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Fractional-Order Activation Functions for Neural Networks : Case Studies on Forecasting Wind Turbines' Generated Power / / by Kishore Bingi, Ramadevi Bhukya, Venkata Ramana Kasi



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Autore: Bingi Kishore Visualizza persona
Titolo: Fractional-Order Activation Functions for Neural Networks : Case Studies on Forecasting Wind Turbines' Generated Power / / by Kishore Bingi, Ramadevi Bhukya, Venkata Ramana Kasi Visualizza cluster
Pubblicazione: Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2025
Edizione: 1st ed. 2025.
Descrizione fisica: 1 online resource (XVII, 238 p. 135 illus., 134 illus. in color.)
Disciplina: 621.31
Soggetto topico: Electric power production
Engineering mathematics
Engineering - Data processing
Production engineering
Mechanical Power Engineering
Mathematical and Computational Engineering Applications
Process Engineering
Persona (resp. second.): BhukyaRamadevi
KasiVenkata Ramana
Nota di contenuto: Introduction -- Fractional-order Activation Functions -- Fractional-order Neural Networks -- Forecasting of Texas Wind Turbines’ Generated Power -- Forecasting of Jeju Islands Wind Turbines’ Generated Power -- Forecasting of Renewable Energy Using Fractional-Order Neural Networks -- Fractional Feedforward Neural Network-Based Smart Grid Stability Prediction Model.
Sommario/riassunto: This book suggests the development of single and multi-layer fractional-order neural networks that incorporate fractional-order activation functions derived using fractional-order derivatives. Activation functions are essential in neural networks as they introduce nonlinearity, enabling the models to learn complex patterns in data. However, traditional activation functions have limitations such as non-differentiability, vanishing gradient problems, and inactive neurons at negative inputs, which can affect the performance of neural networks, especially for tasks involving intricate nonlinear dynamics. To address these issues, fractional-order derivatives from fractional calculus have been proposed. These derivatives can model complex systems with non-local or non-Markovian behavior. The aim is to improve wind power prediction accuracy using datasets from the Texas wind turbine and Jeju Island wind farm under various scenarios. The book explores the advantages of fractional-order activation functions in terms of robustness, faster convergence, and greater flexibility in hyper-parameter tuning. It includes a comparative analysis of single and multi-layer fractional-order neural networks versus conventional neural networks, assessing their performance based on metrics such as mean square error and coefficient of determination. The impact of using machine learning models to impute missing data on the performance of networks is also discussed. This book demonstrates the potential of fractional-order activation functions to enhance neural network models, particularly in predicting chaotic time series. The findings suggest that fractional-order activation functions can significantly improve accuracy and performance, emphasizing the importance of advancing activation function design in neural network analysis. Additionally, the book is a valuable teaching and learning resource for undergraduate and postgraduate students conducting research in this field. .
Titolo autorizzato: Fractional-Order Activation Functions for Neural Networks  Visualizza cluster
ISBN: 3-031-88091-9
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9911007495103321
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Serie: Studies in Systems, Decision and Control, . 2198-4190 ; ; 588