WO2024061692A1 - Commande optimisée d'un engin marin à transmission hybride - Google Patents

Commande optimisée d'un engin marin à transmission hybride Download PDF

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Publication number
WO2024061692A1
WO2024061692A1 PCT/EP2023/075025 EP2023075025W WO2024061692A1 WO 2024061692 A1 WO2024061692 A1 WO 2024061692A1 EP 2023075025 W EP2023075025 W EP 2023075025W WO 2024061692 A1 WO2024061692 A1 WO 2024061692A1
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driveline
route
marine vessel
emission
type
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PCT/EP2023/075025
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English (en)
Inventor
Ethan FAGHANI
Simon Johansson
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Cetasol Ab
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Publication of WO2024061692A1 publication Critical patent/WO2024061692A1/fr

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    • BPERFORMING OPERATIONS; TRANSPORTING
    • B63SHIPS OR OTHER WATERBORNE VESSELS; RELATED EQUIPMENT
    • B63HMARINE PROPULSION OR STEERING
    • B63H21/00Use of propulsion power plant or units on vessels
    • B63H21/20Use of propulsion power plant or units on vessels the vessels being powered by combinations of different types of propulsion units
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B63SHIPS OR OTHER WATERBORNE VESSELS; RELATED EQUIPMENT
    • B63HMARINE PROPULSION OR STEERING
    • B63H21/00Use of propulsion power plant or units on vessels
    • B63H21/21Control means for engine or transmission, specially adapted for use on marine vessels
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01CMEASURING DISTANCES, LEVELS OR BEARINGS; SURVEYING; NAVIGATION; GYROSCOPIC INSTRUMENTS; PHOTOGRAMMETRY OR VIDEOGRAMMETRY
    • G01C21/00Navigation; Navigational instruments not provided for in groups G01C1/00 - G01C19/00
    • G01C21/20Instruments for performing navigational calculations
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05DSYSTEMS FOR CONTROLLING OR REGULATING NON-ELECTRIC VARIABLES
    • G05D1/00Control of position, course, altitude or attitude of land, water, air or space vehicles, e.g. using automatic pilots
    • G05D1/40Control within particular dimensions
    • G05D1/43Control of position or course in two dimensions
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B63SHIPS OR OTHER WATERBORNE VESSELS; RELATED EQUIPMENT
    • B63BSHIPS OR OTHER WATERBORNE VESSELS; EQUIPMENT FOR SHIPPING 
    • B63B49/00Arrangements of nautical instruments or navigational aids
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05DSYSTEMS FOR CONTROLLING OR REGULATING NON-ELECTRIC VARIABLES
    • G05D2109/00Types of controlled vehicles
    • G05D2109/30Water vehicles

Definitions

  • the present disclosure relates to methods and control units for determining a marine vessel hybrid driveline control strategy, i.e. , to determine target power outtake levels along a route from two or more driveline types in a marine hybrid driveline arrangement.
  • Emission reduction specifically emission of carbon dioxide (CO2)
  • CO2 carbon dioxide
  • Hybrid driveline technology is a known method for reducing unwanted emission.
  • a conventional driveline type such as a diesel-based combustion engine driveline
  • a second driveline type such as an electric driveline which has a reduced emission level compared to the first driveline type.
  • the two driveline types of the vessel propulsion system normally differ in the amount of available energy.
  • a battery system for instance often holds less energy when fully recharged compared to a full fuel tank of a combustion engine-based driveline.
  • US 2011/0320073 A1 relates to energy optimization in marine vessels.
  • the hybrid driveline of the vessel propulsion system comprises at least a first driveline type and a second driveline type different from the first driveline type.
  • One of the driveline types often has a more limited amount of available energy compared to the second driveline type, as mentioned above.
  • an electrical driveline type is limited by the energy in the electrical energy storage system, which normally holds much less energy compared to that held in a Diesel fuel tank or the like.
  • the control strategy comprises a power outtake from the first driveline type and from the second driveline type along a route to be traversed by the marine vessel.
  • the control strategy also has an associated emission target.
