基于机器学习的车队油耗预测:比较研究

Sandareka Wickramanayake, H. D. Dilum Bandara
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引用次数: 42

摘要

在车队管理中,建立油耗模型和预测油耗的能力对于提高车辆的燃油经济性和防止欺诈行为至关重要。车辆的燃料消耗取决于几个内部因素,如距离、负载、车辆特性和驾驶员行为,以及外部因素,如道路状况、交通和天气。然而,并非所有这些因素都可以测量或可用于燃料消耗分析。我们考虑一种情况,其中只有上述因素的一个子集可以作为来自长途公共汽车的多变量时间序列。因此,挑战在于仅根据现有数据建模和/或预测燃料消耗,同时仍然间接地捕获其他内部和外部因素的尽可能多的影响。机器学习(ML)适合于这种分析,因为模型可以通过学习数据中的模式来开发。在本文中,在给定所有可用参数作为时间序列的情况下,我们比较了三种ML技术在预测公交车燃油消耗方面的预测能力。分析表明,与梯度增强和神经网络相比,随机森林技术的预测精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuel consumption prediction of fleet vehicles using Machine Learning: A comparative study
Ability to model and predict the fuel consumption is vital in enhancing fuel economy of vehicles and preventing fraudulent activities in fleet management. Fuel consumption of a vehicle depends on several internal factors such as distance, load, vehicle characteristics, and driver behavior, as well as external factors such as road conditions, traffic, and weather. However, not all these factors may be measured or available for the fuel consumption analysis. We consider a case where only a subset of the aforementioned factors is available as a multi-variate time series from a long distance, public bus. Hence, the challenge is to model and/or predict the fuel consumption only with the available data, while still indirectly capturing as much as influences from other internal and external factors. Machine Learning (ML) is suitable in such analysis, as the model can be developed by learning the patterns in data. In this paper, we compare the predictive ability of three ML techniques in predicting the fuel consumption of the bus, given all available parameters as a time series. Based on the analysis, it can be concluded that the random forest technique produces a more accurate prediction compared to both the gradient boosting and neural networks.
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