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High Accuracy Passive Magnetic Field-Based Localization for Feedback Control Using Principal Component Analysis

机译:基于主成分分析的基于反馈的高精度无源磁场定位

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摘要

In this paper, a novel magnetic field-based sensing system employing statistically optimized concurrent multiple sensor outputs for precise field-position association and localization is presented. This method capitalizes on the independence between simultaneous spatial field measurements at multiple locations to induce unique correspondences between field and position. This single-source-multi-sensor configuration is able to achieve accurate and precise localization and tracking of translational motion without contact over large travel distances for feedback control. Principal component analysis (PCA) is used as a pseudo-linear filter to optimally reduce the dimensions of the multi-sensor output space for computationally efficient field-position mapping with artificial neural networks (ANNs). Numerical simulations are employed to investigate the effects of geometric parameters and Gaussian noise corruption on PCA assisted ANN mapping performance. Using a 9-sensor network, the sensing accuracy and closed-loop tracking performance of the proposed optimal field-based sensing system is experimentally evaluated on a linear actuator with a significantly more expensive optical encoder as a comparison.
机译:在本文中,提出了一种新颖的基于磁场的传感系统,该系统采用经过统计优化的并发多个传感器输出以实现精确的磁场位置关联和定位。该方法利用了多个位置同时进行的空间场测量之间的独立性,以诱导场与位置之间的唯一对应关系。这种单源多传感器配置能够实现精确而精确的定位和平移运动跟踪,而无需接触较大的行进距离即可进行反馈控制。主成分分析(PCA)被用作伪线性滤波器,以最佳地减小多传感器输出空间的尺寸,从而利用人工神经网络(ANN)实现计算效率高的场位置映射。数值模拟用于研究几何参数和高斯噪声破坏对PCA辅助ANN映射性能的影响。使用一个9个传感器的网络,在一个线性执行器上以比较昂贵的光学编码器作为实验,评估了所提出的基于最佳场的传感系统的传感精度和闭环跟踪性能。

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