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Two approaches for synthesizing scalable residential energy consumption data

机译:合成可扩展住宅能源消耗数据的两种方法

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Many fields require scalable and detailed energy consumption data for different study purposes. However, due to privacy issues, it is often difficult to obtain sufficiently large datasets. This paper proposes two different methods for synthesizing fine-grained energy consumption data for residential households, namely a regression-based method and a probability-based method. They each use a supervised machine learning method, which trains models with a relatively small real-world dataset and then generates large-scale time series based on the models. This paper describes the two methods in details, including data generation process, optimization techniques, and parallel data generation. This paper evaluates the performance of the two methods, which compare the resulting consumption profiles with real-world data, including patterns, statistics, and parallel data generation in the cluster. The results demonstrate the effectiveness of the proposed methods and their efficiency in generating large-scale datasets. (C) 2019 Elsevier B.V. All rights reserved.
机译:许多领域需要用于不同的研究目的的可扩展和详细的能量消耗数据。但是,由于隐私问题,往往难以获得足够大的数据集。本文提出了两种不同的方法,用于合成住宅户口的细粒度能耗数据,即基于回归的方法和基于概率的方法。它们各自使用监督机器学习方法,该方法用相对较小的真实数据集列举模型,然后基于模型生成大规模的时间序列。本文介绍了细节中的两种方法,包括数据生成过程,优化技术和并行数据生成。本文评估了两种方法的性能,该方法将产生的消费配置文件与实际数据(包括群集中的模式,统计和并行数据生成)进行比较。结果证明了所提出的方法的有效性及其在产生大规模数据集时的效率。 (c)2019 Elsevier B.v.保留所有权利。

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