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评估一阶导数荧光光谱估算水稻叶片氮浓度的不同回归算法。

Assessing different regression algorithms for paddy rice leaf nitrogen concentration estimations from the first-derivative fluorescence spectrum.

出版信息

Opt Express. 2020 Jun 22;28(13):18728-18741. doi: 10.1364/OE.395478.

Abstract

The non-destructive and rapid estimation of the crop's leaf nitrogen concentration (LNC) is significant for the quality evaluation and precise management of nitrogen (N) fertilizer. First derivative can be applied to reduce the noise in the spectral analysis, which is suited to estimate leaf N and chlorophyll concentration with different fertilization levels. In this study, the first-derivative fluorescence spectrum (FDFS) was calculated in terms of the laser-induced fluorescence (LIF) spectra and was combined with different regression algorithms, including principal component analysis (PCA), partial least-square regression (PLSR), random forest (RF), radial basic function neural network (RBF-NN), and back-propagation neural network (BPNN) for paddy rice LNC estimation. Then, the effect of diverse inner parameters on regression algorithm for LNC estimation based on the calculated FDFS served as input variables were discussed, and the optimal parameters of each model were acquired. Subsequently, the performance of different models (PLSR, RF, BPNN, RBF-NN, PCA-RF, PCA-BPNN, and PCA-RBFNN) with the optimal parameter for LNC estimation based on FDFS was discussed. Results demonstrated that PCA can efficiently extract major spectral information without obviously losing, which can improve the stability and robustness of model (PLSR, PCA-RF, PCA-BNN, and PCA-RBFNN) for LNC estimation. Then, PCA-RBFNN model exhibited better potential for LNC estimation with higher average R (R=0.8743) and lower SD values (SD=0.0256) than that the other regression models in this study. And, PLSR also exhibited promising potential for LNC estimation in which the R values (average R=0.8412) are higher than that the other models except for PCA-RBFNN.

摘要

非破坏性、快速估算作物叶片氮浓度(LNC)对于氮(N)肥质量评估和精准管理具有重要意义。一阶导数可用于减少光谱分析中的噪声,适用于估算不同施肥水平下的叶片氮和叶绿素浓度。本研究基于激光诱导荧光(LIF)光谱计算一阶导数荧光光谱(FDFS),并结合不同回归算法,包括主成分分析(PCA)、偏最小二乘回归(PLSR)、随机森林(RF)、径向基函数神经网络(RBF-NN)和反向传播神经网络(BPNN),用于估算水稻 LNC。然后,讨论了基于计算出的 FDFS 的不同内部参数对回归算法估算 LNC 的影响,并获得了每个模型的最优参数。随后,讨论了不同模型(PLSR、RF、BPNN、RBF-NN、PCA-RF、PCA-BPNN 和 PCA-RBFNN)在基于 FDFS 的 LNC 估算中的性能。结果表明,PCA 可以有效地提取主要光谱信息,而不会明显丢失,从而提高模型(PLSR、PCA-RF、PCA-BNN 和 PCA-RBFNN)估算 LNC 的稳定性和鲁棒性。然后,PCA-RBFNN 模型表现出更好的估算 LNC 的潜力,具有更高的平均 R(R=0.8743)和更低的 SD 值(SD=0.0256),优于本研究中的其他回归模型。此外,PLSR 也表现出估算 LNC 的良好潜力,其 R 值(平均 R=0.8412)高于除 PCA-RBFNN 之外的其他模型。

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