Code and data supporting 'A Comprehensive Analysis of Machine Learning and Deep Learning Models for Identifying Pilots' Mental States from Imbalanced Physiological Data'

Date published

2023-09-18 16:40

Free to read from

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

Cranfield University

Department

Course name

Type

Software

ISSN

Format

Citation

Alreshidi, Ibrahim; Moulitsas, Irene; Jenkins, Karl; Yadav, Satendra (2023). Code and data supporting 'A Comprehensive Analysis of Machine Learning and Deep Learning Models for Identifying Pilots' Mental States from Imbalanced Physiological Data'. Cranfield Online Research Data (CORD). Software. https://doi.org/10.17862/cranfield.rd.24156345

Abstract

Data: This folder contains: - A dataset called combined_df4, which contains the power spectral density features after employing SMOTE. - A dataset called combined_df5, which contains the power spectral density features after employing SMOTE and cosine similarity. Source code: This folder contains: - A jupyter notebook called AdaBoost.ipynb which was used to generate the results for the AdaBoost algorithm. - A jupyter notebook called CNN.ipynb which was used to generate the results for the CNN algorithm. - A jupyter notebook called CNN+LSTM.ipynb which was used to generate the results for the CNN+LSTMalgorithm. - A jupyter notebook called LSTM.ipynb which was used to generate the results for the LSTMalgorithm. - A jupyter notebook called FNN.ipynb which was used to generate the results for the FNN algorithm. - A jupyter notebook called Random_Forest.ipynb which was used to generate the results for the Random Forest algorithm. - A jupyter notebook called XGBoost.ipynb which was used to generate the results for the XGBoost algorithm.

Description

Software Description

Software Language

Github

Keywords

Machine Learning', 'Pilot Deficiencies', 'Mental State Classifications'

DOI

10.17862/cranfield.rd.24156345

Rights

MIT

Funder/s

Relationships

Relationships

Collections