MACHINE LEARNING ASSISTED PREDICTION FOR IONIC CONDUCTIVITY IN DOPED LLZO SOLID-STATE ELECTROLYTES USING FACILE DESCRIPTORS

Doped Li7La3Zr2O12 (LLZO) as solid-state electrolytes present itself as a possible solution for batteries with better safety requirements. A machine learning regressor is an effective method to peruse the search space for the best possible dopant combination, beginning with the prediction of ionic c...

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Main Author: Adhyatma, Abdurrahman
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/49775
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:49775
spelling id-itb.:497752020-09-19T22:53:18ZMACHINE LEARNING ASSISTED PREDICTION FOR IONIC CONDUCTIVITY IN DOPED LLZO SOLID-STATE ELECTROLYTES USING FACILE DESCRIPTORS Adhyatma, Abdurrahman Indonesia Final Project Doped LLZO, ionic conductivity, machine learning INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/49775 Doped Li7La3Zr2O12 (LLZO) as solid-state electrolytes present itself as a possible solution for batteries with better safety requirements. A machine learning regressor is an effective method to peruse the search space for the best possible dopant combination, beginning with the prediction of ionic conductivity. Building a regressor starts with gathering data from published research that synthesized and characterized doped-LLZO. Subsequently, the data is explored and analyzed to gain insight concerning the data distribution and feature correlation. A regressor is built using polynomial regression and gradient boosted regression trees algorithms. Grid search cross-validation (CV) is used to optimized the polynomial regressor, while nested CV is used to optimize the gradient boosted regressor. After comparing the two finished models, gradient boosted regressor is the best model for ionic conductivity in LLZO. The model reached an R2 score of 0.739 on the training set, 0.630 on the test set, and 0.366 on 5-fold CV. Relationships between the features and the conductivity is examined using the model’s built-in feature importance. This research proved the potential of a machine learned regressor using facile descriptors to predict solid-state material properties. However, data with better quality and better engineered features are necessary to build a regressor with better predictive capabilities. 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 Doped Li7La3Zr2O12 (LLZO) as solid-state electrolytes present itself as a possible solution for batteries with better safety requirements. A machine learning regressor is an effective method to peruse the search space for the best possible dopant combination, beginning with the prediction of ionic conductivity. Building a regressor starts with gathering data from published research that synthesized and characterized doped-LLZO. Subsequently, the data is explored and analyzed to gain insight concerning the data distribution and feature correlation. A regressor is built using polynomial regression and gradient boosted regression trees algorithms. Grid search cross-validation (CV) is used to optimized the polynomial regressor, while nested CV is used to optimize the gradient boosted regressor. After comparing the two finished models, gradient boosted regressor is the best model for ionic conductivity in LLZO. The model reached an R2 score of 0.739 on the training set, 0.630 on the test set, and 0.366 on 5-fold CV. Relationships between the features and the conductivity is examined using the model’s built-in feature importance. This research proved the potential of a machine learned regressor using facile descriptors to predict solid-state material properties. However, data with better quality and better engineered features are necessary to build a regressor with better predictive capabilities.
format Final Project
author Adhyatma, Abdurrahman
spellingShingle Adhyatma, Abdurrahman
MACHINE LEARNING ASSISTED PREDICTION FOR IONIC CONDUCTIVITY IN DOPED LLZO SOLID-STATE ELECTROLYTES USING FACILE DESCRIPTORS
author_facet Adhyatma, Abdurrahman
author_sort Adhyatma, Abdurrahman
title MACHINE LEARNING ASSISTED PREDICTION FOR IONIC CONDUCTIVITY IN DOPED LLZO SOLID-STATE ELECTROLYTES USING FACILE DESCRIPTORS
title_short MACHINE LEARNING ASSISTED PREDICTION FOR IONIC CONDUCTIVITY IN DOPED LLZO SOLID-STATE ELECTROLYTES USING FACILE DESCRIPTORS
title_full MACHINE LEARNING ASSISTED PREDICTION FOR IONIC CONDUCTIVITY IN DOPED LLZO SOLID-STATE ELECTROLYTES USING FACILE DESCRIPTORS
title_fullStr MACHINE LEARNING ASSISTED PREDICTION FOR IONIC CONDUCTIVITY IN DOPED LLZO SOLID-STATE ELECTROLYTES USING FACILE DESCRIPTORS
title_full_unstemmed MACHINE LEARNING ASSISTED PREDICTION FOR IONIC CONDUCTIVITY IN DOPED LLZO SOLID-STATE ELECTROLYTES USING FACILE DESCRIPTORS
title_sort machine learning assisted prediction for ionic conductivity in doped llzo solid-state electrolytes using facile descriptors
url https://digilib.itb.ac.id/gdl/view/49775
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