Wang Ping, Yin Yichao, Deng Xiaogang, Bo Yingchun, Shao Weiming
College of Control Science and Engineering, China University of Petroleum, Qingdao 266580, China.
College of Control Science and Engineering, China University of Petroleum, Qingdao 266580, China.
ISA Trans. 2022 Nov;130:306-315. doi: 10.1016/j.isatra.2022.04.014. Epub 2022 Apr 13.
Echo state network (ESN) has been successfully applied to industrial soft sensor field because of its strong nonlinear and dynamic modeling capability. Nevertheless, the traditional ESN is intrinsically a supervised learning technique, which only depends on labeled samples, but omits a large number of unlabeled samples. In order to eliminate this limitation, this work proposes a semi-supervised ESN method assisted by a temporal-spatial graph regularization (TSG-SSESN) for constructing soft sensor model with all the available samples. Firstly, the traditional supervised ESN is enhanced to construct the semi-supervised ESN (SSESN) model by integrating both unlabeled and labeled samples in the reservoir computing procedure. The SSESN computes the reservoir states under high sampling rate for better process dynamic information mining. Furthermore, the SSESN's output optimization objective is modified by applying the local adjacency graph of all training samples as a regularization term. Especially, in view of the dynamic data characteristic, a temporal-spatial graph is constructed by considering both the temporal relationship and the spatial distances. The applications to a debutanizer column process and a wastewater treatment plant demonstrate that the TSG-SSESN model can build much smoother model and has better generalization capability than the basic ESN models in terms of soft sensor prediction results.
回声状态网络(ESN)因其强大的非线性和动态建模能力已成功应用于工业软传感器领域。然而,传统的ESN本质上是一种监督学习技术,它仅依赖于有标签的样本,却忽略了大量无标签的样本。为了消除这一局限性,本文提出了一种由时空图正则化辅助的半监督ESN方法(TSG - SSESN),用于利用所有可用样本构建软传感器模型。首先,通过在储层计算过程中整合无标签和有标签样本,对传统的监督ESN进行改进以构建半监督ESN(SSESN)模型。SSESN以高采样率计算储层状态,以便更好地挖掘过程动态信息。此外,通过将所有训练样本的局部邻接图作为正则化项来修改SSESN的输出优化目标。特别地,鉴于动态数据特征,通过同时考虑时间关系和空间距离来构建时空图。在脱丁烷塔过程和污水处理厂中的应用表明,就软传感器预测结果而言,TSG - SSESN模型能够构建更平滑的模型,并且比基本的ESN模型具有更好的泛化能力。