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A Machine Learning Approach Applied to Energy Prediction in Job Shop Environments

机译:一种机器学习方法,用于车间作业环境中的能量预测

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摘要

Energy efficiency has become a great challenge for manufacturing companies. Although it is possible to improve efficiency applying new and more efficient machines, decision makers tend to look for some less expensive alternatives. In this context, the adoption of more efficient strategies during the production planning can allow the reduction in energy consumption and associated emissions. Furthermore, the current reality of manufacturing companies, brought by Industry 4.0 concepts, requires more flexibility of production systems, thus, increasing complexity for machine rescheduling without compromising sustainable requirements. In this paper, we propose a method to predict total energy consumption in job shop systems applying machine learning techniques. Different schedules may result in different consumption rates. However, there is a nonlinear relationship between these targets. Therefore, an Artificial Neural Network (ANN) is applied for a quick estimation of total energy consumption. In order to validate the model, computational experiments, using digital manufacturing software tools, are performed on different job shop configurations to show the efficiency of the proposed model.
机译:能源效率已成为制造公司的巨大挑战。尽管使用新的和更高效的机器可以提高效率,但是决策者倾向于寻找一些更便宜的替代方案。在这种情况下,在生产计划中采用更有效的策略可以减少能耗和相关排放。此外,由工业4.0概念带来的制造公司的当前现实要求生产系统具有更大的灵活性,因此,在不影响可持续性要求的情况下,增加了机器重新计划的复杂性。在本文中,我们提出了一种应用机器学习技术预测车间系统总能耗的方法。不同的时间表可能会导致不同的消费率。但是,这些目标之间存在非线性关系。因此,将人工神经网络(ANN)用于总能耗的快速估算。为了验证模型,使用数字制造软件工具对不同的车间配置进行了计算实验,以证明所提出模型的效率。

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