CN110807563B - Big data-based equipment life prediction system and method - Google Patents

Big data-based equipment life prediction system and method Download PDF

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CN110807563B
CN110807563B CN202010013629.5A CN202010013629A CN110807563B CN 110807563 B CN110807563 B CN 110807563B CN 202010013629 A CN202010013629 A CN 202010013629A CN 110807563 B CN110807563 B CN 110807563B
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power consumption
data
battery
consumption rate
communication equipment
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CN110807563A (en
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龙丹
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Sun Qingzhu
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Guangdong Zhaocaitong Information Technology Co Ltd
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    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
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Abstract

The invention belongs to the technical field of big data, and particularly discloses a system and a method for predicting the service life of equipment based on big data, wherein the service life predicting system comprises a data acquisition module, a data processing module, a predicting and updating module and a display module, the data acquisition module is electrically connected with the data processing module, and the data processing module is electrically connected with the predicting and updating module and the display module. The method and the device can predict more fit actual use conditions, so that the prediction result gradually becomes accurate.

Description

Big data-based equipment life prediction system and method
Technical Field
The invention relates to the technical field of big data, in particular to a system and a method for predicting the service life of equipment based on big data.
Background
With the continuous development of society and the continuous progress of science and technology, the big data era has gone towards us, and the conclusion is obtained by analyzing the big data, so that the big data era becomes the key point of utilization of people;
in the prior art, the service life of the equipment is usually a certain service life, and if a user still uses the equipment when the user cannot know that the service life of the equipment is up to the end, the equipment can cause faults and accidents, and normal plan and arrangement are affected, wherein the equipment comprises mechanical equipment, traffic equipment, communication equipment and the like, the use of the communication equipment is more extensive, almost human communication equipment is used in the modern society, one of the cores of the communication equipment is a communication equipment battery, and the prediction of the service life of the communication equipment battery has the following defects in the prior art:
1. after the service life of the communication equipment battery is predicted in the use process, the service life of the battery is further reduced due to improper operation in the use process, and the predicted service life cannot be reached, so that the prediction result is inaccurate;
2. in the prior art, only the power consumption rate of a dynamic state is considered for the prediction of a communication equipment battery, but the static power consumption rate and the dynamic power consumption rate are not comprehensively considered, so that the prediction result is not accurate.
Therefore, a system and a method for predicting the service life of equipment based on big data are urgently needed.
Disclosure of Invention
The invention aims to provide a system and a method for predicting the service life of equipment based on big data, which aim to solve the problems in the prior art.
In order to achieve the purpose, the invention provides the following technical scheme: a life prediction system of equipment based on big data comprises a data acquisition module for acquiring relevant data, a data processing module for processing and calculating the acquired data, a prediction updating module for updating the processed data, a display module for displaying the prediction result, and a service life prediction module for updating the prediction updating module;
the data acquisition module is electrically connected with the data processing module, and the data processing module is electrically connected with the prediction updating module and the display module.
According to the technical scheme, the data acquisition module comprises a display detection unit, an electric quantity monitoring unit and a time recording unit;
the output ends of the display detection unit, the electric quantity monitoring unit and the time recording unit are electrically connected with the input end of the data processing module;
whether the display detection unit is used for lighting the display screen of the communication equipment and detecting, as the basis of judging static power consumption and dynamic power consumption, the service life prediction of the communication equipment battery can be more accurate, the power monitoring unit is used for monitoring the power of the communication equipment battery in real time, the power consumption rate is calculated and confirmed through the power variation of the communication equipment battery, the time recording unit is used for recording the time in real time, and the dynamic power consumption duration and the static power consumption duration are determined through the cooperation display detection unit.
According to the technical scheme, the data processing module comprises a processor, a service life prediction unit, a database and a data retrieval unit;
the output end of the data acquisition module is electrically connected with the input end of the processor, the output end of the processor is electrically connected with the input ends of the database, the service life prediction unit and the display module, the output end of the database is electrically connected with the input end of the data retrieval unit, and the output end of the data retrieval unit is electrically connected with the input end of the processor;
the processor is used for classifying and processing various data collected by the data collection module, the database is used for storing various data processed by the processor, the service life prediction unit is used for predicting the service life of the battery of the communication equipment according to the data processed by the processor, and the data calling unit is used for calling related historical data from the database and supplying the data to the processor for processing and reference.
According to the technical scheme, the prediction updating module comprises a data updating unit and a data replacing unit;
the output end of the service life prediction unit is electrically connected with the input end of the data updating unit, the output end of the data updating unit is electrically connected with the input end of the data replacing unit, and the output end of the data replacing unit is electrically connected with the input end of the database;
the data updating unit is used for comparing the actual use data and the predicted use data of the communication equipment battery, so that the real-time prediction of the communication equipment battery can be realized according to the actual use data, the prediction result is more accurate, and the data replacing unit is used for replacing the predicted use data in the database with the real-time use data, so that the real-time updating and replacing of the data are realized.
According to the technical scheme, the display module is used for displaying the data processed by the processor, the service life of the battery of the communication equipment predicted by the service life prediction unit and the data updated by the data updating unit.
A device life prediction method based on big data comprises the following steps:
s1, collecting various data by using a data collection module;
s2, processing the acquired data by using a data processing module;
s3, updating and predicting the predicted data in real time according to the actual use condition;
and S4, displaying each item of data by using a display module.
