基于K均值聚类RBF神经网络的光谱发射率估计

Li Fu, Jinxin Fu, Yu Guo, Jianhui Xi
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引用次数: 4

摘要

本文介绍了一种k均值聚类RBF神经网络建模方法,该模型用于红外目标光谱发射率的估计。部分在大气中传输的红外辐射被大气吸收,利用RBF神经网络测量样品进行分析和学习。建立了3 ~ 14 μ m的红外能量模型,估算了目标在不同波长的光谱发射率。实验结果表明,与RBF网络计算的理论发射率相比,最大相对误差小于1%。最后,该方法是一种学习光谱发射率的好方法,并通过航天铝合金进行了验证。
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Spectral emissivity estimation based on K — means clustering RBF neural network
A K-means clustering RBF neural network modeling method is introduced in this paper, this model is for infrared target spectral emissivity estimation. Part of the transmission of infrared radiation in the atmosphere is absorbed by the atmosphere, the use of RBF neural network measurement samples for analysis and learning. An infrared energy model of 3–14 μ m was established to estimate the spectral emissivity of the target at different wavelengths. The experiment results show that the maximum relative error is less than 1% compared with the theoretical emissivity calculated by the RBF network. Finally, that method is a good way to learn the spectral emissivity and it is verified by the aerospace aluminum alloy.
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