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Potential Occurrence Risk Prediction of Sudden Oak Death Under Different Future Climate Scenarios Based on SVM Model

机译:基于SVM模型的不同未来气候情景下突然橡木死亡的潜在发生风险预测

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Sudden Oak Death (SOD), a kind of plant disease, is caused by Phytophthora ramorum. It was discovered in 1993 for the first time, has a wide range of host plants, rapid spreading, serious harmful consequences. The outbreak of SOD is influenced by various factors. Thus there are obvious spatial variations in its distribution due to the influence of different environmental factors. In this study, an integrated datasets of the outbreak points and the associated environmental variables at global and regional scales were collected and processed. The Support Vector Machine (SVM) model was adopted to predict the potential occurrence risk of SOD under future climate scenarios. In addition to the traditional bioclimatic variables, Leaf Area Index (LAI) was introduced into the potential risk prediction models to achieve the forecasting of SOD in China. Four future climate scenarios of RCP2.6, RCP4.5, RCP6.0 and RCP8.5 were considered and compared. The optimal thresholds were determined for different climate scenarios and different years. The predictive accuracies were assessed using the indices of OPS, Sensitivity, Specificity, Kappa coefficient and AUC. Areas of the potential invasion risk of SOD under different climate scenarios in China were analyzed. Results showed that, under the future climate scenarios in 2050 and 2070, Yunnan, Sichuan, Guizhou, Tibet and Chongqing all have high risks. This study could provide the long-term early warning about the outbreak and invasion risk of SOD, serving for the prevention and treatment of forest diseases as well as ensuring the forest ecological security globally and nationally.
机译:突然的橡木死亡(SOD),一种植物疾病是由植物博士拉障碍引起的。它是在1993年首次发现的,拥有广泛的宿主植物,迅速传播,严重的有害后果。 SOD的爆发受到各种因素的影响。因此,由于不同环境因素的影响,其分布存在明显的空间变化。在本研究中,收集并处理了爆发点的集成数据集和全球和区域尺度的相关环境变量。采用支持向量机(SVM)模型来预测未来气候情景下草皮的潜在发生风险。除了传统的生物恐星变量外,叶面积指数(LAI)被引入潜在的风险预测模型,以实现中国的草皮预测。进行了四次RCP2.6,RCP4.5,RCP6.0和RCP8.5的四种气候情景。为不同的气候情景和不同年份确定最佳阈值。使用OPS,敏感度,特异性,κ系数和AUC的指标进行评估预测准确性。分析了中国不同气候情景下草皮潜在入侵风险的领域。结果表明,根据2050年和2070年的未来气候情景,云南,四川,贵州,西藏和重庆都有很高的风险。本研究可以为SOD的爆发和入侵风险提供长期预警,用于预防和治疗森林疾病,并确保全球和全国性的森林生态安全。

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