Procedure for regularization of bilinear optimal control problems based on a finite-dimensional model

A. Arguchintsev, V. Srochko
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引用次数: 3

Abstract

An optimization problem of a linear system of ordinary differential equations on a set of piecewise continuous scalar controls with two-sided restrictions is considered. The cost functional contains the bilinear part (control, state) and a control square with a parameter, which plays the role of a regularization term. An approximate solution of the optimal control problem is carried out on a subset of piecewise constant controls with a non-uniform grid of possible switching points. As a result of the proposed parametrization, reduction to the finite-dimensional problem of quadratic programming was carried out with the parameter in the objective function and the simplest restrictions. In the case of a strictly convex objective function, the finite-dimensional problem can be solved in a finite number of iterations by the method of special points. For strictly concave objective functions, the corresponding problem is solved by simple or specialized brute force methods. In an arbitrary case, parameter conditions and switching points are found at which the objective function becomes convex or concave. At the same time, the corresponding problems of mathematical programming allow a global solution in a finite number of iterations. Thus, the proposed approach allows to approximate the original non-convex variation problem with a finite-dimensional model that allows to find a global solution in a finite number of iterations.
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基于有限维模型的双线性最优控制问题的正则化程序
研究一类带双边限制的分段连续标量控制线性常微分方程组的优化问题。代价函数包含双线性部分(控制、状态)和一个参数控制方,参数控制方起正则化项的作用。在可能开关点的非均匀网格上,对分段常数控制的子集进行了最优控制问题的近似解。利用所提出的参数化方法,利用目标函数中的参数和最简单的约束条件,将二次规划问题简化为有限维问题。对于严格凸目标函数,用特殊点法在有限次迭代中求解有限维问题。对于严格凹目标函数,采用简单的或专门的蛮力方法求解。在任意情况下,找到目标函数变为凸或凹的参数条件和切换点。同时,相应的数学规划问题允许在有限次迭代中得到全局解。因此,所提出的方法允许用有限维模型近似原始的非凸变分问题,该模型允许在有限次迭代中找到全局解。
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来源期刊
CiteScore
1.30
自引率
50.00%
发文量
10
期刊介绍: The journal is the prime outlet for the findings of scientists from the Faculty of applied mathematics and control processes of St. Petersburg State University. It publishes original contributions in all areas of applied mathematics, computer science and control. Vestnik St. Petersburg University: Applied Mathematics. Computer Science. Control Processes features articles that cover the major areas of applied mathematics, computer science and control.
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