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Fast gradient-based distributed optimisation approach for model predictive control and application in four-tank benchmark

机译:基于快速梯度的分布式优化模型预测控制方法及其在四罐基准测试中的应用

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摘要

By taking both control and state vectors as decision variables, the subproblems of model predictive control scheme can be considered as a class of separable convex optimisation problems with coupling linear constraints. A Lagrangian dual method is introduced to deal with the optimisation problem, in which, the primal problem is solved by a parallel coordinate descent method, and a fast dual ascend method is adopted to solve the dual problem iteratively. The proposed approach is applied to the well-known hierarchical and distributed model predictive control four-tank benchmark. Experimental results have testified the effectiveness of the proposed approach and shown that the benchmark problem can be well stabilised.
机译:通过将控制向量和状态向量都作为决策变量,模型预测控制方案的子问题可以被视为一类具有线性约束的可分离凸优化问题。引入了拉格朗日对偶法来处理最优化问题,其中,通过并行坐标下降法解决原始问题,并采用快速对偶升序法迭代求解对偶问题。所提出的方法被应用于著名的分层和分布式模型预测控制四罐基准。实验结果证明了该方法的有效性,并表明基准问题可以很好地稳定下来。

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