Artificial Intelligence Driven Internet of Things Framework for Wind Energy Monitoring and Performance Enhancement in Smart Cities

被引:0
作者
El-Barbary, Zakaria Mohamed Salem [1 ,2 ]
Safarova, Lola [3 ,4 ]
Atamurotov, Farruh [5 ,6 ,7 ]
Alsayah, Ahmed Mohsin [8 ]
Yadav, Bharosh Kumar [9 ]
机构
[1] King Khalid Univ, Coll Engn, Dept Elect Engn, POB 394, Abha 61421, Saudi Arabia
[2] King Khalid Univ, Ctr Engn & Technol Innovat, Abha 61421, Saudi Arabia
[3] New Uzbekistan Univ, Dept Math, Movarounnahr St 1, Tashkent 100000, Uzbekistan
[4] Samarkand State Univ Vet Med Livestock & Biotechno, Dept Sci Res, Samarkand 140103, Uzbekistan
[5] Kimyo Int Univ Tashkent, Dept Phys, Shota Rustaveli Str 156, Tashkent 100121, Uzbekistan
[6] Urgench State Univ, Dept Phys, Kh Alimdjan str 14, Urgench 220100, Uzbekistan
[7] Univ Tashkent Appl Sci, Dept Math, Str Gavhar 1, Tashkent 100149, Uzbekistan
[8] Islamic Univ, Tech Engn Coll, Refrigerat & Air Condit Dept, Najaf, Iraq
[9] Tribhuvan Univ TU, Inst Engn IOE, Dept Mech Engn, Purwanchal Campus, Dharan, Nepal
关键词
deep learning; internet of things; smart cities; urban infrastructure; wind optimization;
D O I
10.1155/er/7215655
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
The integration of renewable energy sources in urban environments presents unique challenges due to complex wind patterns and infrastructure limitations. This study developed and implemented an advanced Internet of Things (IoT) framework incorporating deep learning algorithms for real-time wind energy monitoring and optimization in Abha, Saudi Arabia, addressing the limitations of conventional wind energy systems through intelligent sensor networks and predictive analytics. The study deployed 2300 IoT sensors across 75 urban wind turbines, collecting environmental and performance data over 24 months. The methodology implemented a custom long short-term memory (LSTM) neural network architecture with a dropout rate of 0.3, utilizing TensorFlow framework version 2.7 for model training. The system incorporated comprehensive sensor arrays including ultrasonic anemometers, digital wind vanes, temperature sensors, and tri-axial accelerometers, with data collection frequencies ranging from 0.1 Hz to 1 kHz. The implementation resulted in a 34.2% increase in energy harvesting efficiency, with turbine downtime reduced by 56%. The LSTM model achieved 91.7% accuracy in wind pattern prediction, enabling proactive adjustments that improved overall system reliability by 29%. Component-wise reliability analysis revealed the highest performance in sensor networks (MTBF = 94.3 days) and communication infrastructure (MTBF = 89.5 days). Statistical validation confirmed significant improvements across all metrics (p < 0.001) with the autoregressive integrated moving average (ARIMA) model demonstrating strong predictive capability (R-2 = 0.934). The AI-driven framework achieved a 41% reduction in maintenance costs while increasing annual energy output by 23.8%, suggesting favorable techno-economic viability despite initial investment requirements. The developed framework demonstrates significant potential for optimizing urban wind energy systems through AI-driven monitoring and predictive maintenance. The results establish a scalable approach for smart city wind energy management, providing a comprehensive solution for urban renewable energy integration.
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页数:19
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