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首页> 外文期刊>Computers and Electronics in Agriculture >BLITE-SVR: New forecasting model for late blight on potato using support-vector regression
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BLITE-SVR: New forecasting model for late blight on potato using support-vector regression

机译:BLITE-SVR:使用支持向量回归的马铃薯晚疫病新预测模型

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Various simple statistical methods have been used for the prediction of plant-disease epidemics. However, the need to develop a new model, reflecting many changed environmental factors and applicable to the Korean domestic farmhouse, has been raised. Given this point, we developed the potato late blight prediction model called BLITE-SVR, after which we predicted and verified the first date of occurrence with the data from 1976 to 1985 and from 2009 to 2012 through support-vector regression (SVR), a statistical method offering good performance. For the prediction model, we collected 13 kinds of weather data, including temperature, humidity, evaporation, and so on, which displayed very high correlation to the first date of the occurrence of late blight. The performance of BLITE-SVR has been evaluated through comparison with the conventional moving-average method that was previously used, as well as through pace regression and linear regression. The accuracy of prediction for the first date of occurrence was 64.3% by BLITE-SVR, thus showing a higher degree of accuracy compared with 42.9% by the conventional moving-average method, 42.9% by pace regression and 35.7% by linear regression. This study will enable farmers to match the targeted fungicide application to the time of greatest need and thereby achieve a reduction in chemical use. (C) 2016 Published by Elsevier B.V.
机译:各种简单的统计方法已用于预测植物疾病的流行。但是,已经提出了开发反映许多环境因素并且适用于韩国家庭农舍的新模型的需求。鉴于此,我们开发了称为BLITE-SVR的马铃薯晚疫病预测模型,此后,我们通过支持向量回归(SVR)对1976年至1985年以及2009年至2012年的数据进行了预测并验证了首次出现日期。提供良好性能的统计方法。对于预测模型,我们收集了13种天气数据,包括温度,湿度,蒸发量等,这些数据与晚疫病的首次发生日期具有很高的相关性。通过与以前使用的常规移动平均方法进行比较,以及通过步速回归和线性回归对BLITE-SVR的性能进行了评估。 BLITE-SVR对首次发生日期的预测准确性为64.3%,与传统的移动平均方法的42.9%,步速回归的42.9%和线性回归的35.7%相比,显示出更高的准确性。这项研究将使农民能够将针对性杀真菌剂的使用与最需要的时间相匹配,从而减少化学药品的使用。 (C)2016由Elsevier B.V.发布

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