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利用可见-近红外光谱评估不同吸水波段、指数和多元模型用于水稻水分亏缺胁迫监测的情况。

Evaluation of different water absorption bands, indices and multivariate models for water-deficit stress monitoring in rice using visible-near infrared spectroscopy.

作者信息

Das Bappa, Sahoo Rabi N, Pargal Sourabh, Krishna Gopal, Verma Rakesh, Viswanathan Chinnusamy, Sehgal Vinay K, Gupta Vinod K

机构信息

Division of Agricultural Physics, ICAR-Indian Agricultural Research Institute, New Delhi 110012, India.

Division of Agricultural Physics, ICAR-Indian Agricultural Research Institute, New Delhi 110012, India.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2021 Feb 15;247:119104. doi: 10.1016/j.saa.2020.119104. Epub 2020 Oct 24.

DOI:10.1016/j.saa.2020.119104
PMID:33161273
Abstract

Accurate estimation of plant water status is a major factor in the decision-making process regarding general land use, crop water management and drought assessment. Visible-near infrared (VNIR) spectroscopy can provide an effective means for real-time and non-invasive monitoring of leaf water content (LWC) in crop plants. The current study aims to identify water absorption bands, indices and multivariate models for development of non-destructive water-deficit stress phenotyping protocols using VNIR spectroscopy and LWC estimated from 10 different rice genotypes. Existing spectral indices and band depths at water absorption regions were evaluated for LWC estimation. The developed models were found efficient in predicting LWC of the samples kept in the same environment with the ratio of performance to deviation (RPD) values varying from 1.49 to 3.05 and 1.66 to 2.63 for indices and band depths, respectively during validation. For identification of novel indices, ratio spectral indices (RSI) and normalised difference spectral indices (NDSI) were calculated in every possible band combination and correlated with LWC. The best spectral indices for estimating LWC of rice were RSI (R, R) and NDSI (R, R) with R greater than 0.90 during training and validation, respectively. Among the multivariate models, partial least squares regression (PLSR) provided the best results for prediction of LWC (RPD = 6.33 and 4.06 for training and validation, respectively). The approach developed in this study will also be helpful for high-throughput water-deficit stress phenotyping of other crops.

摘要

准确估算植物水分状况是土地总体利用、作物水分管理和干旱评估决策过程中的一个主要因素。可见-近红外(VNIR)光谱技术可为作物叶片含水量(LWC)的实时、无损监测提供有效手段。本研究旨在利用VNIR光谱技术和从10种不同水稻基因型估算的LWC,确定用于开发无损水分亏缺胁迫表型分析方案的吸水波段、指数和多元模型。对现有光谱指数和吸水区域的波段深度进行了LWC估算评估。结果发现,所开发的模型在预测处于相同环境的样本的LWC方面效率较高,在验证期间,指数和波段深度的性能与偏差比(RPD)值分别在1.49至3.05和1.66至2.63之间变化。为了识别新的指数,在每一个可能的波段组合中计算了比率光谱指数(RSI)和归一化差异光谱指数(NDSI),并与LWC进行了相关性分析。估算水稻LWC的最佳光谱指数分别为RSI(R,R)和NDSI(R,R),在训练和验证期间R均大于0.90。在多元模型中,偏最小二乘回归(PLSR)在预测LWC方面提供了最佳结果(训练和验证的RPD分别为6.33和4.06)。本研究中开发的方法也将有助于其他作物的高通量水分亏缺胁迫表型分析。

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