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Predicting within-field variability in grain yield and protein content of winter wheat using UAV-based multispectral imagery and machine learning approaches

机译:基于UV的多光谱图像和机器学习方法预测冬小麦籽粒产量和蛋白质含量的现场变异性

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Prediction of crop yield and quality is an essential component of successful implementation of precision agriculture. Given the recent commercialization of low-cost multispectral cameras mounted on unmanned aerial vehicles and advances in machine learning techniques, prediction systems for crop characteristics can be more precisely developed using machine learning techniques. Therefore, the model performances for predicting wheat grain yield and protein content between the machine learning algorithms based on spectral reflectance and plant height (e.g. random forest and artificial neural network) and the traditional linear regression based on vegetation indices were compared. Although the machine learning approaches based on reflectance could not improve the grain yield prediction accuracy, they have great potential for development in predicting protein content. The linear regression model based on a 2-band enhanced vegetation index was capable of predicting the yield with a root-mean-square error (RMSE) of 972 kg ha~(?1). The random forest model based on reflectance was capable of predicting the protein content with an RMSE of 1.07%. The reflectance may have been linearly correlated with total biomass; thus, it was also linearly correlated with grain yield. There was a nonlinear relationship between the grain yield and protein content, which may have resulted in the higher model performance of the machine learning approaches in predicting protein content. However, this relationship would be variable according to the environment and agronomic practice. Further, field-scale research is required to assess how this relationship can be varied and affect the model generality, particularly when predicting protein content.
机译:作物产量和质量预测是成功实施精密农业的重要组成部分。鉴于最近安装在无人航空车辆上的低成本多光谱相机的商业化以及机器学习技术的进步,可以使用机器学习技术更精确地开发作物特性的预测系统。因此,基于光谱反射率和植物高度(例如随机森林和人工神经网络的机器学习算法之间预测小麦籽粒产量和蛋白质含量的模型性能以及基于植被指数的传统线性回归。虽然基于反射率的机器学习方法无法提高谷物产量预测准确性,但它们具有预测蛋白质含量的发展潜力。基于2波段增强植被指数的线性回归模型能够预测972 kg HA〜(α1)的根平均误差(RMSE)的产量。基于反射率的随机林模型能够预测蛋白质含量为1.07%。反射率可能与总生物质线性相关;因此,它也与谷物产量线性相关。谷物产量和蛋白质含量之间存在非线性关系,这可能导致机器学习方法的更高模型性能预测蛋白质含量。然而,这种关系根据环境和农艺实践是可变的。此外,需要现场规模的研究来评估这种关系如何变化并影响模型一般性,特别是在预测蛋白质含量时。

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