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Smart city article details

Title Deep Learning Forecasting Based On Auto-Lstm Model For Home Solar Power Systems
ID_Doc 17890
Authors Zaouali K.; Rekik R.; Bouallegue R.
Year 2019
Published Proceedings - 20th International Conference on High Performance Computing and Communications, 16th International Conference on Smart City and 4th International Conference on Data Science and Systems, HPCC/SmartCity/DSS 2018
DOI http://dx.doi.org/10.1109/HPCC/SmartCity/DSS.2018.00062
Abstract The Internet of things is widely used to provide a lot of useful services such as human health care, security systems and green energy monitoring. It contributes to the sustainable development of smart cities in order to manage and integrate renewable energies. The swift growth of Home Solar Power Systems (HSPS) has enabled a large-scale collection of time series data. As advanced tools, smart meters can ensure the timely reading of HSPS data, automating metering and producing fine-grained data. However, to ensure the dynamic data management and a better understanding of HSPS operations, it is crucial to analyze and forecast these digital records for decision-making and smart control. Up to now, deep learning algorithms have only been applied sparsely in the field of renewable energy power forecasting. In this paper, we apply an auto-configurable middleware based on a Long Short Term Memory (LSTM) model for several forecasting time dimensions to choose the significant timescale for learning setting. The results show that our deep-learning model has good performances compared to the Support Vector Machine (SVM) model for the whole proposed learning timescale. However, the Auto-Regressive Integrated Moving Average (ARIMA) seems better than our proposed auto-LSTM algorithm, but it takes much execution time for 15 min and 30 min-ahead forecasting. Thus, the day-ahead forecasting is the most efficient timescale in our case. © 2018 IEEE.
Author Keywords Auto-LSTM; Home Solar Power Systems; PV power forecasting; Smart meters


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