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首页> 外文期刊>Numerical Heat Transfer, Part B. Fundamentals: An International Journal of Computation and Methodology >PERFORMANCE EVALUATION OF ITERATIVE TOMOGRAPHIC ALGORITHMS APPLIED TO RECONSTRUCTION OF A THREE-DIMENSIONAL TEMPERATURE FIELD
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PERFORMANCE EVALUATION OF ITERATIVE TOMOGRAPHIC ALGORITHMS APPLIED TO RECONSTRUCTION OF A THREE-DIMENSIONAL TEMPERATURE FIELD

机译:层析X射线算法在三维温度场重构中的性能评估

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摘要

Iterative tomographic algorithms have been applied to the reconstruction of a three-dimensional temperature field (from its projections) for Rayleigh-Benard-type natural-convection problems. Nine distinct algorithms with varying numbers of projections and projection angles have been considered. The three-dimensional temperature field is sliced into a set of two-dimensional planes and reconstruction algorithms are applied to each individual plane. Projection of the temperature field is interpreted as a path integral along a line in the appropriate direction. The integrals are evaluated numerically and are assumed to represent exact data. Errors in reconstruction are defined with field data as reference and are used to compare one algorithm with respect to another. The algorithms used in this work can be broadly classified into three groups: additive algebraic reconstruction technique (ART) multiplicative algebraic reconstruction technique (MART), and maximization reconstruction technique (MRT). Additive ART shows a systematic convergence with respect to number of the projections and the value of the relaxation parameter. MART algorithms produce less error at convergence compared to additive ARTs but converge only at low values of relaxation parameter. In the present work the MRT algorithm shows intermediate performance when compared to ART asd MART Increasing noise level in projection data increases the error in the reconstructed field. The maximum and root-mean-square errors are highest in ART and lowest in MART for a given projection data. Increasing noise levels in projection data decrease the convergence rates. For all algorithms, a 20% noise level is seen as an upper limit beyond which the reconstructed field is barely recognizable. [References: 21]
机译:迭代层析成像算法已应用于针对瑞利-贝纳德型自然对流问题的三维温度场重建(从其投影)。已经考虑了具有不同数量的投影和投影角度的九种不同算法。将三维温度场切成一组二维平面,并将重构算法应用于每个单独的平面。温度场的投影被解释为沿适当方向的直线的路径积分。对积分进行数值评估,并假设其代表精确数据。重建错误以现场数据为参考进行定义,并用于将一种算法与另一种算法进行比较。这项工作中使用的算法可以大致分为三类:加性代数重构技术(ART)乘性代数重构技术(MART)和最大化重构技术(MRT)。添加剂ART在投影数量和松弛参数值方面显示出系统的收敛性。与加性ART相比,MART算法在收敛时产生的误差较小,但仅在松弛参数的值较低时才收敛。在当前工作中,与ART asd MART相比,MRT算法显示出中等的性能。投影数据中的噪声水平越来越高,重构场的误差也越来越大。对于给定的投影数据,最大误差和均方根误差在ART中最高,在MART中最低。投影数据中噪声水平的提高会降低收敛速度。对于所有算法,将20%的噪声水平视为上限,超过该上限则几乎无法识别重构场。 [参考:21]

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