International Journal of Engineering, Science and Information Technology
Vol 5, No 1 (2025)

Algorithms and Modeling for Optimizing Sustainable Energy Systems

Jaleel Maktoof, Mohammed Abdul (Unknown)
Shaker, Alhamza Abdulsatar (Unknown)
Nayef, Hamdi Abdullah (Unknown)
Taher, Nada Adnan (Unknown)
Yousif Al Hilfi, Thamer Kadum (Unknown)
Maidin, Siti Sarah (Unknown)



Article Info

Publish Date
10 May 2025

Abstract

The global transition toward sustainable energy necessitates intelligent, integrated solutions to overcome the intermittency of renewable sources. This paper presents and validates a comprehensive framework for optimising Hybrid Solar-Wind Energy (HSWE) systems by integrating advanced simulation, machine learning-based forecasting, and metaheuristic optimisation. Using meteorological and operational data from three distinct climate zones, we modelled and analysed a PV-wind-lithium-ion hybrid system. A neural network was employed for precise load forecasting, while Particle Swarm Optimisation (PSO) managed real-time resource allocation and storage dispatch. Comparative analysis reveals that the optimised hybrid system significantly outperforms standalone units, increasing energy production by up to 32%, improving overall energy efficiency to 92.3%, and reducing operational costs by over 36%. The simulation models demonstrated high fidelity, with predictions matching experimental field data with less than 1% error. Furthermore, the integration of predictive fault handling and intelligent load balancing enhanced system reliability, increasing the mean time between failures (MTBF) by over 70% and achieving 97.6% system availability. This research provides a validated, replicable framework for engineers and policymakers, demonstrating a practical pathway to developing efficient, economically viable, and resilient decentralised renewable energy infrastructure to meet global sustainability goals.

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