Merrill Scott C, Peairs Frank B
Department of Plant and Soil Science, University of Vermont, Burlington, VT, USA.
Department of Bioagricultural Sciences and Pest Management, Colorado State University, Fort Collins, CO, USA.
Pest Manag Sci. 2017 Feb;73(2):380-388. doi: 10.1002/ps.4320. Epub 2016 Jun 27.
Models describing the effects of climate change on arthropod pest ecology are needed to help mitigate and adapt to forthcoming changes. Challenges arise because climate data are at resolutions that do not readily synchronize with arthropod biology. Here we explain how multiple sources of climate and weather data can be synthesized to quantify the effects of climate change on pest phenology.
Predictions of phenological events differ substantially between models that incorporate scale-appropriate temperature variability and models that do not. As an illustrative example, we predicted adult emergence of a pest of sunflower, the sunflower stem weevil Cylindrocopturus adspersus (LeConte). Predictions of the timing of phenological events differed by an average of 11 days between models with different temperature variability inputs. Moreover, as temperature variability increases, developmental rates accelerate.
Our work details a phenological modeling approach intended to help develop tools to plan for and mitigate the effects of climate change. Results show that selection of scale-appropriate temperature data is of more importance than selecting a climate change emission scenario. Predictions derived without appropriate temperature variability inputs will likely result in substantial phenological event miscalculations. Additionally, results suggest that increased temperature instability will lead to accelerated pest development. © 2016 Society of Chemical Industry.
需要建立描述气候变化对节肢动物害虫生态影响的模型,以帮助减轻和适应即将到来的变化。由于气候数据的分辨率与节肢动物生物学特征难以同步,因此面临诸多挑战。在此,我们解释如何综合多种气候和天气数据源,以量化气候变化对害虫物候的影响。
考虑了与尺度相适应的温度变异性的模型和未考虑该因素的模型,对物候事件的预测存在显著差异。作为一个示例,我们预测了向日葵害虫向日葵茎象甲(Cylindrocopturus adspersus (LeConte))成虫的出现时间。不同温度变异性输入的模型对物候事件发生时间的预测平均相差11天。此外,随着温度变异性增加,发育速率加快。
我们的工作详细阐述了一种物候建模方法,旨在帮助开发应对气候变化影响的规划和缓解工具。结果表明,选择与尺度相适应的温度数据比选择气候变化排放情景更为重要。没有适当温度变异性输入得出的预测可能会导致物候事件的大量误判。此外,结果表明温度不稳定性增加将导致害虫发育加速。© 2016化学工业协会。