Motor Behavior Regulation of Rat Robots Using Integrated Electrodes Stimulated by Micro-Nervous System
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Published:2024-04-28
Issue:5
Volume:15
Page:587
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ISSN:2072-666X
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Container-title:Micromachines
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language:en
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Short-container-title:Micromachines
Author:
Huo Jiabing1, Zhang Le1, Luo Xiangyu1, Rao Yongkang1, Cao Peili23, Hou Xiaojuan1, He Jian1, Mu Jiliang1, Geng Wenping1ORCID, Cui Haoran1ORCID, Cheng Rui3, Chou Xiujian1
Affiliation:
1. Science and Technology on Electronic Test and Measurement Laboratory, North University of China, Taiyuan 030051, China 2. Fifth Clinical Medical School, Shanxi Medical University, Taiyuan 030012, China 3. Department of Neurosurgery, Shanxi Provincial People’s Hospital, Taiyuan 030012, China
Abstract
As a cutting-edge technology, animal robots based on living organisms are being extensively studied, with potential for diverse applications in the fields of neuroscience, national security, and civil rescue. However, it remains a significant challenge to reliably control the animal robots with the objective of protecting their long-term survival, and this has seriously hindered their practical implementation. To address this issue, this work explored the use of a bio-friendly neurostimulation system that includes integrated stimulation electrodes together with a remote wireless stimulation circuit to control the moving behavior of rat robots. The integrated electrodes were implanted simultaneously in four stimulation sites, including the medial forebrain bundle (MFB) and primary somatosensory cortex, barrel field (S1BF). The control system was able to provide flexibility in adjusting the following four stimulation parameters: waveform, amplitude, frequency, and duration time. The optimized parameters facilitated the successful control of the rat’s locomotion, including forward movement and left and right turns. After training for a few cycles, the rat robots could be guided along a designated route to complete the given mission in a maze. Moreover, it was found that the rat robots could survive for more than 20 days with the control system implanted. These findings will ensure the sustained and reliable operation of the rat robots, laying a robust foundation for advances in animal robot regulation technology.
Funder
Fundamental Research Program of Shanxi Province Shanxi “1331 Project” Key Subject Construction
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