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A Knowledge-based reinforcement learning control approach using deep Q network for cooling tower in HVAC systems

机译:一种基于知识的加强学习控制方法,利用HVAC系统冷却塔的深Q网络

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In order to improve the control performance of the complex mechatronic system, like the cooling tower in HVAC systems, a data-driven control approach based on model-free deep reinforcement learning method is proposed. The deep Q network (DQN) method, as one of the approaches in reinforcement learning (RL) scheme, can learn and obtain robust feedback control laws by using direct interaction data from the environment. At the same time, radial basis function neural network (RBFNN) is used for the design of deep Q network. Furthermore, the prior knowledge is used to develop an exploration strategy for the RL controller. And the strategy can guide the RL controller to explore the action space, which leads reduction on the training time as compared to traditional DQN controller. At last, the results of simulation show that the DQN controller can achieve lower Integral Absolute Error (IAE) and Integral Square Error (ISE) compared to Proportional integral (PI) controller.
机译:为了提高复杂机电系统的控制性能,如HVAC系统中的冷却塔,提出了一种基于无模型深增强学习方法的数据驱动控制方法。 Deep Q网络(DQN)方法作为加强学习(RL)方案的方法之一,可以通过使用来自环境的直接交互数据来学习和获取强大的反馈控制定律。同时,径向基函数神经网络(RBFNN)用于深度Q网络的设计。此外,先验知识用于开发RL控制器的探索策略。该策略可以指导RL控制器探索动作空间,与传统DQN控制器相比,培训时间降低。最后,模拟结果表明,与比例积分(PI)控制器相比,DQN控制器可以实现较低的积分绝对误差(IAE)和整体方误差(ISE)。

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