In order to realize the online learning of a hybrid electric vehicle (HEV) control strategy, a fuzzy Q-learning (FQL) method is proposed in this paper. FQL control strategies consists of two parts: The optimal action-value function Q*(x,u) estimator network (QEN) and the fuzzy parameters tuning (FPT). A back propagation (BP) neural network is applied to estimate Q*(x,u) as QEN. For the fuzzy controller, we choose a Sugeno-type fuzzy inference system (FIS) and the parameters of the FIS are tuned online based on Q*(x,u). The action exploration modifier (AEM) is introduced to guarantee all actions are tried. The main advantage of a FQL control strategy is that it does not rely on prior information related to future driving conditions and can s...
With the increasing demand of fuel and emission Hybrid Electric Vehicles (HEV) with dual power sourc...
The hybrid electrical vehicle (HEV) has draw researchers' attention recently. This paper mainly disc...
International audienceA novel Fuzzy rule value reinforcement learning based energy management strate...
The use of regenerative braking systems is an important approach for improving the travel mileage of...
This paper investigates a model-free supervisory control methodology with double Q-learning for the ...
This paper investigates a model-free supervisory control methodology with double Q-learning for the ...
This paper proposes a hybrid Zeigler-Nichols (Z-N) reinforcement learning approach for online tuning...
The present study investigates an energy management strategy based on reinforcement learning for ser...
This paper proposes a hybrid Zeigler-Nichols (Z-N) reinforcement learning approach for online tuning...
In this paper, a fuzzy PID control method based on Q-learning is proposed to control the motor so th...
Reinforcement Learning is the learning methodology whereby a learner develops its knowledge through ...
Since last century, the exhausts of fossil fuel energy, excessive gas emission and global warming ha...
Real-time drive cycles and driving trends have a vital impact on fuel consumption and emissions in a...
x, 120 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577M EIE 2003 DaiIn the last two d...
With the increasing demand of fuel and emission Hybrid Electric Vehicles (HEV) with dual power sourc...
With the increasing demand of fuel and emission Hybrid Electric Vehicles (HEV) with dual power sourc...
The hybrid electrical vehicle (HEV) has draw researchers' attention recently. This paper mainly disc...
International audienceA novel Fuzzy rule value reinforcement learning based energy management strate...
The use of regenerative braking systems is an important approach for improving the travel mileage of...
This paper investigates a model-free supervisory control methodology with double Q-learning for the ...
This paper investigates a model-free supervisory control methodology with double Q-learning for the ...
This paper proposes a hybrid Zeigler-Nichols (Z-N) reinforcement learning approach for online tuning...
The present study investigates an energy management strategy based on reinforcement learning for ser...
This paper proposes a hybrid Zeigler-Nichols (Z-N) reinforcement learning approach for online tuning...
In this paper, a fuzzy PID control method based on Q-learning is proposed to control the motor so th...
Reinforcement Learning is the learning methodology whereby a learner develops its knowledge through ...
Since last century, the exhausts of fossil fuel energy, excessive gas emission and global warming ha...
Real-time drive cycles and driving trends have a vital impact on fuel consumption and emissions in a...
x, 120 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577M EIE 2003 DaiIn the last two d...
With the increasing demand of fuel and emission Hybrid Electric Vehicles (HEV) with dual power sourc...
With the increasing demand of fuel and emission Hybrid Electric Vehicles (HEV) with dual power sourc...
The hybrid electrical vehicle (HEV) has draw researchers' attention recently. This paper mainly disc...
International audienceA novel Fuzzy rule value reinforcement learning based energy management strate...