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Using Genetic Algorithm for Electrode Movement Problem in Electrical Impedance Tomography

机译:利用电气阻抗断层扫描中电极运动问题的遗传算法

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Electrical Impedance Tomography (EIT) attempts to reconstruct the internal impedance distribution in a medium according to electrical measurements with electrodes on the medium surface. Main problem of EIT is the drift of electrodes during the medical applications, in which the body surface moves during breathing and posture change. In this paper, a new approach which can distinguish electrode movements from measurement data of EIT for eliminating such effects in static reconstructed image is presented. To achieve these objectives, this paper proposed a linear model to describe affection of boundary voltages caused by electrode movements. A genetic algorithm for the problems is introduced, which attempted to find the optimization of electrode movements to match the measurement voltages. To get least number of iterations possible, we introduce cultivation process in mutation operator. Simulation experiments show that the genetic algorithm is efficient and effective for electrode movement problem.
机译:电阻抗断层扫描(EIT)试图根据介质表面上的电极在介质中重建介质中的内部阻抗分布。 EIT的主要问题是医疗应用期间电极的漂移,其中体表在呼吸和姿势变化期间移动。在本文中,呈现了一种可以从EIT测量数据区分电极运动的新方法,用于消除静态重建图像中的静态重建图像的效果。为了实现这些目的,本文提出了一种线性模型,以描述由电极运动引起的边界电压的影响。介绍了解决问题的遗传算法,该算法试图找到电极运动的优化以匹配测量电压。为了获得最少数量的迭代,我们在突变算子中引入培养过程。仿真实验表明,遗传算法对电极运动问题有效且有效。

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