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Analysis of electrical resistance tomography (ERT) data using least-squares regression modelling in industrial process tomography

机译:在工业过程层析成像中使用最小二乘回归模型分析电阻层析成像(ERT)数据

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摘要

Analysis of electrical resistance tomography (ERT) data using least-squares regression modelling in industrial process tomographs has been tested. Potential differences measured between electrodes in rings have been used to carry out the regression modelling to investigate the location and size of a disturbance present in the system. Extensive experiments have been carried out with ERT to test a suitable regression algorithm to extract the disturbance. Current analysis has been performed for a single disturbance known to be present in the system. For the environment considered, the least-squares regression reported in this paper demonstrates an alternative approach for analysis of tomography data in industrial applications. The position (concentric or off-centre) and the size of the disturbance (in concentric cases) can be well defined by the reported regression modelling approach. However, it is still a challenge to define the size of the off-centre disturbance.
机译:已经测试了在工业过程层析成像仪中使用最小二乘回归模型分析电阻层析成像(ERT)数据的能力。环中电极之间测得的电位差已用于进行回归建模,以研究系统中存在的干扰的位置和大小。已经使用ERT进行了广泛的实验,以测试合适的回归算法来提取干扰。已经针对已知存在于系统中的单个干扰执行了电流分析。对于所考虑的环境,本文报道的最小二乘回归表明了一种在工业应用中分析层析成像数据的替代方法。所报道的回归建模方法可以很好地定义位置(同心或偏心)和干扰的大小(在同心情况下)。但是,定义偏心干扰的大小仍然是一个挑战。

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