Statistical Relational Artificial Intelligence in Photovoltaic Power Uncertainty Analysis
Autor Xueqian Fuen Limba Engleză Paperback – 9 apr 2025
Other sections study the impact of photovoltaic uncertainty on the power grid, offering the most classic cases of probabilistic load flow and PV stochastic planning.
The theoretical content of this book is not only systematic but supplemented with concrete examples and MATLAB/Python codes. Its contents will be of interest to all those working on photovoltaic planning, power generation, power plants, and applications of AI, including researchers, advanced students, faculty engineers, R&D, and designers.
- Explores how Statistical Relational Artificial Intelligence (StaRAI) can be applied to photovoltaic power prediction, maintenance, and planning
- Provides a theoretical framework supported by schematic diagrams, real examples, and code
- Discusses the potential for groundbreaking AI applications in PV, future opportunities, and ethical and societal impacts
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Specificații
ISBN-13: 9780443340413
ISBN-10: 0443340412
Pagini: 350
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
ISBN-10: 0443340412
Pagini: 350
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
Cuprins
1. Review of PV Uncertainty Models
2. LSTM-based Day-Ahead Photovoltaic Power Prediction
3. Transformer-based Intra-Day Photovoltaic Power Prediction
4. Unsupervised Learning-based Annual Photovoltaic Power Scene Reduction
5. Adversarial Network-based Annual Photovoltaic Power Simulation
6. Photovoltaic Power Generation Meteorological Information Mining and Forecasting
7. Statistical Machine Learning-based Probabilistic Power Flow in PV-integrated Grid
8. Statistical Machine Learning-based Stochastic Planning for Photovoltaics
9. Photovoltaics and Artificial Intelligence Applications – Future Predictions and Summary
2. LSTM-based Day-Ahead Photovoltaic Power Prediction
3. Transformer-based Intra-Day Photovoltaic Power Prediction
4. Unsupervised Learning-based Annual Photovoltaic Power Scene Reduction
5. Adversarial Network-based Annual Photovoltaic Power Simulation
6. Photovoltaic Power Generation Meteorological Information Mining and Forecasting
7. Statistical Machine Learning-based Probabilistic Power Flow in PV-integrated Grid
8. Statistical Machine Learning-based Stochastic Planning for Photovoltaics
9. Photovoltaics and Artificial Intelligence Applications – Future Predictions and Summary