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Learning-based tuning of supervisory model predictive control for drinking water networks

机译:基于学习的饮用水网络监督模型预测控制的优化

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摘要

This paper presents a constrained Model Predictive Control (MPC) strategy enriched with soft-control techniques as neural networks and fuzzy logic, to incorporate self-tuning capabilities and reliability aspects for the management of drinking water networks (DWNs). The control system architecture consists in a multilayer controller with three hierarchical layers: learning and planning layer, supervision and adaptation layer, and feedback control layer. Results of applying the proposed approach to the Barcelona DWN show that the quasi-explicit nature of the proposed adaptive predictive controller leads to improve the computational time, especially when the complexity of the problem structure can vary while tuning the receding horizons.
机译:本文提出了一种约束模型预测控制(MPC)策略,该策略丰富了诸如神经网络和模糊逻辑之类的软控制技术,以结合自调整功能和可靠性方面来管理饮用水网络(DWN)。控制系统架构包含一个具有三个层次结构的多层控制器:学习和计划层,监督和适应层以及反馈控制层。将提出的方法应用于Barcelona DWN的结果表明,提出的自适应预测控制器的准显着性质导致改进了计算时间,尤其是当问题结构的复杂性在调整后退视野时可能会变化时。

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