Reprint

Artificial Intelligence Techniques for Solar Irradiance and PV Modeling and Forecasting

Edited by
March 2024
232 pages
  • ISBN978-3-7258-0067-4 (Hardback)
  • ISBN978-3-7258-0068-1 (PDF)

This book is a reprint of the Special Issue Artificial Intelligence Techniques for Solar Irradiance and PV Modeling and Forecasting that was published in

Chemistry & Materials Science
Engineering
Environmental & Earth Sciences
Physical Sciences
Summary

Solar photovoltaic (PV) systems are pivotal and transformative technologies at the forefront of the global shift toward sustainable energy solutions. The primary challenge in solar energy production lies in the volatility and intermittency of PV system power generation, primarily due to unpredictable weather conditions. Additionally, PV systems face continuous exposure to various faults and anomalies that can impact their productivity and profitability. This Reprint centers on artificial intelligence (AI)-driven approaches for photovoltaic energy forecasting, modeling, and monitoring. The importance of AI methods in predicting, modeling, and detecting faults in PV systems is crucial in today's energy landscape. AI has emerged as a transformative force, addressing inherent challenges associated with solar energy production. The studies within this Reprint include empirical research across various subjects, encompassing machine learning and IoT for PV monitoring. The Reprint explores the effects of shading and dust on PV systems and presents AI-driven solutions. It also delves into PV modeling, optimization, and innovative strategies to enhance accuracy. In summary, this Reprint offers a concise yet comprehensive exploration of AI applications in solar energy, catering to researchers, practitioners, and educators in the field.

Format
  • Hardback
License and Copyright
© 2022 by the authors; CC BY-NC-ND license
Keywords
two-diode model; parameter estimation; gray wolf optimizer; photovoltaic (PV); incremental conductance (InC); dragonfly (DA); maximum power point tracking (MPPT); perturb and observe (P&O); adaptive cuckoo search optimization (ACS); particle swarm optimization (PSO); local maxima (LM); complex partial shading (CPS); partial shading (PS); photovoltaic power forecast; solar energy; Temporal Fusion Transformer; deep learning; artificial intelligence; deep reinforcement learning; double deep Q network; parameter estimation; photovoltaic mathematical model; photovoltaic systems; ensemble bagged trees; anomaly detection; shading; electrical faults; statistical control charts; shading ratio estimation; photovoltaics; total-sky imaging; cloud estimation; artificial intelligence (AI); photovoltaic (PV) systems; dust cleaning; renewable energy; optimization; cost minimization; BIPV; PV power forecasting; machine learning; gradient boosting algorithms; maximum power point tracker (MPPT); photovoltaic; partial shading conditions (PSCs); dandelion optimizer; optimization; photovoltaic; monitoring system; fault diagnosis; internet of things; shallow neural networks; recurrent neural networks; predictive hybrid model; photovoltaic energy; photovoltaic energy prediction; n/a