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Weight optimisation for iterative distributed model predictive control applied to power networks

机译:应用于电网的迭代分布模型预测控制权重优化

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This paper presents a weight tuning technique for iterative distributed Model Predictive Control (MPC). Particle Swarm Optimisation (PSO) is used to optimise both the weights associated with disturbance rejection and those associated with achieving consensus between control agents. Unlike centralised MPC, where tuning focuses solely on disturbance rejection performance, iterative distributed MPC practitioners must concern themselves with the trade off between disturbance rejection and the overall communication overhead when tuning weights. This is particularly the case in large scale systems, such as power networks, where typically there will be a large communication overhead associated with control. In this paper a method for simultaneously optimising both the closed loop performance and minimising the communications overhead of iterative distributed MPC systems is proposed. Simulation experiments illustrate the potential of the proposed approach in two different power system scenarios.
机译:本文提出了一种用于迭代分布式模型预测控制(MPC)的权重调整技术。粒子群优化(PSO)用于优化与干扰消除相关的权重以及与在控制代理之间达成共识相关的权重。与集中式MPC的调整仅专注于干扰抑制性能不同,迭代式分布式MPC专业人员必须在调整权重时考虑干扰抑制与总体通信开销之间的权衡。在诸如电力网络之类的大规模系统中尤其如此,其中通常将存在与控制相关联的大通信开销。本文提出了一种同时优化闭环性能和最小化迭代分布式MPC系统通信开销的方法。仿真实验说明了该方法在两种不同电力系统情况下的潜力。

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