  • the method comprises determining a total power requirement for the marine vessel along the route to be traversed, obtaining a power-to-emission relationship for each of the driveline types, where a power-to-emission relationship is indicative of an emission by the driveline type when operating at a given power outtake, and determining the marine vessel hybrid driveline control strategy based on the total power requirement for the route and on the power-to-emission relationships, such that the sum of power outtakes from the driveline types is greater or equal to the total power requirement along the route and such that the sum of emissions from the driveline types meets the emission target.
  • a balance between power outtakes from the two or more driveline types is determined which meets a set of control targets, among which is emission.
  • the emission target can be a pre-determined emission amount for the route and/or a minimization of emission along at least a part of the route.
  • a driveline type may comprise any of a diesel-based driveline, a gasoline-based driveline, a fuel cell electric system, a hydrogen-based combustion driveline, a battery-powered electric driveline, and a liquefied natural gas (LNG) based driveline.
  • the emission by a driveline type may comprise, e.g., emission of carbon dioxide, CO2, carbon monoxide, CO, nitrogen oxide, NOx, and/or noise.
  • the total available energy for one or both driveline types over the route to be traversed by the vessel may be limited and distance (or time) to the next available energy replenishment opportunity together with estimated time of energy replenishment can be considered in the methods discussed herein.
  • the route to be traversed by the marine vessel is normally an a-priori known route, i.e. , a deterministic path which the vessel is expected to follow with high probability. This is for instance the case if the vessel is a ferry which travels along a predetermined route in a repetitive manner. This is also the case if the vessel is a coastal transport vessel with a fixed route or set of routes that it follows over and over again, or at least from time to time.
  • Some of the methods disclosed herein leverage such repetitive travel patterns in order to improve the control strategy. In a way, some of the methods disclosed herein can be seen as methods for iterative improvement of a hybrid driveline control strategy, where the method, or some model used in the method, is improved every time the vessel travels along the route.
  • Routes determined by route planning methods based on a known start location and destination, as well as routes determined at least partly based on a current location of the marine vessel, on a prediction of destination based on previous routes traversed by the marine vessel, and on a route planning method based on current location and predicted destination, are also supported by at least some of the methods disclosed herein.
  • the route prediction can be made even more accurate if the time of day and/or date is considered in the route inference.
  • a route travelled up to a given location can also present valuable input data to the route inference, since vessels often return via the same route that was taken to the current location. This is especially true for day-cruisers and other smaller marine leisure craft.
  • the method also comprises updating the determined marine vessel hybrid driveline control strategy in case the destination of the route changes.
  • the a-priori known route is often known not only in terms of its path on a map, but together with the width of the route (“highway”) at any given point.
  • the route to be traversed by the marine vessel is preferably associated with one or more environment conditions of one or more route segments.
  • the environment conditions may comprise, e.g., wave height, sea current, and wind conditions along the route.
  • the forecasts can be calibrated, i.e., corrected, with data from local sensors on the vessel, such as wind sensors and wave height sensor systems based on cameras and/or based on an inertial measurement unit (IMU).
  • This calibration can also be performed in an iterative manner, i.e., updated every time the vessel travels along a given route. For example, consider a vessel such as a ferry which repetitively travels along a route.
  • the vessel may compare a wind forecast provided for a larger area to actual wind conditions along the route, every time the vessel traverses the route. The vessel is then in a position to identify locations along the route where the local wind conditions deviate from the wind forecast for the larger area, and thus construct a calibration table which can be applied to improve accuracy of the wind conditions along the particular route.
  • the method comprises determining the total power requirement at least in part based on a recommended speed profile of the marine vessel along the route.
  • the recommended speed profile can, for instance, be set based on target travel time or based on a target arrival time.
  • target travel time or based on a target arrival time.
  • the use of a target speed profile along the route as input to the control system could increase performance of the control strategy.
  • the method may also comprise determining the total power requirement at least in part based on a target noise level of the hybrid driveline along the route. This allows for reduction of noise level, e.g., along parts of a route associated with requirements on noise emission, which is an advantage.
