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Quantum computing assisted deep learning for fault detection and diagnosis in industrial process systems

机译:Quantum Computing辅助深度学习工业过程系统中的故障检测与诊断

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摘要

Quantum computing (QC) and deep learning techniques have attracted widespread attention in the recent years. This paper proposes QC-based deep learning methods for fault diagnosis that exploit their unique capabilities to overcome the computational challenges faced by conventional data-driven approaches performed on classical computers. Deep belief networks are integrated into the proposed fault diagnosis model and are used to extract features at different levels for normal and faulty process operations. The QC-based fault diagnosis model uses a quantum computing assisted generative training process followed by discriminative training to address the shortcomings of classical algorithms. To demonstrate its applicability and efficiency, the proposed fault diagnosis method is applied to process monitoring of continuous stirred tank reactor (CSTR) and Tennessee Eastman (TE) process. The proposed QC-based deep learning approach enjoys superior fault detection and diagnosis performance with obtained average fault detection rates of 79.2% and 99.39% for CSTR and TE process, respectively.
机译:量子计算(QC)和深度学习技术在近年来引起了广泛的关注。本文提出了基于QC的故障诊断的深度学习方法,利用了它们独特的能力来克服传统数据驱动方法所面临的计算挑战。深度信仰网络集成到所提出的故障诊断模型中,用于提取不同级别的特征,用于正常和故障的过程操作。基于QC的故障诊断模型使用量子计算辅助生成培训过程,然后是判别培训来解决古典算法的缺点。为了证明其适用性和效率,所提出的故障诊断方法适用于连续搅拌罐反应器(CSTR)和田纳西州柴刀(TE)过程的过程监测。所提出的基于QC的深度学习方法,分别具有优异的故障检测和诊断性能,分别获得了CSTR和TE过程的平均故障检测率为79.2%和99.39%。

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