S. Chakraverty, Susmita Mall
Artificial Neural Networks for Engineers and Scientists
Solving Ordinary Differential Equations
S. Chakraverty, Susmita Mall
Artificial Neural Networks for Engineers and Scientists
Solving Ordinary Differential Equations
- Gebundenes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
Differential equations play a vital role in the fields of engineering and science. Problems in engineering and science can be modeled using ordinary or partial differential equations. Analytical solutions of differential equations may not be obtained easily, so numerical methods have been developed to handle them.
Andere Kunden interessierten sich auch für
- Kuzman AdzievskiIntroduction to Partial Differential Equations for Scientists and Engineers Using Mathematica165,99 €
- Wolf AltmanPhysical Components of Tensors233,99 €
- Brian VickApplied Engineering Mathematics157,99 €
- Youssef RaffoulApplied Mathematics for Scientists and Engineers267,99 €
- Alan W. BushPerturbation Methods for Engineers and Scientists256,99 €
- Luis Manuel Braga De Costa CamposGeneralized Calculus with Applications to Matter and Forces87,99 €
- S. ChakravertyFuzzy Differential Equations and Applications for Engineers and Scientists244,99 €
-
-
-
Differential equations play a vital role in the fields of engineering and science. Problems in engineering and science can be modeled using ordinary or partial differential equations. Analytical solutions of differential equations may not be obtained easily, so numerical methods have been developed to handle them.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 150
- Erscheinungstermin: 14. Juli 2017
- Englisch
- Abmessung: 234mm x 152mm x 15mm
- Gewicht: 358g
- ISBN-13: 9781498781381
- ISBN-10: 1498781381
- Artikelnr.: 48849125
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 150
- Erscheinungstermin: 14. Juli 2017
- Englisch
- Abmessung: 234mm x 152mm x 15mm
- Gewicht: 358g
- ISBN-13: 9781498781381
- ISBN-10: 1498781381
- Artikelnr.: 48849125
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
Dr. S. Chakraverty has over 25 years of experience as a researcher and teacher. Currently, he is working at the National Institute of Technology, Rourkela, Odisha as a full Professor and Head of the Department of Mathematics. Prior to this, he was with CSIRCentral Building Research Institute, Roorkee, India. After graduating from St. Columbäs College (Ranchi University), he obtained his M. Sc in Mathematics and M. Phil in Computer Applications from the University of Roorkee (now the Indian Institute of Technology Roorkee), earning First Position in the University honors. Dr. Chakraverty received his Ph. D. from IIT Roorkee in 1992. Afterwards, he did his post-doctoral research at Institute of Sound and Vibration Research (ISVR), University of Southampton, U.K. and at the Faculty of Engineering and Computer Science, Concordia University, Canada. He was also a visiting professor at Concordia and McGill Universities, Canada, during 1997-1999 and visiting professor of University of Johannesburg, South Africa during 2011-2014. Mrs. Susmita Mall received her M. Sc. degree in Mathematics from Ravenshaw University, Cuttack, Odisha, India in 2003. Currently she is a Senior Research Fellow in National Institute of Technology, Rourkela - 769 008, Odisha, India. She has been awarded Women Scientist Scheme-A (WOS-A) fellowship, under Department of Science and Technology (DST), Government of India to undertake her Ph. D. studies. Her current research interest includes Mathematical Modeling, Artificial Neural Network, Differential equations and Numerical analysis. To date, she has published seven research papers in international refereed journals and five in conferences.
