Dynamic Simulation of Phase Change Material-Integrated Solar Water Heating Systems: A Novel Approach to Energy Conversion Optimization

Authors

  • Falah A.Barqawi Baghdad

Abstract

Phase change material (PCM) integrated solar water heating systems represent a critical technology for sustainable energy applications, yet face significant performance limitations due to poor thermal conductivity and lack of intelligent control optimization. This study aims to develop and validate a novel machine learning-driven optimization control technique for PCM-based solar water heating systems. The methodology employs a comprehensive three-phase mathematical model encompassing pre-melting, melting transition, and post-melting thermal dynamics, coupled with a neural network controller operating on real-time environmental data to predict optimal pump flow multipliers. Comprehensive simulation validation across five environmental conditions and three PCM materials demonstrated consistent performance improvements with energy storage enhancements of 2.5-4.1% (3.3% average) and heat transfer enhancement ratios of 1.03-1.04×. This research provides the first complete ML-based control system for PCM thermal energy storage with retrofit-compatible optimization requiring no hardware modifications, offering a quantifiable performance benefit for existing installations.

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Published

2025-12-28

Issue

Section

Articles

How to Cite

[1]
“Dynamic Simulation of Phase Change Material-Integrated Solar Water Heating Systems: A Novel Approach to Energy Conversion Optimization”, MJET, vol. 13, no. 3, Dec. 2025, Accessed: Jan. 30, 2026. [Online]. Available: https://muthuni-ojs.org/index.php/mjet/article/view/946