Review of Remote Sensing and Neural Networks in Solar Radiation Prediction for Smart Solar Power Plants
ID:124 View Protection:ATTENDEE Updated Time:2025-12-27 17:22:48 Hits:358 Online

Start Time:2025-12-30 12:00(Asia/Amman)

Duration:10min

Session:S8 Special Track 2 : Underwater Technologies Special Track 3: Green Energy Breakthroughs and Sustainable Energy Technologies » S8-1Special Track 2 : Underwater TechnologiesSpecial Track 3: Green Energy Breakthroughs and Sustainable Energy Technologies

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Abstract
Solar power plant systems face complex nonlinear dynamics, which make accurate prediction challenging with traditional methods due to atmospheric fluctuations, solar radiation variations, and environmental uncertainties. Remote sensing and deep neural networks (such as CNN, RNN, and LSTM) enable the analysis of spatial-temporal data, which provides superior performance in predicting solar radiation for renewable energy production. These methods are crucial in advanced sensor systems for the design, prediction, maintenance, and control of solar power plants, and they offer greater safety, reliability, and efficiency compared to classical approaches. This article aims to review remote sensing and neural network technologies, their advantages (high accuracy, generalizability), and their limitations compared to traditional methods for solar radiation prediction. Unlike other reviews, this study summarizes adaptive intelligent models, proposes simple yet effective methods based on remote sensing and neural network sensor systems, maps the digital transformation to smart solar power plants with integrated technologies, and evaluates the impact of these technologies on the renewable energy value chain.
Keywords
Remote Sensing, Neural Networks, Solar Radiation Prediction, Solar Power Plant, Machine Learning, Solar Irradiance, Renewable Energy.
Speaker
Mohammad Jafar Mokarram
Dr. School of electrical engineering and intelligent manufacturing; Anhui xinhua university

Submission Author
Mohammad Jafar Mokarram School of electrical engineering and intelligent manufacturing; Anhui xinhua university
Marzieh Mokarram Shiraz University
Hattar Hattar Zarqa University
Mohamed Hafez INTI-IU-University;Shinawatra University
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Important Date
  • Conference Date

    Dec 29

    2025

    to

    Dec 31

    2025

  • Dec 20 2025

    Draft paper submission deadline

  • Dec 31 2025

    Contribution Submission Deadline

  • Dec 31 2025

    Registration deadline

Sponsored By
United Societies of Science
Organized By
Zarqa University
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