Computer Engineering and Automation Department, Federal University of Rio Grande do Norte, 3000 Senador Salgado Filho Avenue, Natal, RN 59078970, Brazil.
Sensors (Basel). 2021 May 14;21(10):3430. doi: 10.3390/s21103430.
Soft sensors based on deep learning have been growing in industrial process applications, inferring hard-to-measure but crucial quality-related variables. However, applications may present strong non-linearity, dynamicity, and a lack of labeled data. To deal with the above-cited problems, the extraction of relevant features is becoming a field of interest in soft-sensing. A novel deep representative learning soft-sensor modeling approach is proposed based on stacked autoencoder (SAE), mutual information (MI), and long-short term memory (LSTM). SAE is trained layer by layer with MI evaluation performed between extracted features and targeted output to evaluate the relevance of learned representation in each layer. This approach highlights relevant information and eliminates irrelevant information from the current layer. Thus, deep output-related representative features are retrieved. In the supervised fine-tuning stage, an LSTM is coupled to the tail of the SAE to address system inherent dynamic behavior. Also, a k-fold cross-validation ensemble strategy is applied to enhance the soft-sensor reliability. Two real-world industrial non-linear processes are employed to evaluate the proposed method performance. The obtained results show improved prediction performance in comparison to other traditional and state-of-art methods. Compared to the other methods, the proposed model can generate more than 38.6% and 39.4% improvement of RMSE for the two analyzed industrial cases.
基于深度学习的软测量技术在工业过程应用中得到了广泛的应用,可以推断出难以测量但至关重要的质量相关变量。然而,应用可能呈现出很强的非线性、动态性和缺乏标记数据的问题。为了解决上述问题,相关特征的提取正在成为软测量中的一个研究领域。提出了一种基于堆叠自动编码器(SAE)、互信息(MI)和长短时记忆(LSTM)的新型深度代表性学习软测量建模方法。SAE 采用 MI 评估逐层进行训练,在每个层之间对提取的特征和目标输出进行评估,以评估学习表示的相关性。这种方法突出了相关信息,并从当前层中消除了不相关信息。因此,提取到了与输出相关的深度代表性特征。在有监督的微调阶段,将 LSTM 耦合到 SAE 的尾部,以解决系统固有的动态行为。此外,还应用了 k 折交叉验证集成策略来提高软传感器的可靠性。采用两个实际的工业非线性过程来评估所提出方法的性能。与其他传统和最新方法相比,所提出的方法在预测性能方面有了显著的提高。与其他方法相比,所提出的模型可以为两个分析的工业案例生成超过 38.6%和 39.4%的 RMSE 改进。