电阻抗断层成像
卷积神经网络
计算机科学
迭代法
迭代重建
算法
高斯
牛顿法
职位(财务)
人工智能
断层摄影术
光学
物理
非线性系统
财务
量子力学
经济
作者
K. Minakawa,Keigo Ohta,Hiroaki Komatsu,Tomoko Fukuyama,Takashi Ikuno
出处
期刊:AIP Advances
[American Institute of Physics]
日期:2024-01-01
卷期号:14 (1)
摘要
We developed a processing method using benefits of both iterative Gauss–Newton (IGN) and a one-dimensional convolutional neural network (1D-CNN) for high-resolution electrical impedance tomography. The proposed method logically combines conductivity images reconstructed by different methods. The accuracies of the mathematical IGN method, 1D-CNN method, and the proposed method were compared. Utilizing the ideal potential data obtained through simulations, along with the experimental potential data derived from cement samples, we reconstruct the conductivity distribution. When utilizing the simulation data, the IGN method produces larger errors in the reconstructed images as the size of the foreign object decreases. The proposed method reconstructs the position and size more accurately than the IGN and 1D-CNN methods. When utilizing the experimental data, 1D-CNN and proposed methods were more accurate in terms of the position and size than the IGN method.
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