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Functional Failure Diagnosis Method of Manufacturing System Based on Dynamic Bayesian Network

机译:基于动态贝叶斯网络的制造系统功能故障诊断方法

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The core function and mission of the manufacturing systems are to produce high-quality and high-reliability products continuously and steadily, and fault diagnosis of a manufacturing system under operation is a precondition to ensure its normal operation and complete the expected functions. Most of the previous studies mainly focus on the fault diagnosis of production equipment in manufacturing systems. Over the years, manufacturing systems have become increasingly large and complicated, making physical failures of production equipment in operation have become rare, and the proportion of functional failures has increasingly increased, which are manifested by the dynamic degradation characteristics of manufacturing systems. Therefore, a functional failure diagnosis approach of the manufacturing systems based on the SQR chain and the dynamic Bayesian technique is proposed in this paper. Firstly, the functional fault connotation and formation mechanism of manufacturing systems are defined based on the SQR chain theory and the deviation flow theory. Secondly, the overall dynamic degradation characteristics of systems are clarified from the dynamic Bayesian network (DBN), and the multi-station manufacturing process quality deviations are used to evaluate the functional failure state for a manufacturing system. Third, the underlying cause of equipment or process change can be analyzed by the SQR chain and the professional knowledge, and a functional fault diagnosis strategy for manufacturing systems is provided. Finally, a case study of the cylinder head as a production system is conducted to illustrate the effectiveness and accuracy of the proposed approach.
机译:制造系统的核心功能和使命是生产高质量和高可靠性的产品,而且在操作中的制造系统的故障诊断是一种前提,以确保其正常运行并完成预期功能。以前的大多数研究主要集中在制造系统中生产设备的故障诊断。多年来,制造系统变得越来越大,复杂,在运作中的生产设备的物理故障变得罕见,功能故障的比例越来越多地增加,这表明由制造系统的动态降解特性表现出。因此,本文提出了基于SQR链和动态贝叶斯技术的制造系统的功能故障诊断方法。首先,基于SQR链理论和偏差流理论来定义制造系统的功能故障内涵和形成机制。其次,从动态贝叶斯网络(DBN)澄清了系统的整体动态劣化特性,并且使用多站制造工艺质量偏差来评估制造系统的功能故障状态。第三,可以通过SQR链和专业知识分析设备或过程变更的根本原因,并提供了制造系统的功能性故障诊断策略。最后,进行了作为生产系统作为生产系统的气缸盖的案例研究以说明所提出的方法的有效性和准确性。

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