Machine learning for resource management in smart environments

Christian Fabbricatore, H. Boley, A. Karduck
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引用次数: 4

Abstract

Efficient resource and energy management is a key research and business area in todays IT markets. Cyber-physical ecosystems, like smart homes (SHs) and smart Environments (SEs) get interconnected, the efficient allocation of resources will become essential. Machine Learning and Semantic Web techniques for improving resource allocation and management are the focus of our research. They allow machines to process information on all levels, inferring expressive knowledge from raw data, in particular resource predictions from usage patterns. Our aim is to devise a novel approach for a machine learning (ML) and resource Management (RM) framework in SEs. It combines ML and Semantic Web techniques and integrates user interaction The main objective is to enable the creation of platforms that decrease the overall resource consumption by learning and predicting various usage patterns, and furthermore making decisions based on user-feedback. For this purpose, we evaluate recent research and applications, elicit framework requirements, and present a framework architecture. The approach and components are assessed and a prototype implementation is described.
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智能环境中资源管理的机器学习
高效的资源和能源管理是当今IT市场的一个重要研究和业务领域。网络物理生态系统,如智能家居(SHs)和智能环境(se)相互连接,资源的有效分配将变得至关重要。改进资源分配和管理的机器学习和语义网技术是我们研究的重点。它们允许机器处理所有级别的信息,从原始数据中推断出有表现力的知识,特别是从使用模式中预测资源。我们的目标是为se中的机器学习(ML)和资源管理(RM)框架设计一种新的方法。它结合了ML和语义Web技术,并集成了用户交互。主要目标是通过学习和预测各种使用模式,进一步根据用户反馈做出决策,从而创建减少总体资源消耗的平台。为此,我们评估了最近的研究和应用,引出了框架需求,并提出了一个框架体系结构。对方法和组件进行了评估,并描述了原型实现。
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