目标覆盖问题寿命最大化的多面体方法

A. K. Pujari, S. Mini, Trideba Padhi, Prabhanjan Sahoo
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引用次数: 7

摘要

MLTCP (Maximum Lifetime Target Coverage Problem)是指在无线传感器网络中,为一组目标提供所需的覆盖范围,从而使无线传感器网络的生命周期最大化。这个问题在计算上是困难的,最近的研究表明MLTCP表现出相变现象。硬实例的发生区域是根据传感范围值的间隔来确定的。大多数早期的启发式报告了他们对该区域以外实例的经验分析。到目前为止,还没有提出任何算法来处理特别困难的实例。本文通过对多面体可行集结构的研究,为MLTCP问题提供了新的认识,并提出了一种区分难解实例和可解实例的启发式方法。所提出的方法产生有史以来最好的接近最优解,并指出给定问题实例困难的情况。考虑到MLTCP的线性规划形式,该算法可以看作是从一个基本可行解(BFS)遍历到另一个目标函数值非递减的非相邻BFS。结果表明,BFS的高度简并和循环使问题变得困难。当算法遇到非平凡循环时,我们的方法使用一种新颖的方法,通过远离BFS搜索来生成改进的可行解(不是BFS)。实验结果表明,该方法在简单实例中得到了最优解,在困难实例中给出了最好的近似最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Polyhedral Approach for Lifetime Maximization of Target Coverage Problem
MLTCP (Maximum Lifetime Target Coverage Problem) aims at providing required coverage to a set of targets maximizing the lifetime of wireless sensor network. The problem is known to be computationally hard and it is shown recently that MLTCP exhibits phase-transition phenomenon. The region of occurrences of hard instances is identified in terms of an interval of values of sensing-range. Most of the earlier heuristics report their empirical analyses on instances that are outside this region. There has not been any algorithm proposed so far to handle particularly hard instances. In the present work, we provide a new insight to MLTCP by studying the structure of polyhedral feasible set and propose a heuristic that distinguishes hard instances from solvable cases. The proposed method yields best-ever near-optimal solution and indicates situations when the given problem instance is hard. Considering the linear programming formulation of MLTCP, the algorithm can be viewed as traversal from one BFS (Basic Feasible Solution) to another nonadjacent BFS with non-decreasing value of the objective function. It is shown that high degree of degeneracy of BFS and cycling make the problem hard. When the algorithm encounters a non-trivial cycle, our method uses a novel way of generating an improved feasible solution (not a BFS) by moving away from BFS search. Experimental results confirm that the proposed method achieves the optimal solution for easy instances and gives best-ever near-optimal solution for hard instances.
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