  • the method comprises determining the power-to- emission relationship at least partly based on an obtained efficiency for each driveline type and on respective constant conversion factors for each driveline type. This way the optimization procedure can be tailored for a given set of driveline types to increase accuracy, which is an advantage.
  • the method may also comprise determining the marine vessel hybrid driveline control strategy as a solution to an optimization problem with an objective function formulated in terms of emission for a given power outtake distribution along the route. This solution can be obtained in several different ways, e.g., as the solution to the optimization problem from a machine learning (ML) algorithm, and/or from evaluating a pre-determined set of candidate control strategies.
  • ML machine learning
  • the method may also comprise determining the marine vessel hybrid driveline control strategy based on one or more constraints, where the constraints comprise any of: a maximum power outtake for each driveline type, a battery system state-of charge (SOC), a fuel tank level, a maximum noise level, and a driveline type specific start-up procedure.
  • constraints comprise any of: a maximum power outtake for each driveline type, a battery system state-of charge (SOC), a fuel tank level, a maximum noise level, and a driveline type specific start-up procedure.
  • control units, vessels, computer programs, computer readable media, and computer program products associated with the above discussed advantages.
  • Figure 1 shows a marine vessel with a hybrid driveline arrangement
  • Figure 2 illustrates a marine vessel hybrid driveline control strategy
  • Figure 3 illustrates optional components in a driveline control system
  • Figure 4 is a flow chart illustrating methods
  • Figure 5 schematically illustrates a control unit
  • Figure 6 shows an example computer program product
  • Figure 1 illustrates an example marine vessel 100 comprising a hybrid driveline 110 and a control unit 180 arranged to control the hybrid driveline 110 according to a control strategy.
  • the control unit 180 is optionally connected via wireless link to one or more online resources, such as a server 190, which may form part of a cloud-based system of information sources.
  • the server may also form part of the information processing system of the vessel 100, i.e. , the server 190 may in some cases assist the control unit 180 to perform computation tasks.
  • the hybrid driveline 110 comprises two or more driveline types connected to propulsion means 120.
  • the vessel 100 implements a propulsion system comprising two or more driveline types.
  • the propulsion means can, for instance, be a shared propeller to which more than one driveline is connected, but each driveline can also have its own propulsion means, i.e., a combustionengine based driveline can be connected to one propeller axle while an electric driveline is connected to another propeller axle.
  • the techniques disclosed herein are applicable with both parallel and series hybrid systems.
  • a combustion engine need not be directly connected to any driveline since it may also be used in a genset or the like to charge electric batteries of an electric driveline. More than two different driveline types can also be used in some types of marine vessels.
  • Each driveline type comprises a power source 130, 150 and an energy source 140, 160.
  • a combustion engine driveline for instance, comprises a combustion engine power source arranged to draw fuel from a fuel tank energy source.
  • An electric drive comprises an electric machine power source arranged to draw electric current from an electrical energy source, such as a battery or a supercapacitor.
  • Some examples of driveline types to which the teachings herein are applicable comprise diesel-based drivelines, gasoline-based drivelines, fuel cell electric systems, hydrogen-based combustion drivelines, battery-powered electric drivelines, a liquefied natural gas, LNG, based drivelines.
  • the amount of energy available to the different driveline types on a vessel may differ significantly.
  • An electric driveline powered by some form of electrical energy storage system often has a significantly smaller amount of available energy compared to a combustion engine powered from a fuel tank.
  • the first driveline type has much less available energy compared to the second driveline type, e.g., on the order of 10% or less.
  • a given route may comprise one or more electrical charging stations where the electrical energy store can be replenished, but no opportunities for filling up the fuel tanks of the combustion engine driveline type.
  • a key aspect in the control of a marine vessel comprising a hybrid driveline is the power outtake balance between the driveline types along a given route.
  • a control strategy in which all power is always drawn from a dieselbased driveline and no power from the electric driveline will not be associated with any significant reduction in CO2 emission, while a control strategy which only uses the electric driveline will most likely not be able to get the marine vessel from the start of the route to the end, at least for longer routes.
