基于反卷积网络的动态过程故障检测

Dapeng Zhang, David Zhiwei Gao
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引用次数: 0

摘要

针对实际系统故障数据难以获取的问题,提出了一种基于健康数据的故障检测方法,该方法将系统的整个空间划分为故障状态和无故障状态。首先,以蒙特卡罗法获得的初始数据为输入,利用反卷积网络生成观测窗口时间序列;生成对抗网络的判别器使生成数据的概率分布近似于实际样本数据。通过连续迭代,最终得到整个空间的健康概率分布。同时,将鉴别器演化为故障检测器,实现对新数据的检测。基于某风力机基准模型的数值仿真算例验证了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A GAN-based fault detection for dynamic process with deconvolutional networks
Aiming to overcome the difficulty to obtain the fault data of practical system, a fault detection approach using health data only is proposed based on the whole space of the system being divided into the fault status and the fault-free status. Firstly the time series of observation window is generated by a deconvolutional network with an input of initial data obtained by Monte Carlo method. The probability distribution of generated data approximates to the actual sample data by discriminator of generative adversarial network. Through continuous iteration, the health probability distribution is finally obtained in the whole space. Concurrently the discriminator is evolved into a fault detector which realizes the detection of new data. The effectiveness of the algorithm is demonstrated by a numerical simulation example based on a wind turbine benchmark model.
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