计算机科学
信号(编程语言)
干扰(通信)
恒虚警率
流态化
流化床
断层(地质)
时间序列
时频分析
人工智能
实时计算
模式识别(心理学)
计算机视觉
工程类
地质学
机器学习
频道(广播)
地震学
滤波器(信号处理)
程序设计语言
废物管理
计算机网络
作者
Wenhao Yan,Zhenwu Lei,Jing Wang,Meng Zhou
标识
DOI:10.1109/iai59504.2023.10327532
摘要
For the complex chemical processes, traditional abnormal monitoring methods show low alarm accuracy and poor real-time performance due to the limitation of environmental interference and operational experience. Moreover, the monitored data are mostly time series with the important signal features masked by noise. This study proposes a kind of deep learning-based monitoring method to alarm the incipient agglomeration in a gas-solid fluidization polymer production. The proposed method takes the acoustic signal as the monitoring signal. First the time-frequency analysis is used to extract the fault features hidden in the original acoustic wave and enrich the tiny agglomeration information. Then, the time series in the time-frequency domain are converted into Gramian Angular Field (GAF) images which encode the one-dimension data into 2D pictures by preserving the temporal dependency features. Finally, the improved AlexNet is proposed to monitor the incipient agglomerates. The proposed method is verified in an actual gas-solid fluidized bed equipment, and the experimental results show that it effectively increases the fault detection rate and decreases the false alarm rate.
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