Artificial Intelligence Supported Aircraft Maintenance Strategy Selection with q-Rung Orthopair Fuzzy TOPSIS Method

Adem Pinar
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Abstract

In the aviation sector as unscheduled maintenance, repair and overhaul cost too much and these activities also negatively affect the prestige of the companies, deciding the most appropriate maintenance strategy is crucial. Today artificial intelligence methods, especially machine learning techniques facilitate failure detection and predict the wear and tear of the equipment before the occurrence of a serious failure. In this paper, artificial intelligence-supported corrective, predictive, and prescriptive maintenance methods are examined. Those most common aircraft maintenance approaches are compared regarding cost, reliability, failure detection, and downtime period using decision makers' subjective evaluations with the help of the q-rung orthopair fuzzy TOPSIS method which mitigates the drawbacks of uncertainty in human decision making. Stable and efficient results are obtained regarding the selection of an appropriate maintenance strategy. This article might be the first quantitative research that evaluates and compares AI-supported aircraft maintenance strategies.
基于q-Rung矫形模糊TOPSIS法的人工智能支持飞机维修策略选择
在航空领域,由于不定期的维护,维修和大修成本过高,这些活动也对公司的声誉产生负面影响,决定最合适的维护策略至关重要。今天,人工智能方法,特别是机器学习技术,有助于故障检测,并在发生严重故障之前预测设备的磨损。本文研究了人工智能支持的纠正、预测和规范维护方法。利用决策者的主观评价,对最常用的飞机维修方法在成本、可靠性、故障检测和停机时间等方面进行了比较,并利用q阶正形模糊TOPSIS方法减轻了人为决策不确定性的缺点。在选择适当的维护策略方面获得了稳定和有效的结果。这篇文章可能是第一个评估和比较人工智能支持的飞机维修策略的定量研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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