带不确定性的热轧带钢轧制调度问题:鲁棒优化模型与求解方法

The Hot Strip Mill Scheduling Problem With Uncertainty: Robust Optimization Models and Solution Approaches

IEEE Transactions on Cybernetics · 2022
被引 18
ABS 3

中文导读

针对钢铁行业热轧带钢调度中加工时间不确定的问题,构建了鲁棒优化模型,并设计了精确算法和元启发式算法来求解,兼顾了惩罚成本和能耗目标。

Abstract

In this article, we focus on a biobjective hot strip mill (HSM) scheduling problem arising in the steel industry. Besides the conventional objective regarding penalty costs, we have also considered minimizing the total starting times of rolling operations in order to reduce the energy consumption for slab reheating. The problem is complicated by the inevitable uncertainty in rolling processing times, which means deterministic scheduling models will be ineffective. To obtain robust production schedules with satisfactory performance under all possible conditions, we apply the robust optimization (RO) approach to model and solve the scheduling problem. First, an RO model and an equivalent mixed-integer linear programming model are constructed to describe the HSM scheduling problem with uncertainty. Then, we devise an improved Benders' decomposition algorithm to solve the RO model and obtain exactly optimal solutions. Next, for coping with large-sized instances, a multiobjective particle swarm optimization algorithm with an embedded local search strategy is proposed to handle the biobjective scheduling problem and find the set of Pareto-optimal solutions. Finally, we conduct extensive computational tests to verify the proposed algorithms. Results show that the exact algorithm is effective for relatively small instances and the metaheuristic algorithm can achieve satisfactory solution quality for both small- and large-sized instances of the problem.

钢铁工业生产调度鲁棒优化多目标优化元启发式算法