Deep Learning of the SSL Luminaire Spectral Power Distribution under Multiple Degradation Mechanisms by Hybrid kNN algorithm

Cadmus C A Yuan
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引用次数: 1

Abstract

The accurate prediction of the LED’s spectral power distribution under multiple degradations is essential for the lumen depreciation and color shifting. In our previous study, a gated network has been proposed to capture the SPD characteristics [1]. However, the training of such a model and be independent upon the initial guesses, a considerable learning effect is expected.In this paper, we apply the nonparametric modeling techniques, such as the k-th nearest neighborhood (kNN) method with the Fnn enhancement, and compare its prediction capability with the gate neural network. An average SPD prediction error of approximately 3-5% is observed, with 30 times shorter learning time, comparing to the pure neural network approach
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基于混合kNN算法的SSL灯具多退化机制下光谱功率分布深度学习
准确预测LED在多种退化情况下的光谱功率分布,是实现光衰和色移的关键。在我们之前的研究中,已经提出了一个门控网络来捕获SPD特征[1]。然而,这种模型的训练是独立于初始猜测的,期望有相当大的学习效果。在本文中,我们应用非参数建模技术,如第k近邻(kNN)方法与Fnn增强,并比较其预测能力与门神经网络。与纯神经网络方法相比,平均SPD预测误差约为3-5%,学习时间缩短了30倍
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