  • This model is then specifically developed for the vessel and the driveline, travelling along the route, resulting in an increase in prediction accuracy. This way the control strategy for managing the propulsion system of a vessel that travels along a route in a repetitive manner can be improved compared to known methods.
  • the present disclosure builds on the idea that the operation of marine vessels, i.e. , the routes travelled and the operating conditions along the routes encountered, are known beforehand or at least possible to predict a- priori.
  • This provides a unique opportunity to adjust the balance between different types of drivelines to account for the conditions of a particular route in an iterative manner, having regard not only to the state of the vessel drivelines, but also to the operating conditions which will be encountered along the route.
  • a vessel 100 used to service a ferry route over a known route from one location to another location over and over again can collect data over time which indicates, e.g., a required power to complete one pass of the route, as function of environmental conditions (wind, wave height, sea current, temperature, etc.).
  • This collected data can be used to configure a model of the vehicle hybrid driveline.
  • the model is then based on the environment conditions and will provide information on a predicted power requirement for the route given a set of input environment conditions, which can be obtained from a recent weather forecast report.
  • the control unit can then optimize the control strategy for the hybrid driveline of the vessel, based on the model, in an iterative manner as the vessel traverses the route or a similar route over and over again.
  • the optimization criteria can be, e.g., CO2 emission for the route, total operating cost and/or long-term maintenance cost. In case the current weather conditions have not previously been experienced, then an extrapolation can be performed using similar environment conditions that have been encountered by the vessel previously.
  • Boundary conditions of the optimization algorithm can be defined for determining the control strategy.
  • the boundaries can be used to ensure not only that the power output is met but also target time and distance are allowing the vessel to complete the trip within expectations.
  • the boundaries will also allow for different safety margins dependent on the operation and user expectations. Energy source left at arrival for example will be a factor that is countering the cost effective solution but could be used because of upcoming trips or safety margins.
  • Some aspects of the present disclosure relate to a computer implemented method for determining a marine vessel 100 hybrid driveline 110 control strategy 240, where the hybrid driveline 110 of the vessel propulsion system comprises at least a first driveline type 130, 140 and a second driveline type 150, 160 different from the first driveline type, such as an electric part and a combustion-engine based part.
  • the control strategy comprises a power outtake P1 , P2 from the first driveline type 130, 140 and from the second driveline type 150, 160 along a route 210 to be traversed by the marine vessel 100 in a repetitive manner, and where the control strategy 240 has an associated emission target.
  • the method comprises determining a total power requirement Ptotal for the marine vessel 100 along the route 210 to be traversed, at least in part by monitoring consumed power as the vessel repetitively traverses the route. In other words, the repetitive traversing of the same route allows the system to “sample” the energy consumption, given different operating conditions along the same route.
  • the method also comprises obtaining power- to-emission relationship data for each of the driveline types each time the vessel traverses the route, where a power-to-emission relationship is indicative of an emission by the driveline type when operating at a given power outtake P1 , P2.
  • the method furthermore comprises determining the marine vessel hybrid driveline control strategy 240 based on the total power requirement Ptotal for the route and on the power-to-emission relationships, such that the sum of power outtakes from the driveline types is greater or equal to the total power requirement Ptotal along the route 210 and such that the sum of emissions from the driveline types meets the emission target.
  • FIG. 2 illustrates the concept of a hybrid driveline control strategy 200.
  • a marine vessel traverses a route 210 from a start location 21 1 to a destination 212 at some distance D from the start.
  • the route 210 is normally not straight, in particular if the route is a coastal route.
  • Operating conditions along the route such as wind 250, wave height 255, and current 260, are also likely to differ. The operating conditions may differ from one day to another for the entire route (the wind along the entire route may, e.g., be strong or weak), or locally (such as occurrence of strong sea current along some sub-section of the route).
  • a vessel travelling the route over and over again will be able to map, e.g., weather conditions to power requirements and emissions along the route.
