Zhao Yingze, Lv Jinguang, Zheng Kaifeng, Tao Jin, Qin Yuxin, Wang Weibiao, Wang Chao, Liang Jingqiu
Opt Express. 2021 Feb 1;29(3):4405-4421. doi: 10.1364/OE.414844.
This paper addresses the problem of inaccurate emissivity presets for multispectral temperature measurements of aero-engine turbine blades and proposes a narrow-band spectral window moving temperature inversion algorithm that does not rely on an assumed emissivity model. As the emissivity of the measured object changes slowly over the narrow spectral window, the temperature corresponding to the normalized spectral radiation intensity for each window in the set temperature range is calculated using the Mahalanobis distance coefficient. The temperature error is less than 1.33% relative to thermocouple measurements when using this algorithm to perform temperature inversion on the experimental spectrum curves for different types of alloy samples. Furthermore, a two-dimensional spectral temperature field measurement platform was built, and the surface temperature fields of alloy samples were reconstructed using the narrow-band spectral window moving algorithm. The proposed algorithm is shown to provide high-precision inversion of the temperature field without presetting the emissivity model, which gives a new processing concept for the application of infrared spectral temperature measurements.
本文针对航空发动机涡轮叶片多光谱温度测量中发射率预设不准确的问题,提出了一种不依赖假设发射率模型的窄带光谱窗口移动温度反演算法。由于被测物体的发射率在窄光谱窗口内变化缓慢,利用马氏距离系数计算设定温度范围内每个窗口归一化光谱辐射强度对应的温度。使用该算法对不同类型合金样品的实验光谱曲线进行温度反演时,温度误差相对于热电偶测量小于1.33%。此外,搭建了二维光谱温度场测量平台,利用窄带光谱窗口移动算法重建了合金样品的表面温度场。结果表明,该算法无需预设发射率模型即可实现温度场的高精度反演,为红外光谱温度测量的应用提供了一种新的处理思路。