Solution approaches to the three-index assignment problem

Mohamed Mehbali
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Abstract

This paper delves into the axial Three-index Assignment Problem (3IAP), alternatively known as the Multi-dimensional Assignment Problem, defined as an extension of the classical two-dimensional assignment problem. The 3IAP entails allocating $n$  tasks to $n$ machines in $n$  factories, ensuring one task is completed by one machine in one factory at a minimum total cost. This combinatorial optimization problem is classified as \emph{NP}-hard due to its inherent complexity and being the subject of much scholarly research and investigation.                      The study employs an algorithmic approach to devise rapid and effective solutions for the 3IAP. A new heuristic Greedy-style Procedure (GSP) is introduced for solving the 3IAP, achieving feasible solutions within polynomial time. Particular configurations of cost matrices enable us to reach quality solutions. Examining tie-cases and matrix ordering unveiled innovative variants. Further investigation of cost matrix attributes facilitates the development of two new heuristic categories, offering optimal or nearly optimal solutions for the 3IAP. Extensive numerical experiments validate the effectiveness of the heuristics, generating quality solutions in a short computational time. Furthermore, we implement two potent methods using optimization solvers, achieving optimal solutions for the 3IAP within competitive CPU times.
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三索引分配问题的解决方法
本文深入探讨轴向三索引分配问题(3IAP),又称多维分配问题,是经典二维分配问题的扩展。3IAP 需要将 $n$ 任务分配给 $n$ 工厂中的 $n$ 机器,确保一个工厂中的一台机器以最小的总成本完成一项任务。由于其固有的复杂性,这个组合优化问题被归类为 \emph{NP} -hard(困难),也是许多学者研究和调查的主题。 本研究采用算法方法为 3IAP 设计快速有效的解决方案。为解决 3IAP 引入了一种新的启发式 Greedy-style Procedure (GSP),可在多项式时间内获得可行的解决方案。成本矩阵的特定配置使我们能够获得高质量的解决方案。对平局和矩阵排序的研究揭示了创新的变体。对成本矩阵属性的进一步研究促进了两个新启发式类别的发展,为 3IAP 提供了最优或接近最优的解决方案。广泛的数值实验验证了启发式的有效性,在较短的计算时间内生成了高质量的解决方案。此外,我们还利用优化求解器实施了两种有效方法,在具有竞争力的 CPU 时间内实现了 3IAP 的最优解。
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