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Accurate position estimation methods based on electrical impedance tomography measurements

机译:基于电阻抗断层扫描测量的精确位置估计方法

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Electrical impedance tomography (EIT) is a technology that estimates the electrical properties of a body or a cross section. Its main advantages are its non-invasiveness, low cost and operation free of radiation. The estimation of the conductivity field leads to low resolution images compared with other technologies, and high computational cost. However, in many applications the target information lies in a low intrinsic dimensionality of the conductivity field. The estimation of this low-dimensional information is addressed in this work. It proposes optimization-based and data-driven approaches for estimating this low-dimensional information. The accuracy of the results obtained with these approaches depends on modelling and experimental conditions. Optimization approaches are sensitive to model discretization, type of cost function and searching algorithms. Data-driven methods are sensitive to the assumed model structure and the data set used for parameter estimation. The system configuration and experimental conditions, such as number of electrodes and signal-to-noise ratio (SNR), also have an impact on the results. In order to illustrate the effects of all these factors, the position estimation of a circular anomaly is addressed. Optimization methods based on weighted error cost functions and derivate-free optimization algorithms provided the best results. Data-driven approaches based on linear models provided, in this case, good estimates, but the use of nonlinear models enhanced the estimation accuracy. The results obtained by optimization-based algorithms were less sensitive to experimental conditions, such as number of electrodes and SNR, than data-driven approaches. Position estimation mean squared errors for simulation and experimental conditions were more than twice for the optimization-based approaches compared with the data-driven ones. The experimental position estimation mean squared error of the data-driven models using a 16-electrode setup was less than 0.05% of the tomograph radius value. These results demonstrate that the proposed approaches can estimate an object's position accurately based on EIT measurements if enough process information is available for training or modelling. Since they do not require complex calculations it is possible to use them in real-time applications without requiring highperformance computers.
机译:电阻抗断层扫描(EIT)是一种技术,估计身体的电性能或横截面。其主要优点是其非侵入性,低成本和无辐射的运行。与其他技术相比,电导率场的估计导致低分辨率图像,以及高计算成本。然而,在许多应用中,目标信息位于导电场的低固有维度。在这项工作中解决了该低维信息的估计。它提出了基于优化的和数据驱动的方法,用于估计该低维信息。通过这些方法获得的结果的准确性取决于建模和实验条件。优化方法对模型离散化,成本函数类型和搜索算法敏感。数据驱动方法对假定的模型结构和用于参数估计的数据集是敏感的。系统配置和实验条件,例如电极数量和信噪比(SNR),也对结果产生影响。为了说明所有这些因素的影响,解决了圆形异常的位置估计。基于加权误差成本函数的优化方法和衍生无优化算法提供了最佳结果。基于线性型号的数据驱动方法提供,在这种情况下,良好的估计,但使用非线性模型的使用增强了估计精度。通过基于优化的算法获得的结果对实验条件不太敏感,例如电极数量和SNR,而不是数据驱动的方法。与数据驱动的相比,仿真和实验条件的定位估计平均误差是基于优化的方法的两倍多。使用16电极设置的数据驱动模型的实验位置估计平均误差小于Tomograph Radius值的0.05%。这些结果表明,如果有足够的流程信息可用于培训或建模,则所提出的方法可以基于EIT测量准确地估计对象位置。由于它们不需要复杂的计算,因此可以在实时应用中使用它们而不需要较高的计算机。

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