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使用基于逻辑的Benders分解结合优化与仿真

Combining optimisation and simulation using logic-based Benders decomposition

European Journal of Operational Research · 2023
被引 20
ABS 4

中文导读

提出一种将仿真直接集成到优化模型中的新方法,通过逻辑Benders割引导优化轨迹,在随机资源分配问题上实现精确求解,优于以往仅能近似求解的方法。

Abstract

Operations Research practitioners often want to model complicated functions that are difficult to encode in their underlying optimisation framework. A common approach is to solve an approximate model, and then use a simulation to evaluate the true objective value of one or more solutions. We propose a new approach to integrating simulation into the optimisation model itself. The idea is to run the simulation at each incumbent solution to a master problem. The simulation results are then used to guide the trajectory of the optimisation model itself using logic-based Benders cuts. We test the approach on a class of stochastic resource allocation problems with monotonic performance measures. We derive strong novel Benders cuts that are provably valid for all problems of the given form. We consider two concrete examples: a nursing home shift scheduling problem, and an airport check in counter allocation problem. While previous papers on these applications could only approximately solve realistic instances, we are able to solve them exactly within a reasonable amount of time. Moreover, while those papers account for the inherent variance of the problem by including estimates of the underlying random variables as model parameters, we are able to compute sample-average approximations to optimality with up to 100 scenarios.

运筹学数学优化仿真资源分配调度