Simulation of Household Appliances with Energy Disaggrigation using Deep Learning Technique

B. Nandish, V. Pushparajesh
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引用次数: 2

Abstract

Energy disaggregation is one of the major concerns in the modern power management in domestic utilities. Main aim is to read the individual load appliance readings from the whole data. There are so many techniques to the field, deep learning being promising. This paper state about simulation of household appliances for data aggregation and energy disaggregation of individual appliances using deep learning technique. For data collection we have used data of individual standalone house for summer season. Deep learning technique such as complex tree and linear modules are studied in this paper with the incorporation of complex technique for better efficiency. The performance efficiency of both the modules are tested and evaluated in this paper. To make it cost-effective the system is simulated in MATLAB/SIMULINK for the different trial cases.
基于深度学习技术的家用电器能量分解仿真
能源分解是现代电力管理中的一个重要问题。主要目的是从整个数据中读取单个负载器具的读数。这个领域有很多技术,深度学习很有前途。本文论述了利用深度学习技术对家用电器进行数据聚合和能量分解的仿真。在数据收集方面,我们使用了夏季独立房屋的数据。本文研究了复杂树和线性模块等深度学习技术,并结合复杂技术提高了学习效率。本文对两个模块的性能效率进行了测试和评价。为了提高系统的性价比,在MATLAB/SIMULINK中对不同的试验案例进行了仿真。
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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