Fast Nonlinear Model Predictive Control Using a Custom Cost-Function: Preliminary Results

Robert Nebeluk, M. Lawrynczuk
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Abstract

Typically, in Model Predictive Control (MPC) algorithms, the squared sum of predicted control errors (the L2 norm) is minimised on-line. This work discusses an alternative approach in which a custom, user-defined cost-function is used; it may be defined analytically or in a graphical form. To obtain a computationally fast procedure, a differentiable neural approximation of the custom cost-function is used and the predicted trajectory of the controlled variable is linearised on-line. As a result, a quadratic optimisation MPC task is derived. Efficiency of the described approach is discussed for a simulated polymerisation reactor. In particular, it is shown that the discussed algorithm gives better results in terms of the custom cost-function than the classical L2 approach. Moreover, it is shown that the algorithm gives similar results to those possible in MPC with full nonlinear optimisation repeated at each sampling instant.
使用自定义成本函数的快速非线性模型预测控制:初步结果
通常,在模型预测控制(MPC)算法中,预测控制误差的平方和(L2范数)在线最小化。这项工作讨论了一种替代方法,其中使用了自定义的、用户定义的成本函数;它可以用分析或图形的形式来定义。为了获得快速的计算过程,使用了自定义成本函数的可微神经逼近,并对被控变量的预测轨迹进行在线线性化。因此,导出了一个二次优化MPC任务。对模拟聚合反应器的效率进行了讨论。特别地,它显示了所讨论的算法在自定义成本函数方面比经典L2方法给出了更好的结果。此外,该算法与在每个采样时刻重复进行完全非线性优化的MPC可能得到的结果相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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