基于fbg的高度可变形连续体机械臂位置估计:模型依赖与数据驱动的方法

S. Sefati, Rachel A. Hegeman, F. Alambeigi, I. Iordachita, M. Armand
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引用次数: 25

摘要

传统的光纤布拉格光栅(FBG)形状传感技术包括在离散的光纤光栅有源区域寻找曲率,并对连续体灵巧机械臂(CDM)的长度积分曲率进行尖端位置估计(TPE)。然而,由于传感位置数量有限,几何假设多,这些方法容易产生较大的误差传播,特别是当CDM发生大挠度时。在本文中,我们研究了传统的依赖于传感器模型的TPE方法的复杂性,并提出了一种新的数据驱动方法来克服这些挑战。该方法由一个以光纤光栅波长原始数据为输入,直接估计CDM尖端位置的回归模型组成。该模型在术前(离线)根据来自光学跟踪器/相机的位置信息(作为地面真实值)进行训练,并且在术中(在线)仅使用FBG波长数据估计CDM尖端位置。在为骨科应用开发的CDM上评估了该方法的性能,并将结果与传统的基于模型的方法在大挠度弯曲时进行了比较。常规和数据驱动技术的平均绝对TPE误差(和标准差)分别为1.52 (0.67)mm和0.11 (0.1)mm,最大绝对误差分别为3.63 mm和0.62 mm。这些结果表明,与传统的估计技术相比,所提出的数据驱动方法具有显著的性能优势。
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FBG-Based Position Estimation of Highly Deformable Continuum Manipulators: Model-Dependent vs. Data-Driven Approaches
Conventional shape sensing techniques using Fiber Bragg Grating (FBG) involve finding the curvature at discrete FBG active areas and integrating curvature over the length of the continuum dexterous manipulator (CDM) for tip position estimation (TPE). However, due to limited number of sensing locations and many geometrical assumptions, these methods are prone to large error propagation especially when the CDM undergoes large deflections. In this paper, we study the complications of using the conventional TPE methods that are dependent on sensor model and propose a new data-driven method that overcomes these challenges. The proposed method consists of a regression model that takes FBG wavelength raw data as input and directly estimates the CDM’s tip position. This model is pre-operatively (off-line) trained on position information from optical trackers/cameras (as the ground truth) and it intra-operatively (on-line) estimates CDM tip position using only the FBG wavelength data. The method’s performance is evaluated on a CDM developed for orthopedic applications, and the results are compared to conventional model-dependent methods during large deflection bendings. Mean absolute TPE error (and standard deviation) of 1.52 (0.67) mm and 0.11 (0.1) mm with maximum absolute errors of 3.63 mm and 0.62 mm for the conventional and the proposed data-driven techniques were obtained, respectively. These results demonstrate a significant out-performance of the proposed data-driven approach versus the conventional estimation technique.
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