Robotics & Machine Learning Daily News2024,Issue(Feb.1) :7-7.DOI:10.1109/TCYB.2021.3135893

Study Results from National University of Singapore Broaden Understanding of Robotics (Unified Mapping Function-based Neuroadaptive Control of Constrained Uncertain Robotic Systems)

Robotics & Machine Learning Daily News2024,Issue(Feb.1) :7-7.DOI:10.1109/TCYB.2021.3135893

Study Results from National University of Singapore Broaden Understanding of Robotics (Unified Mapping Function-based Neuroadaptive Control of Constrained Uncertain Robotic Systems)

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Abstract

Investigators publish new report on Robotics. According to news reporting from Singapore, Singapore, by NewsRx journalists, research stated, “For the existing adaptive constrained robotic control algorithms, the demanding “feasibility conditions” on virtual controller is normally inevitable and the extra limits on constraining functions have to be imposed, making the corresponding approaches more demanding and less user friendly in control development. Here, we develop a new neuroadaptive constrained control strategy for uncertain robotic manipulators in the presence of position and velocity constraints.” Financial support for this research came from National University of Singapore. The news correspondents obtained a quote from the research from the National University of Singapore, “First, a novel unified mapping function (UMF) is constructed so that the restriction on constraining boundaries is removed and more kinds of constraining forms can be handled. Second, by integrating the UMF-based coordinate transformation with the “universal” approximation characteristic of neural networks over some compact set, the developed neuroadaptive control completely obviates the complicated yet undesired “feasibility conditions.” Furthermore, it is proven that all closed-loop signals are semiglobally bounded and the constraints are not violated.”

Key words

Singapore/Singapore/Asia/Emerging Technologies/Machine Learning/Robotics/Robots/National University of Singapore

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出版年

2024
Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
被引量23
参考文献量40
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