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Predicting Bucket-Filling Control Actions of a Wheel-Loader Operator Using a Neural Network Ensemble

机译:使用神经网络集成预测轮式装载机操作员的铲斗填充控制动作

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Automatic bucket filling is an open problem since three decades. In this paper, we address this problem with supervised machine learning using data collected from manual operation. The range-normalized actuations of lift joystick, tilt joystick and throttle pedal are predicted using information from sensors on the machine and the prediction errors are quantified. We apply linear regression, k-nearest neighbors, neural networks, regression trees and ensemble methods and find that an ensemble of neural networks results in the most accurate predictions. The prediction root-mean-square-error (RMSE) of the lift action exceeds that of the tilt and throttle actions, and we obtain an RMSE below 0.2 for complete bucket fillings after training with as little as 135 bucket filling examples.
机译:自三十年以来,自动装桶一直是一个悬而未决的问题。在本文中,我们使用从手动操作收集的数据,通过有监督的机器学习解决了这个问题。电梯操纵杆,倾斜操纵杆和油门踏板的范围归一化致动使用来自机器上传感器的信息进行预测,并量化预测误差。我们应用线性回归,k最近邻,神经网络,回归树和集成方法,发现神经网络的集成可得出最准确的预测。提升动作的预测均方根误差(RMSE)超过倾斜动作和油门动作的均方根误差,经过最少135个铲斗加注示例的训练后,对于完全铲斗加注,我们获得的RMSE低于0.2。

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