A Novel Approach of Reducing Energy Consumption by utilizing Big Data analysis in Mobile Cloud Computing

Mostafa Abdulghafoor Mohammed, Nicolae Țăpuș
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Abstract

With the rapid proliferation of smart mobile devices and increasing adoption of cloud computing services, energy efficiency has become an important issue in mobile cloud environments. High energy consumption not only results in higher operational costs but also creates sustainability concerns related to cloud infrastructure and services. This paper proposes leveraging big data techniques such as machine learning and predictive analytics to optimize resource allocation and reduce energy consumption in mobile cloud computing. The massive amount of data on factors like user behavior, mobility patterns, network availability, and resource utilization can provide key insights to improve energy efficiency. We present an intelligent predictive framework to forecast mobile cloud resource demands and enable dynamic scaling of cloud configurations aligned to current needs. By proactively adapting cloud resources based on learned models and detected usage patterns, over-provisioning and under-utilization can be minimized. Specifically, we demonstrate how clustering, classification, regression, and times series models derived from contextual usage data can significantly improve energy efficiency when integrated with mobile cloud management systems. The proposed approaches are validated experimentally using simulated workloads and real-world trajectory data sets. Results indicate average energy savings of 42% and up to 62% for certain user groups compared to conventional cloud resource allocation techniques. This work provides an important contribution toward building more sustainable and energy efficient mobile cloud computing systems to meet the mobility and computing demands of the future through the transformative power of big data analytics.
移动云计算中利用大数据分析降低能耗的新方法
随着智能移动设备的迅速普及和云计算服务的日益广泛采用,能效已成为移动云环境中的一个重要问题。高能耗不仅会导致运营成本增加,还会引发与云基础设施和服务相关的可持续发展问题。本文建议利用机器学习和预测分析等大数据技术来优化资源分配,降低移动云计算的能耗。有关用户行为、移动模式、网络可用性和资源利用率等因素的海量数据可为提高能效提供关键见解。我们提出了一个智能预测框架,用于预测移动云资源需求,并根据当前需求实现云配置的动态扩展。通过根据学习到的模型和检测到的使用模式主动调整云资源,可以最大限度地减少过度供应和利用不足。具体来说,我们展示了从上下文使用数据中得出的聚类、分类、回归和时间序列模型如何在与移动云管理系统集成时显著提高能效。我们使用模拟工作负载和真实世界轨迹数据集对所提出的方法进行了实验验证。结果表明,与传统的云资源分配技术相比,某些用户群的平均节能率为 42%,最高可达 62%。这项工作为建立更可持续、更节能的移动云计算系统做出了重要贡献,通过大数据分析的变革力量满足了未来的移动性和计算需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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