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A distributed algorithm to determine lower and upper bounds in branch and bound for hybrid Model Predictive Control

机译:一种确定混合模型预测控制的分支和边界上下限的分布式算法。

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In this work, a class of model predictive control problems with mixed real-valued and binary control signals is considered. The optimization problem to be solved is a constrained Mixed Integer Quadratic Programming (MIQP) problem. The main objective is to derive a distributed algorithm for limiting the search space in branch and bound approaches by tightening the lower and upper bounds of objective function. To this aim, a distributed algorithm is proposed for the convex relaxation of the MIQP problem via dual decomposition. The effectiveness of the approach is illustrated with a case study.
机译:在这项工作中,考虑了一类具有混合实值和二进制控制信号的模型预测控制问题。要解决的优化问题是约束混合整数二次规划(MIQP)问题。主要目标是通过收紧目标函数的上下边界来导出一种用于在分支定界方法中限制搜索空间的分布式算法。为此,提出了一种通过对偶分解对MIQP问题进行凸松弛的分布式算法。案例研究说明了该方法的有效性。

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