多目标JIT排序问题的蚁群优化方法

Patrick R. McMullen
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引用次数: 217

摘要

本研究提出了一种相对较新的蚁群优化(ACO)方法的应用,以解决生产排序问题,当存在两个目标时-模拟虚拟蚂蚁的人工智能代理以获得制造物流问题的理想解决方案。两个目标是最小化设置和优化材料使用率的稳定性。这种类型的问题是np困难的,因此,通过完全枚举获得IP/LP解决方案或解决方案并不是一个实际的选择。由于这些挑战,这里使用了一种方法,以最小的计算量获得该问题的理想解决方案。将蚁群算法得到的解与模拟退火、禁忌搜索、遗传算法和神经网络等启发式算法得到的解进行了比较。实验结果表明,蚁群算法在性能和CPU需求方面与其他算法具有一定的竞争力。
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An ant colony optimization approach to addressing a JIT sequencing problem with multiple objectives

This research presents an application of the relatively new approach of ant colony optimization (ACO) to address a production-sequencing problem when two objectives are present — simulating the artificial intelligence agents of virtual ants to obtain desirable solutions to a manufacturing logistics problem. The two objectives are minimization of setups and optimization of stability of material usage rates. This type of problem is NP-hard, and therefore, attainment of IP/LP solutions, or solutions via complete enumeration is not a practical option. Because of such challenges, an approach is used here to obtain desirable solutions to this problem with a minimal computational effort. The solutions obtained via the ACO approach are compared against solutions obtained via other search heuristics, such as simulated annealing, tabu search, genetic algorithms and neural network approaches. Experimental results show that the ACO approach is competitive with these other approaches in terms of performance and CPU requirements.

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