Developing Natural Language Processing and Supervised Learning Techniques to Classify Mars TasksAs NASA's Human Research Program (HRP) prepares for long-duration Mars missions, understanding astronaut tasks is crucial. This study, conducted at NASA Glenn Research Center (GRC), employed Natural Language Processing (NLP) and machine learning techniques to analyze and classify Mars tasks. A list of 1,058 Mars tasks was provided by HRP experts including binary labeling of 18 Human System Task Categories (HSTCs). We developed an NLP model using Google's BERT language model to capture the semantic and syntactic nuances of these tasks. Supervised training was initially applied to a subset of the NLP-analyzed tasks to assess the model's effectiveness in classifying the remaining tasks. Incorporating HSTC descriptions significantly enhanced the classification accuracy for 9 out of the 18 HSTCs and reduced training time. To address the issue of severe class imbalance in the HSTC data, we introduced innovative weighting and sampling techniques for data augmentation. We then fine-tune BERT to implement a pairwise relatedness scoring method, allowing us to cluster tasks based on their relatedness and similarity, getting a step closer to labeling the tasks without supervision. In this presentation we guide you through data preprocessing, deciphering key syntax components using BERT, and performing supervised classification of the Mars tasks. This work showcases the potential use of advanced NLP techniques to analyze Mars missions to be incorporated into various crew health and performance analyses.
Document ID
20250000315
Acquisition Source
Glenn Research Center
Document Type
Poster
Authors
Adam Kurth (Arizona State University Tempe, United States)
Hunter Rehm (HX5, LLC)
Mona Matar (Glenn Research Center Cleveland, United States)
Date Acquired
January 10, 2025
Subject Category
Cybernetics, Artificial Intelligence and Robotics
Meeting Information
Meeting: Human Research Program Investigators' Workshop (HRP IWS)
Location: Galveston, TX
Country: US
Start Date: January 28, 2025
End Date: January 31, 2025
Sponsors: National Aeronautics and Space Administration