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Implementation of machine learning based real time range estimation method without destination knowledge for BEVs

机译:基于机器学习的实时范围估计方法的实现,无目的地知识对BEVS

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In this work, an advanced range estimation method based on experimental test data including environmental factors and dynamic vehicle parameters with driver and road type predictions is proposed for electric vehicles.The focus point of the given study is to predict remaining range in general, at first start-up, without knowing future driving profile, in terms of giving an idea of how much distance can be travelled with the remaining amount of energy. Road type and driver profile are estimated by utilizing decision tree method and periodogram of jerk trace, respectively. Based on the preliminary results, utilized decision tree algorithm classifies the road type with an accuracy over 98%.Vehicle range is estimated online by using machine learning algorithm based on experimental train data sets where chassis dynamometer tests were conducted by performing specific driving cycle in various conditions. For a real life verification, the vehicle is driven for a 50.4 km distance in a road having mostly urban driving characteristics. The results of real life measurements show that the proposed method predicts range with a low margin of error and estimates final remaining capacity 11.3% better than rated one. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在这项工作中,为电动车提出了一种基于实验测试数据的先进范围估计方法,包括环境因素和动态车辆参数与驾驶员和道路类型预测。给定研究的焦点是预测一般的剩余范围,起初在不了解未来的驾驶简档的情况下,初创公司就可以了解可以使用剩余的能量量的距离达到多少距离。通过利用决策树方法和JERK跟踪的循序线来估计道路类型和驱动程序轮廓。基于初步结果,利用决策树算法通过使用基于实验列车数据集的机器学习算法在线估计了98%的准确度,以超过98%的准确度进行了精确的道路类型。使适应。对于真实的验证,车辆被驱动为50.4公里的道路,主要是城市驾驶特性的道路。实际测量结果表明,该方法预测误差幅度低,估计比额定值更好的最终剩余容量11.3%。 (c)2019 Elsevier Ltd.保留所有权利。

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