Application of algorithmic models of machine learning to the freight transportation process

V. Kotenko
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引用次数: 1

Abstract

The results of the analysis of algorithmic models of machine learning application to the freight transportation process are given in this paper. Analysis of existing research allowed discovering a range of advantages in the application of computational intelligence in logistic systems, including increasing the accuracy of forecasting, reduction of transport costs, increasing the efficiency of cargo delivery, risks reduction, and search for key performance factors. In the research process, the main directions of application of algorithmic models of machine learning were determined. They are vehicle routing, choice of cargo type, transportation type and vehicle type; forecasting fuel consumption by vehicles, disruptions in transportation, transport costs, duration of the order fulfillment; evaluation of the rolling stock fleet and the efficiency of carrying out the transport task. Based on the researched publications, the most common algorithmic models of machine learning in freight transportation were identified, and their effectiveness was analyzed. Linear and logistic regression models are simple enough; however, they do not always provide high simulation results. Deep learning models are quite widely applied to all identified areas. Decision tree and random forest models often show the highest simulation performance. Models of k-nearest neighbors and support vectors should be used both in classification tasks, for example, in choosing the type of cargo and type of transportation, and for forecasting the fuel consumption and the duration of the transport process.
机器学习算法模型在货运过程中的应用
本文给出了机器学习算法模型在货物运输过程中的应用分析结果。通过对现有研究的分析,可以发现计算智能在物流系统中应用的一系列优势,包括提高预测的准确性、降低运输成本、提高货物交付的效率、降低风险和寻找关键绩效因素。在研究过程中,确定了机器学习算法模型的主要应用方向。车辆路线、货种、运输方式、车辆类型的选择;预测车辆油耗、运输中断、运输成本、订单完成时间;车辆车队的评估和执行运输任务的效率。在已有研究成果的基础上,确定了货物运输中最常用的机器学习算法模型,并对其有效性进行了分析。线性和逻辑回归模型足够简单;然而,它们并不总是提供高模拟结果。深度学习模型被广泛应用于所有已确定的领域。决策树和随机森林模型通常表现出最高的模拟性能。k近邻模型和支持向量模型既可以用于分类任务,例如选择货物类型和运输类型,也可以用于预测燃料消耗和运输过程的持续时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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