SAFARIS: a spatial analytic framework for pest forecast systems

Y. Takeuchi, A. Tripodi, K. Montgomery
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Abstract

Non-native pests and diseases pose a risk of economic and environmental damage to managed and natural U.S. forests and agriculture. The U.S. Department of Agriculture (USDA) Animal and Plant Health Inspection Service (APHIS) Plant Protection and Quarantine (PPQ) protects the health of U.S. agriculture and natural resources against invasive pests and diseases through efforts to prevent the entry, establishment, and spread of non-native pests and diseases. Because each pest or disease has its own idiosyncratic characteristics, analyzing risk is highly complex. To help PPQ better respond to pest and disease threats, we developed the Spatial Analytic Framework for Advanced Risk Information Systems (SAFARIS), an integrated system designed to provide a seamless environment for producing predictive models. SAFARIS integrates pest biology information, climate and non-climate data drivers, and predictive models to provide users with readily accessible and easily customizable tools to analyze pest and disease risks. The phenology prediction models, spread forecasting models, and other climate-based analytical tools in SAFARIS help users understand which areas are suitable for establishment, when surveys would be most fruitful, and aid in other analyses that inform decision-making, operational efforts, and rapid response. Here we introduce the components of SAFARIS and provide two use cases demonstrating how pest-specific models developed with SAFARIS tools support PPQ in its mission. Although SAFARIS is designed to address the needs of PPQ, the flexible, web-based framework is publicly available, allowing any user to leverage the available data and tools to model pest and disease risks.
SAFARIS:害虫预测系统的空间分析框架
非本地病虫害对美国经营的天然林和农业造成经济和环境损害的风险。美国农业部(USDA)动植物卫生检验局(APHIS)植物保护和检疫局(PPQ)通过努力防止非本地病虫害的进入、定居和传播,保护美国农业和自然资源免受入侵病虫害的侵害。由于每种有害生物或疾病都有其独特的特征,因此分析风险是非常复杂的。为了帮助PPQ更好地应对病虫害威胁,我们开发了先进风险信息系统空间分析框架(SAFARIS),这是一个集成系统,旨在为生成预测模型提供无缝环境。SAFARIS集成了害虫生物学信息、气候和非气候数据驱动因素以及预测模型,为用户提供易于访问和易于定制的工具来分析害虫和疾病风险。SAFARIS中的物候预测模型、传播预测模型和其他基于气候的分析工具可以帮助用户了解哪些地区适合建立,何时调查最富有成效,并有助于为决策、业务努力和快速反应提供信息的其他分析。在这里,我们将介绍SAFARIS的组件,并提供两个用例,演示使用SAFARIS工具开发的特定害虫模型如何支持PPQ的任务。虽然SAFARIS是为满足PPQ的需求而设计的,但这个灵活的基于网络的框架是公开的,允许任何用户利用现有数据和工具来模拟病虫害风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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