Towards Sustainable Mobile Computing: Power Optimization Techniques and Evaluation

https://doi.org/10.56225/ijgoia.v5i1.444

Authors

  • Shekh Abdullah-Al-Musa Ahmed Department of Computer Science and Engineering, Faculty of Science & Engineering, University of Information Technology & Sciences (UITS), 1212 Dhaka, Bangladesh
  • Syed Arif Islam Department of Computer Science and Engineering, Faculty of Science & Engineering, University of Information Technology & Sciences (UITS), 1212 Dhaka, Bangladesh
  • Md.Atiqur Rahman Sifat Department of Computer Science and Engineering, Faculty of Science & Engineering, University of Information Technology & Sciences (UITS), 1212 Dhaka, Bangladesh
  • Muhammad Imtiaz Ahmed Department of Computer Science and Engineering, Faculty of Science & Engineering, University of Information Technology & Sciences (UITS), 1212 Dhaka, Bangladesh
  • Fahmida Dipty Department of Computer Science and Engineering, Faculty of Science & Engineering, University of Information Technology & Sciences (UITS), 1212 Dhaka, Bangladesh

Keywords:

Power Optimization, Mobile Operating Systems, Dynamic Voltage and Frequency Scaling (DVFS), Industrial Energy Efficiency, Power-Aware Scheduling

Abstract

Power optimization is a critical dimension of modern computing systems, encompassing strategies to reduce energy consumption while preserving performance, reliability, and user experience. This study investigates power optimization techniques in mobile operating systems within the broader framework of digital electronics and energy-efficient computing. The methodology integrates system monitoring, statistical analysis, and mathematical modeling of power consumption, with particular emphasis on the relationship between voltage, frequency, and dynamic power dissipation. Specifically, techniques such as Dynamic Voltage and Frequency Scaling (DVFS), power-aware scheduling, and resource allocation strategies are examined, alongside software-level mechanisms including Doze mode, App Standby, adaptive brightness, and network optimization. The study further evaluates the utility of profiling and benchmarking tools, namely Trepn Profiler, PowerTutor, and Battery Historian, in identifying energy inefficiencies and informing system performance improvements. The results demonstrate that integrating hardware and software-level optimizations yields significant reductions in power consumption. Notably, DVFS alone achieves substantial energy savings attributable to the quadratic dependence of dynamic power on supply voltage. Furthermore, intelligent scheduling and context-aware resource management enhance energy efficiency by dynamically adapting to workload variations and user behavioral patterns. These findings underscore the need to balance power efficiency with system responsiveness, particularly in latency-sensitive applications such as mobile banking. The study concludes that effective power optimization requires an integrated, data-driven approach that leverages mathematical modeling, statistical analysis, and adaptive control mechanisms to enable sustainable, efficient mobile computing.

Downloads

Download data is not yet available.

References

B. Dietich, N. Peters, S. Park and S. Chakraborty.(2017).Estimating the Limits of CPU Power Management for Mobile Games. 2017 IEEE International Conference on Computer Design (ICCD), Boston, MA, USA. pp. 1-8.

G. Bhat, G. Singla, A. K. Unver and U. Y. Ogras.(2018). Algorithmic Optimization of Thermal and Power Management for Heterogeneous Mobile Platforms . IEEE Transactions on Very Large Scale Integration (VLSI) Systems, vol. 26(3), pp. 544-557.

Published

2026-03-31

How to Cite

Ahmed, S. A.-A.-M., Islam, S. A., Sifat, M. R., Ahmed, M. I., & Dipty, F. (2026). Towards Sustainable Mobile Computing: Power Optimization Techniques and Evaluation. International Journal of Global Optimization and Its Application, 5(1), e444. https://doi.org/10.56225/ijgoia.v5i1.444

Similar Articles

<< < 1 2 3 4 5 6 > >> 

You may also start an advanced similarity search for this article.