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Research on Vibration Reduction Control Based on Reinforcement Learning

机译:基于钢筋学习的减振控制研究

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Magnetorheological (MR) dampers, as an intelligent vibration damping device, can quickly change the damping size of the material in milliseconds. The traditional semiactive control strategy cannot give full play to the ability of the MR dampers to consume energy and reduce vibration under different currents, and it is difficult to control the MR dampers accurately. In this paper, a semiactive control strategy based on reinforcement learning (RL) is proposed, which is based on “exploring” to learn the optimal value of the MR dampers at each step of the operation, the applied current value. During damping control, the learned optimal action value for each step is input into the MR dampers so that they provide the optimal damping force to the structure. Applying this strategy to a two-layer frame structure was found to provide more accurate control of the MR dampers, significantly improving the damping effect of the MR dampers.
机译:磁流变(MR)阻尼器作为智能振动阻尼装置,可以快速将材料的阻尼尺寸以毫秒为单位。 传统的半导体控制策略不能充分发挥MR DAMPERS在不同电流下消耗能量和减少振动的能力,并且难以准确控制MR阻尼器。 在本文中,提出了一种基于加强学习(RL)的半导体控制策略,其基于“探索”来学习操作的每个步骤的MR阻尼器的最佳值,所施加的电流值。 在阻尼控制期间,每个步骤的学习最佳动作值被输入到MR阻尼器中,使得它们向结构提供最佳阻尼力。 发现将该策略应用于双层框架结构,以提供更准确的MR阻尼器控制,显着提高MR阻尼器的阻尼效果。

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