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Matching experts' decisions in concrete delivery dispatching centers by ensemble learning algorithms: Tactical level

机译:通过集成学习算法匹配具体交付调度中心中的专家决策:战术级别

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Ready Mixed Concrete (RMC) suffers from a lack of practical solutions for automatic resource allocation. Under these circumstances, RMC dispatching systems are mostly handled by experts. This paper attempts to introduce a machine learning based method to automatically match experts' decisions in RMC. For this purpose, seven machine learning techniques with their boosted algorithms were selected. A set of attributes was extracted from the collected field data. Eleven metrics were used to assess the performance of the selected techniques using different approaches. Due to concerns about randomness, significant testing was performed to assist in finding the best algorithm for this purpose. Results show that Random-Forest with 85% accuracy outperforms the other selected techniques. One of the most interesting achieved results is related to the computing time. The results show that all the selected algorithms can solve large-scale depot allocations with a very short computing time. This is possibly because a model built by a machine learning algorithm only needs to be tested with new instances, which does not need an extensive computation effort. This provides us with a, chance to move toward automation in Ready Mixed Concrete Dispatching Problems (RMCDPs), especially for those RMCs with dynamic environments where resource allocation might need to be quickly recalculated during the RMC process due to changes in the system. (C) 2016 Elsevier B.V. All rights reserved.
机译:预拌混凝土(RMC)缺乏自动资源分配的实际解决方案。在这种情况下,RMC调度系统主要由专家处理。本文试图介绍一种基于机器学习的方法,以自动匹配RMC中专家的决策。为此,选择了七种具有增强算法的机器学习技术。从收集的现场数据中提取了一组属性。使用11种度量标准来评估使用不同方法的所选技术的性能。由于担心随机性,因此进行了重要的测试以帮助找到最佳的算法。结果表明,随机森林的准确率达到85%,优于其他选择的技术。获得的最有趣的结果之一与计算时间有关。结果表明,所有选择的算法都可以在很短的计算时间内解决大规模的仓库分配问题。这可能是因为由机器学习算法构建的模型仅需要使用新实例进行测试,而无需大量的计算工作。这为我们提供了一个机会,可以在预拌混凝土调度问题(RMCDP)中实现自动化,特别是对于那些具有动态环境的RMC,由于系统的更改,在RMC过程中可能需要快速重新计算资源分配。 (C)2016 Elsevier B.V.保留所有权利。

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