According to the above technical solution, in the steps S1-S2, the display detection unit is used to detect whether the display screen of the communication device is lighted, and determine whether the battery of the communication device is in a static power consumption state or a dynamic power consumption state, where the static power consumption state is denoted as J and the dynamic power consumption state is denoted as D, the power monitoring unit is used to monitor the power of the battery of the communication device in real time, especially the power of the battery of the communication device at a time point when the static power consumption is turned into the dynamic power consumption state and at a time point when the dynamic power consumption is turned into the static power consumption state, and the time recording unit is used to record the power consumption of the battery of the communication device in real time for time T, so as to form a power consumption distribution set of the battery of1,j2),(j3,j4),(j5,j6),…,(jn-1,jn)},j1、j2、j3、…、jnRespectively representing the electric quantity values of the communication equipment at two ends in the static electricity consumption intervals in different time periods, wherein the electricity consumption set of the dynamic electricity consumption is D = { (D)1,d2),(d3,d4),(d5,d6),…,(dm-1,dm)},d1、d2、d3、…、dmRespectively representing the electric quantity values of the communication equipment at two ends of the dynamic power consumption interval in different time periods, wherein the static power consumption electric quantity time set is JT={(t1,t2),(t3,t4),(t5,t6),…,(tn-1,tn)},t1、t2、t3、…、tnRespectively representing the time points at two ends of the static electricity consumption interval in different time periods, and the electricity consumption time set of dynamic electricity consumption is DT={(T1,T2),(T3,T4),(T5,T6),…,(Tm-1,Tm)},T1、T2、T3、…、TmRespectively representing time points at two ends of a dynamic power consumption interval of different time periods;
according to the formula:
Figure 695046DEST_PATH_IMAGE001
i is not less than 1 and i is an odd number;
wherein, P is the static average power consumption rate of the battery of the communication equipment;
according to the formula:
Figure 419420DEST_PATH_IMAGE002
k is not less than 1 and k is an odd number;
wherein Q is the dynamic average power consumption rate of the battery of the communication equipment;
when P is more than or equal to A and Q is more than or equal to B, the service life of the communication equipment battery is reached;
wherein, A represents the maximum threshold value of the static average power consumption rate of the communication equipment battery, and B represents the maximum threshold value of the dynamic average power consumption rate of the communication equipment battery;
according to the technical scheme, the data processing module predicts the variation of the static power consumption rate P and the dynamic power consumption rate Q of the battery of the communication equipment according to the data stored in the database;
the data retrieval unit retrieves the data of the static power consumption rate P and the dynamic power consumption rate Q of each discharge of the communication equipment battery from the database to form a set P = { P =1,P2,P3,…,Px},P1、P2、P3、…、PxRespectively representing the static power consumption rate of each discharge of the battery of the communication device called from the database, and Q = { Q = { (Q) }1,Q2,Q3,…,Qx},Q1、Q2、Q3、…、QxRespectively representing the dynamic power consumption rate of each discharge of the communication equipment battery called from the databaseRate;
according to the formula:
Figure 75660DEST_PATH_IMAGE003
Figure 998617DEST_PATH_IMAGE004
wherein the content of the first and second substances,
Figure 980479DEST_PATH_IMAGE005
representing the variation, P, of the rate of static power consumption of the battery of the communication device in two adjacent dischargesiAnd Pi+1Respectively representing the static electricity consumption rate of the ith time and the static electricity consumption rate of the (i + 1) th time in two adjacent discharges of the battery of the communication equipment,
Figure 723307DEST_PATH_IMAGE006
representing the variation, Q, of the dynamic power consumption rate of the battery of the communication device in two adjacent dischargeskAnd Qk+1Respectively representing the dynamic power consumption rate of the kth time and the dynamic power consumption rate of the kth +1 time in two adjacent discharges of the communication equipment battery;
according to the formula:
Figure 183239DEST_PATH_IMAGE007
Figure 960702DEST_PATH_IMAGE008
wherein the content of the first and second substances,
Figure 847886DEST_PATH_IMAGE009
representing the difference between the static electricity consumption rate change amounts of two adjacent times,
Figure 812431DEST_PATH_IMAGE010
indicating the amount of change between the power consumption rate in the i-th static power consumption interval and the power consumption rate in the i + 1-th static power consumption interval,
Figure 341633DEST_PATH_IMAGE011
represents the amount of change between the power consumption rate in the (i + 1) th static power consumption interval and the power consumption rate in the (i + 2) th static power consumption interval,
Figure 708023DEST_PATH_IMAGE012
representing the difference between two adjacent dynamic power consumption rate change amounts,
Figure 766109DEST_PATH_IMAGE013
shows the variation of the power consumption rate in the kth dynamic power consumption interval and the power consumption rate in the (k + 1) th dynamic power consumption interval,
Figure 217950DEST_PATH_IMAGE014
the variation of the power consumption rate of the (k + 1) th dynamic power consumption interval and the power consumption rate of the (k + 2) th dynamic power consumption interval is represented;
obtaining a set M = &ofstatic power consumption rate variation difference values
Figure 19684DEST_PATH_IMAGE015
,
Figure 240581DEST_PATH_IMAGE016
,
Figure 727DEST_PATH_IMAGE017
,…,
Figure 510222DEST_PATH_IMAGE018
},
Figure 381226DEST_PATH_IMAGE015
,
Figure 456629DEST_PATH_IMAGE016
,
Figure 653256DEST_PATH_IMAGE017
,…,
Figure 814110DEST_PATH_IMAGE018
Respectively represent different time periodsDifference between two adjacent static electricity consumption rate changes, N = &
Figure 223225DEST_PATH_IMAGE019
,
Figure 418714DEST_PATH_IMAGE020
,
Figure 786242DEST_PATH_IMAGE021
,…,
Figure 637654DEST_PATH_IMAGE022
},
Figure 584882DEST_PATH_IMAGE019
,
Figure 634877DEST_PATH_IMAGE023
,
Figure 642148DEST_PATH_IMAGE021
,…,
Figure 777594DEST_PATH_IMAGE022
Respectively representing the difference between the dynamic power consumption rate variable quantities of two adjacent times in different time periods;
obtaining a formula Y of a static electricity consumption rate variation difference value according to the set M and the set NPFormula Y of difference value of dynamic power consumption rate variationQ
When Y isPAnd YQWhen the current value is equal to A and B, the values of the static power consumption rate and the dynamic power consumption rate which are close to the latest discharge are obtained, and the values are the service life of the battery of the communication equipment, namely the times.
