A Multi-Scenario Smartphone Battery Life Optimization Model Based on the Entropy Weight Method, Grey Relational Analysis, and Linear Programming

Jianchuan Zhu, Jiuming Wang

Abstract


To mitigate the bottleneck of insufficient smartphone battery life in high-frequency usage scenarios and balance endurance performance with user experience, this study develops a multi-scenario battery life optimization model. A hybrid weighting model combining the Entropy Weight Method (EWM) and Grey Relational Analysis (GRA) is adopted to identify core influencing factors with 98.5% accuracy, with network type and screen brightness confirmed as the dominant ones. Scenario-specific linear programming models are constructed for gaming, daily use and navigation, with scenario-based constraints incorporated to maximize battery life. The model achieves an average 18.7% improvement in battery life, with respective gains of 22.3%, 18.7% and 15.2% for the three scenarios. A three-dimensional validation framework of effectiveness, stability and robustness verifies that all parameter and battery life ratio deviations are within 10%. Compared with traditional models, the proposed model features 35% higher computational efficiency and superior scenario adaptability, providing a practical theoretical reference for the design of intelligent battery management systems for smartphones.


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DOI: https://doi.org/10.22158/mmse.v8n1p180

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