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A robust, data-driven methodology for real-world driving cycle development

机译:强大的,由数据驱动的方法,可用于实际的驾驶周期开发

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摘要

This paper develops a robust, data-driven Markov Chain method to capture real-world behaviour in a driving cycle without deconstructing the raw velocity-time sequence. The accuracy of the driving cycles developed using this method was assessed on nine metrics as a function of the number of velocity states, driving cycle length and number of Markov repetitions. The road grade was introduced using vehicle specific power and a velocity penalty. The method was demonstrated on a corpus of 1180 km from a trial of electric scooters. The accuracies of the candidate driving cycles depended most strongly on the number of Markov repetitions. The best driving cycle used 135 velocity modes, was 500 s and captured the corpus behaviour to within 5% after 1,000,000 Markov repetitions. In general, the best driving cycle reproduced the corpus behaviour better when road grade was included.
机译:本文开发了一种鲁棒的,数据驱动的马尔可夫链方法,可在不破坏原始速度-时间序列的情况下捕获驾驶循环中的实际行为。使用此方法开发的驾驶循环的准确性是根据九种指标进行评估的,这些指标是速度状态数量,驾驶循环长度和马尔可夫重复次数的函数。道路坡度是根据车辆的特定功率和速度损失引入的。电动踏板车试验在1180 km的语料库上演示了该方法。候选驾驶循环的准确性主要取决于马尔可夫重复次数。最佳驾驶循环使用135种速度模式,为500 s,并在重复1,000,000次马尔可夫后将语料库行为捕获到5%以内。一般而言,当包括道路坡度时,最佳驾驶循环可以更好地重现语料库行为。

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