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Smart Maintenance in Asset Management - Application with Deep Learning

机译:资产管理中的智能维护-深度学习应用

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With the onset the digitalization and Industry 4.0, the maintenance function and asset management in a company is forming towards Smart Maintenance. An essential application in smart maintenance is to improve the maintenance planning function with better criticality assessment. With the aid from artificial intelligence it is considered that maintenance planning will provide better and faster decision making in maintenance management. The aim of this article is to develop smart maintenance planning based on principles both from asset management and machine learning. The result demonstrates a use case of criticality assessment for maintenance planning and comprise computation of anomaly degree (AD) as well as calculation of profit loss indicator (PLI). The risk matrix in the criticality assessment is then constructed by both AD and PLI and will then aid the maintenance planner in better and faster decision making. It is concluded that more industrial use cases should be conducted representing different industry branches.
机译:随着数字化和工业4.0的问世,公司的维护功能和资产管理正在朝着智能维护的方向发展。智能维护中的一项重要应用是通过更好的关键性评估来改进维护计划功能。在人工智能的帮助下,维护计划将在维护管理中提供更好,更快的决策。本文的目的是基于资产管理和机器学习的原理来开发智能维护计划。结果说明了用于维护计划的关键性评估的用例,包括异常度(AD)的计算以及利润损失指标(PLI)的计算。然后,由AD和PLI共同构建关键性评估中的风险矩阵,然后将有助于维护计划人员更好,更快地做出决策。结论是,应该进行更多代表不同行业分支的工业用例。

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