Air Supply System Control of PEM Fuel Cell for Electric Vehicle Application Based on Multi-layer Prediction Strategy

Ya-Xiong Wang, Jinzhou Chen, Hongwen He
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引用次数: 2

Abstract

Proton exchange membrane (PEM) fuel cell engine has many advantages, including high energy density, high efficiency, low operation temperature, and zero emissions, which is a promising application to electric vehicles. In this paper, a multi-layer prediction control strategy for air supply system of a full-power PEM fuel cell electric vehicle is proposed, and a mathematical model of PEMF fuel cell engine air supply system is established in MATLAB/Simulink environment. The control scheme of the proposed multi-layer prediction strategy is that the top-layer model prediction is used for predicting the driving condition (speed of the vehicle) to obtain the desired air mass flow rate, and the bottom-layer air flow model prediction control (MPC) can adopt the top-layer airflow demand to regulate the oxygen excess ratio of PEM fuel cell engine. The proposed control strategy can meet the needs of the fuel cell stack reaction of oxygen as well as prevent air starvation that might occur in PEM fuel cell electric vehicle during driving conditions variation.
基于多层预测策略的PEM燃料电池电动汽车送风系统控制
质子交换膜(PEM)燃料电池发动机具有能量密度高、效率高、工作温度低、零排放等优点,在电动汽车上具有广阔的应用前景。提出了一种全功率PEM燃料电池汽车送风系统的多层预测控制策略,并在MATLAB/Simulink环境下建立了PEMF燃料电池发动机送风系统的数学模型。所提出的多层预测策略的控制方案是,利用顶层模型预测预测车辆的行驶状态(车速),得到期望的空气质量流量,底层空气流量模型预测控制(MPC)采用顶层气流需求来调节PEM燃料电池发动机的氧气过剩比。所提出的控制策略既能满足燃料电池堆氧反应的需要,又能防止PEM燃料电池电动汽车在行驶工况变化过程中可能出现的空气饥饿问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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