  • a vessel travelling along a given route in a repetitive manner will be able to develop an accurate model of energy consumption and emission by the different driveline types over time.
  • the control strategy can be refined over time for improved accuracy compared to known methods.
  • the control strategy 240 for controlling the driveline 110 of the marine vessel 100 comprises a power outtake P1 , P2 from the first driveline type 130, 140 and from the second driveline type 150, 160 along the route 210. This means that, at each position along the route, the control strategy determines how much power to draw from the first driveline type and from the second driveline type.
  • the hybrid system can be both a parallel system and a series system.
  • a combustion engine can, for instance, be used to power a propeller or in a genset to charge the batteries of an electric driveline.
  • the control strategies discussed herein are also associated with some form of emission target, such as a pre-determined emission amount for the route 210, or a minimization of emission along at least a part of the route 210.
  • the method proposed herein comprises determining S1 a total power requirement Ptotal for the marine vessel 100 along the route 210 to be traversed.
  • This total power requirement basically indicates how much power that needs to be generated by the hybrid driveline of the vessel in order to complete the route.
  • This total power requirement Ptotal if generally a function of the length of the route and can also be a function of the environment conditions. A strong sea current can for instance have a large effect on power requirement for a given route, and so can wind and wave conditions along the route.
  • the method also comprises obtaining S2 a power-to-emission relationship for each of the driveline types.
  • a power-to-emission relationship is indicative of an emission by the driveline type when operating at a given power outtake P1 , P2.
  • a mapping between power outtake and emission is available. This means that the system can determine an amount of emission for a given blend of the driveline types.
  • the method furthermore comprises determining S3 the marine vessel hybrid driveline control strategy 240 based on the total power requirement Ptotal for the route and on the power-to-emission relationships, such that the sum of power outtakes from the driveline types is greater or equal to the total power requirement Ptotal along the route 210 and such that the sum of emissions from the driveline types meets the emission target.
  • the graph at the bottom of Figure 2 shows an example control strategy 240.
  • a power requirement for the route to be traversed by the vessel has four different levels along the route; 270, 271 , 272 and 273. Initially the power requirement is rather low, then increases, before again returning to a low level.
  • the power outtake P1 increases when power requirement is high, while the power outtake P2 is kept rather constant.
  • the power outtake P2 could perhaps be from an electric driveline which is not very efficient at very high power outtakes, while the power outtake P1 could represent the use of a combustion engine.
  • FIG 3 illustrates an example system 300 where the techniques discussed herein can be implemented.
  • the system 300 comprises a number of optional input data sources 330-335, and generates one or more output signals 340, such as a rudder control signal 360, control signals for the vessel driveline 360, and also control signals for one or more auxiliary systems on the vessel, such as power take-outs and various forms of on-board equipment.
  • the system 300 may also be configured to receive manual input 390, i.e., various forms of configuration data and also direct controls.
  • a shore connection 395 may also be managed by the system 300.
  • the processing circuitry 510 and the storage device 520 will be discussed in more detail below in connection to Figure 5.
  • the system 300 gathers information from different sources, which may vary between systems and also over time.
  • One source of information may be useful for some inference tasks while another may be more useful for other tasks.
  • Some of the systems disclosed herein also comprise data source selection mechanisms. These mechanisms are realized by training using different types of data.
  • the system can also be configured to detect which data sources that are available, and perform the tasks based on the available information.
  • the primary sources of information are often GPS, compass data, and powertrain energy consumption data, i.e., fuel consumption or electrical energy consumption.
  • one or more secondary sources of information might be also available; for example, sonar, wind sensors or speed through water (sea current measurement sensor), as well as data indicating use of interceptors and/or water jets.
  • Sensors measuring the setup of the vessel can also be used, such as trim setup and load balancing, also factors like passengers onboard or cargo mass can be included in the models.
  • Online information e.g., received from the server 190 can be also used in parallel including: plotter information, wind data, sea current data, wave height data from weather forecast datasets. Energy consumption will be recorded by measuring different energy sources like main engines and axillary power. Rudder position can be used as input to the system 300 as well. Shore connection information (energy input from land) can be used to identify charging capacity and charging time.
