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首页> 外文期刊>Computers and Electronics in Agriculture >An IPSO-BP neural network for estimating wheat yield using two remotely sensed variables in the Guanzhong Plain, PR China
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An IPSO-BP neural network for estimating wheat yield using two remotely sensed variables in the Guanzhong Plain, PR China

机译:PR中国冠王平原中的两个远程感测变量估算小麦产量的IPSO-BP神经网络

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Early and accurate information of crop growth condition is vital for agricultural industry and food security, which gives rise to a strong demand for timely monitoring crop growth condition and estimating crop yields. This study selected the remotely sensed leaf area index (LAI) and vegetation temperature condition index (VTCI) which closely relate to crop growth and crop water stress as two key variables for indicating crop growth condition and estimating crop yields in the Guanzhong Plain, PR China. The single VTCI, the single LAI and the combination of VTCI and LAI at four growth stages of winter wheat (the turning green, jointing, heading-filling, and dough stages) were used as three input variable schemes of the back propagation (BP) neural network and the improved particle swarm optimization algorithm (IPSO)-BP neural network using a nonlinear decreasing inertia weight, respectively. The relative importance of the input variables to the output variable, yield of winter wheat, was used to determine the weight values of input variables at each growth stage. Based on the weights, the integrated index (1) was established, and then three linear regression models (weighted VTCIs, weighted LAIs, and I values) were established with yield data to estimate winter wheat yields. By calculating several statistical functions, i.e., coefficient of determination (R-2) and probability value (P), the model between the I values and wheat yield performed better than those between the weighted VTCIs or weighted LAIs and wheat yields. The yield estimation model of / values by using the IPSO-BP neural network (R-2 = 0.342) was found to be better than that using the BP neural network (R-2 = 0.310). Therefore, we applied the model with better performance (R-2 = 0.342) to map the regional winter wheat yields pixel by pixel in the Guanzhong Plain during 2011-2018, and analyzed the spatial and temporal characteristics of the estimated yields. Regarding the spatial distribution, the yields in the west part of the plain are the highest, followed by the central part, and the yields in the east part are lowest, consistent with previous studies. The estimated yields showed inter-annual fluctuations along with an increasing trend on the whole. Winter wheat yields were most depleted in 2013 and most abundant in 2015. These results were consistent with the actual situation of winter wheat production in the plain, which indicated that I can be used to provide a better quantification for monitoring regional winter wheat growth conditions and estimating crop yield. Thus, the approach of this study can provide significant benefit for regional crop production monitoring.
机译:农业生长条件的早期和准确信息对于农业产业和粮食安全至关重要,这引起了对及时监测作物生长条件和估算作物产量的强烈需求。本研究选择了远程感测的叶面积指数(LAI)和植被温度条件指数(VTCI),其与作物生长和作物水胁迫密切相关,作为表明作物生长条件的两个关键变量,并在中国冠湛平原估算作物产量。 。单个vtci,单个赖莱和冬小麦四个生长阶段的vtci和lai的组合(转动绿色,伸直,标题和面团阶段)用作后传播的三个输入可变方案(BP)神经网络与改进的粒子群优化算法(IPSO)-BP神经网络使用非线性减小惯性重量。输入变量对输出变量的相对重要性,冬小麦的产量,用于确定每个生长阶段的输入变量的重量值。基于重量,建立了集成索引(1),然后建立了三种线性回归模型(加权VTCI,加权LAIS和I值),并以产量数据估计冬小麦产量。通过计算几种统计功能,即确定系数(R-2)和概率值(P),其值与小麦产率之间的模型比加权VTCIS或加权LAIS和小麦产量之间的模型更好。发现使用IPSO-BP神经网络(R-2 = 0.342)的/值的产量估计模型比使用BP神经网络(R-2 = 0.310)更好。因此,我们应用了更好的性能(R-2 = 0.342)来映射区域冬小麦在2011-2018期间在冠中平原中的像素产生像素,并分析了估计产量的空间和时间特征。关于空间分布,平原西部的产量最高,其次是中心部分,东部的产量最低,与先前的研究一致。估计产量显示年度跨年波动以及全部越来越大的趋势。冬小麦产量在2013年最耗尽,2015年最丰富。这些结果与平原中冬小麦生产的实际情况一致,这表明我可用于监测区域冬小麦生长条件的更好量化估计作物产量。因此,本研究的方法可以为区域作物生产监测提供显着的益处。

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