Sustainable Energy Management Framework for Cloud Services

Authors

  • Malik Shahzad Ahmed Iqbal
  • Mohd Haroon

Keywords:

Cloud Computing, Sustainable Energy Management, Dynamic Resource Allocation, Renewable Energy Integration, Power Efficiency

Abstract

The proposed framework integrates energy-aware scheduling algorithms, dynamic resource allocation, and renewable energy sources to minimize power consumption in cloud data centres. By implementing AI-driven workload balancing and virtual machine (VM) migration techniques, SEMF effectively reduces energy wastage while ensuring optimal resource utilization. The framework incorporates real-time energy monitoring and predictive analytics to proactively adjust power consumption based on workload fluctuations. Our experimental analysis demonstrates that SEMF outperforms traditional energy management approaches, achieving a reduction in energy consumption by up to 30% while maintaining system performance. The integration of green energy sources further enhances the framework’s sustainability, reducing dependency on non-renewable energy. By implementing SEMF, cloud service providers can achieve a balance between energy efficiency and performance, leading to reduced operational costs and a lower carbon footprint. This research highlights the potential of intelligent energy management strategies in creating a sustainable, eco-friendly cloud computing environment.

Downloads

Published

2025-10-07

How to Cite

Malik Shahzad Ahmed Iqbal, & Mohd Haroon. (2025). Sustainable Energy Management Framework for Cloud Services. Utilitas Mathematica, 122(2), 1578–1591. Retrieved from https://utilitasmathematica.com/index.php/Index/article/view/2892

Citation Check

Most read articles by the same author(s)

Obs.: This plugin requires at least one statistics/report plugin to be enabled. If your statistics plugins provide more than one metric then please also select a main metric on the admin's site settings page and/or on the journal manager's settings pages.