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Using Growing Degree Days, Agrometeorological Variables, Linear Regression, and Data Mining Methods to Help Improve Prediction of Sweetpotato Harvest Date in Louisiana

机译:使用生长度日,农业气象变量,线性回归和数据挖掘方法来帮助改善路易斯安那州甘薯收获日期的预测

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Predictive models of optimum sweetpotato (Ipomoea batatas) harvest in relation to growing degree days (GDD) will benefit producers and researchers by ensuring maximum yields and high quality. A GDD system has not been previously characterized for sweetpotato grown in Louisiana. We used a data set of 116 planting dates and used a combination of minimum cv, linear regression (LR), and several algorithms in a data mining (DM) mode to identify candidate methods of estimating relationships between GDD and harvest dates. These DM algorithms included neural networks, support vector machine, multivariate adaptive regression splines, regression trees, and generalized linear models. We then used candidate GDD methods along with agrometeorological variables to model US#1 yield using LR and DM methodology. A multivariable LR model with the best adjusted r(2) was based on GDD calculated using this method: maximum daily temperature (Tmax) - base temperature (B), where if Tmax > ceiling temperature [C (90 degrees F)], then Tmax = C, and where GDD = 0 if minimum daily temperature < 60 degrees F. The following climate-related variables contributed to the improvement of adjusted r(2) of the LR model: mean relative humidity 20 days after transplanting (DAT), maximum air temperature 20 DAT, and maximum soil temperature 10 DAT (log 10 transformed). In the DM mode, this GDD method and the LR model also demonstrated high predictive accuracy as quantified using mean square error. Using this model, we propose to schedule test harvests at GDD = 2600. The harvest date can further be optimized by predicting US#1 yield using GDD in combination with climate-based predictor variables measured within 20 DAT.
机译:相对于生长日数(GDD)的最佳甘薯(Ipomoea batatas)最佳收获的预测模型将通过确保最大产量和高质量来使生产者和研究人员受益。 GDD系统以前没有针对路易斯安那州种植的甘薯进行过表征。我们使用了116个播种日期的数据集,并结合了最小简历,线性回归(LR)和数据挖掘(DM)模式中的几种算法,以识别估算GDD和收获日期之间关系的候选方法。这些DM算法包括神经网络,支持向量机,多元自适应回归样条,回归树和广义线性模型。然后,我们使用候选GDD方法以及农业气象变量,使用LR和DM方法对US#1产量进行建模。调整后的r(2)具有最佳调整的多变量LR模型基于使用以下方法计算的GDD:最高每日温度(Tmax)-基准温度(B),如果Tmax>天花板温度[C(90华氏度)],则Tmax = C,如果最低每日温度<60华氏度,则GDD =0。以下与气候相关的变量有助于改善LR模型的调整后r(2):移植后20天(DAT)的平均相对湿度,最高气温20 DAT,最高土壤温度10 DAT(对数10转换)。在DM模式下,此GDD方法和LR模型也显示出较高的预测准确性,如使用均方误差所量化。使用此模型,我们建议将试验收获的日程安排在GDD = 2600上。通过使用GDD结合20天以内测得的基于气候的预测变量来预测US#1产量,可以进一步优化收获日期。

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