According to the above technical solution, in step S3, the data acquisition module is used to acquire real-time data of power consumption of the battery of the communication device in real time, the real-time data is used to calculate the predicted data, the data replacement unit is used to replace the predicted data in the original database, the data update unit is used to replace the actual data with the original predicted data, and the service life of the battery of the communication device is predicted again, so that the real-time update of the predicted result can be realized, and the predicted result is more accurate.
In step S4, the display module is used to display the data processed by the processor, the service life of the battery of the communication device predicted by the life prediction unit, and the data updated by the data update unit in real time, the processor processes the data to generate a graph, and the display module displays the graph, so that the actual service life of the battery of the communication device can be known more intuitively.
Compared with the prior art, the invention has the beneficial effects that:
1. the data acquisition module is arranged, whether a display screen of a communication equipment battery works can be detected, the dynamic power consumption and the static power consumption of the communication equipment can be distinguished, the service life of the communication equipment battery can be more accurately predicted, meanwhile, the electric quantity of the communication equipment battery is monitored by the electric quantity monitoring unit, the static power consumption rate and the dynamic power consumption rate of the communication equipment battery can be calculated, meanwhile, historical data stored in the database are used, the static power consumption rate curve and the dynamic power consumption rate curve of the battery are calculated and converted into a formula, the discharging times are calculated according to the service life termination power consumption rate threshold of the equipment, and the service life of the communication equipment battery can be more accurately known.
2. The data replacement unit and the data updating unit are arranged, so that the static power consumption rate and the dynamic power consumption rate of the original predicted time point can be calculated by utilizing the static power consumption rate and the dynamic power consumption rate in the actual use process of the communication equipment battery, the data can be updated, the phenomenon that the predicted result has larger deviation due to complete prediction is avoided, the predicted data is replaced by utilizing the actual use data, the more fit actual use condition can be predicted, and the predicted result can be gradually accurate.
Drawings
FIG. 1 is a schematic block diagram of a big data-based device life prediction system according to the present invention;
FIG. 2 is a schematic diagram of the module connections of a big data based device life prediction system according to the present invention;
FIG. 3 is a schematic diagram illustrating steps of a big data-based device life prediction method according to the present invention;
fig. 4 is a schematic flow chart of a method for predicting the service life of a device based on big data according to the present invention.
Detailed Description
The technical solutions in the embodiments of the present invention will be clearly and completely described below with reference to the drawings in the embodiments of the present invention, and it is obvious that the described embodiments are only a part of the embodiments of the present invention, and not all of the embodiments. All other embodiments, which can be derived by a person skilled in the art from the embodiments given herein without making any creative effort, shall fall within the protection scope of the present invention.
As shown in fig. 1-2, a life prediction system for a device based on big data includes a data acquisition module for acquiring relevant data, a data processing module for processing and calculating the acquired data, a prediction updating module for updating the processed data, so that the prediction data can be replaced by actual data according to the comparison between the actual data and the prediction data, so that the overall prediction result is more accurate, and a display module for displaying the prediction result;
the data acquisition module is electrically connected with the data processing module, and the data processing module is electrically connected with the prediction updating module and the display module.
The data acquisition module comprises a display detection unit, an electric quantity monitoring unit and a time recording unit;
the output ends of the display detection unit, the electric quantity monitoring unit and the time recording unit are electrically connected with the input end of the data processing module;
whether the display detection unit is used for lighting the display screen of the communication equipment and detecting, as the basis of judging static power consumption and dynamic power consumption, the service life prediction of the communication equipment battery can be more accurate, the power monitoring unit is used for monitoring the power of the communication equipment battery in real time, the power consumption rate is calculated and confirmed through the power variation of the communication equipment battery, the time recording unit is used for recording the time in real time, and the dynamic power consumption duration and the static power consumption duration are determined through the cooperation display detection unit.
The data processing module comprises a processor, a service life prediction unit, a database and a data retrieval unit;
the output end of the data acquisition module is electrically connected with the input end of the processor, the output end of the processor is electrically connected with the input ends of the database, the service life prediction unit and the display module, the output end of the database is electrically connected with the input end of the data retrieval unit, and the output end of the data retrieval unit is electrically connected with the input end of the processor;
the processor is used for classifying and processing various data collected by the data collection module, the database is used for storing various data processed by the processor, the service life prediction unit is used for predicting the service life of the battery of the communication equipment according to the data processed by the processor, and the data calling unit is used for calling related historical data from the database and supplying the data to the processor for processing and reference.
The prediction updating module comprises a data updating unit and a data replacing unit;
the output end of the service life prediction unit is electrically connected with the input end of the data updating unit, the output end of the data updating unit is electrically connected with the input end of the data replacing unit, and the output end of the data replacing unit is electrically connected with the input end of the database;
the data updating unit is used for comparing the actual use data and the predicted use data of the communication equipment battery, so that the real-time prediction of the communication equipment battery can be realized according to the actual use data, the prediction result is more accurate, and the data replacing unit is used for replacing the predicted use data in the database with the real-time use data, so that the real-time updating and replacing of the data are realized.
The display module is used for displaying the data processed by the processor, the service life of the battery of the communication equipment predicted by the service life prediction unit and the data updated by the data updating unit.
