基于机器学习的智能管理系统:利用计算应用实现储能

B. Panigrahi, R. K. Kanna, Pragyan Paramita Das, S. Sahoo, Tanusree Dutta
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摘要

简介:云计算是一项新兴技术,允许客户根据使用情况支付服务费用。它提供基于互联网的服务,而虚拟化则优化了个人电脑的可用资源。目标:云计算的基础是数据中心:云计算的基础是数据中心,由联网计算机、电缆、电力元件以及托管和存储企业数据的其他各种元件组成。在云数据中心,高性能一直是一个关键问题,但这往往以增加能耗为代价。方法:最棘手的问题是在保持服务质量和性能的同时降低能耗,以平衡系统效率和能源使用。我们提出的方法需要全面了解云环境中的能源使用模式。结果:我们研究了功耗趋势,证明在能耗模型的基础上应用正确的优化原则,可以在云数据中心实现显著的节能。在预测阶段,平板电脑优化以其 97% 的准确率实现了更准确的未来成本预测。结论:能耗是云数据中心的一个主要问题。鉴于云计算需求的不断增长和广泛采用,要以尽可能少的资源处理接收到的请求,就必须保持有效和高效的数据中心策略。
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Machine Learning Based Intelligent Management System for Energy Storage Using Computing Application
INTRODUCTION: Cloud computing, a still emerging technology,  allows customers to pay for services based on usage. It provides internet-based services, whilst virtualization optimizes a PC’s available resources. OBJECTIVES: The foundation of cloud computing is the data center, comprising networked computers, cables, electricity components, and various other elements that host and store corporate data. In cloud data centres, high performance has always been a critical concern, but this often comes at the cost of increased energy consumption. METHODS: The most problematic factor is reducing power consumption while maintaining service quality and performance to balance system efficiency and energy use. Our proposed approach requires a comprehensive understanding of energy usage patterns within the cloud environment. RESULTS: We examined power consumption trends to demonstrate that with the application of the right optimization principles based on energy consumption models, significant energy savings can be made in cloud data centers. During the prediction phase, tablet optimization, with its 97 % accuracy rate, enables more accurate future cost forecasts. CONCLUSION: Energy consumption is a major concern for cloud data centers. To handle incoming requests with the fewest resources possible, given the increasing demand and widespread adoption of cloud computing, it is essential to maintain effective and efficient data center strategies.
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