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A Distributed Algorithm for Scenario-based Model Predictive Control using Primal Decomposition ?

机译:使用原始分解的基于场景的模型预测控制的分布式算法

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In this paper, we consider the decomposition of scenario-based model predictive control problem. Scenario MPC explicitly considers the concept of recourse by representing the evolution of uncertainty by a discrete scenario tree, which can result in large optimization problems. Due to the inherent nature of the scenario tree, the problem can be decomposed into each scenario. The different subproblems are only coupled via the non-anticipativity constraints which ensures that the first control input is the same for all the scenarios. This constraint is relaxed in the dual decomposition approaches, which may lead to infeasibility of the non-anticipativity constraints if the master problem does not converge within the required time. In this paper, we present an alternative approach using primal decomposition which ensures feasibility of the non-anticipativity constraints throughout the iterations. The proposed method is demonstrated using gas-lift optimization as case study.
机译:在本文中,我们考虑了基于场景的模型预测控制问题的分解。方案MPC通过使用离散方案树表示不确定性的演变来明确考虑追索权的概念,这可能会导致大型优化问题。由于方案树的固有性质,可以将问题分解为每个方案。不同的子问题仅通过非预期约束进行耦合,这确保了所有情况下的第一控制输入均相同。在双重分解方法中放宽了此约束,如果主问题未在要求的时间内收敛,则可能导致非预期约束的不可行。在本文中,我们提出了一种使用原始分解的替代方法,该方法可确保整个迭代过程中非预期约束的可行性。以气举优化为例演示了该方法。

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