求解确定性和随机性无容量限制设施选址问题:从启发式到模拟启发式算法

Solving the deterministic and stochastic uncapacitated facility location problem: from a heuristic to a simheuristic

Journal of the Operational Research Society · 2016
被引 102 · 同刊同年前 2%
ABS 3

中文导读

本文提出一种模拟启发式算法,用于求解随机性无容量限制设施选址问题,该算法分三阶段开发,能处理客户需求或服务成本的不确定性,并考虑除最小期望成本外的其他优化目标。

Abstract

The uncapacitated facility location problem (UFLP) is a popular combinatorial optimization problem with practical applications in different areas, from logistics to telecommunication networks. While most of the existing work in the literature focuses on minimizing total cost for the deterministic version of the problem, some degree of uncertainty (e.g., in the customers’ demands or in the service costs) should be expected in real-life applications. Accordingly, this paper proposes a simheuristic algorithm for solving the stochastic UFLP (SUFLP), where optimization goals other than the minimum expected cost can be considered. The development of this simheuristic is structured in three stages: (i) first, an extremely fast savings-based heuristic is introduced; (ii) next, the heuristic is integrated into a metaheuristic framework, and the resulting algorithm is tested against the optimal values for the UFLP; and (iii) finally, the algorithm is extended by integrating it with simulation techniques, and the resulting simheuristic is employed to solve the SUFLP. Some numerical experiments contribute to illustrate the potential uses of each of these solving methods, depending on the version of the problem (deterministic or stochastic) as well as on whether or not a real-time solution is required.

运筹学物流与供应链管理组合优化启发式算法