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Membership Function-Weighted Non-Linear Fitting Method for Optical-Sensing Modeling and Reconstruction

机译:隶属函数加权非线性拟合方法在光学传感建模与重建中的应用

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摘要

Imprecise measurements present universally due to variability in the measurement error. We devised a very simple membership function to evaluate fuzzily the quality of optical sensing with a small dataset, where a normal distribution cannot be assumed. The proposed membership function was further used as a weighting function for non-linear curve fitting under expected mathematical model constraints, namely the membership function-weighted Levenberg–Marquardt (MFW-LM) algorithm. The robustness and effectiveness of the MFW-LM algorithm were demonstrated by an optical-sensing simulation and two practical applications. (1) In laser-absorption spectroscopy, molecular spectral line modeling was greatly improved by the method. The measurement uncertainty of temperature and pressure were reduced dramatically, by 53.3% and 43.5%, respectively, compared with the original method. (2) In imaging, a laser beam-profile reconstruction from heavy distorted observations was improved by the method. As the dynamic range of the infrared camera increased from 256 to 415, the detailed resolution of the laser-beam profiles increased by an amazing 360%, achieving high dynamic-range imaging to capture optical signal details. Therefore, the MFW-LM algorithm provides a robust and effective tool for fitting a proper physical model and precision parameters from low-quality data.
机译:由于测量误差的变化,普遍存在不精确的测量。我们设计了一个非常简单的隶属函数,以模糊的方式评估了一个小数据集的光学传感质量,在这种情况下,不能假定正态分布。在期望的数学模型约束下,拟议的隶属度函数还被用作非线性曲线拟合的加权函数,即隶属度函数加权的Levenberg-Marquardt(MFW-LM)算法。 MFW-LM算法的鲁棒性和有效性通过光感测仿真和两个实际应用得到了证明。 (1)在激光吸收光谱中,该方法大大改善了分子光谱线的建模。与原始方法相比,温度和压力的测量不确定度分别降低了53.3%和43.5%。 (2)在成像中,通过该方法改进了从严重失真的观察结果重建的激光束轮廓。随着红外摄像机的动态范围从256增加到415,激光束轮廓的详细分辨率提高了惊人的360%,实现了高动态范围成像以捕获光信号细节。因此,MFW-LM算法为从低质量数据拟合合适的物理模型和精确参数提供了一个强大而有效的工具。

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