本の詳細
形式
キンドル
ページ数
201
言語
英語
公開されました
Jan 1, 2020
出版社
Academic Press
版
1
ISBN-10
0128213671
ISBN-13
9780128213674
説明
In the realm of renewable energy, the integration of machine learning techniques is revolutionizing how wind forecasting and ramp event predictions are conducted. This publication delves into the application of supervised machine learning algorithms, showcasing their effectiveness in enhancing the accuracy and reliability of wind energy predictions. The authors, experts in engineering and technology, guide readers through the complexities of data analysis and model deployment, ensuring a comprehensive understanding of the subject.
The text is structured to cater to both seasoned professionals and newcomers to the field, meticulously explaining foundational concepts while also presenting advanced techniques. Real-world case studies illustrate the practical implications of the theories discussed, enabling readers to grasp the significance of predictive analytics in optimizing wind energy production.
By marrying theoretical insights with practical applications, this work contributes significantly to the ongoing dialogue about sustainable energy practices. Readers will find themselves better equipped to tackle the challenges of energy forecasting in an ever-evolving landscape.
The text is structured to cater to both seasoned professionals and newcomers to the field, meticulously explaining foundational concepts while also presenting advanced techniques. Real-world case studies illustrate the practical implications of the theories discussed, enabling readers to grasp the significance of predictive analytics in optimizing wind energy production.
By marrying theoretical insights with practical applications, this work contributes significantly to the ongoing dialogue about sustainable energy practices. Readers will find themselves better equipped to tackle the challenges of energy forecasting in an ever-evolving landscape.
ジャンル
科学&技術