通过使用智能电表和天气数据,利用机器学习来制定近乎零能耗建筑的政策,从而深入了解住宅特征

Teo Čurčić, Rajeev Robin Kalloe, Merel Alexandra Kreszner, Olivier van Luijk, Santiago Puertas Puchol, Emilio Caba Batuecas, T. B. S. Rahola
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引用次数: 11

摘要

机器学习模型已被证明是分类任务中可靠的方法。然而,以前很少有研究基于智能电表和天气数据对住宅特征进行分类。深入了解住宅特征,包括使用的供暖系统类型、居民人数和安装的太阳能电池板数量,有助于制定或改进在几乎零能源标准下建造新住宅的政策。本文比较了不同的监督机器学习算法,即逻辑回归、支持向量机、K-最近邻和长短期记忆,以及正确实现这些算法的方法。这些方法包括数据预处理、模型验证和评估。Groene Mient提供了用于训练几种机器学习算法的智能仪表数据。对算法生成的模型的性能进行了比较。结果表明,长短期记忆表现最好,准确率为96%。交叉验证用于验证模型,其中80%的数据用于训练目的,20%用于测试目的。评估指标用于生成分类报告,这表明长短期记忆在该特定问题的评估指标上优于比较模型。
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Gaining insights into dwelling characteristics using machine learning for policy making on nearly zero-energy buildings with the use of smart meter and weather data
Machine learning models have proven to be reliable methods in classification tasks. However, little research has been conducted on the classification of dwelling characteristics based on smart meter and weather data before. Gaining insights into dwelling characteristics, which comprise of the type of heating system used, the number of inhabitants, and the number of solar panels installed, can be helpful in creating or improving the policies to create new dwellings at nearly zero-energy standard. This paper compares different supervised machine learning algorithms, namely Logistic Regression, Support Vector Machine, K-Nearest Neighbor, and Long-short term memory, and methods used to correctly implement these algorithms. These methods include data pre-processing, model validation, and evaluation. Smart meter data, which was used to train several machine learning algorithms, was provided by Groene Mient. The models that were generated by the algorithms were compared on their performance. The results showed that the Long-short term memory performed the best with 96% accuracy. Cross Validation was used to validate the models, where 80% of the data was used for training purposes and 20% was used for testing purposes. Evaluation metrics were used to produce classification reports, which indicates that the Long-short term memory outperforms the compared models on the evaluation metrics for this specific problem.
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来源期刊
CiteScore
5.40
自引率
9.50%
发文量
59
审稿时长
20 weeks
期刊介绍: The Journal of Sustainable Development of Energy, Water and Environment Systems – JSDEWES is an international journal dedicated to the improvement and dissemination of knowledge on methods, policies and technologies for increasing the sustainability of development by de-coupling growth from natural resources and replacing them with knowledge based economy, taking into account its economic, environmental and social pillars, as well as methods for assessing and measuring sustainability of development, regarding energy, transport, water, environment and food production systems and their many combinations.
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