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Free Content Nature-inspired computing approach for solving non-linear singular Emden–Fowler problem arising in electromagnetic theory

In this research, the well-known non-linear Lane–Emden–Fowler (LEF) equations are approximated by developing a nature-inspired stochastic computational intelligence algorithm. A trial solution of the model is formulated as an artificial feed-forward neural network model containing unknown adjustable parameters. From the LEF equation and its initial conditions, an energy function is constructed that is used in the algorithm for the optimisation of the networks in an unsupervised way. The proposed scheme is tested successfully by applying it on various test cases of initial value problems of LEF equations. The reliability and effectiveness of the scheme are validated through comprehensive statistical analysis. The obtained numerical results are in a good agreement with their corresponding exact solutions, which confirms the enhancement made by the proposed approach.

Keywords: computational intelligence; hybrid computing; interior-point method; neural networks; particle swarm optimisation; pattern search; singular initial value problems

Document Type: Research Article

Affiliations: 1: Faculty of Engineering Science and Technology, Hamdard University, Islamabad Campus, Islamabad, Pakistan 2: Department of Electrical Engineering, COMSATS Institute of Information Technology, Attock, Pakistan 3: Shanghai Key Lab of Vehicle Aerodynamics and Vehicle Thermal Management Systems, 4800 Cao An Rd., Jiading, Shanghai, 201804, China 4: Department of Mathematical Sciences, UAEU, P O Box 15551, Al-Ain, UAE 5: Department of Mathematics, Saint Xavier University, Chicago, IL, 60655, USA

Publication date: 02 October 2015

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