As shown in fig. 3-4, a big data based device life prediction method includes the following steps:
s1, collecting various data by using a data collection module;
s2, processing the acquired data by using a data processing module;
s3, updating and predicting the predicted data in real time according to the actual use condition;
and S4, displaying each item of data by using a display module.
In the steps S1-S2, the display detection unit is used to detect whether the display screen of the communication device is lit, determine whether the battery of the communication device is in a static power consumption state or a dynamic power consumption state, the static power consumption state is denoted as J, the dynamic power consumption state is denoted as D, the power consumption of the battery of the communication device is monitored in real time by the power monitoring unit, especially the power consumption of the battery of the communication device at a time point when the static power consumption is turned into the dynamic power consumption state and a time point when the dynamic power consumption is turned into the static power consumption state, the time recording unit is used to record the power consumption of the battery of the communication device in real time for time T, so as to form a power consumption distribution set of the battery of the communication device, and1,j2),(j3,j4),(j5,j6),…,(jn-1,jn)},j1、j2、j3、…、jnrespectively representing the electric quantity values of the communication equipment at two ends in the static electricity consumption intervals in different time periods, wherein the electricity consumption set of the dynamic electricity consumption is D = { (D)1,d2),(d3,d4),(d5,d6),…,(dm-1,dm)},d1、d2、d3、…、dmRespectively representing the electric quantity values of the communication equipment at two ends of the dynamic power consumption interval in different time periods, wherein the static power consumption electric quantity time set is JT={(t1,t2),(t3,t4),(t5,t6),…,(tn-1,tn)},t1、t2、t3、…、tnRespectively representing the time points at two ends of the static electricity consumption interval in different time periods, and the electricity consumption time set of dynamic electricity consumption is DT={(T1,T2),(T3,T4),(T5,T6),…,(Tm-1,Tm)},T1、T2、T3、…、TmRespectively representing time points at two ends of a dynamic power consumption interval of different time periods;
according to the formula:
Figure 528512DEST_PATH_IMAGE001
i is not less than 1 and i is an odd number;
wherein, P is the static average power consumption rate of the battery of the communication equipment;
according to the formula:
Figure 433014DEST_PATH_IMAGE002
k is not less than 1 and k is an odd number;
wherein Q is the dynamic average power consumption rate of the battery of the communication equipment;
when P is more than or equal to A and Q is more than or equal to B, the service life of the communication equipment battery is reached;
wherein, A represents the maximum threshold value of the static average power consumption rate of the communication equipment battery, and B represents the maximum threshold value of the dynamic average power consumption rate of the communication equipment battery;
according to the technical scheme, the data processing module predicts the variation of the static power consumption rate P and the dynamic power consumption rate Q of the battery of the communication equipment according to the data stored in the database;
the data retrieval unit retrieves the data of the static power consumption rate P and the dynamic power consumption rate Q of each discharge of the communication equipment battery from the database to form a set P = { P =1,P2,P3,…,Px},P1、P2、P3、…、PxRespectively representing the static power consumption rate of each discharge of the battery of the communication device called from the database, and Q = { Q = { (Q) }1,Q2,Q3,…,Qx},Q1、Q2、Q3、…、QxRespectively representing the dynamic power consumption rate of each discharge of the communication equipment battery called from the database;
according to the formula:
Figure 876765DEST_PATH_IMAGE003
Figure 499507DEST_PATH_IMAGE004
wherein the content of the first and second substances,
Figure 54117DEST_PATH_IMAGE005
representing the variation, P, of the rate of static power consumption of the battery of the communication device in two adjacent dischargesiAnd Pi+1Respectively representing the static electricity consumption rate of the ith time and the static electricity consumption rate of the (i + 1) th time in two adjacent discharges of the battery of the communication equipment,
Figure 344284DEST_PATH_IMAGE006
representing the variation, Q, of the dynamic power consumption rate of the battery of the communication device in two adjacent dischargeskAnd Qk+1Respectively representing the dynamic power consumption rate of the kth time and the dynamic power consumption rate of the kth +1 time in two adjacent discharges of the communication equipment battery;
according to the formula:
Figure 224515DEST_PATH_IMAGE007
Figure 334554DEST_PATH_IMAGE008
wherein the content of the first and second substances,
Figure 427274DEST_PATH_IMAGE009
representing the difference between the static electricity consumption rate change amounts of two adjacent times,
Figure 40790DEST_PATH_IMAGE010
indicating the amount of change between the power consumption rate in the i-th static power consumption interval and the power consumption rate in the i + 1-th static power consumption interval,
Figure 295184DEST_PATH_IMAGE011
represents the amount of change between the power consumption rate in the (i + 1) th static power consumption interval and the power consumption rate in the (i + 2) th static power consumption interval,
Figure 626940DEST_PATH_IMAGE012
representing the difference between two adjacent dynamic power consumption rate change amounts,
Figure 257772DEST_PATH_IMAGE013
shows the variation of the power consumption rate in the kth dynamic power consumption interval and the power consumption rate in the (k + 1) th dynamic power consumption interval,
Figure 256952DEST_PATH_IMAGE014
the variation of the power consumption rate of the (k + 1) th dynamic power consumption interval and the power consumption rate of the (k + 2) th dynamic power consumption interval is represented;
obtaining a set M = &ofstatic power consumption rate variation difference values
Figure 213407DEST_PATH_IMAGE015
,
Figure 298038DEST_PATH_IMAGE016
,
Figure 732561DEST_PATH_IMAGE017
,…,
Figure 851827DEST_PATH_IMAGE018
},
Figure 979183DEST_PATH_IMAGE015
,
Figure 551110DEST_PATH_IMAGE016
,
Figure 789324DEST_PATH_IMAGE017
,…,
Figure 763097DEST_PATH_IMAGE018
Respectively representing the difference between two adjacent static electricity consumption rate variable quantities in different time periods, N = &
Figure 61354DEST_PATH_IMAGE019
,
Figure 854997DEST_PATH_IMAGE020
,
Figure 365744DEST_PATH_IMAGE021
,…,
Figure 194023DEST_PATH_IMAGE022
},
Figure 928761DEST_PATH_IMAGE019
,
Figure 475280DEST_PATH_IMAGE020
,
Figure 320876DEST_PATH_IMAGE021
,…,
Figure 3661DEST_PATH_IMAGE022
Respectively representing the difference between the dynamic power consumption rate variable quantities of two adjacent times in different time periods;
obtaining a formula Y of a static electricity consumption rate variation difference value according to the set M and the set NPFormula Y of difference value of dynamic power consumption rate variationQ
When Y isPAnd YQWhen the current value is equal to A and B, the values of the static power consumption rate and the dynamic power consumption rate which are close to the latest discharge are obtained, and the values are the service life of the battery of the communication equipment, namely the times.
