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Nature inspired computational technique for the numerical solution of nonlinear singular boundary value problems arising in physiology.

Suheel Abdullah MalikIjaz Mansoor QureshiMuhammad AmirIhsanul Haq
Published in: TheScientificWorldJournal (2014)
We present a hybrid heuristic computing method for the numerical solution of nonlinear singular boundary value problems arising in physiology. The approximate solution is deduced as a linear combination of some log sigmoid basis functions. A fitness function representing the sum of the mean square error of the given nonlinear ordinary differential equation (ODE) and its boundary conditions is formulated. The optimization of the unknown adjustable parameters contained in the fitness function is performed by the hybrid heuristic computation algorithm based on genetic algorithm (GA), interior point algorithm (IPA), and active set algorithm (ASA). The efficiency and the viability of the proposed method are confirmed by solving three examples from physiology. The obtained approximate solutions are found in excellent agreement with the exact solutions as well as some conventional numerical solutions.
Keyphrases
  • machine learning
  • deep learning
  • mental health
  • neural network
  • body composition
  • physical activity
  • pet ct
  • genome wide
  • rare case
  • copy number
  • solid state
  • dna methylation
  • density functional theory
  • gene expression