遗传优化算法在船舶起重机问题中的应用

M. Arai, H. Nishihara
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引用次数: 0

摘要

在造船业和海洋运输业的各种环境中,使用起重机重新安置钢板、集装箱等物体是一项常见的任务。在这些操作中,起重机操作员面临的问题是,从给定的物体分布开始,并重新堆叠它们,以便使用起重机尽可能少的努力或运动来实现所需的分布。由于操作顺序的可能组合是如此之多,这类问题实际上涉及到无限多的解决方案。因此,操作员很难从候选过程中确定最优序列,也很难提出一种能够高效可靠地解决这一问题的通用方法。因此,在实际情况下,现场起重机操作员通常根据自己的经验和直觉来确定顺序。然而,有时起重机操作过程的规划非常麻烦和耗时,并且被认为不一定适合人类。在本研究中,我们应用了一种擅长寻找组合问题解的遗传算法(GA)。起重机的操作序列用字符串表示,并利用遗传算法的种群搜索(即多点同时搜索)的优点,对实际算例进行了高效的求解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of genetic optimization algorithm to the crane problem in the shipbuilding industry
In various contexts of the shipbuilding industry as well as in the marine transportation industry, the relocation of objects such as steel plates, containers, etc. by using cranes is a common task. In these operations, crane operators are faced with the problem of starting with a given distribution of objects and restacking them in order to achieve a desired distribution using the least possible effort or movement of the crane. This type of problem involves a practically infinite number of solutions, since the possible combinations of operational order are so numerous. Therefore, it is difficult for the operator to determine the optimal sequence from the candidate processes, and it also is difficult to present a general method that can solve this problem with high degrees of efficiency and reliability. As a result, in practical situations the crane operators on site usually decide the sequence according to their experience and intuition. However, sometimes the planning of the crane operation process is very troublesome and time consuming and is thought to be not necessarily suitable for human beings.In this study we apply a genetic algorithm (GA) that excels at finding solutions to combinatory problems. The sequence of a crane's operation is represented in string expression and with the merit of a population search (i.e., a simultaneous multi-point search) of the GA, excellent operations were efficiently obtained for the practical examples shown in the paper.
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