Hybrid model of a cement rotary kiln using an improved attention-based recurrent neural network

ISA Trans. 2022 Oct;129(Pt B):631-643. doi: 10.1016/j.isatra.2022.02.018. Epub 2022 Feb 15.

Abstract

A rotary kiln is core equipment in cement calcination. Significant time delay, time-varying, and nonlinear characteristics cause challenges in the advance process control and operational optimization of the rotary kiln. However, the traditional mechanism model with many assumptions cannot accurately represent the dynamic kiln process because kinetic parameters are difficult to obtain. This paper proposes a novel hybrid strategy to develop a dynamic model of a rotary kiln by combining a process mechanism and a recurrent neural network to address this issue. A time delay mechanism is used to estimate the kiln's residence time to compensate for the time delay. A long short-term memory model that combines an attention mechanism and an ordinary differential equation solver is proposed to capture the time-varying and nonlinear behaviors of the kiln process. Case studies from two real-world cement plants with different processing loads are used to verify the effectiveness of the proposed hybrid modeling strategy. The results show that the proposed method has better accuracy and robustness than the traditional methods. The sensitivity analysis of the proposed model also makes it practical for t control system design and real-time optimization.

Keywords: Attention mechanism; Hybrid model; Recurrent neural network; Rotary kiln.

MeSH terms

  • Incineration*
  • Neural Networks, Computer*