Under-Approximating Reach Sets for Polynomial Continuous Systems

Bai Xue, M. Fränzle, N. Zhan
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引用次数: 14

Abstract

In this paper we suggest a method based on convex programming for computing semi-algebraic under-approximations of reach sets for polynomial continuous systems with initial sets being the zero sub-level set of a polynomial function. It is well-known that the reachable set can be formulated as the zero sub-level set of a value function to a Hamilton-Jacobi partial differential equation (HJE), and our approach in this paper consequently focuses on searching for approximate analytical polynomial solutions to associated HJEs, of which the zero sub-level sets converge to the exact reachable set from inside in measure, without discretizing the state space. Such approximate solutions can be computed via a classical hierarchy of convex programs consisting of linear matrix inequalities, which are constructed by sum-of-squares decomposition techniques. In contrast to traditional numerical methods approximately solving HJEs, such as level-set methods, our method reduces HJE solving to convex optimization, avoiding the complexity associated to gridding the state space. Compared to existing approaches computing under-approximations, the approach described in this paper is structurally simpler as the under-approximations are the outcome of a single semi-definite program. Furthermore, an over-approximation of the reach set, shedding light on the quality of the constructed under-approximation, can be constructed via solving the same semi-definite program. Several illustrative examples and comparisons with existing methods demonstrate the merits of our approach.
多项式连续系统的欠逼近达集
本文提出了一种基于凸规划的多项式连续系统可达集半代数欠逼近的计算方法,该系统的初始集为多项式函数的零子水平集。众所周知,可达集可以表示为Hamilton-Jacobi偏微分方程(HJE)的值函数的零子水平集,因此本文的方法侧重于寻找相关HJE的近似解析多项式解,其中零子水平集从测度内收敛到精确可达集,而不需要离散状态空间。这种近似解可以通过由线性矩阵不等式组成的经典凸规划层次来计算,这些线性矩阵不等式由平方和分解技术构造。与传统的近似求解HJE的数值方法(如水平集方法)相比,该方法将HJE求解简化为凸优化,避免了状态空间网格化的复杂性。与现有的计算欠逼近的方法相比,本文所描述的方法结构更简单,因为欠逼近是单个半确定程序的结果。此外,可以通过求解相同的半确定规划来构造可及集的过逼近,从而揭示构造的欠逼近的质量。几个说明性的例子和与现有方法的比较证明了我们的方法的优点。
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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