Predictive energy management system for hybrid electric vehicles
First Claim
1. A method for providing power commands for a hybrid electric vehicle, said hybrid electric vehicle including an engine, at least one electric motor and a battery, said method comprising;
- providing a plurality of vehicle inputs of vehicle operation and vehicle environment, said plurality of vehicle inputs including time and day information;
forecasting a driving cycle profile for each sample of a series of N samples based on the vehicle inputs, wherein forecasting a driving cycle profile includes using driving history including the time and day information and a travel destination;
determining a sequence of driver power demands for each sample of a series of the N samples based on the plurality of vehicle inputs and the travel destination;
determining an optimum sequence of power commands for the at least one electric motor and the engine for the series of samples, wherein determining an optimum sequence of power commands includes using a plurality of constraint equations to minimize a total predicted fuel economy, wherein using a plurality of constraint equations includes employing a separate constraint equation for all of a difference between an initial and end of horizon state of battery charge, a battery charge power limit, a battery discharge power limit, a battery state of charge less than a maximum limit, a battery state of charge greater than a minimum limit, motor output power, engine performance and total emissions; and
selecting a current one of the power commands to operate the at least one electric motor and the engine.
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Abstract
A predictive energy management system for a hybrid vehicle that uses certain vehicle information, such as present location, time, 3-D maps and driving history, to determine engine and motor power commands. The system forecasts a driving cycle profile and calculates a driver power demand for a series of N samples based on a predetermined length of time, adaptive learning, etc. The system generates the optimal engine and motor power commands for each N sample based on the minimization of a cost function under constraint equations. The constraint equations may include a battery charge power limit, a battery discharge power limit, whether the battery state of charge is less than a predetermined maximum value, whether the battery state of charge is greater than a predetermined minimum value, motor power output and engine performance. The system defines the cost function as the sum of the total weighted predicted fuel consumed for each sample. The system then selects the motor and engine power commands for the current sample.
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Citations
18 Claims
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1. A method for providing power commands for a hybrid electric vehicle, said hybrid electric vehicle including an engine, at least one electric motor and a battery, said method comprising;
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providing a plurality of vehicle inputs of vehicle operation and vehicle environment, said plurality of vehicle inputs including time and day information; forecasting a driving cycle profile for each sample of a series of N samples based on the vehicle inputs, wherein forecasting a driving cycle profile includes using driving history including the time and day information and a travel destination; determining a sequence of driver power demands for each sample of a series of the N samples based on the plurality of vehicle inputs and the travel destination; determining an optimum sequence of power commands for the at least one electric motor and the engine for the series of samples, wherein determining an optimum sequence of power commands includes using a plurality of constraint equations to minimize a total predicted fuel economy, wherein using a plurality of constraint equations includes employing a separate constraint equation for all of a difference between an initial and end of horizon state of battery charge, a battery charge power limit, a battery discharge power limit, a battery state of charge less than a maximum limit, a battery state of charge greater than a minimum limit, motor output power, engine performance and total emissions; and selecting a current one of the power commands to operate the at least one electric motor and the engine. - View Dependent Claims (2, 3, 4, 5, 6, 7)
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8. A method for providing power commands for a hybrid electric vehicle, said hybrid electric vehicle including an engine, at least one electric motor and a battery, said method comprising:
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providing a plurality of vehicle inputs of vehicle operation and vehicle environment, wherein providing a plurality of vehicle inputs includes providing a plurality of vehicle inputs selected from the group consisting of vehicle location, time, day, 3-D map inputs, vehicle speed and accelerator pedal position; forecasting a driving cycle profile for each sample of a series of N samples based on the vehicle inputs, wherein forecasting a driving cycle profile includes using driving history for the time and day input and a final driving time to forecast the driving cycle profile; determining a sequence of driver power demands for each sample of the series of N samples based on the plurality of vehicle inputs and the travel destination; determining an optimum sequence of power commands for the at least one electric motor and the engine for the series of samples, wherein determining an optimum sequence of power commands includes determining an optimum sequence of power commands by defining a cost function based on minimizing a total predicted weighted fuel economy to be consumed for the N samples and using a plurality of constraint equations to minimize the total predicted fuel economy, wherein using a plurality of constraint equations includes employing a separate constraint equation for all of a difference between an initial and end of horizon state of battery charge, a battery charge power limit, a battery discharge power limit, a battery state of charge less than a maximum limit, a battery state of charge greater than a minimum limit, motor output power, engine performance and total emissions; and selecting a current one of the power commands to operate the at least one electric motor and the engine. - View Dependent Claims (9, 10, 11)
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12. A predictive energy management system for providing power commands in a hybrid electric vehicle, said hybrid electric vehicle including an engine, at least one electric motor and a battery, said controller comprising:
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a system for providing a plurality of vehicle inputs of vehicle operation and vehicle environment; a system for forecasting a driving cycle profile for each sample of a series of N samples based on the vehicle inputs, wherein the system for forecasting a driving cycle profile includes forecasting a driving cycle profile using driving history including the day and time information and a travel destination; a system for determining a sequence of driver power demands for each sample of a series of the N samples based on the plurality of vehicle inputs and the travel destination; a system for determining an optimum sequence of power commands for the at least one electric motor and the engine for the series of samples, wherein the system for determining an optimum sequence of power commands uses a plurality of constraint equations to minimize a total predicted fuel economy, wherein the plurality of constraint equations includes a separate constraint equation for all of a difference between an initial and end of horizon state of battery charge, a battery charge power limit, a battery discharge power limit, a battery state of charge less than a maximum limit, a battery state of charge greater than a minimum limit, motor output power, engine performance and total emissions; and a system for selecting a current one of the power commands to operate the at least one electric motor and the engine. - View Dependent Claims (13, 14, 15, 16, 17, 18)
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Specification