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Electrical capacitance tomography for flow imaging: system model for development of image reconstruction algorithms and design of primary sensors

机译:用于流量成像的电容层析成像:用于图像重建算法开发和主传感器设计的系统模型

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摘要

A software tool that facilitates the development of image reconstruction algorithms, and the design of optimal capacitance sensors for a capacitance-based 12-electrode tomographic flow imaging system are described. The core of this software tool is the finite element (FE) model of the sensor, which is implemented in OCCAM-2 language and run on the Inmos T800 transputers. Using the system model, the in-depth study of the capacitance sensing fields and the generation of flow model data are made possible, which assists, in a systematic approach, the design of an improved image-reconstruction algorithm. This algorithm is implemented on a network of transputers to achieve a real-time performance. It is found that the selection of the geometric parameters of a 12-electrode sensor has significant effects on the sensitivity distributions of the capacitance fields and on the linearity of the capacitance data. As a consequence, the fidelity of the reconstructed images are affected. Optimal sensor designs can, therefore, be provided, by accommodating these effects.
机译:描述了一种软件工具,该工具可促进图像重建算法的开发,并为基于电容的12电极断层扫描流成像系统设计最佳电容传感器。该软件工具的核心是传感器的有限元(FE)模型,该模型以OCCAM-2语言实现并在Inmos T800晶片机上运行。使用系统模型,可以对电容感应场进行深入研究并生成流量模型数据,从而以系统的方式帮助设计改进的图像重建算法。该算法在晶片机网络上实现以实现实时性能。发现12电极传感器的几何参数的选择对电容场的灵敏度分布和电容数据的线性具有显着影响。结果,重建图像的保真度受到影响。因此,通过适应这些影响,可以提供最佳的传感器设计。

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