Optimization, Uncertainty and Machine Learning in Wind Energy Conversion Systems | ISBN 9789819779086

Optimization, Uncertainty and Machine Learning in Wind Energy Conversion Systems

herausgegeben von Kishalay Mitra, Richard Everson und Jonathan Fieldsend
Mitwirkende
Herausgegeben vonKishalay Mitra
Herausgegeben vonRichard Everson
Herausgegeben vonJonathan Fieldsend
Buchcover Optimization, Uncertainty and Machine Learning in Wind Energy Conversion Systems  | EAN 9789819779086 | ISBN 981-9779-08-1 | ISBN 978-981-9779-08-6

Optimization, Uncertainty and Machine Learning in Wind Energy Conversion Systems

herausgegeben von Kishalay Mitra, Richard Everson und Jonathan Fieldsend
Mitwirkende
Herausgegeben vonKishalay Mitra
Herausgegeben vonRichard Everson
Herausgegeben vonJonathan Fieldsend

This book presents state-of-the-art technologies in wind farm layout optimization and control to improve the current industry/research practice. The contents take readers towards a different kind of uncertainty handling through the discussion on several techniques enabling maximum energy harnessing out of uncertain situations. The book aims to give a detailed overview of such concepts in the first part, where the recent advancements in the fields of (i) Wind farm layout optimization, (ii) Multi-objective Optimization and Uncertainty handling in optimization methods, (iii) Development of Machine Learning-based surrogate models in optimization, and (iv) Different types of wake models for wind farms will be discussed. The second part will cover the application of the aforementioned techniques on the wind farm layout optimization and control through several chapters such as (i) Wind farm performance assessment using Computational Fluid Dynamics (CFD) tools, (ii) Artificial Neural Network (ANN) based hybrid wake models, (iii) Long Short-term Memory (LSTM) & Support Vector Regression (SVR) based forecasting and micro-siting, (iv) windfarm micro-siting using data-driven Robust Optimization (RO) as well as Generative Adversarial Networks (GANs), (v) Reinforcement learning (RL) based wind farm control and (vi) Application of eXplainable AI (XAI) tools for interpreting wind time-series data. In this manner, the book provides state-of-the-art techniques in the fields of multi-objective optimization, Evolutionary Algorithms, Machine Learning surrogate models, Bayesian Optimization, Data Analysis, and Optimization under Uncertainty and their applications in the field of wind energy generation that can be extremely generic and can be applied to many other engineering fields. This volume will be of interest to those in academia and industry.