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Neural-network model for estimating leaf chlorophyll concentration in rice under stress from heavy metals using four spectral indices

机译:利用四个光谱指数估算重金属胁迫下水稻叶片叶绿素浓度的神经网络模型

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摘要

Heavy metal stress in soils results in subtle changes in leaf chlorophyll concentration, which are related to crop growth and crop yield. Accurate estimation of the chlorophyll concentration of a crop under heavy metal stress is essential for precision crop production. The objective of this paper is to create a back propagation (BP) neural-network model to estimate chlorophyll concentration in rice under heavy metal stress. Three experiment farms located in Changchun, Jilin Province, China with level II pollution, with level I pollution and with safe level were selected, The assessment was based on the input parameters normalised difference vegetation index (NDVI), optimized soil-adjusted vegetation index (OSAVI), modified triangle vegetation index/modified chlorophyll absorption ratio index (MTVI/MCARI), MTVI/OSAVI and the output parameters of rice leaf chlorophyll concentration. The output parameters were sensitive to heavy metal stress. The result indicated that an optimum BP neural-network prediction model has 4-10-2-1 network architecture with gradient descent learning algorithm and an activation function including the sigmoid tangent function in the input layer, a hidden layer and sigmoid logistic functions in the output layer. The correlation coefficient (R-2) between the measured chlorophyll concentration and the predicated chlorophyll concentration was 0.9014, and the root mean square error (RMSE) was 2.58
机译:土壤中的重金属胁迫导致叶片叶绿素浓度发生细微变化,这与农作物生长和农作物产量有关。精确估算重金属胁迫下农作物的叶绿素浓度对于精确农作物生产至关重要。本文的目的是创建一个反向传播(BP)神经网络模型,以估计重金属胁迫下水稻中的叶绿素浓度。选取位于吉林省长春市的三个污染等级分别为II级,I级和安全等级的实验农场,基于输入参数归一化差异植被指数(NDVI),优化的土壤调整植被指数( OSAVI),修改后的三角植被指数/修改后的叶绿素吸收比指数(MTVI / MCARI),MTVI / OSAVI和水稻叶片叶绿素浓度的输出参数。输出参数对重金属应力敏感。结果表明,最优的BP神经网络预测模型具有4-10-2-1网络结构,具有梯度下降学习算法和激活函数,包括输入层中的S型切线函数,隐藏层和S型逻辑函数。输出层。测得的叶绿素浓度与预测叶绿素浓度之间的相关系数(R-2)为0.9014,均方根误差(RMSE)为2.58

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