  • AIS Automatic Identification System
  • the system 300 receives data input also from these other vessels, which can be used in the system 300. This data can, for instance, be received via the server 190.
  • the data obtained by the system 300 is stored and processed in the processor unit 510.
  • Data can also be sent to the server 190 via the wireless link and processed further, e.g., using a connectivity solution like Wi-Fi, satellite connection or 4G/5G cellular access.
  • the system 300 generally relies on a model of the vessel 100, which describes, e.g., its CO2 emission, running cost and long-term maintenance cost as function of the input data 330 comprising environment state variables such as wind, current, wave height, and the like.
  • This model can be realized as a low complexity look-up table which describes power requirements for given routes and emission data for given driveline control settings.
  • This look-up table can be populated by data collected from previous operations along the same or a similar route.
  • the model can also be more advanced, such as a neural network or the like, trained using data obtained from previous operations by the same vessel 100 or by a similar vessel.
  • the server 190 may collect data from one or more vessels and subsequently train the model based on the obtained data.
  • the route 210 to be traversed by the marine vessel 100 may be an a-priori known route.
  • A-priori known routes are routes which extend from one location to another location via a predetermined path (such as a ferry line).
  • Known routes may have been repeated enough in the past to enable creating a very accurate model for energy consumption for different environmental conditions, e.g., different wind, current and wave conditions.
  • energy consumption is also at least approximately known for different speed profiles given the different environmental conditions.
  • These states can be presented as a look-up table or using a model.
  • the model can be, e.g., a statistical model or a trained artificial intelligence structure like a neural network.
  • the outcome after the model has been generated can be a sort of look-up table. Then, if the current operation conditions that are experienced by the vessel do not exist in the model, an extrapolation can be performed.
  • the route 210 to be traversed by the marine vessel 100 may also be a route determined by a route planning method, based on a known start location and destination. This route is not deterministically known but can be inferred from a known start and destination. A user may for instance input a destination, such as a home harbor location, and the system then proposes a route from the current location of the vessel 100 to the desired destination. This route is not deterministically known, but still often very accurate.
  • the route to be travelled can be identified either by manual selection by user from a list of proposed routes, or by a separate model defining the most possible destination based on time, current location, and other relevant parameters.
  • the user can of course have the option to override the route identification.
  • the route suggested by the path planning tool can be determined based on minimization of a cost function, e.g., using path planning algorithm like the Dijkstra algorithm or some form of rapidly exploring random tree (RRT) algorithm.
  • the route planning is preferably updated if the vessel starts to deviate significantly from the preplanned path.
  • the route 210 to be traversed by the marine vessel 100 may be a route determined at least partly based on a current location of the marine vessel 100, on a prediction of destination based on previous routes traversed by the marine vessel 100, and on a route planning method based on current location and predicted destination.
  • the prediction can also be based on a date and/or time of day.
  • the prediction can also be based on a route travelled by the marine vessel 100 up to the current location.
  • An Al model can be trained based on a previously acquired dataset (GPS, time, and date), gathered at the model creation stage.
  • the model can be expanded based on other factors like user profile to personalize the selection.
  • the system continues to choose the most probable destination if there is no user overriding or by automatic deviation detection from the system. If the system has identified significant deviations from an assumed route, then a new destination can be estimated and selected by the model.
  • control strategy may need to be updated S4. If the destination changes either by detecting a deviation (outside tolerance level of the model) or by user input, then a new control strategy will be selected.
  • the route 210 to be traversed by the marine vessel 100 may be associated with one or more environment conditions of one or more route segments, such as wave height, current, and wind along the route 210. If such route conditions are known, then they can be considered in the determination of the control strategy.
  • Inputs of the model may comprise wind direction, wind speed, sea current strength and direction, as well as wave height and direction obtained either from onboard sensors or from online weather databases.
  • an energy model can be created based on either look-up tables or a statistical/AI model. These factors will be presented as overriding factors that will increase the fuel consumption from baseline where the baseline is calm sea.
