Abstract

A hybrid electric vehicle (HEV) is a product that can greatly alleviate problems related to the energy crisis and environmental pollution. However, replacing such a battery will increase the cost of usage before the end of the life of a HEV. Thus, research on the multi-objective energy management control problem, which aims to not only minimize the gasoline consumption and consumed electricity but also prolong battery life, is necessary and challenging for HEV. This paper presents an adaptive equivalent consumption minimization strategy based on a recurrent neural network (RNN-A-ECMS) to solve the multi-objective optimal control problem for a plug-in HEV (PHEV). The two objectives of energy consumption and battery loss are balanced in the cost function by a weighting factor that changes in real time with the operating mode and current state of the vehicle. The near-global optimality of the energy management control is guaranteed by the equivalent factor (EF) in the designed A-ECMS. As the determined EF is dependent on the optimal co-state of the Pontryagin’s minimum principle (PMP), which results in the online ECMS being regarded as a realization of PMP-based global optimization during the whole driving cycle. The time-varying weight factor and the co-state of the PMP are map tables on the state of charge (SOC) of the battery and power demand, which are established offline by the particle swarm optimization (PSO) algorithm and real historical traffic data. In addition to the mappings of the weight factor and the major component of the EF linked to the optimal co-state of the PMP, the real-time performance of the energy management control is also guaranteed by the tuning component of the EF of A-ECMS resulting from the Proportional plus Integral (PI) control on the deviation between the battery SOC and the optimal trajectory of the SOC obtained by the Recurrent Neural Network (RNN). The RNN is trained offline by the SOC trajectory optimized by dynamic programming (DP) utilizing the historical traffic data. Finally, the effectiveness and the adaptability of the proposed RNN-A-ECMS are demonstrated on the test platform of plug-in hybrid electric vehicles based on GT-SUITE (a professional integrated simulation platform for engine/vehicle systems developed by Gamma Technologies of US company) compared with the existing strategy.

Highlights

  • Nowadays, the growing energy dilemma and environmental problem are initiating a revolution and innovation within the automobile industry

  • Linked to the optimal co-state of the pontryagin’s minimum principle (PMP), the real-time performance of the energy management control is guaranteed by the tuning component of the equivalent factor (EF) of A-equivalent consumption minimization strategy (ECMS) resulting from the Proportional plus Integral (PI) control on the deviation between the battery state of charge (SOC) and the optimal trajectory of the SOC obtained by the Recurrent Neural Network (RNN)

  • The effectiveness and the adaptability of the proposed RNN-adaptive equivalent consumption minimization strategy (A-ECMS) are demonstrated on the test platform of plug-in hybrid electric vehicles based on GT-SUITE compared with the existing strategy

Read more

Summary

Introduction

The growing energy dilemma and environmental problem are initiating a revolution and innovation within the automobile industry. It should be noted that it is necessary to keep a balance between fuel consumption and battery capacity loss in the design of the energy management control strategy for the economy of PHEV, while the designed management strategy should be integrated to global near optimization and the real-time performance. Both a globally sub-optimal and implementable energy management strategy, so-called recurrent neural network-based adaptive equivalent consumption minimization strategy (RNN-A-ECMS), is proposed in this paper for a power-split PHEV considering the battery life.

PHEV Model Description
Optimization Problem Formulation
RNN-Based Adaptive Energy Management Strategy
Prediction Model of SOC Reference of RNN
Control Parameters Optimization Based on PSO-PMP
Simulation Verification on GT-SUITE Test Platform
Findings
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call