Kim Kwang-Hyung, Jung Imgook
APEC Climate Center, Busan 48058, Korea.
Plant Pathol J. 2020 Oct 1;36(5):406-417. doi: 10.5423/PPJ.OA.07.2020.0135.
Early warning services for crop diseases are valuable when they provide timely forecasts that farmers can utilize to inform their disease management decisions. In South Korea, collaborative disease controls that utilize unmanned aerial vehicles are commonly performed for most rice paddies. However, such controls could benefit from seasonal disease early warnings with a lead time of a few months. As a first step to establish a seasonal disease early warning service using seasonal climate forecasts, we developed the EPIRICE Daily Risk Model for rice blast by extracting and modifying the core infection algorithms of the EPIRICE model. The daily risk scores generated by the EPIRICE Daily Risk Model were successfully converted into a realistic and measurable disease value through statistical analyses with 13 rice blast incidence datasets, and subsequently validated using the data from another rice blast experiment conducted in Icheon, South Korea, from 1974 to 2000. The sensitivity of the model to air temperature, relative humidity, and precipitation input variables was examined, and the relative humidity resulted in the most sensitive response from the model. Overall, our results indicate that the EPIRICE Daily Risk Model can be used to produce potential disease risk predictions for the seasonal disease early warning service.
作物病害早期预警服务若能提供及时的预报,使农民可据此做出病害管理决策,便具有重要价值。在韩国,利用无人机进行的协同病害防治在大多数稻田中普遍开展。然而,此类防治若能受益于提前几个月的季节性病害预警,效果会更佳。作为利用季节性气候预报建立季节性病害早期预警服务的第一步,我们通过提取和修改EPIRICE模型的核心感染算法,开发了用于稻瘟病的EPIRICE每日风险模型。通过对13个稻瘟病发病率数据集进行统计分析,由EPIRICE每日风险模型生成的每日风险评分成功转化为现实且可测量的病害值,随后利用1974年至2000年在韩国利川进行的另一次稻瘟病实验数据进行了验证。研究了该模型对气温、相对湿度和降水输入变量的敏感性,结果表明相对湿度对模型的响应最为敏感。总体而言,我们的结果表明,EPIRICE每日风险模型可用于为季节性病害早期预警服务生成潜在的病害风险预测。