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首页> 外文期刊>Precision Agriculture >Nitrogen prediction model of rice plant at panicle initiation stage using ground-based hyperspectral imaging: growing degree-days integrated model
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Nitrogen prediction model of rice plant at panicle initiation stage using ground-based hyperspectral imaging: growing degree-days integrated model

机译:基于地面高光谱成像的穗萌芽期水稻植株氮素预测模型:生长度-天数集成模型

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Ground-based hyperspectral imaging was applied to rice plants at the panicle initiation stage to estimate nitrogen content. We developed a partial least squares regression (PLSR) model that incorporated both the reflectance and growing degree-days (GDD) to account for differences in growing temperature conditions across a 3-year period. The acquired images were divided into two components: (1) the rice plant and (2) other elements (e.g., irrigation water, soil background) by using the GreenNDVI - NDVI equation. Rice plant reflectance (Ref (RICE) ) was calculated as the ratio of rice plant reflectance to that of a reference board. Three types of PLSR models were constructed: 1-year, 2-year, and 2-year GDD. Mutual estimation was used to infer the predictive power of the three models, which was calculated by estimating the values for the other years. The root mean square error of prediction (RMSE) of the mutual estimation for the 1- and 2-year PLSR models was high because of overestimation and underestimation. In contrast, the RMSE of the mutual estimation for the 2-year GDD PLSR models clearly decreased. It was inferred that hyperspectral imaging at 400-1000 nm could not predict variation in the amount of growth caused by weather variation expressed as GDD. This study indicates that the combination of reflectance and temperature data could be used to potentially construct an adaptable model to identify variance in growing conditions.
机译:在穗开始阶段将基于地面的高光谱成像应用于水稻植株,以估算氮含量。我们开发了偏最小二乘回归(PLSR)模型,该模型结合了反射率和生长天数(GDD),以说明3年期间生长温度条件的差异。使用GreenNDVI-NDVI方程将获取的图像分为两个部分:(1)水稻植株和(2)其他元素(例如灌溉水,土壤背景)。水稻植株反射率(Ref(RICE))计算为水稻植株反射率与参考板的反射率之比。构建了三种类型的PLSR模型:1年,2年和2年GDD。相互估计被用来推断这三个模型的预测能力,这是通过估计其他年份的值来计算的。由于过高估计和过低估计,一年和两年期PLSR模型相互估计的预测均方根误差(RMSE)高。相比之下,两年期GDD PLSR模型的相互估计的RMSE明显降低。可以推断,在400-1000 nm处的高光谱成像无法预测由以GDD表示的天气变化引起的增长量变化。这项研究表明,反射率和温度数据的组合可用于潜在地构建适应性模型,以识别生长条件的变化。

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