1. Preliminaries of Artificial Neural Network
1.1 Introduction
1.2 Architecture of ANN
1.2.1 Feed-Forward Neural Network
1.2.2 Feedback Neural Network
1.3 Paradigms of Learning
1.3.1 Supervised Learning or Associative Learning
1.3.2 Unsupervised or Self-Organization Learning
1.4 Learning Rules or Learning Processes
1.4.1 Error Back-Propagation Learning Algorithm or Delta
Learning Rule
1.5 Activation Functions
1.5.1 Sigmoid Function
1.5.1.1 Unipolar Sigmoid Function
1.5.1.2 Bipolar Sigmoid Function
1.5.2 Tangent Hyperbolic Function
References
2. Preliminaries of Ordinary Differential Equations
2.1 Definitions
2.1.1 Order and Degree of DEs
2.1.2 Ordinary Differential Equation
2.1.3 Partial Differential Equation
2.1.4 Linear and Nonlinear Differential Equations
2.1.5 Initial Value Problem
2.1.6 Boundary Value Problem
References
3. Multilayer Artificial Neural Network
3.1 Structure of Multilayer ANN Model
3.2 Formulations and Learning Algorithm of Multilayer
ANN Model
3.2.1 General Formulation of ODEs Based on ANN Model
3.2.2 Formulation of nth-Order IVPs
3.2.2.1 Formulation of First-Order IVPs
3.2.2.2 Formulation of Second-Order IVPs
3.2.3 Formulation of BVPs
3.2.3.1 Formulation of Second-Order BVPs
3.2.3.2 Formulation of Fourth-Order BVPs
3.2.4 Formulation of a System of First-Order ODEs
3.2.5 Computation of Gradient of ODEs for Multilayer
ANN Model
3.3 First-Order Linear ODEs
3.4 Higher-Order ODEs
3.5 System of ODEs
References
4. Regression-Based ANN
4.1 Algorithm of RBNN Model
4.2 Structure of RBNN Model
4.3 Formulation and Learning Algorithm of RBNN Model
4.4 Computation of Gradient for RBNN Model
4.5 First-Order Linear ODEs
4.6 Higher-Order Linear ODEs
References
5. Single-Layer Functional Link Artificial Neural Network
5.1 Single-Layer FLANN Models
5.1.1 ChNN Model
5.1.1.1 Structure of the ChNN Model
5.1.1.2 Formulation of the ChNN Model
5.1.1.3 Gradient Computation of the ChNN Model
5.1.2 LeNN Model
5.1.2.1 Structure of the LeNN Model
5.1.2.2 Formulation of the LeNN Model
5.1.2.3 Gradient Computation of the LeNN Model
5.1.3 HeNN Model
5.1.3.1 Architecture of the HeNN Model
5.1.3.2 Formulation of the HeNN Model
5.1.4 Simple Orthogonal Polynomial-Based Neural
Network (SOPNN) Model
5.1.4.1 Structure of the SOPNN Model
5.1.4.2 Formulation of the SOPNN Model
5.1.4.3 Gradient Computation of the SOPNN Model
5.2 First-Order Linear ODEs
5.3 Higher-Order ODEs
5.4 System of ODEs
References
6. Single-Layer Functional Link Artificial Neural Network
with Regression-Based Weights
6.1 ChNN Model with Regression-Based Weights
6.1.1 Structure of the ChNN Model
6.1.2 Formulation and Gradient Computation
of the ChNN Model
6.2 First-Order Linear ODEs
6.3 Higher-Order ODEs
References
7. Lane-Emden Equations
7.1 Multilayer ANN-Based Solution of Lane-Emden Equations
7.2 FLANN-Based Solution of Lane-Emden Equations
7.2.1 Homogeneous Lane-Emden Equations
7.2.2 Nonhomogeneous Lane-Emden Equation
References
8. Emden-Fowler Equations
8.1 Multilayer ANN-Based Solution of Emden-Fowler
Equations
8.2 FLANN-Based Solution of Emden-Fowler Equations
References
9. Duffing Oscillator Equations
9.1 Governing Equation
9.2 Unforced Duffing Oscillator Equations
9.3 Forced Duffing Oscillator Equations
References
10. Van der Pol-Duffing Oscillator Equation
10.1 Model Equation
10.2 Unforced Van der Pol-Duffing Oscillator Equation
10.3 Forced Van der Pol-Duffing Oscillator Equation
