Feasibility Study of Wheel Torque Prediction with a Recurrent Neural Network Using Vehicle Data

Miriam Weinkath, Simon Nett, Chong Dae Kim
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Abstract

In this paper, we present a feasibility study on predicting the torque signal of a passenger car with the help of a neural network. In addition, we analyze the possibility of using the proposed model structure for temperature prediction. This was carried out with a neural network, specifically a three-layer long short-term memory (LSTM) network. The data used were real road load data from a Jaguar Land Rover Evoque with a Twinster gearbox from GKN. The torque prediction generated good results with an accuracy of 55% and a root mean squared error (RMSE) of 49 Nm, considering that the data were not generated under laboratory conditions. However, the performance of predicting the temperature signal was not satisfying with a coefficient of determination (R2) score of −1.396 and an RMSE score of 69.4 °C. The prediction of the torque signal with the three-layer LSTM network was successful but the transferability of the network to another signal (temperature) was not proven. The knowledge gained from this investigation can be of importance for the development of virtual sensor technology.
基于车辆数据的递归神经网络车轮转矩预测的可行性研究
本文研究了利用神经网络预测乘用车转矩信号的可行性。此外,我们还分析了使用所提出的模型结构进行温度预测的可能性。这是通过一个神经网络来完成的,具体来说是一个三层长短期记忆(LSTM)网络。使用的数据是捷豹路虎极光与GKN的Twinster变速箱的真实道路负载数据。考虑到数据不是在实验室条件下生成的,扭矩预测产生了良好的结果,精度为55%,均方根误差(RMSE)为49 Nm。然而,预测温度信号的性能并不令人满意,决定系数(R2)得分为- 1.396,RMSE得分为69.4°C。利用三层LSTM网络成功预测了转矩信号,但未证明网络对另一信号(温度)的可转移性。从该研究中获得的知识对虚拟传感器技术的发展具有重要意义。
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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