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Reinforcement learning for energy reduction of conveying and handling systems

机译:输送和处理系统节能的强化学习

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One important reason for wasting energy in manufacturing processes is that individual plant components often consume too much energy despite not being needed for production or nothing being produced at that moment. The implementation of standby-strategies in the PLC to switch each component into an optimal energetic state is applied seldom due to the great programming effort. This is because there are many functional dependencies between the plant components and therefor the PLC program must be adapted manually to the respective manufacturing process. The presented solution shows an intelligent system, which can adapt to plant-specific process requirements and derive decisions about the optimal energetic state of each component autonomously. In this paper, we provide an approach that uses reinforcement learning algorithms, which train on virtual plant models. The results are verified on a conveying and handling system in our learning factory.
机译:在制造过程中浪费能源的一个重要原因是,尽管生产不需要或当时没有生产,但单个工厂组件往往消耗太多能源。由于大量编程工作,很少在PLC中实施备用策略,以将每个组件切换到最佳能量状态。这是因为工厂组件之间存在许多功能依赖性,因此必须手动调整PLC程序以适应各自的制造工艺。所提出的解决方案展示了一个智能系统,该系统能够适应工厂特定的工艺要求,并自主得出关于每个组件最佳能量状态的决策。在本文中,我们提供了一种使用强化学习算法的方法,该算法在虚拟植物模型上进行训练。结果在我们学习工厂的输送和处理系统上得到了验证。

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