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首页> 外文期刊>NeoBiota >Site-specific temporal and spatial validation of a generic plant pest forecast system with observations of Bactrocera dorsalis (oriental fruit fly)
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Site-specific temporal and spatial validation of a generic plant pest forecast system with observations of Bactrocera dorsalis (oriental fruit fly)

机译:带有实蝇实蝇(Bactrocera dorsalis)(东方实蝇)的观测的通用植物病虫害预报系统的针对具体地点的时空验证

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摘要

This study introduces a simple generic model, the Generic Pest Forecast System (GPFS), for simulating the relative populations of non-indigenous arthropod pests in space and time. The model was designed to calculate the population index or relative population using hourly weather data as influenced by developmental rate, high and low temperature mortalities and wet soil moisture mortality. Each module contains biological parameters derived from controlled experiments. The hourly weather data used for the model inputs were obtained from the National Center of Environmental Prediction Climate Forecast System Reanalysis (NCEP-CFSR) at a 38 km spatial resolution. A combination of spatial and site-specific temporal data was used to validate the GPFS models. The oriental fruit fly, Bactrocera dorsalis (Hendel), was selected as a case study for this research because it is climatically driven and a major pest of fruit production. Results from the GPFS model were compared with field Bactrocera dorsalis survey data in three locations: 1) Bangalore, India; 2) Hawaii, USA; and 3) Wuhan, China. The GPFS captured the initial outbreaks and major population peaks of Bactrocera dorsalis reasonably well, although agreement varied between sites. An index of agreement test indicated that GPFS model simulations matched with field Bactrocera dorsalis observation data with a range between 0.50 and 0.94 (1.0 as a perfect match). Of the three locations, Wuhan showed the highest match between the observed and simulated Bactrocera dorsalis populations, with indices of agreement of 0.85. The site-specific temporal comparisons implied that the GPFS model is informative for prediction of relative abundance. Spatial results from the GPFS model were also compared with 161 published observations of Bactrocera dorsalis distribution, mostly from East Asia. Since parameters for pupal overwintering and survival were unknown from the literature, these were inferred from the distribution data. The study showed that GPFS has promise for estimating suitable areas for Bactrocera dorsalis establishment and potentially other non-indigenous pests. It is concluded that calibrating prediction models with both spatial and site-specific temporal data may provide more robust and reliable results than validations with either data set alone.
机译:这项研究引入了一个简单的通用模型,即通用病虫害预测系统(GPFS),用于模拟非本地节肢动物害虫在空间和时间上的相对种群。该模型旨在使用每小时的天气数据来计算人口指数或相对人口,该数据受发育速度,高低温死亡率和湿润土壤水分死亡率的影响。每个模块都包含来自受控实验的生物学参数。用于模型输入的每小时天气数据是从国家环境预测气候预报系统再分析中心(NCEP-CFSR)获得的,其空间分辨率为38 km。结合时空数据和特定地点的时间数据来验证GPFS模型。选择东方果蝇Bactrocera dorsalis(Hendel)作为本研究的案例研究,因为它是气候驱动的并且是水果生产的主要害虫。 GPFS模型的结果与三个地方的实蝇实蝇调查数据进行了比较:1)印度班加罗尔; 2)美国夏威夷; 3)中国武汉。 GPFS较好地捕获了背实蝇的初期暴发和主要种群高峰,尽管不同地点之间的协议有所不同。一致性指数测试表明,GPFS模型模拟与实地小实蝇的观测数据匹配,范围在0.50至0.94之间(1.0为最佳匹配)。在这三个位置中,武汉显示出观察到的和模拟的桔小实蝇种群之间的最高匹配,一致性指数为0.85。特定地点的时间比较表明,GPFS模型可为相对丰度的预测提供信息。 GPFS模型的空间结果也与161个已发表的小实蝇的分布观察结果进行了比较,这些观察结果主要来自东亚。由于文献中未知p的越冬和存活的参数,因此可从分布数据中推断出这些参数。研究表明,GPFS有望估算背果小实蝇和其他潜在的非本土害虫的适宜面积。结论是,与单独使用任一数据集进行验证相比,使用空间和特定地点的时间数据来校准预测模型可能会提供更可靠和可靠的结果。

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