【24h】

Models for forecasting the flowering of Cornicabra olive groves

机译:预测Cornicabra橄榄树开花的模型

获取原文
获取原文并翻译 | 示例
           

摘要

This study examined the impact of weather-related variables on flowering phenology in the Cornicabra olive tree and constructed models based on linear and Poisson regression to forecast the onset and length of the pre-flowering and flowering phenophases. Spain is the world's leading olive oil producer, and the Cornicabra variety is the second largest Spanish variety in terms of surface area. However, there has been little phenological research into this variety. Phenological observations were made over a 5-year period (2009-2013) at four sampling sites in the province of Toledo (central Spain). Results showed that the onset of the pre-flowering phase is governed largely by temperature, which displayed a positive correlation with the temperature in the start of dormancy (November) and a negative correlation during the months prior to budburst (January, February and March). A similar relationship was recorded for the onset of flowering. Other weather-related variables, including solar radiation and rainfall, also influenced the succession of olive flowering phenophases. Linear models proved the most suitable for forecasting the onset and length of the pre-flowering period and the onset of flowering. The onset and length of pre-flowering can be predicted up to 1 or 2 months prior to budburst, whilst the onset of flowering can be forecast up to 3 months beforehand. By contrast, a nonlinear model using Poisson regression was best suited to predict the length of the flowering period.
机译:这项研究检查了与天气有关的变量对Cornicabra橄榄树开花物候的影响,并基于线性和Poisson回归构建了模型,以预测开花前和开花物期的发生和长度。西班牙是世界领先的橄榄油生产国,按表面积计,Cornicabra品种是西班牙第二大品种。但是,对此品种的物候研究很少。在托莱多省(西班牙中部)的四个采样点进行了为期5年(2009-2013年)的物候观察。结果表明,开花前期的开始主要受温度的控制,温度与休眠开始时(11月)的温度呈正相关,而芽期前的月份(1月,2月和3月)则呈负相关。 。记录了开花的相似关系。其他与天气有关的变量,包括太阳辐射和降雨,也影响了橄榄开花期的演替。线性模型被证明最适合预测花期的开始和长度以及开花的开始。可以预测出芽前1或2个月内开始开花的时间和长度,而可以预测到3个月前开始开花的时间。相比之下,使用泊松回归的非线性模型最适合预测开花期的长度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号