Study on Contact Force Prediction for the Vascular Interventional Surgical Robot based on Parameter Identification

Shuxiang Guo, X. Liao, Jian Guo
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Abstract

With the development of science and technology, surgical robots have made it possible for doctors to perform remote operations, which has also brought good news to patients in remote areas. However, there are some factors that cause the problem of force feedback lag, such as network delay and network instability, so we can use the model-based force feedback prediction method. In this paper, the contact force is modeled in the master manipulator side, which is used to predict the contact force when the slave manipulator side contacts the real tissue. It can obtain better system transparency. In order to ensure the accuracy of the contact force model, autoregressive least squares method is used for parameter identification, so that the environmental model parameters can be identified in real time and the master side prediction model can be corrected. Experimental results indicated that this method can perform force prediction well.
基于参数辨识的血管介入手术机器人接触力预测研究
随着科学技术的发展,手术机器人使医生进行远程手术成为可能,这也给偏远地区的患者带来了好消息。然而,由于存在网络延迟、网络不稳定等因素导致的力反馈滞后问题,因此我们可以采用基于模型的力反馈预测方法。本文建立了主机械臂侧的接触力模型,用于预测从机械臂侧与真实组织接触时的接触力。它可以获得更好的系统透明度。为了保证接触力模型的准确性,采用自回归最小二乘法进行参数辨识,实现了环境模型参数的实时辨识和主侧预测模型的修正。实验结果表明,该方法能较好地进行力预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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