使用机器学习的无模型道路摩擦估计

William J. B. Midgley, James Fleming, Mohammad Otoofi
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引用次数: 1

摘要

不同的机器学习方法(卷积神经网络、浅层神经网络、长短期记忆网络和袋装决策树集合)在模拟数据上进行训练,利用现成的传感器信号提供无模型的轮胎路面摩擦特性估计。卷积神经网络和浅层神经网络在以前未见过的测试数据集合上表现最好。当在预测器的输入值中加入典型噪声时,预测的准确性会下降。为了避免这种情况,预测器在有噪声的数据上进行了重新训练,使它们对有噪声的输入数据更加鲁棒,并在均方根误差(RMSE)性能上显示出明显的改善。同样,卷积神经网络和浅层神经网络表现最好。这表明建立一个无模型的轮胎路面摩擦预测器是可能的,并且可以产生有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model-free Road Friction Estimation using Machine Learning
different machine learning methods (a convolutional neural network, a shallow neural network, a long short-term memory network and an ensemble of bagged decision trees) were trained on simulation data to provide model-free estimates of tyre-road friction properties using readily available sensor signals. The convolutional neural network and shallow neural network had the best performance on a previously unseen ensemble of test data. When typical noise was added to the predictors’ input values, the accuracy of the predictions decreased. To avoid this, the predictors were re-trained on noisy data, making them much more robust to noisy input data and showed marked improvement in root mean square error (RMSE) performance. Again, the convolutional neural network and shallow neural network had the best performance. This shows that building a model-free tyre-road friction predictor is possible and can yield promising results.
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