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首页> 外文期刊>Frontiers in Physiology >Microclimate Data Improve Predictions of Insect Abundance Models Based on Calibrated Spatiotemporal Temperatures
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Microclimate Data Improve Predictions of Insect Abundance Models Based on Calibrated Spatiotemporal Temperatures

机译:基于校准的时空温度,小气候数据改善了昆虫丰度模型的预测

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A large body of literature has recently recognized the role of microclimates in controlling the physiology and ecology of species, yet the relevance of fine-scale climatic data for modeling species performance and distribution remains a matter of debate. Using a 6-year monitoring of three potato moth species, major crop pests in the tropical Andes, we asked whether the spatiotemporal resolution of temperature data affect the predictions of models of moth performance and distribution. For this, we used three different climatic data sets: (i) the WorldClim dataset (global dataset), (ii) air temperature recorded using data loggers (weather station dataset), and (iii) air crop canopy temperature (microclimate dataset). We developed a statistical procedure to calibrate all datasets to monthly and yearly variation in temperatures, while keeping both spatial and temporal variances (air monthly temperature at 1 km2 for the WorldClim dataset, air hourly temperature for the weather station, and air minute temperature over 250 m radius disks for the microclimate dataset). Then, we computed pest performances based on these three datasets. Results for temperature ranging from 9 to 11°C revealed discrepancies in the simulation outputs in both survival and development rates depending on the spatiotemporal resolution of the temperature dataset. Temperature and simulated pest performances were then combined into multiple linear regression models to compare predicted vs. field data. We used an additional set of study sites to test the ability of the results of our model to be extrapolated over larger scales. Results showed that the model implemented with microclimatic data best predicted observed pest abundances for our study sites, but was less accurate than the global dataset model when performed at larger scales. Our simulations therefore stress the importance to consider different temperature datasets depending on the issue to be solved in order to accurately predict species abundances. In conclusion, keeping in mind that the mismatch between the size of organisms and the scale at which climate data are collected and modeled remains a key issue, temperature dataset selection should be balanced by the desired output spatiotemporal scale for better predicting pest dynamics and developing efficient pest management strategies.
机译:最近,大量文献已经认识到微气候在控制物种的生理和生态中的作用,然而,精细气候数据与模拟物种表现和分布的相关性仍是一个争论的问题。通过对热带安第斯山脉中三种主要农作物害虫马铃薯蛾的6年监测,我们询问温度数据的时空分辨率是否会影响飞蛾性能和分布模型的预测。为此,我们使用了三个不同的气候数据集:(i)WorldClim数据集(全球数据集),(ii)使用数据记录器记录的气温(气象站数据集)和(iii)作物的冠层温度(小气候数据集)。我们开发了一种统计程序,可将所有数据集校准为温度的每月和每年变化,同时保持空间和时间上的差异(WorldClim数据集的每月空气温度为1 km2,气象站的每小时空气温度以及250分钟以上的空气分钟温度小气候数据集的m个半径磁盘)。然后,我们基于这三个数据集计算了害虫表现。温度范围为9至11°C的结果表明,取决于温度数据集的时空分辨率,模拟输出的存活率和发育率均存在差异。然后将温度和模拟的害虫表现结合到多个线性回归模型中,以比较预测的数据与田间数据。我们使用了一组额外的研究站点来测试将模型结果推广到更大范围的能力。结果表明,用微气候数据实施的模型可以最好地预测我们研究地点观测到的有害生物丰度,但在大规模实施时,其准确性低于全局数据集模型。因此,我们的模拟强调了根据要解决的问题考虑不同温度数据集的重要性,以便准确预测物种的丰度。总之,请记住,生物体的大小与收集和建模气候数据的规模之间的不匹配仍然是一个关键问题,温度数据集的选择应通过所需的输出时空规模进行平衡,以便更好地预测有害生物动态并有效开发有害生物管理策略。

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