Suppr超能文献

一个由意大利各地区共享的植物病害感染风险评估公共决策支持系统。

A public decision support system for the assessment of plant disease infection risk shared by Italian regions.

机构信息

CREA - Council for Agricultural Research and Economics, Research Centre for Agriculture and Environment, I-40128 Bologna, I-00184 Rome, Italy.

CREA - Council for Agricultural Research and Economics, Research Centre for Agriculture and Environment, I-40128 Bologna, I-00184 Rome, Italy.

出版信息

J Environ Manage. 2022 Sep 1;317:115365. doi: 10.1016/j.jenvman.2022.115365. Epub 2022 May 26.

Abstract

Integrated pest management (IPM) practices proved to be efficient in reducing pesticide use and ensuring economic farming sustainability. Digital decision support systems (DSS) to support the adoption of IPM practices from plant protection services are required by European legislation. Available DSSs used by Italian plant protection services are heterogeneous with regards to disease forecasting models, datasets for their calibration, and level of integration in operational decision-making. This study presents the MISFITS-DSS, which has been jointly developed by a public research institution and nine regional plant protection services with the objective of harmonizing data collection and decision support for Italian farmers. Participatory approach allowed designing a predictive workflow relying on specific domain expertise, in order to explicitly match actual user needs. The DSS calibration entailed the risk of grapevine downy mildew infection (5-point scale from very low to very high), and phenological observations in 2012-2017 as reference data. Process-based models of primary and secondary infections have been implemented and tested via sensitivity analysis (Morris method) under contrasting weather conditions. Hindcast simulations of grapevine phenology, host susceptibility and disease pressure were post-processed by machine-learning classifiers to predict the reference infection risk. Results indicate that IPM principles are implemented by plant protection services since years. The accurate reproduction of grapevine phenology (RMSE = 4-14 days), which drove the dynamic of host susceptibility, and the use of weather forecasts as model inputs contributed to reliably predict the reference infection risk (88% balanced accuracy). We did a pioneering effort to homogenize the methodology to deliver decision support to Italian farmers, by involving plant protection services in the DSS definition, to foster a further adoption of IPM practices.

摘要

综合虫害管理(IPM)实践已被证明可有效减少农药使用并确保经济农业的可持续性。欧洲法规要求提供数字决策支持系统(DSS),以支持植保服务机构采用 IPM 实践。意大利植保服务机构使用的现有 DSS 在疾病预测模型、校准数据集以及在运营决策中的集成程度方面存在差异。本研究介绍了 MISFITS-DSS,它由一个公共研究机构和九个地区植保服务机构共同开发,旨在协调意大利农民的数据收集和决策支持。参与式方法允许设计依赖特定领域专业知识的预测工作流程,以明确匹配实际用户需求。DSS 的校准涉及到葡萄霜霉病感染风险(从非常低到非常高的 5 级)和 2012-2017 年物候观测的校准,作为参考数据。已经实现并通过在不同天气条件下进行敏感性分析(Morris 方法)测试了初级和次级感染的基于过程的模型。通过机器学习分类器对葡萄物候、寄主易感性和病害压力的回溯模拟进行后处理,以预测参考感染风险。结果表明,植保服务机构多年来一直在实施 IPM 原则。葡萄物候学的准确再现(RMSE=4-14 天),驱动了寄主易感性的动态,以及将天气预报用作模型输入,有助于可靠地预测参考感染风险(88%的平衡准确性)。我们通过让植保服务机构参与 DSS 的定义,在为意大利农民提供决策支持方面做出了开创性的努力,以促进 IPM 实践的进一步采用。

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