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Inicio  /  Applied Sciences  /  Vol: 11 Par: 3 (2021)  /  Artículo
ARTÍCULO
TITULO

Application of Inverse Neural Networks for Optimal Pretension of Absorbable Mini Plate and Screw System

Alex Bernardo Pimentel-Mendoza    
Lázaro Rico-Pérez    
Manuel Javier Rosel-Solis    
Luis Jesús Villarreal-Gómez    
Yuridia Vega and José Omar Dávalos-Ramírez    

Resumen

Mandibular fractures are common facial lesions typically treated with titanium plate and screw systems; nevertheless, this material is associated with secondary effects. Absorbable material for implants is an alternative to titanium, but there are also problems such as incomplete screw insertion and screw breakage due to high pretension in the screw caused by the insertion torque. The purpose of this paper is to find the optimal screw pretension (SP) in absorbable plate and screw systems by means of artificial neural network (ANN) and its inverse (ANNi). This optimal SP must satisfy a desired maximum von Mises strain (MVMS). For training the ANN, a database was generated by means of a design of experiments (DOE). Each DOE configuration was solved by means of finite element method (FEM) calculations. To obtain the optimal value for (SP) in the mini absorbable screw for fracture fixation, a strategy to invert the ANN is developed. Using the ANN coefficients, a sensitive study was performed to identify the influence of the design parameters in the MVMS. The optimal SP obtained was 14.9742 N. The MVMS condition was satisfied with an error less than 1.1% in comparison with FEM and ANN results. The screw shaft length is the most influencing MVMS parameter.