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基于Elman神经网络的汽油机过渡工况空燃比多步预测模型
引用本文:侯志祥,申群太,吴义虎,周育才.基于Elman神经网络的汽油机过渡工况空燃比多步预测模型[J].中南大学学报(自然科学版),2006,37(5):981-985.
作者姓名:侯志祥  申群太  吴义虎  周育才
作者单位:1. 中南大学,信息科学与工程学院,湖南,长沙,410083;长沙理工大学,汽车与机械工程学院,湖南,长沙,410076
2. 中南大学,信息科学与工程学院,湖南,长沙,410083
3. 长沙理工大学,汽车与机械工程学院,湖南,长沙,410076
4. 长沙理工大学,汽车与机械工程学院,湖南,长沙,410076;中南大学,机电工程学院,湖南,长沙,400083
摘    要:为了减小车用汽油机空燃比传输延迟对空燃比控制精度的影响,提出一种基于Elman神经网络的空燃比多步预测模型.通过对空燃比数学模型的分析,确定神经网络空燃比多步预测模型的输入向量,同时,为了提高过渡工况空燃比预测精度,在神经网络输入向量中增加反映空燃比变化趋势的导数信息.对HL495发动机过渡工况实验数据进行学习,采用梯度算法对Elman神经网络的权值进行调整.研究结果表明:采用该方法能精确预测过渡工况空燃比,预测模型的最大误差小于1%,平均误差小于0.5%.该预测模型可用于实现车用汽油机过渡工况空燃比的精确控制,提高车用汽油机过渡工况排放性能.

关 键 词:汽油机  过渡工况  空燃比  Elman神经网络  多步预测
文章编号:1672-7207(2006)05-0981-05
收稿时间:2006-02-28
修稿时间:2006年2月28日

Multi-step predictive model of air fuel ratio of gasoline engine based on Elman neural network in transient condition
HOU Zhi-xiang,SHEN Qun-tai,WU Yi-hu,ZHOU Yu-cai.Multi-step predictive model of air fuel ratio of gasoline engine based on Elman neural network in transient condition[J].Journal of Central South University:Science and Technology,2006,37(5):981-985.
Authors:HOU Zhi-xiang  SHEN Qun-tai  WU Yi-hu  ZHOU Yu-cai
Institution:1. School of Information Science and Engineering, Central South University, Changsha 410083, China; 2. College of Automobile and Mechanical Engineering, Changsha University of Science and Technology, Changsha 410076, China; 3. School of Mechanical and Electrical Engineering, Central South University, Changsha 410083, China
Abstract:A multi-step predictive model of air fuel ratio was provided to overcome the influence of air fuel ratio transmission delay on air fuel ratio control accuracy. Input vector of neural network multi-step predictive model was determined by the maths model of air fuel ratio, and derivation of air fuel ratio reflecting the air fuel ratio tendency was included within input vector to improve the prediction accuracy in transient conditions. The simulation was accomplished using experiment data of HL495 gasoline engine, and weight values of Elman neural networks were adjusted by gradient algorithm. The results show the multi-step predictive model can be used to predict accurately air fuel ratio during transient condition and maximum error of prediction model is below 1% and average error is below 0.5%. The model can be used to accurately control air fuel ratio and improve the emission for gasoline engine in transient conditions.
Keywords:gasoline engine  transient condition  air fuel ratio  Elman neural networks  multistep prediction
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