Title
Integrated intelligence of neuro-evolution with sequential quadratic programming for second-order Lane–Emden pantograph models
Abstract
The present research work is to put forth the numerical solutions of the nonlinear second-order Lane–Emden-pantograph (LEP) delay differential equation by using the approximation competency of the artificial neural networks (ANNs) trained with the combined strengths of global/local search exploitation of genetic algorithm (GA) and active-set (AS) method, i.e., ANNGAAS. In the proposed ANNGAAS, the objective function is designed by using the mean square error function with continuous mappings of ANNs for the LEP delay differential equation. The training of these constructed networks is conducted proficiently using the integrated capability of global search with GA and assisted local search along with AS approach. The performance of design computing paradigm ANNGAAS is evaluated effectively on variants of LEP delay differential models, while the statistical investigations based on different operators further validate the accuracy and convergence.
Year
DOI
Venue
2021
10.1016/j.matcom.2021.03.036
Mathematics and Computers in Simulation
Keywords
DocType
Volume
Lane–Emden,Artificial neural networks,Pantograph,Multiple delays,Active-set,Genetic algorithms
Journal
188
ISSN
Citations 
PageRank 
0378-4754
0
0.34
References 
Authors
26
6