Dynamic machine learning-based optimization algorithm to improve boiler efficiency
Reviewartikel, 2022

With decreasing computational costs, improvement in algorithms, and the aggregation of large industrial and commercial datasets, machine learning is becoming a ubiquitous tool for process and business innovations. Machine learning is still lacking applications in the field of dynamic optimization for real-time control. This work presents a novel framework for performing constrained dynamic optimization using a recurrent neural network model combined with a metaheuristic optimizer. The framework is designed to augment an existing control system and is purely data-driven, like most industrial Model Predictive Control applications. Several recurrent neural network models are compared as well as several metaheuristic optimizers. Hyperparameters and optimizer parameters are tuned with parameter sweeps, and the resulting values are reported. The best parameters for each optimizer and model combination are demonstrated in closed-loop control of a dynamic simulation, and several recommendations are made for generalizing this framework to other systems. Up to 0.953% improvement is realized over the non-optimized case for a simulated coal-fired boiler. While this is not a large improvement in percentage, the total economic impact is $991,000 per year, and this study builds a foundation for future machine learning with dynamic optimization.

Metaheuristic optimization

Machine learning

Recurrent neural network

Dynamic optimization

Författare

Landen D. Blackburn

University of Utah

Jacob F. Tuttle

LLC

Klas Andersson

University of Utah

Chalmers, Rymd-, geo- och miljövetenskap, Energiteknik

John D. Hedengren

Brigham Young University

Kody M. Powell

University of Utah

Journal of Process Control

0959-1524 (ISSN)

Vol. 120 129-149

Ämneskategorier

Bioinformatik (beräkningsbiologi)

Reglerteknik

Datorsystem

DOI

10.1016/j.jprocont.2022.11.002

Mer information

Senast uppdaterat

2023-10-26