PREDICTION OF QUANTUM DESCRIPTOR VALUES IN BORON NITRIDE NANOCAGE-BASED MATERIALS USING ANN, CNN, AND RNN ALGORITHMS

This research aims to develop a method for predicting quantum descriptor values, specifically the HOMO-LUMO gap, in larger boron nitride nanocage materials using a machine learning approach. The dataset was obtained through DFT calculations on B12N12, B24N24, and B36N36 nanocages to determine the...

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Main Author: Pradila, Rike
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/86934
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:86934
spelling id-itb.:869342025-01-07T09:01:35ZPREDICTION OF QUANTUM DESCRIPTOR VALUES IN BORON NITRIDE NANOCAGE-BASED MATERIALS USING ANN, CNN, AND RNN ALGORITHMS Pradila, Rike Indonesia Theses Prediction, HOMO-LUMO gap, Boron Nitride, Machine Learning INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/86934 This research aims to develop a method for predicting quantum descriptor values, specifically the HOMO-LUMO gap, in larger boron nitride nanocage materials using a machine learning approach. The dataset was obtained through DFT calculations on B12N12, B24N24, and B36N36 nanocages to determine the HOMOLUMO gap values as prediction targets. Three ML models ANN, CNN, and RNN were employed to evaluate their ability to learn patterns from smaller nanocages (B12N12 and B24N24) and generalize to predict the HOMO-LUMO gap for a larger nanocage (B36N36) excluded from the training dataset. The results show that RNN achieved the best performance with an RMSE of 0,9289, MSE of 0,8629, MAE of 0,6457, and R² of 0,91. CNN demonstrated significant capability in capturing nonlinear relationships between structural features and electronic properties, achieving an RMSE of 0,8115, MSE of 0,6585, MAE of 0,7292, and R² of 0,73. In contrast, ANN showed the lowest performance, with an RMSE of 0,4746, MSE of 0,225, MAE of 0,3805, and R² of 0,65, reflecting its limitations in capturing complex patterns in nanocage datasets with limited features. These findings are expected to serve as a foundation for developing more efficient and accurate ML-based prediction methods for designing boron nitride nanocages of greater size and complexity. By leveraging ML approaches such as RNN and CNN, this study highlights the potential to reduce the computational time and cost associated with theory-based methods, particularly in applications requiring rapid analysis and high scalability for functional material exploration. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description This research aims to develop a method for predicting quantum descriptor values, specifically the HOMO-LUMO gap, in larger boron nitride nanocage materials using a machine learning approach. The dataset was obtained through DFT calculations on B12N12, B24N24, and B36N36 nanocages to determine the HOMOLUMO gap values as prediction targets. Three ML models ANN, CNN, and RNN were employed to evaluate their ability to learn patterns from smaller nanocages (B12N12 and B24N24) and generalize to predict the HOMO-LUMO gap for a larger nanocage (B36N36) excluded from the training dataset. The results show that RNN achieved the best performance with an RMSE of 0,9289, MSE of 0,8629, MAE of 0,6457, and R² of 0,91. CNN demonstrated significant capability in capturing nonlinear relationships between structural features and electronic properties, achieving an RMSE of 0,8115, MSE of 0,6585, MAE of 0,7292, and R² of 0,73. In contrast, ANN showed the lowest performance, with an RMSE of 0,4746, MSE of 0,225, MAE of 0,3805, and R² of 0,65, reflecting its limitations in capturing complex patterns in nanocage datasets with limited features. These findings are expected to serve as a foundation for developing more efficient and accurate ML-based prediction methods for designing boron nitride nanocages of greater size and complexity. By leveraging ML approaches such as RNN and CNN, this study highlights the potential to reduce the computational time and cost associated with theory-based methods, particularly in applications requiring rapid analysis and high scalability for functional material exploration.
format Theses
author Pradila, Rike
spellingShingle Pradila, Rike
PREDICTION OF QUANTUM DESCRIPTOR VALUES IN BORON NITRIDE NANOCAGE-BASED MATERIALS USING ANN, CNN, AND RNN ALGORITHMS
author_facet Pradila, Rike
author_sort Pradila, Rike
title PREDICTION OF QUANTUM DESCRIPTOR VALUES IN BORON NITRIDE NANOCAGE-BASED MATERIALS USING ANN, CNN, AND RNN ALGORITHMS
title_short PREDICTION OF QUANTUM DESCRIPTOR VALUES IN BORON NITRIDE NANOCAGE-BASED MATERIALS USING ANN, CNN, AND RNN ALGORITHMS
title_full PREDICTION OF QUANTUM DESCRIPTOR VALUES IN BORON NITRIDE NANOCAGE-BASED MATERIALS USING ANN, CNN, AND RNN ALGORITHMS
title_fullStr PREDICTION OF QUANTUM DESCRIPTOR VALUES IN BORON NITRIDE NANOCAGE-BASED MATERIALS USING ANN, CNN, AND RNN ALGORITHMS
title_full_unstemmed PREDICTION OF QUANTUM DESCRIPTOR VALUES IN BORON NITRIDE NANOCAGE-BASED MATERIALS USING ANN, CNN, AND RNN ALGORITHMS
title_sort prediction of quantum descriptor values in boron nitride nanocage-based materials using ann, cnn, and rnn algorithms
url https://digilib.itb.ac.id/gdl/view/86934
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