Constant Force-Tracking Control Based on Deep Reinforcement Learning in Dynamic Auscultation Environment
Author:
Zhang Tieyi12ORCID, Chen Chao12, Shu Minglei12ORCID, Wang Ruotong2, Di Chong2, Li Gang1ORCID
Affiliation:
1. School of Mathematics and Statistics, Qilu University of Technology (Shandong Academy of Sciences), Jinan 250353, China 2. Shandong Artificial Intelligence Institute, Qilu University of Technology (Shandong Academy of Sciences), Jinan 250014, China
Abstract
Intelligent medical robots can effectively help doctors carry out a series of medical diagnoses and auxiliary treatments and alleviate the current shortage of social personnel. Therefore, this paper investigates how to use deep reinforcement learning to solve dynamic medical auscultation tasks. We propose a constant force-tracking control method for dynamic environments and a modeling method that satisfies physical characteristics to simulate the dynamic breathing process and design an optimal reward function for the task of achieving efficient learning of the control strategy. We have carried out a large number of simulation experiments, and the error between the tracking of normal force and expected force is basically within ±0.5 N. The control strategy is tested in a real environment. The preliminary results show that the control strategy performs well in the constant force-tracking of medical auscultation tasks. The contact force is always within a safe and stable range, and the average contact force is about 5.2 N.
Funder
Natural Science Foundation of China Shandong Provincial Natural Science Foundation
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference36 articles.
1. Grzywalski, T., Belluzzo, R., Drgas, S., Cwalinska, A., and Hafke-Dys, H. (2019). Interactive Lungs Auscultation with Reinforcement Learning Agent. arXiv. 2. Design and Control of a Highly Redundant Rigid-Flexible Coupling Robot to Assist the COVID-19 Oropharyngeal-Swab Sampling;Hu;IEEE Robot. Autom. Lett.,2022 3. Hua, J., Zeng, L., Li, G., and Ju, Z. (2021). Learning for a Robot: Deep Reinforcement Learning, Imitation Learning, Transfer Learning. Sensors, 21. 4. Mnih, V., Kavukcuoglu, K., Silver, D., Graves, A., Antonoglou, I., Wierstra, D., and Riedmiller, M. (2013). Playing Atari with Deep Reinforcement Learning. arXiv. 5. Reinforcement Learning in Robotics: A Survey;Kober;Int. J. Robot. Res.,2013
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