Prediction of Optimal Hexagonal Interior Angle for Energy Absorption: Ann to Predict In-Between Experimental Data
Abstract
This thesis's proposed strategic procedure is to predict the interior angle of a
hexagonal passive energy absorber structure based on specific properties using an ANN
model, which has a great potential to be used as an intelligent engineering design tool. The
application of passive energy absorption structures are continuously growing in
automobiles, aerospace, packaging industries, and many more due to their high energy absorbing capabilities. This study investigated the energy absorption performance of the
aluminum hexagonal structure under quasi-static axial compression tests. These hexagonal
structures are designed to have varying interior angle values to study their crushing
behavior and identify the relationship between the energy absorption capability and the
angle. Artificial Neural Network (ANN) model has been developed, optimized, and
evaluated based on the Mean Squared Error (MSE) as a loss function to evaluate the
performance of the model. During training, the configured ANN model had a training loss
of only 0.09. The model predicted the hexagonal ring angle from unseen data with accuracy
between 98.24% and 99.85%. Moreover, the predictive model was used to predict an
optimal angle for targeted energy absorption properties based on two different cases. The first case was to maximize the energy absorption and the crushing stability, while the second case was to maximize the load-carrying capacity and amount of energy absorption.
DOI/handle
http://hdl.handle.net/10576/22129Collections
- Mechanical Engineering [64 items ]