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Travel Time Prediction in a Multimodal Freight Transport Relation Using Machine Learning Algorithms

机译:使用机器学习算法在多模式货运关系中的旅行时间预测

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Accurate travel time prediction is of high value for freight transports, as it allows supply chain participants to increase their logistics quality and efficiency. It requires both sufficient input data, which can be generated, e.g., by mobile sensors, and adequate prediction methods. Machine Learning (ML) algorithms are well suited to solve non-linear and complex relationships in the collected tracking data. Despite that, only a minority of recent publications use ML for travel time prediction in multimodal transports. We apply the ML algorithms extremely randomized trees (ExtraTrees), adaptive boosting (AdaBoost), and support vector regression (SVR) to this problem because of their ability to deal with low data volumes and their low processing times. Using different combinations of features derived from the data, we have built several models for travel time prediction. Tracking data from a real-world multimodal container transport relation from Germany to the USA are used for evaluation of the established models. We show that SVR provides the best prediction accuracy, with a mean absolute error of 17 h for a transport time of up to 30 days. We also show that our model performs better than average-based approaches.
机译:准确的旅行时间预测是货运运输的高价值,因为它允许供应链参与者提高其物流质量和效率。它需要足够的输入数据,可以生成,例如,通过移动传感器和足够的预测方法。机器学习(ML)算法非常适合于在收集的跟踪数据中解决非线性和复杂的关系。尽管如此,只有少数最近的出版物使用ML用于多式联运运输中的旅行时间预测。我们应用ML算法非常随机树木(外表),自适应升压(Adaboost),并支持向往的向量回归(SVR),因为它们能够处理低数据量及其低处理时间。使用来自数据的不同特征的不同组合,我们已经建立了多种用于旅行时间预测的模型。跟踪从德国到美国的现实多模式集装箱运输关系的数据用于评估已建立的模型。我们表明SVR提供了最佳的预测精度,其平均绝对误差为17小时,运输时间长达30天。我们还表明,我们的模型比基于平均水平的方法更好。

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