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Self-learning of inverse kinematics for feedforward control of intracardiac robotic ablation catheters

机译:逆运动学的自学习,用于心内机器人消融导管的前馈控制

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This paper investigates the self-learning of inverse kinematics for the feed-forward control of a robot to position intracardiac catheters. Cardiac ablation is routinely performed to treat Atrial Fibrillation, and requires a catheter be accurately positioned in the heart, by hand or by a robot, under feedback control. This is typically a slow process and methods to reduce procedure times are needed. To investigate our proposed method, a robotic system to manipulate a standard intracardiac catheter was constructed. To safely develop our proposed learning system, a comprehensive dataset was collected using a magnetic tracking system to measure the catheter tip positions versus robot actuator positions. Initially, the robot began with no model of its kinematics. A Genetic Algorithm was used to decide on the next actuator sequence that would reduce the uncertainty in a Feedforward Neural Network (FFNN) based inverse kinematic model. An automated iterative process was followed where the robot would perform virtual experiments, to grow its knowledge of its inverse kinematics. After 791 learning cycles the final analysis revealed that the complete inverse kinematic relationship has been explored with the given constraints. A validation dataset indicated the learned FFNN model was able to predict x, y and z positions of the catheter tip to within ±0.17 mm, ±0.73 mm and ±0.62 mm, respectively. The robot successfully self-learned its inverse kinematic model using the proposed methodology. Future work is required to investigate the influence of disturbances on positioning accuracy.
机译:本文研究了逆运动学的自学习,用于机器人对心内导管定位的前馈控制。通常进行心脏消融以治疗房颤,并且需要在反馈控制下用手或通过机器人将导管准确地定位在心脏中。这通常是一个缓慢的过程,因此需要减少过程时间的方法。为了研究我们提出的方法,构建了一个操纵标准心内导管的机器人系统。为了安全地开发我们建议的学习系统,使用磁跟踪系统收集了一个全面的数据集,以测量导管尖端位置与机器人执行器位置之间的关系。最初,机器人没有运动学模型。遗传算法用于确定下一个执行器序列,该序列将减少基于前馈神经网络(FFNN)的逆运动学模型中的不确定性。机器人执行虚拟实验,以遵循其自动化的迭代过程,以增加其逆运动学知识。经过791个学习周期后,最终分析表明,在给定的约束条件下,已经探索了完整的逆运动学关系。验证数据集表明,学习到的FFNN模型能够预测导管尖端的x,y和z位置分别在±0.17 mm,±0.73 mm和±0.62 mm之内。机器人使用提出的方法成功地自学习了其逆运动学模型。需要进一步的工作来研究干扰对定位精度的影响。

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