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首页> 外文期刊>International journal of remote sensing >Estimating carbon isotope discrimination and grain yield of bread wheat grown under water-limited and full irrigation conditions by hyperspectral canopy reflectance and multilinear regression analysis
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Estimating carbon isotope discrimination and grain yield of bread wheat grown under water-limited and full irrigation conditions by hyperspectral canopy reflectance and multilinear regression analysis

机译:高光谱冠层反射率和多线性回归分析估算在水有限和完全灌溉条件下增加面包小麦面包小麦的碳同位素辨别和粮食产量

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摘要

Water deficit is the most limiting factor for wheat production, so wheat-breeding programmes are currently focused on developing high-performance genotypes under such conditions. Carbon isotope discrimination ( increment C-13) in grains is a trait closely related to yield and stress tolerance. However, conventional measurement of increment C-13 is expensive, limiting its widespread use for genotype selection in breeding programmes. Predicting increment C-13 through remote sensing could be useful for large-scale phenotyping. A set of 384 cultivars and advanced lines of spring bread wheat (Triticum aestivum L.) was grown under contrasting water conditions during two seasons. Grain yield (GY) and the increment C-13 of grains were obtained at the end of both seasons, and canopy reflectance measurements were taken at anthesis and grain filling. Hyperspectral canopy reflectance was used to estimate GY and increment C-13 through Multilinear Regression Analysis (MRL) considering wavelength selection using a Genetic Algorithm (GA), spectral reflectance indices (SRIs), Partial Least Square Regression (PLSR), Support Vector Regression (SVR), Random Forest (RF) and Artificial Neural Networks (ANN). The best models of both GY and increment C-13 explained 78% and 60% of data variability, respectively. Additionally, the MRL models showed higher prediction rates than SRIs and similar or slightly lower rates, in most cases, than multivariate regression models, but required only 4-9 wavelengths instead of the full hyperspectral data used to develop the regression models. The use of canopy spectral reflectance data and MRL models to predict GY and Delta C-13 via GA for selection of the reflectance wavelengths could be a practical tool for genotype selection in wheat breeding systems.
机译:水资源赤字是小麦产量最限制的因素,因此小麦育种计划目前主要关注在这种条件下开发高性能基因型。颗粒中的碳同位素歧视(增量C-13)是与产量和应力耐受性密切相关的特征。然而,常规测量增量C-13是昂贵的,限制其在育种程序中的基因型选择的广泛用途。通过遥感预测增量C-13可能对大规模表型有用。在两个季节的对比水条件下,一套384种春季面包小麦(Triticum aestivum L.)的先进线条。在两个季节结束时获得谷物产量(gy)和谷物的增量c-13,并且在花序和籽粒填充物中拍摄树冠反射测量。通过多线性回归分析(MRL)考虑使用遗传算法(GA),光谱反射率指数(SRIS),部分最小二乘索引(PLSR),支持向量回归(PLSR),通过多线性回归分析(MRL)来估计GY和增量C-13来估计GY和增量C-13。 SVR),随机森林(RF)和人工神经网络(ANN)。 GY和增量C-13的最佳模型分别解释了78%和60%的数据变异性。另外,MRL模型在大多数情况下,MRL模型显示比SRIS和类似或略低的速率,而不是多变量回归模型,而是仅需要4-9个波长而不是用于开发回归模型的全高光谱数据。通过GA以预测GY和DELTA C-13的使用对于选择反射波长来预测GY和DELTA C-13的使用可能是小麦育种系统中基因型选择的实用工具。

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