In step S3, the data acquisition module is used to acquire real-time data of power consumption of the battery of the communication device in real time, the real-time data is used to calculate the predicted data, the data replacement unit is used to replace the predicted data in the original database, the data update unit is used to replace the actual data with the original predicted data, and the service life of the battery of the communication device is predicted again, so that the real-time update of the predicted result can be realized, and the predicted result is more accurate.
In step S4, the display module is used to display the data processed by the processor, the service life of the battery of the communication device predicted by the life prediction unit, and the data updated by the data update unit in real time, the processor processes the data to generate a graph, and the display module displays the graph, so that the actual service life of the battery of the communication device can be known more intuitively.
The first embodiment is as follows:
whether a display screen of the communication equipment is lightened is detected by using a display detection unit, whether the battery of the communication equipment is in a static power consumption state or a dynamic power consumption state is judged, the static power consumption state is marked as J, the dynamic power consumption state is marked as D, the battery power of the communication equipment is monitored in real time by using a power monitoring unit, particularly, the battery power of the communication equipment at a time point when the static power consumption rotates to be power consumption and a time point when the dynamic power consumption rotates to be static power consumption, a power consumption distribution set of the battery power of the communication equipment is formed by recording the power consumption of the communication equipment in real time at a time T by using a time recording unit, the power consumption of the battery of the communication equipment is integrated as J = { (100%,96%), (82%,79%), (55%,53%), (32%,31%) }, and the power consumption of the dynamic power consumption is integrated as D = {, (53%,32%), (31%,20%) }, the electricity consumption time set of static electricity consumption is JT= { (8:30,9:10), (9:40,10:10), (11:00,11:30), (12:00,12:20) }, and the power consumption time set for dynamic power consumption is DT={(9:10,9:40),(10:10,11:00),(11:30,12:00), (12:20,12:50)};
According to the formula:
Figure 909300DEST_PATH_IMAGE024
wherein, P =0.083%/min is the static average power consumption rate of the battery of the communication equipment;
according to the formula:
Figure 677536DEST_PATH_IMAGE025
wherein, Q =0.5%/min is the dynamic average power consumption rate of the battery of the communication equipment;
when P is more than or equal to A =0.2%/min and Q is more than or equal to B =1%/min, the service life of the communication equipment battery is reached;
wherein, A =0.2%/min represents the maximum threshold value of the static average power consumption rate of the battery of the communication equipment, and B =1%/min represents the maximum threshold value of the dynamic average power consumption rate of the battery of the communication equipment.
The data processing module predicts the variation of the static power consumption rate P and the dynamic power consumption rate Q of the battery of the communication equipment according to the data stored in the database;
the data retrieval unit retrieves data of static power consumption rate P and dynamic power consumption rate Q of each discharge of the battery of the communication equipment from the database to form sets P = {0.025,0.025,0.027,0.030,0.031,0.034,0.036, …,0.815} and Q = {0.12,0.123,0.125,0.127,0.131,0.135,0.139, …,0.483 };
according to the formula:
Figure 61244DEST_PATH_IMAGE003
Figure 864115DEST_PATH_IMAGE004
wherein the content of the first and second substances,
Figure 940656DEST_PATH_IMAGE005
representing the variation of the static electricity consumption rate of the adjacent two discharges of the battery of the communication equipment,
Figure 196188DEST_PATH_IMAGE006
representing the variation of the dynamic power consumption rate of the adjacent two-time discharging of the battery of the communication equipment;
according to the formula:
Figure 118007DEST_PATH_IMAGE007
Figure 40964DEST_PATH_IMAGE008
wherein the content of the first and second substances,
Figure 733810DEST_PATH_IMAGE009
representing the difference between the static electricity consumption rate change amounts of two adjacent times,
Figure 742217DEST_PATH_IMAGE012
representing a difference between two adjacent dynamic power consumption rate change amounts;
obtaining a set M = &ofstatic power consumption rate variation difference values
Figure 467727DEST_PATH_IMAGE026
,
Figure 714032DEST_PATH_IMAGE027
,
Figure 70058DEST_PATH_IMAGE028
,0.001,
Figure 34603DEST_PATH_IMAGE028
,0.002,…,0.004},N={0.003,0.002,0.002,0.004,0.004,0.004,…,0.006};
Obtaining a formula Y of a static electricity consumption rate variation difference value according to the set M and the set NPK =0.003 × k +0.083=0.2, and the formula Y of k =39 is obtained as the difference between the dynamic power consumption rate and the change amountQ=0.006 × k +0.5=2, yielding k = 250;
when Y isPAnd YQWhen the current is equal to A and B, the values of the static power consumption rate and the dynamic power consumption rate which are close to the latest discharge are obtained, namely the service life of the battery of the communication equipment, namely the frequency is 250.
