Publication Details
Issue: Vol 3, No 3 (2026)
ISSN: 2997-3902
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Abstract

The article presents an intelligent control system for a compressor station (CS) based on a hybrid application of a genetic algorithm (GA) and gradient descent (GD). Two key process parameters are optimized: the compressor rotor speed (ω, rpm) and the discharge pressure (P_out, bar). The model automatically adapts its operating modes to changes in gas flow, ambient temperature, and load factor, reducing energy consumption without compromising performance. Experimental studies on a 5 MW digital twin of a power plant showed that the hybrid GA+GD provides energy savings of 12.1% to 17.7% compared to the classical PID controller and 5-7% better than using only GA. The adaptation time to the new mode does not exceed 40 seconds, and the power fluctuations are reduced to ±1.3%. The proposed system can be implemented on the basis of industrial controllers with limited computing resources.

Keywords
Compressor station energy efficiency genetic algorithm gradient descent optimization of rotational speed compressor pressure adaptive control minimization of energy consumption anti-pumping regulation machine learning in industry