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Complexity simulation of DMC based on quadratic programming

机译:基于二次规划的DMC复杂度仿真

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Constrained dynamic matrix control(DMC)is essentially a standard quadratic programming problem with high complexity and long on-line solving time. The Karush-Kuhn-Tucker (KKT) conditions for optimization problems are used to analyze the complexity of DMC algorithm. Therefore, the number of manipulated variables and the length of control horizons are found out to be the mainly restricted two factors of computational efficiency in algorithm, and the time complexity of the algorithm is proportional to the cube of the product of the two factors. Then standard quadratic programming (QP) algorithm was applied to three classical industrial cases which simulated and verified the result. Finally, a curve fitting method was used to compute the maximum size of control system in standard model predictive control implementation time. Thus a theoretical basis was provided for properly choosing the number of manipulated variables and the length of control horizons, reducing the computational complexity of the dynamic matrix control algorithm.
机译:约束动态矩阵控制(DMC)本质上是一个标准的二次规划问题,具有很高的复杂度和较长的在线求解时间。针对优化问题的Karush-Kuhn-Tucker(KKT)条件用于分析DMC算法的复杂性。因此,发现操纵变量的数量和控制范围的长度是算法中计算效率的主要限制两个因素,并且算法的时间复杂度与这两个因素的乘积的立方成正比。然后将标准二次规划(QP)算法应用于三个经典的工业案例,对结果进行仿真和验证。最后,采用曲线拟合的方法来计算标准模型预测控制实施时间中控制系统的最大尺寸。因此,为正确选择操纵变量的数量和控制范围的长度提供了理论依据,从而降低了动态矩阵控制算法的计算复杂度。

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