In step S3, the data acquisition module is used to acquire real-time data of power consumption of the battery of the communication device in real time, the real-time data is used to calculate the predicted data, the data replacement unit is used to replace the predicted data in the original database, the data update unit is used to replace the actual data with the original predicted data, and the service life of the battery of the communication device is predicted again, so that the real-time update of the predicted result can be realized, and the predicted result is more accurate.
It will be evident to those skilled in the art that the invention is not limited to the details of the foregoing illustrative embodiments, and that the present invention may be embodied in other specific forms without departing from the spirit or essential attributes thereof. The present embodiments are therefore to be considered in all respects as illustrative and not restrictive, the scope of the invention being indicated by the appended claims rather than by the foregoing description, and all changes which come within the meaning and range of equivalency of the claims are therefore intended to be embraced therein. Any reference sign in a claim should not be construed as limiting the claim concerned.

Claims (4)

1. A big data based device life prediction system, characterized by: the life prediction system comprises a data acquisition module for acquiring related data, a data processing module for processing and calculating the acquired data, a prediction updating module for updating the processed data and a display module for displaying a prediction result;
the data acquisition module is electrically connected with the data processing module, and the data processing module is electrically connected with the prediction updating module and the display module;
the data acquisition module comprises a display detection unit, an electric quantity monitoring unit and a time recording unit;
the output ends of the display detection unit, the electric quantity monitoring unit and the time recording unit are electrically connected with the input end of the data processing module;
the display detection unit is used for detecting whether a display screen of the communication equipment is lighted or not, the electric quantity monitoring unit is used for monitoring the electric quantity of a battery of the communication equipment in real time, the time recording unit is used for recording time in real time, and the display detection unit is matched to determine dynamic power consumption duration and static power consumption duration;
the data processing module comprises a processor, a service life prediction unit, a database and a data retrieval unit;
the output end of the data acquisition module is electrically connected with the input end of the processor, the output end of the processor is electrically connected with the input ends of the database, the service life prediction unit and the display module, the output end of the database is electrically connected with the input end of the data retrieval unit, and the output end of the data retrieval unit is electrically connected with the input end of the processor;
the service life prediction unit is used for predicting the service life of a battery of the communication equipment according to the data processed by the processor, and the data retrieval unit is used for retrieving related historical data from the database and supplying the historical data to the processor for processing and reference;
the prediction updating module comprises a data updating unit and a data replacing unit;
the output end of the service life prediction unit is electrically connected with the input end of the data updating unit, the output end of the data updating unit is electrically connected with the input end of the data replacing unit, and the output end of the data replacing unit is electrically connected with the input end of the database;
the data updating unit is used for comparing the actual use data of the battery of the communication equipment with the predicted use data, and the data replacing unit is used for replacing the predicted use data in the database with the real-time use data to realize real-time updating and replacing of the data;
whether a display screen of the communication equipment is lightened is detected by using the display detection unit, whether the battery of the communication equipment is in a static power consumption state or a dynamic power consumption state is judged, the static power consumption state is recorded as J, the dynamic power consumption state is recorded as D, the electric quantity of the battery of the communication equipment is monitored in real time by using the electric quantity monitoring unit, and particularly, the electric quantity of the battery of the communication equipment is monitored from a time point when the static power consumption rotates to the dynamic power consumption state and from a time point when the dynamic power consumption rotatesThe electric quantity is recorded in real time by using the time recording unit to carry out time T on the consumption of the electric quantity of the battery of the communication equipment, a power consumption distribution set of the battery power consumption of the communication equipment is formed, and the static power consumption electric quantity consumption set is J = { (J)1,j2),(j3,j4),(j5,j6),…,(jn-1,jn)},j1、j2、j3、…、jnRespectively representing the electric quantity values of the communication equipment at two ends in the static electricity consumption intervals in different time periods, wherein the electricity consumption set of the dynamic electricity consumption is D = { (D)1,d2),(d3,d4),(d5,d6),…,(dm-1,dm)},d1、d2、d3、…、dmRespectively representing the electric quantity values of the communication equipment at two ends of the dynamic power consumption interval in different time periods, wherein the static power consumption electric quantity time set is JT={(t1,t2),(t3,t4),(t5,t6),…,(tn-1,tn)},t1、t2、t3、…、tnRespectively representing the time points at two ends of the static electricity consumption interval in different time periods, and the electricity consumption time set of dynamic electricity consumption is DT={(T1,T2),(T3,T4),(T5,T6),…,(Tm-1,Tm)},T1、T2、T3、…、TmRespectively representing time points at two ends of a dynamic power consumption interval of different time periods;