References
1.1 Introduction
1.2 Architecture of ANN
1.2.1 Feed-Forward Neural Network
1.2.2 Feedback Neural Network
1.3 Paradigms of Learning
1.3.1 Supervised Learning or Associative Learning
1.3.2 Unsupervised or Self-Organization Learning
1.4 Learning Rules or Learning Processes
1.4.1 Error Back-Propagation Learning Algorithm or Delta
Learning Rule
1.5 Activation Functions
1.5.1 Sigmoid Function
1.5.1.1 Unipolar Sigmoid Function
1.5.1.2 Bipolar Sigmoid Function
1.5.2 Tangent Hyperbolic Function
References
2. Preliminaries of Ordinary Differential Equations
2.1 Definitions
2.1.1 Order and Degree of DEs
2.1.2 Ordinary Differential Equation
2.1.3 Partial Differential Equation
2.1.4 Linear and Nonlinear Differential Equations
2.1.5 Initial Value Problem
2.1.6 Boundary Value Problem
References
3. Multilayer Artificial Neural Network
3.1 Structure of Multilayer ANN Model
3.2 Formulations and Learning Algorithm of Multilayer
ANN Model
3.2.1 General Formulation of ODEs Based on ANN Model
3.2.2 Formulation of nth-Order IVPs
3.2.2.1 Formulation of First-Order IVPs
3.2.2.2 Formulation of Second-Order IVPs
3.2.3 Formulation of BVPs
3.2.3.1 Formulation of Second-Order BVPs
3.2.3.2 Formulation of Fourth-Order BVPs
3.2.4 Formulation of a System of First-Order ODEs
3.2.5 Computation of Gradient of ODEs for Multilayer
ANN Model
3.3 First-Order Linear ODEs
3.4 Higher-Order ODEs
3.5 System of ODEs
References
4. Regression-Based ANN
4.1 Algorithm of RBNN Model
4.2 Structure of RBNN Model
4.3 Formulation and Learning Algorithm of RBNN Model
4.4 Computation of Gradient for RBNN Model
4.5 First-Order Linear ODEs
4.6 Higher-Order Linear ODEs
References
5. Single-Layer Functional Link Artificial Neural Network
5.1 Single-Layer FLANN Models
5.1.1 ChNN Model
5.1.1.1 Structure of the ChNN Model
5.1.1.2 Formulation of the ChNN Model
5.1.1.3 Gradient Computation of the ChNN Model
5.1.2 LeNN Model
5.1.2.1 Structure of the LeNN Model
5.1.2.2 Formulation of the LeNN Model
5.1.2.3 Gradient Computation of the LeNN Model
5.1.3 HeNN Model
5.1.3.1 Architecture of the HeNN Model
5.1.3.2 Formulation of the HeNN Model
5.1.4 Simple Orthogonal Polynomial-Based Neural
Network (SOPNN) Model
5.1.4.1 Structure of the SOPNN Model
5.1.4.2 Formulation of the SOPNN Model
5.1.4.3 Gradient Computation of the SOPNN Model
5.2 First-Order Linear ODEs
5.3 Higher-Order ODEs
5.4 System of ODEs
References
6. Single-Layer Functional Link Artificial Neural Network
with Regression-Based Weights
6.1 ChNN Model with Regression-Based Weights
6.1.1 Structure of the ChNN Model
6.1.2 Formulation and Gradient Computation
of the ChNN Model
6.2 First-Order Linear ODEs
6.3 Higher-Order ODEs
References
7. Lane-Emden Equations
7.1 Multilayer ANN-Based Solution of Lane-Emden Equations
7.2 FLANN-Based Solution of Lane-Emden Equations
7.2.1 Homogeneous Lane-Emden Equations
7.2.2 Nonhomogeneous Lane-Emden Equation
References
8. Emden-Fowler Equations
8.1 Multilayer ANN-Based Solution of Emden-Fowler
Equations
8.2 FLANN-Based Solution of Emden-Fowler Equations
References
9. Duffing Oscillator Equations
9.1 Governing Equation
9.2 Unforced Duffing Oscillator Equations
9.3 Forced Duffing Oscillator Equations
References
10. Van der Pol-Duffing Oscillator Equation
10.1 Model Equation
10.2 Unforced Van der Pol-Duffing Oscillator Equation
10.3 Forced Van der Pol-Duffing Oscillator Equation
References
