首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Open-Closed-Loop Iterative Learning Control with the System Correction Term for the Human Soft Tissue Welding Robot in Medicine
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Open-Closed-Loop Iterative Learning Control with the System Correction Term for the Human Soft Tissue Welding Robot in Medicine

机译:基于系统修正项的开闭环迭代学习控制在医学上面向人体软组织焊接机器人

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摘要

By combining manual welders (with intelligence and versatility) and automatic welding systems (with accuracy and consistency), an intelligent welding system for human soft tissue welding can be developed in medicine. This paper presents a data-correction control approach to human welder intelligence, which can be used to control the automated human soft tissue welding process. Human soft tissue welding can preconnect the excised tissue, and the shape of the tissue at the junction ensures the recovery of the operative organ function. This welding technology has the advantages of rapid operation, minimal tissue damage, no need for suture materials, faster recovery of the mechanism and properties of the living tissue, and the maintenance of the function of the organs. Model of the welding system is identified from the data; an open-closed-loop iterative learning control algorithm is then proposed to improve the tracking accuracy of the system. The algorithm uses the tracking error of current and previous to update the control law. Meanwhile, to further improve the accuracy under the conditions of external interference, a system correction term is added to the proposed ILC algorithm, which can be adjusted according to the system's errors and output and improve the capability of the target tracking greatly. A detailed convergence analysis for the ILC law has been given. Simulation results verify the feasibility and effectiveness of the proposed method for GTAW control tasks.
机译:通过将手工焊机(具有智能性和多功能性)和自动焊接系统(具有准确性和一致性)相结合,可以在医学上开发用于人体软组织焊接的智能焊接系统。本文提出了一种人类焊工智能的数据校正控制方法,可用于控制自动化人体软组织焊接过程。人体软组织焊接可以预先连接切除的组织,连接处组织的形状保证了手术器官功能的恢复。这种焊接技术具有操作迅速、组织损伤最小、无需缝合材料、活体组织机理和性能恢复更快、器官功能维持等优点。从数据中识别焊接系统的模型;然后,提出一种开闭环迭代学习控制算法,以提高系统的跟踪精度。该算法利用当前和先验的跟踪误差来更新控制律。同时,为了进一步提高外界干扰条件下的精度,在所提ILC算法中增加了系统修正项,可以根据系统的误差和输出进行调整,大大提高了目标跟踪能力。对国际法委员会法进行了详细的趋同分析。仿真结果验证了所提方法在GTAW控制任务中的可行性和有效性。

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