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3D reconstruction of temperature field using Gaussian Radial Basis Functions (GRBF)

机译:使用高斯径向基函数(GRBF)的3D温度场重建

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3D temperature field reconstruction is of practical interest to the power, transportation and aviation industries and it also opens up opportunities for real time control or optimization of high temperature fluid or combustion process. In this paper, a new algorithm for the reconstruction of 3D temperature field is proposed based on Gaussian Radial Basis Functions (GRBF). A 3D temperature field is a space distribution profile evolving over time which is infinite dimensional in nature, the proposed GRBF-based approach can approximate the temperature field as a finite summation of space-dependent basis functions and time-dependent coefficients. According to the acoustic pyrometry principle, these Gaussian functions are integrated along a number of paths which are determined by the number and distribution of sensors. This inversion problem to estimate the unknown parameters of the Gaussian functions can be solved with the measured times-of-flight (TOF) of acoustic waves and the length of propagation paths using the recursive least square method (RLS). Compared with polynomial interpolation and functions parameterization, GRBF provides better approximation capability for most nonlinear functions over irregular regions. It is also superior in scalability and more efficient when extended to higher dimensional space. The simulation result shows an error less than 2% between the reconstructed temperature field and the ideal one. It demonstrates the availability and efficiency of GRBF framework for temperature field reconstruction.
机译:3D温度场重构是电力,运输和航空行业的实际兴趣,它也为实时控制或优化高温流体或燃烧过程提供了机会。本文提出了一种基于高斯径向基函数(GRBF)的3D温度场重构新算法。 3D温度场是随时间变化的空间分布轮廓,其本质上是无穷大的,基于GRBF的方法可以将温度场近似为空间相关基函数和时间相关系数的有限总和。根据声学高温测定原理,这些高斯函数沿许多路径集成,这些路径由传感器的数量和分布确定。可以使用递归最小二乘法(RLS),通过测量声波的飞行时间(TOF)和传播路径的长度来解决估计高斯函数未知参数的反演问题。与多项式插值和函数参数化相比,GRBF为不规则区域上的大多数非线性函数提供了更好的逼近能力。它还具有出色的可伸缩性,并且在扩展到更高维度的空间时效率更高。仿真结果表明,重构温度场与理想温度场之间的误差小于2%。它展示了GRBF框架用于温度场重构的可用性和效率。

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