Forecasting Energy Consumption Using Deep Learning in Smart Cities

Selahattin Serdar Helli, Senem Tanberk, O. Demir
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Abstract

Global energy demand is increasing continuously due to growth in the world population and industrial developments. In a parallel dimension, the problem of decreasing CO2 emissions in smart cities is becoming a priority. Forecasting energy consumption is essential for implementing a decarbonization plan in a smart city. The energy consumption forecasting problem has some challenges because of lacking appropriate data, including energy consumption patterns in the energy sector. In such a context, in this study, we focus on short-term time series forecasting for energy consumption tasks with comprehensive data. We employed LSTM, Transformer, XGBoost, and hybrid models to predict energy consumption via time series. The models were tested on the JERICHO-E-usage Germany dataset for Berlin, Düsseldorf, and the whole of Germany. We executed an energy consumption forecasting pipeline in our experiments to summarize Information and Communication Technology and Lighting energy types. Finally, we presented a comparative analysis between state-of-art deep learning and machine learning models (e.g., LSTM, Transformer, XGBoost), and a hybrid model. The proposed energy consumption forecasting pipeline can be applied to various countries and cities based on geographical distributions.
在智慧城市中使用深度学习预测能源消耗
由于世界人口的增长和工业的发展,全球能源需求不断增加。另一方面,减少智慧城市二氧化碳排放的问题正成为优先考虑的问题。预测能源消耗是智慧城市实施脱碳计划的关键。由于缺乏适当的数据,包括能源部门的能源消费模式,能源消费预测问题面临一些挑战。在这样的背景下,在本研究中,我们将重点放在综合数据的能源消耗任务的短期时间序列预测上。我们采用LSTM、Transformer、XGBoost和混合模型通过时间序列预测能源消耗。这些模型在柏林、塞尔多夫和整个德国的JERICHO-E-usage德国数据集上进行了测试。我们在实验中执行了能源消耗预测管道,以总结信息通信技术和照明能源类型。最后,我们对最先进的深度学习和机器学习模型(例如LSTM、Transformer、XGBoost)以及混合模型进行了比较分析。所提出的能源消耗预测管道可以根据地理分布适用于不同的国家和城市。
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