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Supervised Machine Learning in Wind Forecasting and Ramp Event Prediction: Wind Energy Engineering

Autor Harsh S. Dhiman, Dipankar Deb, Valentina Emilia Balas
en Limba Engleză Paperback – 30 ian 2020
Supervised Machine Learning in Wind Forecasting and Ramp Event Prediction provides an up-to- date overview on the broad area of wind generation and forecasting, with a focus on the role and need of Machine Learning in this emerging field of knowledge. Various regression models and signal decomposition techniques are presented and analyzed, including least-square, twin support and random forest regression, all with supervised Machine Learning. The specific topics of ramp event prediction and wake interactions are addressed in this book, along with forecasted performance.
Wind speed forecasting has become an essential component to ensure power system security, reliability and safe operation, making this reference useful for all researchers and professionals researching renewable energy, wind energy forecasting and generation.


  • Features various supervised machine learning based regression models
  • Offers global case studies for turbine wind farm layouts
  • Includes state-of-the-art models and methodologies in wind forecasting
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Specificații

ISBN-13: 9780128213537
ISBN-10: 0128213531
Pagini: 216
Dimensiuni: 152 x 229 x 13 mm
Greutate: 0.3 kg
Editura: ELSEVIER SCIENCE
Seria Wind Energy Engineering


Public țintă

Researchers and engineers in wind forecasting

Cuprins

1. Introduction 2. Wind Energy Fundamentals 3. Paradigms in Wind Forecasting4. Supervised Machine Learning Models based on Support Vector Regression5. Decision tree ensemble-based Regression Models6. Hybrid Machine Intelligent Wind Speed Forecasting Models7. Ramp Prediction in Wind Farms8. Supervised Learning for Forecasting in presence of Wind WakesA. Introduction to R for Machine Learning RegressionA.1 Data handling in RA.2 Linear Regression Analysis in RA.3 Support vector regression in R A.4 Random Forest Regression in R A.5 Gradient boosted machines in R