Automotive Gear-Shifting Decision Making Based on Neural Network Computation Model

Jingxing Tan, Xiaofeng Yin, Liang Yin, Ling Zhao
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引用次数: 1

Abstract

Precise description of the engine dynamic characteristics plays a crucial role in automatic gear-shifting decision making for the performance match and optimization of vehicle power-train system. In this paper, a multi-layer feed forward neural network was proposed to identify the dynamic torque and fuel consumption models of engine. Based on the neural network models, algorithms to calculate the optimal dynamic and economical gear-shifting rules were constructed respectively. Comparative tests show that the gear-shifting decision based on neural network computation models is better than that based on traditional computation model using curve approximation, and improves the dynamic performance and fuel economy of vehicle power-train system significantly.
基于神经网络计算模型的汽车换挡决策
发动机动态特性的准确描述对于车辆动力传动系统性能匹配和优化的自动换挡决策具有至关重要的作用。本文提出了一种多层前馈神经网络来识别发动机的动态扭矩和油耗模型。在神经网络模型的基础上,分别构建了计算最优动态换挡规则和最优经济性换挡规则的算法。对比试验表明,基于神经网络计算模型的换挡决策优于基于曲线逼近的传统计算模型,显著提高了汽车动力总成系统的动力性能和燃油经济性。
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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