Comparison of three unsupervised neural network models for first Painlevé Transcendent

被引:0
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作者
Muhammad Asif Zahoor Raja
Junaid Ali Khan
Syed Muslim Shah
Raza Samar
Djilali Behloul
机构
[1] COMSATS Institute of Information Technology,Department of Electrical Engineering
[2] Hamdard University,Faculty of Engineering Science and Technology, Islamabad Campus
[3] Mohammad Ali Jinnah University,Department of Electrical Engineering
[4] USTHB,Department of Computer Science
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关键词
Painlevé Transcendents; Artificial neural network; Sequential quadratic programming; Nonlinear differential equations; Activation functions; Unsupervised learning;
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摘要
In this paper, a reliable soft computing framework is presented for the approximate solution of initial value problem (IVP) of first Painlevé equation using three unsupervised neural network models optimized with sequential quadratic programming (SQP). These mathematical models are constructed in the form of feed-forward architecture including log-sigmoid, radial base and tan-sigmoid activation functions in the hidden layers. The optimization of designed parameters for each model is performed with SQP, an efficient constraint optimization problem-solving algorithm. The designed methodology is tested on the IVP, and comparative study is carried out with standard solution based on numerical and analytical solvers. The accuracy, convergence and effectiveness of the schemes are validated on the given benchmark problem by large number of simulations and their comprehensive analysis.
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页码:1055 / 1071
页数:16
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