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Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network

机译:主动深度神经网络基于化学传感器数据的故障诊断

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摘要

Big sensor data provide significant potential for chemical fault diagnosis, which involves the baseline values of security, stability and reliability in chemical processes. A deep neural network (DNN) with novel active learning for inducing chemical fault diagnosis is presented in this study. It is a method using large amount of chemical sensor data, which is a combination of deep learning and active learning criterion to target the difficulty of consecutive fault diagnosis. DNN with deep architectures, instead of shallow ones, could be developed through deep learning to learn a suitable feature representation from raw sensor data in an unsupervised manner using stacked denoising auto-encoder (SDAE) and work through a layer-by-layer successive learning process. The features are added to the top Softmax regression layer to construct the discriminative fault characteristics for diagnosis in a supervised manner. Considering the expensive and time consuming labeling of sensor data in chemical applications, in contrast to the available methods, we employ a novel active learning criterion for the particularity of chemical processes, which is a combination of Best vs. Second Best criterion (BvSB) and a Lowest False Positive criterion (LFP), for further fine-tuning of diagnosis model in an active manner rather than passive manner. That is, we allow models to rank the most informative sensor data to be labeled for updating the DNN parameters during the interaction phase. The effectiveness of the proposed method is validated in two well-known industrial datasets. Results indicate that the proposed method can obtain superior diagnosis accuracy and provide significant performance improvement in accuracy and false positive rate with less labeled chemical sensor data by further active learning compared with existing methods.
机译:大传感器数据为化学故障诊断提供了巨大潜力,其中涉及化学过程中安全性,稳定性和可靠性的基准值。本研究提出了一种具有新颖主动学习能力的深度神经网络(DNN),用于诱导化学故障诊断。这是一种使用大量化学传感器数据的方法,该方法结合了深度学习和主动学习准则,以解决连续故障诊断的困难。可以通过深度学习来开发具有深度架构而不是浅层架构的DNN,以使用堆叠降噪自动编码器(SDAE)以无监督的方式从原始传感器数据中学习合适的特征表示,并通过逐层连续学习来工作处理。将这些特征添加到顶层Softmax回归层,以构造可区分的故障特征,以有监督的方式进行诊断。考虑到化学应用中传感器数据的昂贵且费时的标记,与可用方法相反,我们针对化学过程的特殊性采用了一种新颖的主动学习准则,该准则是最佳与次佳准则(BvSB)和最低误报标准(LFP),用于以主动方式而非被动方式进一步微调诊断模型。也就是说,我们允许模型对信息最丰富的传感器数据进行排名,以在交互阶段更新DNN参数。在两个著名的工业数据集中验证了该方法的有效性。结果表明,与现有方法相比,通过进一步的主动学习,所提出的方法可以获得更好的诊断准确性,并通过更少的标记化学传感器数据,在准确性和假阳性率方面显着提高了性能。

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