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首页> 外文期刊>Journal of Chemometrics >Amplitude-frequency images-based ConvNet: Applications of fault detection and diagnosis in chemical processes
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Amplitude-frequency images-based ConvNet: Applications of fault detection and diagnosis in chemical processes

机译:基于幅度图像的ConvNet:化学过程的故障检测和诊断的应用

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摘要

Fault detection and diagnosis (FDD) have been major concerns in abnormal event management of chemical processes for decades. Frequency-wise variations in chemical processes are not considered in most traditional methods, which affects the monitoring performance. An amplitude-frequency images-based convolutional neural network (ConvNet) is proposed for FDD in chemical processes. The fast Fourier transform (FFT) is first performed on data slice collected within a period to extract both amplitude-wise dynamics and frequency-wise variations, with the results in images. Then, the amplitude-frequency images are fed into ConvNet for FDD. ConvNet is applied as a binary classifier, in which each classifier corresponds to only one fault. Thus, an expandable framework is provided to incorporate a new fault. The performance of the proposed amplitude-frequency images-based ConvNet in FDD is demonstrated in a numerical case and the Tennessee Eastman process.
机译:故障检测和诊断(FDD)几十年来的化学过程异常管理的主要问题。 在大多数传统方法中不考虑化学过程的频率明智的变化,这影响了监测性能。 提出了一种基于幅度图像的卷积神经网络(ConvNet),用于化学过程中的FDD。 首先在收集在一段时间内收集的数据切片上的快速傅里叶变换(FFT),以提取幅度明智的动态和频率明智的变化,结果是图像的结果。 然后,将幅度频率图像送入FDD的GROMNet中。 ConvNet应用于二进制分类器,其中每个分类器对应于一个故障。 因此,提供可扩展框架以结合新故障。 在FDD中,在FDD中的基于幅度频率图像的Convnet的性能在数值案例和田纳西州伊士曼流程中进行了演示。

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