MLP network prediction for blast explosive based training algorithm
Date Issued
2023-09-06
Author(s)
Prakash Nagappan
Kementerian Pertahanan
Muhamad Hadzren Mat
WBE Technologies Sdn. Bhd
Syahrull Hi-Fi Syam Ahmad Jamil
Politeknik Tuanku Syed Sirajuddin
Mohammed Alias Yusof
Mohd Sharil Salleh
DOI
10.1109/ICCSCE58721.2023.10237100
Abstract
For many years, researchers have been examining the profile of blast waves resulting from detonations and using experimentation to make predictions based on specific parameters. However, previous studies have mainly focused on the central point of initiation for spherical explosive shapes. The aim of this study is to compare the accuracy of predicting the blast peak overpressure based on various factors, including the type and shape of the explosive and the location of detonation. The experiment involved detonating 500 grams of PE-4 and Emulex at different distances (ranging from 0.5 to 4.0 meters) and creating a prediction model using a Multilayer Perceptron (MLP) network. Bayesian Regularization (BR) proved to be more effective than Backpropagation (BP) when modelling Explosive Blast Prediction.
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