1. Preliminaries of Artificial Neural Network
1.1 Introduction
1.2 Architecture of ANN
1.2.1 Feed-Forward Neural Network
1.2.2 Feedback Neural Network
1.3 Paradigms of Learning
1.3.1 Supervised Learning or Associative Learning
1.3.2 Unsupervised or Self-Organization Learning
1.4 Learning Rules or Learning Processes
1.4.1 Error Back-Propagation Learning Algorithm or Delta
Learning Rule
1.5 Activation Functions
1.5.1 Sigmoid Function
1.5.1.1 Unipolar Sigmoid Function
1.5.1.2 Bipolar Sigmoid Function
1.5.2 Tangent Hyperbolic Function
References
2. Preliminaries of Ordinary Differential Equations
2.1 Definitions
2.1.1 Order and Degree of DEs
2.1.2 Ordinary Differential Equation
2.1.3 Partial Differential Equation
2.1.4 Linear and Nonlinear Differential Equations
2.1.5 Initial Value Problem
2.1.6 Boundary Value Problem
References
3. Multilayer Artificial Neural Network
3.1 Structure of Multilayer ANN Model
3.2 Formulations and Learning Algorithm of Multilayer
ANN Model
3.2.1 General Formulation of ODEs Based on ANN Model
3.2.2 Formulation of nth-Order IVPs
3.2.2.1 Formulation of First-Order IVPs
3.2.2.2 Formulation of Second-Order IVPs
3.2.3 Formulation of BVPs
3.2.3.1 Formulation of Second-Order BVPs
3.2.3.2 Formulation of Fourth-Order BVPs
3.2.4 Formulation of a System of First-Order ODEs
3.2.5 Computation of Gradient of ODEs for Multilayer
ANN Model
3.3 First-Order Linear ODEs
3.4 Higher-Order ODEs
3.5 System of ODEs
References
4. Regression-Based ANN
4.1 Algorithm of RBNN Model
4.2 Structure of RBNN Model
4.3 Formulation and Learning Algorithm of RBNN Model
4.4 Computation of Gradient for RBNN Model
4.5 First-Order Linear ODEs
4.6 Higher-Order Linear ODEs
References
5. Single-Layer Functional Link Artificial Neural Network
5.1 Single-Layer FLANN Models
5.1.1 ChNN Model
5.1.1.1 Structure of the ChNN Model
5.1.1.2 Formulation of the ChNN Model
5.1.1.3 Gradient Computation of the ChNN Model
5.1.2 LeNN Model
5.1.2.1 Structure of the LeNN Model
5.1.2.2 Formulation of the LeNN Model
5.1.2.3 Gradient Computation of the LeNN Model
5.1.3 HeNN Model
5.1.3.1 Architecture of the HeNN Model
5.1.3.2 Formulation of the HeNN Model
5.1.4 Simple Orthogonal Polynomial-Based Neural
Network (SOPNN) Model
5.1.4.1 Structure of the SOPNN Model
5.1.4.2 Formulation of the SOPNN Model
5.1.4.3 Gradient Computation of the SOPNN Model
5.2 First-Order Linear ODEs
5.3 Higher-Order ODEs
5.4 System of ODEs
References
6. Single-Layer Functional Link Artificial Neural Network
with Regression-Based Weights
6.1 ChNN Model with Regression-Based Weights
6.1.1 Structure of the ChNN Model
6.1.2 Formulation and Gradient Computation
of the ChNN Model
6.2 First-Order Linear ODEs
6.3 Higher-Order ODEs
References
7. Lane-Emden Equations
7.1 Multilayer ANN-Based Solution of Lane-Emden Equations
7.2 FLANN-Based Solution of Lane-Emden Equations
7.2.1 Homogeneous Lane-Emden Equations
7.2.2 Nonhomogeneous Lane-Emden Equation
References
8. Emden-Fowler Equations
8.1 Multilayer ANN-Based Solution of Emden-Fowler
Equations
8.2 FLANN-Based Solution of Emden-Fowler Equations
References
9. Duffing Oscillator Equations
9.1 Governing Equation
9.2 Unforced Duffing Oscillator Equations
9.3 Forced Duffing Oscillator Equations
References
10. Van der Pol-Duffing Oscillator Equation
10.1 Model Equation
10.2 Unforced Van der Pol-Duffing Oscillator Equation
10.3 Forced Van der Pol-Duffing Oscillator Equation
