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A machine learning-based framework for data mining and optimization of a production system

机译:基于机器学习的数据挖掘框架和生产系统的优化

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In the present paper, we performed several decision tree algorithms to classify instances and represent the most efficient policies depicted by a hybrid reinforcement learning algorithm and treat a complex production, maintenance and quality control optimization problem within a degrading manufacturing and remanufacturing system. The constructed decision trees contained of nodes, which represent its independent variables, and leaves that stand for the set of function values. All optimization parameters and optimal policies found by the hybrid reinforcement learning algorithm, used as the training set for the trees algorithms. After the construction of each tree, the resulting rule used to treat the optimization problem and the performance of each rule compared. In addition, for the best performing trees algorithms, further investigation performed for the impact of their parameters to its rule effectivity.
机译:在本文中,我们执行了几个决策树算法以对实例进行分类,并且代表混合强化学习算法所描绘的最有效的策略,并在降解制造和再制造系统中处理复杂的生产,维护和质量控制优化问题。 包含在节点的构建决策树,其代表其独立变量,以及留出函数值的叶子。 混合强化学习算法的所有优化参数和最佳策略,用作树木算法的训练集。 在构建每棵树之后,由此产生的规则用于治疗优化问题和每个规则的性能。 此外,对于最佳性能的树木算法,进一步调查对其参数对其规则效果的影响进行了进一步的研究。

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