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Prognostic and health management for adaptive manufacturing systems with online sensors and flexible structures

机译:具有在线传感器和灵活结构的自适应制造系统的预后和健康管理

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摘要

Real-time monitoring and accurate predictions of machine failures are important in maintenance decision making. Traditional policies using population-specific reliability characteristics cannot represent degradation processes of individual machines, thus result in less accurate predictions of time-to-failure (TTF). Besides, most of the existing maintenance policies focus on a manufacturing system with its fixed system structure, which means the system is designed with limited flexibility. Nowadays, the flexible structure of an adaptive manufacturing system can be adjustable to meet various product types and changeable market demands. In this paper, we try to fill these gaps and develop a prognostic and health management (PHM) framework for manufacturing systems with online sensors and flexible structures. We integrate a Bayesian updating prognostic model using sensor-based degradation information for computing each machine's TTFs, with an opportunistic maintenance policy handling flexible system structures for optimizing the maintenance scheduling. This enables the dynamic prognosis updating, the notable cost reduction, and the rapid decision making for adaptive manufacturing systems.
机译:实时监控和准确的机器故障预测在维护决策中很重要。使用人口特异性可靠性特性的传统政策不能代表各个机器的劣化过程,因此导致对失败时间(TTF)的准确预测。此外,大多数现有的维护政策专注于具有固定系统结构的制造系统,这意味着该系统的灵活性有限。如今,自适应制造系统的柔性结构可以调节,以满足各种产品类型和可变的市场需求。在本文中,我们试图填补这些差距,并为具有在线传感器和灵活结构的制造系统制定预后和健康管理(PHM)框架。我们使用基于传感器的劣化信息整合贝叶斯更新预后模型,用于计算每台机器的TTFS,具有机会维护策略处理灵活的系统结构,用于优化维护调度。这使得能够进行动态预后更新,显着的成本降低和自适应制造系统的快速决策。

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