  • the method may, according to an example, comprise determining S11 the total power requirement Ptotal at least in part based on a target speed profile of the marine vessel 100 along the route 210.
  • the desired speed to be maintained along the route influences the total power requirement. The faster the vessel travels the more power is required. The relationship between speed and power requirement is often complex, and seldom linear.
  • the model is preferably configured to reflect this dependency between desired speed and power requirements.
  • a power requirement can be predicted for every location in the travel route considering the environmental parameters. During the operation, the system will determine the energy need based on the remaining distance and time. This might lead to a recommendation of higher or lower speed, hence modifying the control strategy.
  • the method may, according to an example, comprise determining S12 the total power requirement Ptotal at least in part based on a target noise level of the hybrid driveline 110 along the route 210. If the vessel is passing certain areas where a maximum noise level is required, either by law or best practices, then noise will be considered as a constraint in determining a control strategy e.g., by relying only on low noise driveline like electric.
  • the power-to-emission relationship can at least partly be based on an obtained efficiency metric E1 , E2 for each driveline type and on respective constant conversion factors K1 , K2 for each driveline type, S21 .
  • Emission per unit of power can be calculated based on emission map from the supplier or by measuring the fuel consumption of the driveline. For electricity, emission can be calculated based on local source of energy.
  • the method may also comprise determining S31 the marine vessel hybrid driveline control strategy 240 as a solution to an optimization problem with an objective function formulated in terms of emission for a given power outtake distribution along the route 210.
  • the optimization can be based on various metrics, such as CO2 emission, running cost and long-term maintenance cost.
  • the optimization problem can of course also be solved by obtaining S311 the solution to the optimization problem from a machine learning (ML) algorithm, and/or by obtaining S312 the solution to the optimization problem from evaluating a pre-determined set of candidate control strategies.
  • ML machine learning
  • the method may comprise determining S32 the marine vessel hybrid driveline control strategy 240 based on a pre-determined set of candidate rules.
  • the method may also comprise determining S33 the marine vessel hybrid driveline control strategy 240 based on one or more constraints, where the constraints comprise any of: a maximum power outtake for each driveline type, a battery system state-of charge (SOC) a fuel tank level, a maximum noise level, and a driveline type specific start-up procedure.
  • constraints comprise any of: a maximum power outtake for each driveline type, a battery system state-of charge (SOC) a fuel tank level, a maximum noise level, and a driveline type specific start-up procedure.
  • the method may furthermore comprise determining S34 the marine vessel hybrid driveline control strategy 240 based on information related to energy replenishment locations along the route 210, e.g., whether there are charging stations for charging the electrical energy storage of the vessel available along the route 210 or not.
  • Charging stations along the route are used for a time that optimizes the cost of the travel in total. Longer stops for charging would increase travel time but allow for a better cost in terms of measurements, like CO2, noise, etc., this can then be optimized according to the active cost function.
  • FIG. 5 schematically illustrates, in terms of a number of functional units, the components of a control unit 500 according to embodiments of the discussions herein.
  • Processing circuitry 510 is provided using any combination of one or more of a suitable central processing unit CPU, multiprocessor, microcontroller, digital signal processor DSP, etc., capable of executing software instructions stored in a computer program product, e.g., in the form of a storage medium 530.
  • the processing circuitry 510 may further be provided as at least one application specific integrated circuit ASIC, or field programmable gate array FPGA.
  • the processing circuitry 510 is configured to cause the control unit 500 to perform a set of operations, or steps, such as the methods discussed in connection to Figure 4 and generally herein.
  • the storage medium 530 may store the set of operations
  • the processing circuitry 510 may be configured to retrieve the set of operations from the storage medium 530 to cause the control unit 500 to perform the set of operations.
  • the set of operations may be provided as a set of executable instructions.
  • the processing circuitry 510 is thereby arranged to execute methods as herein disclosed.
  • the storage medium 530 may also comprise persistent storage, which, for example, can be any single one or combination of magnetic memory, optical memory, solid state memory or even remotely mounted memory.
