...
首页> 外文期刊>Global change biology >Process-based models not always better than empirical models for simulating budburst of Norway spruce and birch in Europe
【24h】

Process-based models not always better than empirical models for simulating budburst of Norway spruce and birch in Europe

机译:基于过程的模型并不总是比模拟挪威云杉和欧洲桦树的芽爆发的经验模型更好

获取原文
获取原文并翻译 | 示例
           

摘要

Budburst models have mainly been developed to capture the processes of individual trees, and vary in their complexity and plant physiological realism. We evaluated how well eleven models capture the variation in budburst of birch and Norway spruce in Germany, Austria, the United Kingdom and Finland. The comparison was based on the models performance in relation to their underlying physiological assumptions with four different calibration schemes. The models were not able to accurately simulate the timing of budburst. In general the models overestimated the temperature effect, thereby the timing of budburst was simulated too early in the United Kingdom and too late in Finland. Among the better performing models were three models based on the growing degree day concept, with or without day length or chilling, and an empirical model based on spring temperatures. These models were also the models least influenced by the calibration data. For birch the best calibration scheme was based on multiple sites in either Germany or Europe, and for Norway spruce the best scheme included multiple sites in Germany or cold years of all sites. Most model and calibration combinations indicated greater bias with higher spring temperatures, mostly simulating earlier than observed budburst.
机译:Budburst模型主要是为了捕获单个树木的过程而开发的,其复杂性和植物生理现实性各不相同。我们评估了11个模型捕获德国,奥地利,英国和芬兰的桦树和挪威云杉芽芽变化的程度。比较是基于具有四种不同校准方案的模型性能与其基本生理假设之间的关系。这些模型无法准确地模拟出芽的时间。通常,这些模型高估了温度效应,因此在英国模拟芽萌发的时间太早,而在芬兰模拟得太晚。在性能较好的模型中,有三种基于生长度日概念的模型,有或没有日长或寒冷,以及基于春季温度的经验模型。这些模型也是受校准数据影响最小的模型。对于桦木而言,最佳校准方案基于德国或欧洲的多个地点,对于挪威云杉而言,最佳方案包括德国的多个地点或所有地点的寒冷年份。大多数模型和校准组合表明,较高的弹簧温度会产生更大的偏差,通常比观察到的爆发更早进行模拟。

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