according to the formula:
Figure 258049DEST_PATH_IMAGE001
i is not less than 1 and i is an odd number;
wherein, P is the static average power consumption rate of the battery of the communication equipment;
according to the formula:
Figure 220189DEST_PATH_IMAGE002
k is not less than 1 and k is an odd number;
wherein Q is the dynamic average power consumption rate of the battery of the communication equipment;
when P is more than or equal to A and Q is more than or equal to B, the service life of the communication equipment battery is reached;
wherein, A represents the maximum threshold value of the static average power consumption rate of the communication equipment battery, and B represents the maximum threshold value of the dynamic average power consumption rate of the communication equipment battery;
the data processing module predicts the variation of the static power consumption rate P and the dynamic power consumption rate Q of the battery of the communication equipment according to the data stored in the database;
the data retrieval unit retrieves data of static power consumption rate P and dynamic power consumption rate Q of each discharge of the communication equipment battery from the database to form a set P = { P =1,P2,P3,…,Px},P1、P2、P3、…、PxRespectively representing the static power consumption rate of each discharge of the battery of the communication device called from the database, and Q = { Q = { (Q) }1,Q2,Q3,…,Qx},Q1、Q2、Q3、…、QxRespectively representing the dynamic power consumption rate of each discharge of the communication equipment battery called from the database;
according to the formula:
Figure 333769DEST_PATH_IMAGE003
Figure 697755DEST_PATH_IMAGE004
wherein the content of the first and second substances,
Figure 169581DEST_PATH_IMAGE005
representing the variation, P, of the rate of static power consumption of the battery of the communication device in two adjacent dischargesiAnd Pi+1Respectively representing the static electricity consumption rate of the ith time and the static electricity consumption rate of the (i + 1) th time in two adjacent discharges of the battery of the communication equipment,
Figure 619016DEST_PATH_IMAGE006
representing the variation, Q, of the dynamic power consumption rate of the battery of the communication device in two adjacent dischargeskAnd Qk+1Respectively representing the dynamic power consumption rate of the kth time and the dynamic power consumption rate of the kth +1 time in two adjacent discharges of the communication equipment battery;
according to the formula:
Figure 801867DEST_PATH_IMAGE007
Figure 958042DEST_PATH_IMAGE008
wherein the content of the first and second substances,
Figure 66681DEST_PATH_IMAGE009
representing the difference between the static electricity consumption rate change amounts of two adjacent times,
Figure 737834DEST_PATH_IMAGE005
indicating the amount of change between the power consumption rate in the i-th static power consumption interval and the power consumption rate in the i + 1-th static power consumption interval,
Figure 989955DEST_PATH_IMAGE010
represents the amount of change between the power consumption rate in the (i + 1) th static power consumption interval and the power consumption rate in the (i + 2) th static power consumption interval,
Figure 62953DEST_PATH_IMAGE011
representing the difference between two adjacent dynamic power consumption rate change amounts,
Figure 321986DEST_PATH_IMAGE006
shows the variation of the power consumption rate in the kth dynamic power consumption interval and the power consumption rate in the (k + 1) th dynamic power consumption interval,
Figure 480435DEST_PATH_IMAGE012
the variation of the power consumption rate of the (k + 1) th dynamic power consumption interval and the power consumption rate of the (k + 2) th dynamic power consumption interval is represented;
obtaining a set M = &ofstatic power consumption rate variation difference values
Figure 739509DEST_PATH_IMAGE013
,
Figure 667014DEST_PATH_IMAGE014
,
Figure 914193DEST_PATH_IMAGE015
,…,
Figure 559938DEST_PATH_IMAGE016
},
Figure 622703DEST_PATH_IMAGE013
,
Figure 670294DEST_PATH_IMAGE014
,
Figure 28987DEST_PATH_IMAGE015
,…,
Figure 162028DEST_PATH_IMAGE016
Respectively representing the difference between two adjacent static electricity consumption rate variable quantities in different time periods, N = &
Figure 949856DEST_PATH_IMAGE017
,
Figure 930581DEST_PATH_IMAGE018
,
Figure 145662DEST_PATH_IMAGE019
,…,
Figure 749687DEST_PATH_IMAGE020
},
Figure 403522DEST_PATH_IMAGE017
,
Figure 910858DEST_PATH_IMAGE018
,
Figure 421474DEST_PATH_IMAGE019
,…,
Figure 984567DEST_PATH_IMAGE020
Respectively representing the difference between the dynamic power consumption rate variable quantities of two adjacent times in different time periods;
obtaining a formula Y of a static electricity consumption rate variation difference value according to the set M and the set NPFormula Y of difference value of dynamic power consumption rate variationQ
When Y isPAnd YQWhen the current value is equal to A and B, the values of the static power consumption rate and the dynamic power consumption rate which are close to the latest discharge are obtained, and the values are the service life of the battery of the communication equipment, namely the times.
2. The big-data based device life prediction system of claim 1, wherein: the display module is used for displaying the data processed by the processor, the service life of the battery of the communication equipment predicted by the service life prediction unit and the data updated by the data updating unit.
