Using Genetic Algorithm to bridge Decision Making Grid data gaps in Small and Medium Industries

Z. Tahir, Andani Ahmad, Indha M. Nur, Anugrahyani, B. Aboobaider, Shinya Kobayashi
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引用次数: 2

Abstract

Maintenance management is certainly the important factor to support the successfulness of Small and Medium Industries (SMIs). The SMIs will gain larger profits with the correctness of maintenance system which can minimize the expenses incurred. The application with Decision Making Grid (DMG) for appropriate maintenance strategy has been achieved with favorable outcome. However, the problems, i.e. incompleteness, unavailability and inconsistency of data are the common practice gaps in SMIs. The presences of data gaps cause adverse effects on the DMG process which is certainly not able to provide satisfactory results of maintenance strategies. To overcome the problems, the current research applies the most optimal heuristic adaptive methods of Genetic Algorithm (GA) to generate optimal variable values of machine breakdowns from a DMG process on observed SMIs to be processed into other related problematic SMIs. The combination method has produced remarkable validation results against decision-making of maintenance strategies for all machines with the accuracy of 90,81%. The results deliver the trust toward related SMIs with the data problems or even new concerned SMIs with the absences of data to utilize this DMG-GA method for maintenance decision making which can help maintenance personnel by giving the correct selection of the maintenance strategy.
基于遗传算法的中小企业决策网格数据缺口弥合研究
维护管理无疑是支持中小型工业(SMIs)成功的重要因素。维护系统的正确性可以最大限度地减少费用,从而使中小企业获得更大的利润。将决策网格(DMG)应用于合理的维修策略,取得了良好的效果。然而,数据的不完整、不可用和不一致等问题是smi中常见的实践差距。数据缺口的存在会对DMG进程产生不利影响,从而无法提供令人满意的维护策略结果。为了克服这些问题,目前的研究采用遗传算法(GA)的最优启发式自适应方法,从观察到的smi上的DMG过程中产生最优的机器故障变量值,并将其处理为其他相关的问题smi。该组合方法对所有机器的维修策略决策都产生了显著的验证结果,准确率为90,81%。结果为存在数据问题的相关smi,甚至是缺乏数据的新关注smi提供了信任,以便利用这种DMG-GA方法进行维护决策,从而帮助维护人员正确选择维护策略。
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