  • the control unit 500 may further comprise an interface 520 for communications with at least one external device.
  • the interface 520 may comprise one or more transmitters and receivers, comprising analogue and digital components and a suitable number of ports for wireline or wireless communication.
  • the processing circuitry 510 controls the general operation of the control unit 500, e.g., by sending data and control signals to the interface 520 and the storage medium 530, by receiving data and reports from the interface 520, and by retrieving data and instructions from the storage medium 530.
  • Other components, as well as the related functionality, of the control node are omitted in order not to obscure the concepts presented herein.
  • Figure 6 illustrates a computer readable medium 610 carrying a computer program comprising program code means 620 for performing the methods illustrated in Figure 4 and the techniques discussed herein, when said program product is run on a computer.
  • the computer readable medium and the code means may together form a computer program product 600.

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  • Engineering & Computer Science (AREA)
  • Radar, Positioning & Navigation (AREA)
  • Remote Sensing (AREA)
  • Chemical & Material Sciences (AREA)
  • Combustion & Propulsion (AREA)
  • Mechanical Engineering (AREA)
  • Ocean & Marine Engineering (AREA)
  • Automation & Control Theory (AREA)
  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Aviation & Aerospace Engineering (AREA)
  • Hybrid Electric Vehicles (AREA)

Abstract

La présente invention concerne un procédé mis en oeuvre par ordinateur pour déterminer une stratégie de commande de transmission hybride (110) de navire (100), la transmission hybride (110) comprenant au moins un premier type de transmission (130, 140) et un second type de transmission (150, 160) différent du premier type de transmission, la stratégie de commande comprenant une sortie de puissance du premier type de transmission (130, 140) et du second type de transmission (150, 160) le long d'un itinéraire à suivre par le navire marin (100), la stratégie de commande ayant une cible d'émission associée. Le procédé consiste à: déterminer une exigence de puissance totale pour le navire (100) le long de l'itinéraire à suivre, obtenir une relation puissance-émission pour chacun des types de transmission, une relation puissance-émission étant représentative d'une émission par le type de transmission lors du fonctionnement à une sortie de puissance donnée, et déterminer la stratégie de commande de transmission hybride de navire marin sur la base de l'exigence de puissance totale pour l'itinéraire et des relations puissance-émission, de telle sorte que la somme de sorties de puissance à partir des types de transmission est supérieure ou égale à l'exigence de puissance totale le long de l'itinéraire et telle que la somme d'émissions provenant des types de transmission satisfait la cible d'émission.
PCT/EP2023/075025 2022-09-20 2023-09-12 Commande optimisée d'un engin marin à transmission hybride WO2024061692A1 (fr)

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SE2230298-8 2022-09-20
SE2230298A SE2230298A1 (en) 2022-09-20 2022-09-20 Optimized control of hybrid driveline marine craft

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Citations (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20110320073A1 (en) 2010-06-24 2011-12-29 Abb Oy Method and arrangement for controlling energy consumption in a marine vessel
WO2020190279A1 (fr) * 2019-03-19 2020-09-24 Wärtsilä SAM Electronics GmbH Procédé et appareil pour la gestion d'énergie automatisée d'un vaisseau marin

Family Cites Families (3)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2008096376A1 (fr) * 2007-02-08 2008-08-14 Marorka Appareil et procédé de choix d'itinéraire
US20150274275A1 (en) * 2014-03-27 2015-10-01 Caterpillar Inc. Dynamic load-sharing power system
EP3980716B1 (fr) * 2019-06-04 2024-01-24 Wärtsilä Gas Solutions Norway AS Procédé et appareil pour la gestion d'itinéraire automatisée d'un véhicule nautique

Patent Citations (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20110320073A1 (en) 2010-06-24 2011-12-29 Abb Oy Method and arrangement for controlling energy consumption in a marine vessel
WO2020190279A1 (fr) * 2019-03-19 2020-09-24 Wärtsilä SAM Electronics GmbH Procédé et appareil pour la gestion d'énergie automatisée d'un vaisseau marin

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