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中国农学通报 ›› 2020, Vol. 36 ›› Issue (15): 94-99.doi: 10.11924/j.issn.1000-6850.casb19020051

所属专题: 农业气象

• 资源·环境·生态·土壤·气象 • 上一篇    下一篇

草面温度在霜预报中的应用

郝玲, 史逸民, 史达伟, 顾春雷   

  1. 连云港市气象局,江苏连云港 222006
  • 收稿日期:2019-02-25 修回日期:2019-06-10 出版日期:2020-05-25 发布日期:2020-05-21
  • 作者简介:郝玲,女,1983年出生,天津人,工程师,硕士,研究方向:应用气象服务。通信地址:222006 江苏省连云港市海州区瀛洲路8号 连云港气象局,E-mail:702381568@qq.com。
  • 基金资助:
    江苏省气象局青年科研基金“连云港地区基于草温的霜的预报模型”(Q201708);江苏省预报员专项“地面辐合线在江苏省强对流预报预警中的应用”(JSYBY201810)

Grassland Temperature: Application in Frost Forecasting

Hao Ling, Shi Yimin, Shi Dawei, Gu Chunlei   

  1. Lianyungang Meteorological Bureau, Lianyungang Jiangsu 222006
  • Received:2019-02-25 Revised:2019-06-10 Online:2020-05-25 Published:2020-05-21

摘要:

为了避免农作物遇霜后遭受冻害,本研究采用草面温度对霜进行预测。利用连云港气象观测站2014—2016年逐时气象要素,包括气温、0 cm地温、露点温度、水汽压、气压以及2 min平均风速等气象要素作为影响连云港地区草面温度的关键因子,并以这6个要素作为属性特征,以草温作为标志量构建训练样本集,结合KNN数据挖掘算法构建草温预测模型,并根据草温判别是否有霜出现。结果表明:基于该算法构建的草温预测模型效果较好,预报平均误差1.2℃;根据草温预测霜的准确率高达90.2%,尤其对初终霜的预报具有很好的指示意义。因此,引入草温作为霜的预报指标,对于避免农作物遭受霜害具有十分重要的意义。

关键词: 农作物, 霜, 草面温度, 关键因子, KNN算法, 预测模型

Abstract:

To avoid freezing damage to crops after frost, we used grassland temperature to predict frost. Based on hourly meteorological data from Lianyungang Meteorological Observatory during 2014-2016, including temperature, 0 cm ground temperature, dew point temperature, water vapor pressure, air pressure and 2 min average wind speed, which were the key factors affecting the grassland temperature in Lianyungang, we took these 6 elements as attribute features, and constructed a training sample set with grass temperature as a marker. The KNN data mining algorithm is combined to construct a grass temperature prediction model, and the frost occurrence is judged according to the grass temperature. The results showed that: the grass temperature prediction model based on the algorithm could achieve better prediction effect, the forecast average error was 1.2℃; according to the grass temperature, the accuracy of frost forecast reached 90.2%, which had a good indication especially for the prediction of the initial and the last frost. Therefore, the introduction of grass temperature as a prediction index of frost is of significance for avoiding crop damage.

Key words: crop, frost, grassland temperature, key factor, K-Nearest Neighbor (KNN), prediction model

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