Quantum-Inspired Load Forecasting Model Integrating STL Decomposition and Clustering Techniques for Intelligent Energy Management

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Santi Karisan
Suporn Rittipuakdee
Santiphong Khongkaeo
Sittisak Rojchaya

Abstract

This research presents a framework for analyzing and forecasting three-phase electrical load using Quantum-Inspired Machine Learning combined with STL Decomposition, K-Means Clustering, and Anomaly Detection techniques. Real-world data were collected from the Industrial Technician School building at RMUTSV over a period of 151 days (December 2024 – April 2025). The analysis revealed that Phase B exhibited the highest average current at 13.40A, compared to Phase A (6.02A) and Phase C (7.62A), indicating a significant phase unbalance, with an average A–B difference of 7.38A and     a maximum differential of 17.9A. STL Decomposition indicated an upward trend in Phase B load, increasing from 7.0A in December 2024 to 21.5A in March 2025, along with multiple residual spikes exceeding ±5A, reflecting transient load fluctuations. Anomaly Detection (Z-Score + Isolation Forest) identified 17 abnormal points, with the highest anomaly recorded on       March 12, 2025, reaching 36.0A. Using K-Means clustering (k = 3), the load was classified into three clusters Low ~7.1A Medium ~13.7A High ~19.3A These findings provide critical insights for developing effective energy management strategies within educational buildings.

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How to Cite
karisan, santi, Rittipuakdee, S., Khongkaeo, S., & Rojchaya, S. (2025). Quantum-Inspired Load Forecasting Model Integrating STL Decomposition and Clustering Techniques for Intelligent Energy Management. Journal of Bansomdej Engineering and Industrial Technology, 6(2), 90–109. retrieved from https://ph04.tci-thaijo.org/index.php/JEITB/article/view/10539
Section
Research Article

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