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A sub-principal component of fault detection (PCFD) modeling method and its application to online fault diagnosis

机译:次主要故障检测建模方法及其在在线故障诊断中的应用

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A sub-principal component of fault detection (PCFD) modeling method is proposed for online fault diagnosis for multiphase batch processes. Without the requirement of priori process knowledge, an automatic phase division algorithm is proposed to separate the abnormal batch process into multiple phases by capturing the changes of fault deviations throughout the batch. The similar fault characteristics are grouped into the same phase while different fault characteristics are classified into different phases. PCFD algorithm is then used to decompose the fault deviations relative to normal in different phases. Phase-representative fault diagnosis model is developed to capture the similar fault characteristics within the same phase and multiphase sub-phase models across different phases. Critical-to-diagnosis fault phases are defined and identified which have significant contributions to online fault diagnosis. Based on the identified phase nature and fault diagnosis relationships, an online fault diagnosis strategy is developed to isolate the possible abnormality cause realtime. The applications of the proposed scheme to a typical multiphase batch process, injection molding, show that the proposed analysis and fault diagnosis are not only effective but are also able to enhance fault process understanding and identify specific periods for fault diagnosis in time.
机译:提出了故障检测的主要原理(PCFD)建模方法,用于多相批生产过程的在线故障诊断。在不需要先验过程知识的情况下,提出了一种自动分相算法,通过捕获整个批次中的故障偏差的变化,将异常的批次过程分为多个阶段。相似的故障特征被分组到相同的阶段,而不同的故障特征被分类到不同的阶段。然后使用PCFD算法分解不同阶段相对于法线的故障偏差。开发了相代表故障诊断模型,以捕获相同相和多相子相模型中不同相的相似故障特征。定义并确定了从关键到诊断的故障阶段,这些阶段对在线故障诊断有重大贡献。基于已识别的阶段性质和故障诊断关系,开发了一种在线故障诊断策略,以实时隔离可能的异常原因。所提出的方案在典型的多相间歇式注塑工艺中的应用表明,所提出的分析和故障诊断不仅有效,而且还能够增进对故障过程的理解,并及时确定故障诊断的特定时期。

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