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An Extension Sample Classification-Based Extreme Learning Machine Ensemble Method for Process Fault Diagnosis

机译:基于扩展样本分类的极限学习机集成方法在过程故障诊断中的应用

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摘要

In order to achieve higher accuracy and faster response in complex process fault diagnosis, an extension sample classification-based extreme learning machine ensemble (ESC-ELME) method is proposed. In the realization process, the extension sample classification is used to divide the fault types. For each fault type, a specific extreme learning machine (ELM) is established and trained independently. Then, all specific ELMs are integrated to determine which fault is happened by the majority voting method. The proposed ESC-ELME method is compared with the traditional ELM and a duty-oriented hierarchical artificial neural network in fault diagnosis of the Tennessee Eastman process. The results demonstrate that the proposed method provides higher diagnosis accuracy and faster response.
机译:为了在复杂过程故障诊断中获得更高的准确性和更快的响应速度,提出了一种基于扩展样本分类的极限学习机集成(ESC-ELME)方法。在实现过程中,采用扩展样本分类对故障类型进行划分。对于每种故障类型,都将建立并单独培训特定的极限学习机(ELM)。然后,将所有特定的ELM集成在一起,以通过多数表决方法确定发生哪个故障。在田纳西州伊士曼过程的故障诊断中,将所提出的ESC-ELME方法与传统的ELM和面向任务的分层人工神经网络进行了比较。结果表明,该方法具有较高的诊断精度和较快的响应速度。

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