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Hardware and software platforms to deploy and evaluate non-intrusive load monitoring systems

机译:用于部署和评估非侵入式负载监控系统的硬件和软件平台

摘要

The work in this PhD thesis addresses the practical implications of deploying and testing Non-Intrusive Load Monitoring (NILM) and eco-feedback solutions in real-world scenarios. The contributions to this topic are centered around the design and development of NILM frameworks that have been deployed in the wild, supporting long-term research in ecofeedback and also serving the purpose of producing real-world datasets and furthering the state of the art regarding the performance metrics used to evaluate NILM algorithms. This thesis consists of three main parts: i) the development of tools and datasets for NILM and eco-feedback research, ii) the design, implementation and deployment of NILM and eco-feedback technologies in real world scenarios, and iii) an experimental comparison of performance metrics for event detection and event classification algorithms. In the first part we describe the Energy Monitoring and Disaggregation Data Format (EMD-DF) and the SustData and SustDataED public datasets. In second part we discuss the development and deployment of two hardware and software platforms in real households, to support eco-feedback research. We then report on more than five years of experience in deploying and maintaining such platforms. Our findings suggest that the main practical issues can be divided in two categories, technological (e.g., system installation) and social (e.g., maintaining a steady sample throughout the whole study). In the final part of this thesis we analyze experimentally the behavior of a number of performance metrics for event detection and event classification, identifying clusters and relationships between the different measures. Our results evidence some considerable differences in the behavior of the performance metrics when applied to the different problems.
机译:本博士论文中的工作解决了在实际场景中部署和测试非侵入式负载监控(NILM)和生态反馈解决方案的实际意义。对这一主题的贡献集中于已在野外部署的NILM框架的设计和开发,它支持对生态反馈的长期研究,并且还用于生成真实世界的数据集并促进有关用于评估NILM算法的性能指标。本论文由三个主要部分组成:i)开发用于NILM和生态反馈研究的工具和数据集,ii)在现实世界中设计,实施和部署NILM和生态反馈技术,以及iii)实验比较事件检测和事件分类算法的性能指标。在第一部分中,我们描述了能源监控和分解数据格式(EMD-DF)以及SustData和SustDataED公共数据集。在第二部分中,我们讨论了实际家庭中两个硬件和软件平台的开发和部署,以支持生态反馈研究。然后,我们报告在部署和维护此类平台方面超过五年的经验。我们的发现表明,主要的实际问题可以分为两类,即技术(例如系统安装)和社会问题(例如在整个研究过程中保持稳定的样本)。在本文的最后部分,我们通过实验分析了用于事件检测和事件分类的多个性能指标的行为,确定了聚类以及不同措施之间的关系。我们的结果表明,当将绩效指标应用于不同问题时,在行为指标方面存在相当大的差异。

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