基于粗细深度网络的工业信息物理系统大数据分析系统

Ruonan Liu;Quanhu Zhang;Yu Wang;Zengxiang Li;Dongyue Chen;Steven X. Ding;Qinghua Hu;Boyuan Yang
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引用次数: 0

摘要

在智能工厂中,对复杂系统的工业大数据分析的要求越来越高。随着工业信息物理系统(ICPS)和通信技术的快速发展,工业数据的规模和复杂性呈爆炸式增长,不仅提供了海量的工业系统运行信息,也给大数据分析带来了挑战。本文针对传统深度学习方法存在的类内/类间距离不平衡和局部极小问题,提出了一种基于粗精网络(CTFN)的工业大数据分析系统,用于复杂系统的智能工业大数据分析和状态监测。此外,考虑到不同故障的语义理解与自然特征之间的差距,提出了一种结构学习算法,以摆脱复杂的超参数,真正实现智能化。最后,在一个核电系统数据集上进行了实验验证,该数据集包含66个故障类别的362994个样本。结果证明了该方法在工业系统状态监测中的有效性和优越性,为ICPS中的工业大数据分析提供了一个有前途的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industrial Big Data Analytical System in Industrial Cyber-Physical Systems Based on Coarse-to-Fine Deep Network
In smart factories, there have been increasing requirements for industrial Big Data analysis of complex systems. With the rapid development of industrial cyber-physical systems (ICPS) and communication techniques, the scale and complexity of industrial data are growing explosively, which not only provides massive operational information of industrial systems but also brings challenges in Big Data analysis. In this paper, to overcome the intra/inter-class distance unbalance and local minima problems in traditional deep learning-based methods, an industrial Big Data analytical system based on a coarse-to-fine network (CTFN) is proposed for intelligent industrial Big Data analysis and condition monitoring of complex system. In addition, considering the gap between semantic comprehension and natural characteristics of different failures, a structure learning algorithm is proposed to get rid of the complicated hyper-parameters and implement intelligentization authentically. Finally, an experimental verification was carried on a nuclear power system dataset with 362,994 samples from 66 fault categories. The results demonstrate the effectiveness and superiority of the proposed method in condition monitoring of industrial systems, which provides a promising tool for industrial Big Data analysis in ICPS.
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