Chen Ning, Hu Fuhai, Chen Jiayao, Wang Kai, Yang Chunhua, Gui Weihua
School of Automation, Central South University, Changsha 410083, China.
Sensors (Basel). 2022 Sep 22;22(19):7203. doi: 10.3390/s22197203.
In industrial processes, the composition of raw material and the production environment are complex and changeable, which makes the production process have multiple steady states. In this situation, it is difficult for the traditional single-mode monitoring methods to accurately detect the process abnormalities. To this end, a multimode monitoring method based on the factor dynamic autoregressive hidden variable model (FDALM) for industrial processes is proposed in this paper. First, an improved affine propagation clustering algorithm to learn the model modal factors is adopted, and the FDALM is constructed by combining multiple high-order hidden state Markov chains through the factor modeling technology. Secondly, a fusion algorithm based on Bayesian filtering, smoothing, and expectation-maximization is adopted to identify model parameters. The Lagrange multiplier formula is additionally constructed to update the factor coefficients by using the factor constraints in the solving. Moreover, the online Bayesian inference is adopted to fuse the information of different factor modes and obtain the fault posterior probability, which can improve the overall monitoring effect of the model. Finally, the proposed method is applied in the sintering process of ternary cathode material. The results show that the fault detection rate and false alarm rate of this method are improved obviously compared with the traditional methods.
在工业过程中,原材料成分和生产环境复杂多变,这使得生产过程具有多个稳态。在这种情况下,传统的单模式监测方法难以准确检测过程异常。为此,本文提出了一种基于因子动态自回归隐藏变量模型(FDALM)的工业过程多模式监测方法。首先,采用一种改进的仿射传播聚类算法来学习模型模态因子,并通过因子建模技术将多个高阶隐藏状态马尔可夫链相结合构建FDALM。其次,采用一种基于贝叶斯滤波、平滑和期望最大化的融合算法来识别模型参数。额外构建拉格朗日乘子公式,在求解过程中利用因子约束来更新因子系数。此外,采用在线贝叶斯推理来融合不同因子模式的信息并获得故障后验概率,这可以提高模型的整体监测效果。最后,将所提方法应用于三元正极材料的烧结过程。结果表明,与传统方法相比,该方法的故障检测率和误报率有明显提高。