Summary:
Many of the data sets extracted from real-world industrial environments are time series that describe dynamic processes with characteristics that change over time. In this paper, we focus on the fouling process in an industrial furnace, which corresponds to a non-stationary multivariate time series with a seasonal component, non-homogeneous cycles and sporadic human interventions. We aim to forecast the evolution of the temperature inside the furnace over a long span of time of two and a half months. To accomplish this, we model the time series with dynamic Gaussian Bayesian networks (DGBNs) and compare their performance with convolutional recurrent neural networks. Our results show that DGBNs are capable of properly treating seasonal data and can capture the tendency of a time series without being distorted by the effect of interventions or by the varying length of the cycles.
Keywords: Long-term forecast; Furnace optimization; Dynamic Gaussian Bayesian networks; Multivariate time series; Fouling
JCR Impact Factor and WoS quartile: 7,802 - Q1 (2021); 7,500 - Q1 (2023)
DOI reference: https://doi.org/10.1016/j.engappai.2021.104301
Published on paper: August 2021.
Published on-line: May 2021.
Citation:
D. Quesada, G. Valverde, P. Larrañaga, C. Bielza, Long-term forecasting of multivariate time series in industrial furnaces with dynamic Gaussian Bayesian networks. Engineering Applications of Artificial Intelligence. Vol. 103, pp. 104301-1 - 104301-11, August 2021. [Online: May 2021]