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Control of Urban Drainage Systems: Optimal Flow Control and Deep Learning in Action

机译:城市排水系统的控制:最佳流量控制和深度学习的实际应用

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A hierarchical control strategy is proposed to solve the optimal drainage problem in sewer systems by combining an optimization technique known as minimum scaled consensus control (MSCC) with the deep deterministic policy gradient (DDPG) algorithm. The MSCC strategy operates at the global control level, and is used to determine the flows of the hydraulic structures of the drainage system, such that the water is optimally distributed, i.e., wastewater flows are controlled to minimize saturation of water levels and/or flooding events, filling each of the drainage system components (e.g., pipes, tanks, wastewater treatment plants) proportionally to their capacity. On the other hand, the DDPG uses a model-free approach at the local control level, setting the drainage flows by operating valves and gates, without any knowledge of the inherent dynamics, so that it can be used to handle the nonlinearities of the system. Finally, a case study is presented to show the effectiveness of the proposed strategy.
机译:提出了一种分级控制策略,通过结合称为最小尺度共识控制(MSCC)的优化技术和深度确定性策略梯度(DDPG)算法来解决下水道系统中的最佳排水问题。 MSCC策略在全局控制级别上运行,用于确定排水系统水力结构的流量,从而使水得到最佳分配,即,控制废水流量以最大程度降低水位和/或洪水的饱和度事件中,排水系统的每个部件(例如管道,水箱,废水处理厂)均按其容量成比例地填充。另一方面,DDPG在本地控制级别使用无模型方法,通过操作阀门和闸门来设置排水流量,而无需任何固有动力学知识,因此可用于处理系统的非线性。最后,提出了一个案例研究,以显示所提出策略的有效性。

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