基于人工智能的多依赖复杂系统维护调度

Van-Thai Nguyen, P. Do, A. Voisin
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引用次数: 1

摘要

复杂系统的维护计划仍然是一个具有挑战性的问题。首先,将多种依赖类型集成到维护模型中使它们更加实际,但是,解决和分析起来更加复杂。其次,需要优化的维护决策变量数量随着部件数量的增加而迅速增加,导致优化算法的计算量较大。针对这些问题,本文旨在将多种依赖关系纳入维护模型,并利用人工智能领域的最新进展,有效地优化大规模多组件系统的维护策略。
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Artificial-Intelligence-Based Maintenance Scheduling for Complex Systems with Multiple Dependencies
Maintenance planning for complex systems has still been a challenging problem. Firstly, integrating multiple dependency types into maintenance models makes them more realistic, however, more complicated to solve and analyze. Secondly, the number of maintenance decision variables needed to be optimized increases rapidly in the number of components, causing computational expensive for optimization algorithms. To face these issues, this thesis aims to incorporate multiple kinds of dependencies into maintenance models as well as to take advantage of recent advances in artificial intelligence field to effectively optimize maintenance polices for large-scale multi-component systems.
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