Clustering Method Comparison for Rural Occupant’s Behavior Based on Building Time-Series Energy Data

Author:

Liu Xiaodong1,Zhang Shuming1,Wang Xiaohan1,Wu Rui1,Yang Junqi1,Zhang Hong1,Wu Jianing1ORCID,Li Zhixin1

Affiliation:

1. School of Architecture, Tsinghua University, Beijing 100084, China

Abstract

The purpose of this research is to compare clustering methods and pick up the optimal clustered approach for rural building energy consumption data. Research undertaken so far has mainly focused on solving specific issues when employing the clustered method. This paper concerns Yushan island resident’s time-series electricity usage data as a database for analysis. Fourteen algorithms in five categories were used for cluster analysis of the basic data sets. The result shows that Km_Euclidean and Km_shape present better clustering effects and fitting performance on continuous data than other algorithms, with a high accuracy rate of 67.05% and 65.09%. Km_DTW is applicable to intermittent curves instead of continuous data with a low precision rate of 35.29% for line curves. The final conclusion indicates that the K-means algorithm with Euclidean distance calculation and the k-shape algorithm are the two best clustering algorithms for building time-series energy curves. The deep learning algorithm can not cluster time-series-building electricity usage data under default parameters in high precision.

Publisher

MDPI AG

Reference55 articles.

1. Towards sustainable, energy-efficient and healthy ventilation strategies in buildings: A review;Chenari;Renew. Sustain. Energy Rev.,2016

2. IEA (2012). Energy Technology Perspectives Scenarios, International Energy Agency (IEA).

3. IRENA (2021). Renewable Capacity Statistics 2021, International Renewable Energy Agency.

4. IRENA (2022). Renewable Energy Statistics 2022, The International Renewable.

5. IRENA (2021). World Energy Transitions Outlook: 1.5C Pathway, International Renewable Energy Agency.

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