2023
DOI: 10.21741/9781644902714-51
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Reinforcement learning for energy-efficient control of multi-stage production lines with parallel machine workstations

A. Loffredo

Abstract: Abstract. An effective approach to enhancing the sustainability of production systems is to use energy-efficient control (EEC) policies for optimal balancing of production rate and energy demand. Reinforcement learning (RL) algorithms can be employed to successfully control production systems, even when there is a lack of prior knowledge about system parameters. Furthermore, recent research demonstrated that RL can be also applied for the optimal EEC of a single manufacturing workstation with parallel machines… Show more

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