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首页> 外文期刊>International Journal of Pharmaceutics >An application of deep learning to detect process upset during pharmaceutical manufacturing using passive acoustic emissions
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An application of deep learning to detect process upset during pharmaceutical manufacturing using passive acoustic emissions

机译:深度学习在使用被动声发射中探测药物制造过程中的过程镦锻的应用

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摘要

The multivariate nature of a fluidized bed system creates process complexity that increases the risk of production upset. This research explores the use of passive acoustic emissions monitoring paired with an artificial neural network to detect fluidized bed distributor plate blockage. In many cases, early process failure detection can allow for immediate intervention, thus lowering operation costs. Blockages were simulated by actively covering portions of a top-spray fluidized bed distributor plate. Piezoelectric microphones were placed within the fluidized bed exhaust and attached externally to the vessel wall. Several time and frequency domain feature vectors were extracted from the monitoring data using the open source pyAudioAnalysis library in Python. Through deep learning, the artificial neural network used these feature vectors to train against each distributor plate blockage condition. The deep learning model was then evaluated using k-fold cross validation. The findings were very positive and successfully demonstrated an application of deep learning to detect process upset.
机译:流化床系统的多变量性质会产生过程复杂性,从而提高了生产不适的风险。本研究探讨了与人工神经网络配对的被动声学发射监测使用以检测流化床分配器板块。在许多情况下,早期工艺失败检测可以允许立即干预,从而降低运行成本。通过主动覆盖顶喷流化床分配板的部分来模拟堵塞。将压电麦克风置于流化床排气中并在外部连接到容器壁。使用Python中的开源PyaudioAnaly Sysis图书库从监视数据中提取了几个时间和频域特征向量。通过深度学习,人工神经网络使用这些特征向量来训练每个分销板块堵塞条件。然后使用k折交叉验证评估深度学习模型。调查结果非常积极,成功地证明了深度学习来检测过程不安的应用。

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