Affiliation:
1. Human-Machine Interaction & Innovation (HMI2) Lab, Santa Clara University, 500 El Camino Real, Santa Clara, CA 95053, USA
Abstract
Intelligent multi-purpose robotic assistants have the potential to assist nurses with a variety of non-critical tasks, such as object fetching, disinfecting areas, or supporting patient care. This paper focuses on enabling a multi-purpose robot to guide patients while walking. The proposed robotic framework aims at enabling a robot to learn how to navigate a crowded hospital environment while maintaining contact with the patient. Two deep reinforcement learning models are developed; the first model considers only dynamic obstacles (e.g., humans), while the second model considers static and dynamic obstacles in the environment. The models output the robot’s velocity based on the following inputs; the patient’s gait velocity, which is computed based on a leg detection method, spatial and temporal information from the environment, the humans in the scene, and the robot. The proposed models demonstrate promising results. Finally, the model that considers both static and dynamic obstacles is successfully deployed in the Gazebo simulation environment.
Funder
National Science Foundation
Subject
Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science
Reference58 articles.
1. U.S. Bureau of Labor Statistics (2023, February 02). Occupational Employment and Wages, Available online: https://www.bls.gov/ooh/healthcare/registered-nurses.htm.
2. Hall, L.H., Johnson, J., Watt, I., Tsipa, A., and O’Connor, D.B. (2016). Healthcare staff wellbeing, burnout, and patient safety: A systematic review. PLoS ONE, 11.
3. Nurse burnout and quality of care: Cross-national investigation in six countries;Poghosyan;Res. Nurs. Health,2010
4. Work stress among Chinese nurses to support Wuhan in fighting against COVID-19 epidemic;Mo;J. Nurs. Manag.,2020
5. Kaiser, M.S., Al Mamun, S., Mahmud, M., and Tania, M.H. (2021). COVID-19: Prediction, Decision-Making, and Its Impacts, Springer.
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