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An unsupervised approach in learning load patterns for non-intrusive load monitoring

机译:一种用于非侵入式负载监控的学习负载模式的无监督方法

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This paper proposes a new novel way for non-intrusive load monitoring. The technique can be applied to develop a powerful framework for low-cost power monitoring in buildings, particularly in the small commercial and residential sector. The method proposes the construction of a data base of prior knowledge about load patterns and it provides a powerful platform which has the capacity to solve one of the major challenges in power monitoring and energy management, which has been the development of robust unsupervised learning algorithms that eliminate the need for costly human involvement. To do so, a proposal is made on the basis of forming Bayesian networks for the load classification problem. The method has shown to be computationally compatible with handling a large data set. Finally, a case is studied for some major loads obtained from a bank building to demonstrate a basic test case in the real world.
机译:本文提出了一种新的非侵入式负荷监测方法。该技术可用于为建筑物,尤其是小型商业和住宅部门中的低成本电力监控开发强大的框架。该方法提出了关于负载模式的先验知识的数据库的构建,并且提供了一个强大的平台,该平台具有解决功率监控和能源管理中的主要挑战之一的能力,这是鲁棒的无监督学习算法的发展,消除了昂贵的人力参与的需求。为此,在形成贝叶斯网络的基础上提出了针对负荷分类问题的建议。该方法已显示与处理大型数据集在计算上兼容。最后,研究了从银行大楼获得的一些主要负载的案例,以演示现实世界中的基本测试案例。

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