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A Recommender Subsystem Construction for Calculating the Probability of a Violation by a Locomotive Driver using Machine-learning Algorithms

机译:推荐子系统构造,用于使用机学习算法来计算机车驾驶员的违规概率

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This article describes the issues of analysis and assessment of the human factor for predicting the violation committed by the locomotive driver when driving the electric rolling stock. An intelligent system overview for assessing the likelihood of a violation by a locomotive driver is given. Such a system can generate recommendations depending on previously committed violations. One of the tasks is to reduce the risk of locomotive safety devices malfunctions, which are part of the locomotive electrical equipment. The solution to the problem of predicting the occurrence of possible violations is solved using tools and machine learning algorithms. A model has been built that generates recommendations for the driver based on information about previously committed violations and several static characteristics of the locomotive driver.
机译:本文介绍了分析和评估人为因素的问题,以预测机车驾驶员在驾驶电动车辆时犯下的违规行为。给出了用于评估机车驾驶员违规可能性的智能系统概述。这样的系统可以根据先前犯下的违规产生建议。任务之一是减少机车安全装置故障的风险,机车安全装置是机车电气设备的一部分。使用工具和机器学习算法解决了预测可能发生的违规问题的解决方案。已经建立了一个模型,该模型基于有关先前犯下的违规信息和机车驾驶员的若干静态特征的信息,为驾驶员提供建议。

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