Wind Power Forecasting with Machine Learning Algorithms in Low-Cost Devices

被引:6
作者
Buestan-Andrade, Pablo Andres [1 ]
Penacoba-Yague, Mario [2 ]
Sierra-Garcia, Jesus Enrique [2 ]
Santos, Matilde [3 ]
机构
[1] Univ Complutense Madrid, Comp Sci Fac, Madrid 28040, Spain
[2] Univ Burgos, Dept Digitalizat, Burgos 09006, Spain
[3] Univ Complutense Madrid, Inst Knowledge Technol, Madrid 28040, Spain
关键词
machine learning; CNN; FC; GRU; transformers; forecasting; wind energy; wind turbine; hardware implementation; computational time; Raspberry Pi; HARDWARE; TRACKING;
D O I
10.3390/electronics13081541
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The urgent imperative to mitigate carbon dioxide (CO2) emissions from power generation poses a pressing challenge for contemporary society. In response, there is a critical need to intensify efforts to improve the efficiency of clean energy sources and expand their use, including wind energy. Within this field, it is necessary to address the variability inherent to the wind resource with the application of prediction methodologies that allow production to be managed. At the same time, to extend its use, this clean energy should be made accessible to everyone, including on a small scale, boosting devices that are affordable for individuals, such as Raspberry and other low-cost hardware platforms. This study is designed to evaluate the effectiveness of various machine learning (ML) algorithms, with special emphasis on deep learning models, in accurately forecasting the power output of wind turbines. Specifically, this research deals with convolutional neural networks (CNN), fully connected networks (FC), gated recurrent unit cells (GRU), and transformer-based models. However, the main objective of this work is to analyze the feasibility of deploying these architectures on various computing platforms, comparing their performance both on conventional computing systems and on other lower-cost alternatives, such as Raspberry Pi 3, in order to make them more accessible for the management of this energy generation. Through training and a rigorous benchmarking process, considering accuracy, real-time performance, and energy consumption, this study identifies the optimal technique to accurately model such real-time series data related to wind energy production, and evaluates the hardware implementation of the studied models. Importantly, our findings demonstrate that effective wind power forecasting can be achieved on low-cost hardware platforms, highlighting the potential for widespread adoption and the personal management of wind power generation, thus representing a fundamental step towards the democratization of clean energy technologies.
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页数:24
相关论文
共 36 条
[1]   Advanced Deep Learning Approach for Probabilistic Wind Speed Forecasting [J].
Afrasiabi, Mousa ;
Mohammadi, Mohammad ;
Rastegar, Mohammad ;
Afrasiabi, Shahabodin .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2021, 17 (01) :720-727
[2]  
Akhtari Simon, 2019, 2019 IEEE 5th International forum on Research and Technology for Society and Industry (RTSI). Proceedings, P427, DOI 10.1109/RTSI.2019.8895598
[3]   Tiny Neural Networks for Environmental Predictions: an integrated approach with Miosix [J].
Alongi, Francesco ;
Ghielmetti, Nicolo ;
Pau, Danilo ;
Terraneo, Federico ;
Fornaciari, William .
2020 IEEE INTERNATIONAL CONFERENCE ON SMART COMPUTING (SMARTCOMP), 2020, :350-355
[4]   CNN Variants for Computer Vision: History, Architecture, Application, Challenges and Future Scope [J].
Bhatt, Dulari ;
Patel, Chirag ;
Talsania, Hardik ;
Patel, Jigar ;
Vaghela, Rasmika ;
Pandya, Sharnil ;
Modi, Kirit ;
Ghayvat, Hemant .
ELECTRONICS, 2021, 10 (20)
[5]  
Buestan-Andrade Pablo-Andres, 2023, 18th International Conference on Soft Computing Models in Industrial and Environmental Applications (SOCO 2023): Proceedings. Lecture Notes in Networks and Systems (750), P334, DOI 10.1007/978-3-031-42536-3_32
[6]   Pathways for sustainable energy transition [J].
Chen, Bin ;
Xiong, Rui ;
Li, Hailong ;
Sun, Qie ;
Yang, Jin .
JOURNAL OF CLEANER PRODUCTION, 2019, 228 :1564-1571
[7]   Vision-Based Moving UAV Tracking by Another UAV on Low-Cost Hardware and a New Ground Control Station [J].
Cintas, Emre ;
Ozyer, Baris ;
Simsek, Emrah .
IEEE ACCESS, 2020, 8 :194601-194611
[8]   Quantitative Analysis of Deep Leaf: a Plant Disease Detector on the Smart Edge [J].
de Vita, Fabrizio ;
Nocera, Giorgio ;
Bruneo, Dario ;
Tomaselli, Valeria ;
Giacalone, Davide ;
Das, Sajal K. .
2020 IEEE INTERNATIONAL CONFERENCE ON SMART COMPUTING (SMARTCOMP), 2020, :49-56
[9]  
Durr Oliver, 2015, EUR WINT SWITZ, P11
[10]   A Review of Algorithms and Hardware Implementations for Spiking Neural Networks [J].
Duy-Anh Nguyen ;
Xuan-Tu Tran ;
Iacopi, Francesca .
JOURNAL OF LOW POWER ELECTRONICS AND APPLICATIONS, 2021, 11 (02)