English

Approximating Constrained Minimum Cost Input-Output Selection for Generic Arbitrary Pole Placement in Structured Systems

Optimization and Control 2018-01-11 v2 Data Structures and Algorithms

Abstract

This paper is about minimum cost constrained selection of inputs and outputs for generic arbitrary pole placement. The input-output set is constrained in the sense that the set of states that each input can influence and the set of states that each output can sense is pre-specified. Our goal is to optimally select an input-output set that the system has no structurally fixed modes. Polynomial algorithms do not exist for solving this problem unless P=NP. To this end, we propose an approximation algorithm by splitting the problem in to three sub-problems: a) minimum cost accessibility problem, b) minimum cost sensability problem and c) minimum cost disjoint cycle problem. We prove that problems a) and b) are equivalent to a suitably defined weighted set cover problems. We also show that problem c) is equivalent to a minimum cost perfect matching problem. Using these we give an approximation algorithm which solves the minimum cost generic arbitrary pole placement problem. The proposed algorithm incorporates an approximation algorithm to solve the weighted set cover problem for solving a) and b) and a minimum cost perfect matching algorithm to solve c). Further, we show that the algorithm is polynomial time an gives an order optimal solution to the minimum cost input-output selection for generic arbitrary pole placement problem.

Keywords

Cite

@article{arxiv.1705.09600,
  title  = {Approximating Constrained Minimum Cost Input-Output Selection for Generic Arbitrary Pole Placement in Structured Systems},
  author = {Shana Moothedath and Prasanna Chaporkar and Madhu N. Belur},
  journal= {arXiv preprint arXiv:1705.09600},
  year   = {2018}
}

Comments

11 pages, 2 figures

R2 v1 2026-06-22T20:00:12.789Z