References
1.1 Introduction
1.2 Architecture of ANN
1.2.1 Feed-Forward Neural Network
1.2.2 Feedback Neural Network
1.3 Paradigms of Learning
1.3.1 Supervised Learning or Associative Learning
1.3.2 Unsupervised or Self-Organization Learning
1.4 Learning Rules or Learning Processes
1.4.1 Error Back-Propagation Learning Algorithm or Delta
Learning Rule
1.5 Activation Functions
1.5.1 Sigmoid Function
1.5.1.1 Unipolar Sigmoid Function
1.5.1.2 Bipolar Sigmoid Function
1.5.2 Tangent Hyperbolic Function
References
2. Preliminaries of Ordinary Differential Equations
2.1 Definitions
2.1.1 Order and Degree of DEs
2.1.2 Ordinary Differential Equation
2.1.3 Partial Differential Equation
2.1.4 Linear and Nonlinear Differential Equations
2.1.5 Initial Value Problem
2.1.6 Boundary Value Problem
References
3. Multilayer Artificial Neural Network
3.1 Structure of Multilayer ANN Model
3.2 Formulations and Learning Algorithm of Multilayer
ANN Model
3.2.1 General Formulation of ODEs Based on ANN Model
3.2.2 Formulation of nth-Order IVPs
3.2.2.1 Formulation of First-Order IVPs
3.2.2.2 Formulation of Second-Order IVPs
3.2.3 Formulation of BVPs
3.2.3.1 Formulation of Second-Order BVPs
3.2.3.2 Formulation of Fourth-Order BVPs
3.2.4 Formulation of a System of First-Order ODEs
3.2.5 Computation of Gradient of ODEs for Multilayer
ANN Model
3.3 First-Order Linear ODEs
3.4 Higher-Order ODEs
3.5 System of ODEs
References
4. Regression-Based ANN
4.1 Algorithm of RBNN Model
4.2 Structure of RBNN Model
4.3 Formulation and Learning Algorithm of RBNN Model
4.4 Computation of Gradient for RBNN Model
4.5 First-Order Linear ODEs
4.6 Higher-Order Linear ODEs
References
5. Single-Layer Functional Link Artificial Neural Network
5.1 Single-Layer FLANN Models
5.1.1 ChNN Model
5.1.1.1 Structure of the ChNN Model
5.1.1.2 Formulation of the ChNN Model
5.1.1.3 Gradient Computation of the ChNN Model
5.1.2 LeNN Model
5.1.2.1 Structure of the LeNN Model
5.1.2.2 Formulation of the LeNN Model
5.1.2.3 Gradient Computation of the LeNN Model
5.1.3 HeNN Model
5.1.3.1 Architecture of the HeNN Model
5.1.3.2 Formulation of the HeNN Model
5.1.4 Simple Orthogonal Polynomial-Based Neural
Network (SOPNN) Model
5.1.4.1 Structure of the SOPNN Model
5.1.4.2 Formulation of the SOPNN Model
5.1.4.3 Gradient Computation of the SOPNN Model
5.2 First-Order Linear ODEs
5.3 Higher-Order ODEs
5.4 System of ODEs
References
6. Single-Layer Functional Link Artificial Neural Network
with Regression-Based Weights
6.1 ChNN Model with Regression-Based Weights
6.1.1 Structure of the ChNN Model
6.1.2 Formulation and Gradient Computation
of the ChNN Model
6.2 First-Order Linear ODEs
6.3 Higher-Order ODEs
References
7. Lane-Emden Equations
7.1 Multilayer ANN-Based Solution of Lane-Emden Equations
7.2 FLANN-Based Solution of Lane-Emden Equations
7.2.1 Homogeneous Lane-Emden Equations
7.2.2 Nonhomogeneous Lane-Emden Equation
References
8. Emden-Fowler Equations
8.1 Multilayer ANN-Based Solution of Emden-Fowler
Equations
8.2 FLANN-Based Solution of Emden-Fowler Equations
References
9. Duffing Oscillator Equations
9.1 Governing Equation
9.2 Unforced Duffing Oscillator Equations
9.3 Forced Duffing Oscillator Equations
References
10. Van der Pol-Duffing Oscillator Equation
10.1 Model Equation
10.2 Unforced Van der Pol-Duffing Oscillator Equation
10.3 Forced Van der Pol-Duffing Oscillator Equation
References