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Article type: Research Article
Authors: Chen, Ronga | Lan, Furongb; * | Wang, Jianhuac
Affiliations: [a] Longyan Tobacco Industry Co.Ltd, Longyan, Longyan, China | [b] Longyan Tobacco Industry Co.Ltd, Longyan, Fuzhou University, Longyan, China | [c] Zhejiang Originally Smart Co. Ltd, Zhejiang, Hangzhou, China
Correspondence: [*] Corresponding author. Furong Lan, Longyan Tobacco Industry Co. Ltd, Longyan, Fuzhou University, Longyan, 364000, China. E-mail: [email protected].
Abstract: In order to effectively control the pressure and energy consumption of multiple air compressors within an acceptable range, an intelligent pressure switching control method for air compressor group control based on multi-agent RL is studied. This method uses sensors in the air compressor field control cabinet to collect data such as header pressure, air storage tank pressure, and air storage tank temperature and sends them to the edge data collector for integration. After integration, the main control cabinet sends them to the upper computer. Combined with the on-site collected data, a multi-agent-based air compressor group control model is designed to convert multiple air compressors in the air compressor group control problem into a multi-agent mode, facilitating unified switching control of the air compressor group. Then, using the intelligent pressure switching control method based on deep Q-learning, driven by a neural network controller, the frequency of the frequency converter is adjusted to control the pressure at the outlet of the air compressor terminal header within the set value range, completing the pressure intelligent switching control. After testing, this method has good application results in pressure control, energy saving, and other aspects after being used for intelligent pressure switching control of air compressor group control.
Keywords: Multi-agent, intensive learning, air compressor group control, pressure intelligence, neural network controller
DOI: 10.3233/JIFS-233217
Journal: Journal of Intelligent & Fuzzy Systems, vol. 46, no. 1, pp. 2109-2122, 2024
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