3. A device life prediction method based on big data is characterized in that: the method comprises the following steps:
s1, collecting various data by using a data collection module;
s2, processing the acquired data by using a data processing module;
s3, updating and predicting the predicted data in real time according to the actual use condition;
s4, displaying each item of data by using a display module;
in the steps S1-S2, the display detection unit is used to detect whether the display screen of the communication device is lit, determine whether the battery of the communication device is in a static power consumption state or a dynamic power consumption state, the static power consumption state is denoted as J, the dynamic power consumption state is denoted as D, the power consumption of the battery of the communication device is monitored in real time by the power monitoring unit, especially the power consumption of the battery of the communication device at a time point when the static power consumption is turned into the dynamic power consumption state and a time point when the dynamic power consumption is turned into the static power consumption state, the time recording unit is used to record the power consumption of the battery of the communication device in real time for time T, so as to form a power consumption distribution set of the battery of the communication device, and1,j2),(j3,j4),(j5,j6),…,(jn-1,jn)},j1、j2、j3、…、jnrespectively representing the electric quantity values of the communication equipment at two ends in the static electricity consumption intervals in different time periods, wherein the electricity consumption set of the dynamic electricity consumption is D = { (D)1,d2),(d3,d4),(d5,d6),…,(dm-1,dm)},d1、d2、d3、…、dmRespectively representing the electric quantity values of the communication equipment at two ends of the dynamic power consumption interval in different time periods, wherein the static power consumption electric quantity time set is JT={(t1,t2),(t3,t4),(t5,t6),…,(tn-1,tn)},t1、t2、t3、…、tnRespectively representing the time points at two ends of the static electricity consumption interval in different time periods, and the electricity consumption time set of dynamic electricity consumption is DT={(T1,T2),(T3,T4),(T5,T6),…,(Tm-1,Tm)},T1、T2、T3、…、TmRespectively representing time points at two ends of a dynamic power consumption interval of different time periods;
according to the formula:
Figure 707672DEST_PATH_IMAGE001
i is not less than 1 and i is an odd number;
wherein, P is the static average power consumption rate of the battery of the communication equipment;
according to the formula:
Figure 397411DEST_PATH_IMAGE002
k is not less than 1 and k is an odd number;
wherein Q is the dynamic average power consumption rate of the battery of the communication equipment;
when P is more than or equal to A and Q is more than or equal to B, the service life of the communication equipment battery is reached;
wherein, A represents the maximum threshold value of the static average power consumption rate of the communication equipment battery, and B represents the maximum threshold value of the dynamic average power consumption rate of the communication equipment battery;
the data processing module predicts the variation of the static power consumption rate P and the dynamic power consumption rate Q of the battery of the communication equipment according to the data stored in the database;
the data retrieval unit retrieves the data of the static power consumption rate P and the dynamic power consumption rate Q of each discharge of the communication equipment battery from the database to form a set P = { P =1,P2,P3,…,Px},P1、P2、P3、…、PxRespectively representing the static power consumption rate of each discharge of the battery of the communication device called from the database, and Q = { Q = { (Q) }1,Q2,Q3,…,Qx},Q1、Q2、Q3、…、QxRespectively representing the dynamic power consumption rate of each discharge of the communication equipment battery called from the database;
according to the formula:
Figure 797037DEST_PATH_IMAGE003
Figure 595229DEST_PATH_IMAGE004
wherein the content of the first and second substances,
Figure 872757DEST_PATH_IMAGE005
representing the variation, P, of the rate of static power consumption of the battery of the communication device in two adjacent dischargesiAnd Pi+1Respectively representing the static electricity consumption rate of the ith time and the static electricity consumption rate of the (i + 1) th time in two adjacent discharges of the battery of the communication equipment,
Figure 72795DEST_PATH_IMAGE021
representing the variation, Q, of the dynamic power consumption rate of the battery of the communication device in two adjacent dischargeskAnd Qk+1Respectively representing the dynamic power consumption rate of the kth time and the dynamic power consumption rate of the kth +1 time in two adjacent discharges of the communication equipment battery;
according to the formula:
Figure 442989DEST_PATH_IMAGE007
Figure 259636DEST_PATH_IMAGE008
wherein the content of the first and second substances,
Figure 809697DEST_PATH_IMAGE009
representing the difference between the static electricity consumption rate change amounts of two adjacent times,
Figure 395399DEST_PATH_IMAGE022
indicating the amount of change between the power consumption rate in the i-th static power consumption interval and the power consumption rate in the i + 1-th static power consumption interval,
Figure 136828DEST_PATH_IMAGE023
represents the amount of change between the power consumption rate in the (i + 1) th static power consumption interval and the power consumption rate in the (i + 2) th static power consumption interval,
Figure 175191DEST_PATH_IMAGE011
representing two adjacent dynamicsThe difference between the amounts of change in the consumption rate,
Figure 528943DEST_PATH_IMAGE021
shows the variation of the power consumption rate in the kth dynamic power consumption interval and the power consumption rate in the (k + 1) th dynamic power consumption interval,
Figure 234731DEST_PATH_IMAGE024
the variation of the power consumption rate of the (k + 1) th dynamic power consumption interval and the power consumption rate of the (k + 2) th dynamic power consumption interval is represented;
obtaining a set M = &ofstatic power consumption rate variation difference values
Figure 884411DEST_PATH_IMAGE013
,
Figure 675650DEST_PATH_IMAGE014
,
Figure 567514DEST_PATH_IMAGE015
,…,
Figure 127808DEST_PATH_IMAGE016
},
Figure 945460DEST_PATH_IMAGE013
,
Figure 223995DEST_PATH_IMAGE014
,
Figure 919549DEST_PATH_IMAGE015
,…,
Figure 334350DEST_PATH_IMAGE016
Respectively representing the difference between two adjacent static electricity consumption rate variable quantities in different time periods, N = &
Figure 591413DEST_PATH_IMAGE017
,
Figure 91664DEST_PATH_IMAGE025
,
Figure 325330DEST_PATH_IMAGE026
,…,
Figure 860217DEST_PATH_IMAGE027
},
Figure 19672DEST_PATH_IMAGE028
,
Figure 7219DEST_PATH_IMAGE025
,
Figure 44577DEST_PATH_IMAGE026
,…,
Figure 433970DEST_PATH_IMAGE027
Respectively representing the difference between the dynamic power consumption rate variable quantities of two adjacent times in different time periods;
obtaining a formula Y of a static electricity consumption rate variation difference value according to the set M and the set NPFormula Y of difference value of dynamic power consumption rate variationQ
When Y isPAnd YQWhen the current value is equal to A and B, the values of the static power consumption rate and the dynamic power consumption rate which are close to the latest discharge are obtained, and the values are the service life of the battery of the communication equipment, namely the times.
4. The big data-based device life prediction method according to claim 3, wherein: in step S3, the data acquisition module is used to acquire real-time data of battery power consumption of the communication device in real time, the real-time data is used to calculate the predicted data, the data replacement unit is used to replace the predicted data in the original database, the data update unit is used to replace the actual data with the original predicted data, and the service life of the battery of the communication device is predicted again;
in step S4, the display module is used to display the data processed by the processor, the service life of the battery of the communication device predicted by the service life prediction unit, and the data updated by the data update unit in real time, the processor processes the data to generate a graph, and the display module displays the graph.
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