A pnh-Adaptive Refinement Procedure for Numerical Optimal Control Problems

L. Bartali, M. Gabiccini, M. Guiggiani
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Abstract

This paper presents an automatic procedure to enhance the accuracy of the numerical solution of an optimal control problem (OCP) discretized via direct collocation at Gauss-Legendre points. First, a numerical solution is obtained by solving a nonlinear program (NLP). Then, the method evaluates its accuracy and adaptively changes both the degree of the approximating polynomial within each mesh interval and the number of mesh intervals until a prescribed accuracy is met. The number of mesh intervals is increased for all state vector components alike, in a classical fashion. Instead, improving on state-of-the-art procedures, the degrees of the polynomials approximating the different components of the state vector are allowed to assume, in each finite element, distinct values. This explains the pnh definition, where n is the state dimension. Instead, in the literature, the degree is always raised to the highest order for all the state components, with a clear waste of resources. Numerical tests on three OCP problems highlight that, under the same maximum allowable error, by independently selecting the degree of the polynomial for each state, our method effectively picks lower degrees for some of the states, thus reducing the overall number of variables in the NLP. Accordingly, various advantages are brought about, the most remarkable being: (i) an increased computational efficiency for the final enhanced mesh with solution accuracy still within the specified tolerance, (ii) a reduced risk of being trapped by local minima due to the reduced NLP size.
数值最优控制问题的pnn -自适应细化方法
本文提出了一种自动提高高斯-勒让德点直接配置离散的最优控制问题数值解精度的方法。首先,通过求解非线性程序(NLP)得到数值解。然后,该方法评估其精度,并自适应地改变每个网格间隔内逼近多项式的程度和网格间隔的数量,直到满足规定的精度。以经典的方式增加所有状态向量分量的网格间隔数量。相反,改进了最先进的程序,允许在每个有限元中假设近似状态向量的不同分量的多项式的度有不同的值。这解释了pnh的定义,其中n是状态维。相反,在文献中,对于所有国家组成部分,度总是被提升到最高阶,这显然是对资源的浪费。对三个OCP问题的数值测试表明,在相同的最大允许误差下,通过独立选择每个状态的多项式度,我们的方法有效地为某些状态选择了较低的度,从而减少了NLP中变量的总数。因此,带来了各种优势,最显著的是:(i)提高了最终增强网格的计算效率,且求解精度仍在规定的公差范围内;(ii)由于减小了NLP大小,降低了被局部最小值困住的风险。
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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