehicle drive system
CN108656992A (en) * 2018-05-10 2018-10-16 中南大学 Automatic driving vehicle power supply wisdom prediction technique and device under a kind of Severe rainstorm environment
CN111487541A (en) * 2019-01-25 2020-08-04 宏碁股份有限公司 Method for judging electric quantity state and electronic device thereof
EP3872507A4 (en) * 2019-02-22 2021-12-15 Lg Energy Solution, Ltd. Battery management system, battery management method, battery pack, and electric vehicle
US11567137B2 (en) 2019-02-22 2023-01-31 Lg Energy Solution, Ltd. Battery management system, battery management method, battery pack and electric vehicle
CN112428878A (en) * 2019-08-26 2021-03-02 上海汽车集团股份有限公司 Software refreshing control method and device and Internet of vehicles equipment
CN112713819A (en) * 2020-12-24 2021-04-27 西安理工大学 Method for improving positioning force compensation precision of permanent magnet synchronous linear motor
CN112858929A (en) * 2021-03-16 2021-05-28 上海理工大学 Battery SOC estimation method based on fuzzy logic and extended Kalman filtering

Also Published As

Publication number Publication date
TW200707823A (en) 2007-02-16
JP2008546989A (en) 2008-12-25
JP5160416B2 (en) 2013-03-13
EP1896925B1 (en) 2020-10-21
EP1896925A1 (en) 2008-03-12
KR20060129962A (en) 2006-12-18
EP1896925A4 (en) 2017-10-04
US8626679B2 (en) 2014-01-07
CN101198922A (en) 2008-06-11
CN101198922B (en) 2012-05-30
KR100793616B1 (en) 2008-01-10
WO2006135175A1 (en) 2006-12-21
US20100324848A1 (en) 2010-12-23
TWI320977B (en) 2010-02-21
WO2006135175B1 (en) 2007-03-29

Similar Documents

Publication Publication Date Title
US8626679B2 (en) Apparatus and method for estimating state of charge in battery using fuzzy algorithm implemented as neural network
Hannan et al. Neural network approach for estimating state of charge of lithium-ion battery using backtracking search algorithm
Ye et al. A double-scale and adaptive particle filter-based online parameter and state of charge estimation method for lithium-ion batteries
JP4331210B2 (en) Battery remaining amount estimation apparatus and method using neural network
Wang et al. An adaptive remaining energy prediction approach for lithium-ion batteries in electric vehicles
He et al. State of charge estimation for Li-ion batteries using neural network modeling and unscented Kalman filter-based error cancellation
Jungst et al. Accelerated calendar and pulse life analysis of lithium-ion cells
Chang Estimation of the state of charge for a LFP battery using a hybrid method that combines a RBF neural network, an OLS algorithm and AGA
JP4587306B2 (en) Secondary battery remaining capacity calculation method
JP7157909B2 (en) Battery capacity estimation method and battery capacity estimation device
Zhu et al. Accurate lithium-ion battery modeling with inverse repeat binary sequence for electric vehicle applications
Fleischer et al. On-line self-learning time forward voltage prognosis for lithium-ion batteries using adaptive neuro-fuzzy inference system
JP4609882B2 (en) Internal state detection method for power storage device for vehicles
Alfi et al. Hybrid state of charge estimation for lithium‐ion batteries: design and implementation
Cheng et al. State‐of‐charge estimation with aging effect and correction for lithium‐ion battery
Ouyang et al. A novel state of charge estimation method for lithium-ion batteries based on bias compensation
Samadani et al. A review study of methods for lithium-ion battery health monitoring and remaining life estimation in hybrid electric vehicles
Meng et al. Comparative study of lithium‐ion battery open‐circuit‐voltage online estimation methods
Ghaeminezhad et al. Review on state of charge estimation techniques of lithium-ion batteries: A control-oriented approach
Xing et al. Lithium-ion battery state-of-charge estimation based on a dual extended Kalman filter and BPNN correction
Lin et al. Algorithm of BPNN‐UKF based on a fusion model for SOC estimation in lithium‐ion batteries
CN109738807B (en) Method for estimating SOC (State of Charge) based on BP (Back propagation) neural network optimized by ant colony algorithm
Wang et al. Neural Network-Based State of Charge Estimation Method for Lithium-ion Batteries Based on Temperature.
Rao et al. Detection of Cyber Attacks on Wireless BMS of Electric Vehicles using Long Short-Term Memory Networks
Liao Enhanced Battery State of Charge Estimation by Machine Learning and Unscented Kalman Filter

Legal Events

Date Code Title Description
AS Assignment

Owner name: LG CHEM, LTD., KOREA, REPUBLIC OF

Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNORS:CHO, IL;KIM, DO YOUN;JUNG, DO YANG;REEL/FRAME:019167/0814

Effective date: 20060425

STCB Information on status: application discontinuation

Free format text: ABANDONED -- FAILURE TO RESPOND TO AN OFFICE ACTION