Optimization of Running Blade Prosthetics Utilizing Crow Search Algorithm Assisted by Artificial Neural Networks
Fecha
2021-02-05Autor
Davalos Ramirez, Jose Omar
Molina Salazar, Javier
Rosel Solis, Manuel
Ruiz Ochoa, Juan Antonio
Gomez Roa, Antonio
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A crow search algorithm (CSA) was applied to perform the optimization of a running blade prosthetics (RBP) made of composite materials
like carbon fibre layers and cores of acrylonitrile butadiene styrene (ABS). Optimization aims to increase the RBP displacement limited by
the Tsai-Wu failure criterion. Both displacement and the Tsai-Wu criterion are predicted using artificial neural networks (ANN) trained with
a database constructed from finite element method (FEM) simulations. Three different cases are optimized varying the carbon fibre layers
orientations: –45°/45°, 0°/90°, and a case with the two-fibre layer orientations intercalated. Five geometric parameters and a number
of carbon fibre layers are selected as design parameters. A sensitivity analysis is performed using the Garzon equation. The best balance
between displacement and failure criterion was found with fibre layers oriented at 0°/90°. The optimal candidate with –45°/45° orientation
presents higher displacement; however, the Tsai-Wu criterion was less than 0.5 and not suitable for RBP design. The case with intercalated
fibres presented a minimal displacement being the stiffer RBP design. The damage concentrates mostly in the zone that contacts the ground.
The sensitivity study found that the number of layers and width were the most important design parameters.