Multi-Factor Coral Disease Risk: A new product for early warning and management

IF 4.3 2区 环境科学与生态学 Q1 ECOLOGY
Jamie M. Caldwell, Gang Liu, Erick Geiger, Scott F. Heron, C. Mark Eakin, Jacqueline De La Cour, Austin Greene, Laurie Raymundo, Jen Dryden, Audrey Schlaff, Jessica S. Stella, Tye L. Kindinger, Courtney S. Couch, Douglas Fenner, Whitney Hoot, Derek Manzello, Megan J. Donahue
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Abstract

Ecological forecasts are becoming increasingly valuable tools for conservation and management. However, there are few examples of near-real-time forecasting systems that account for the wide range of ecological complexities. We developed a new coral disease ecological forecasting system that explores a suite of ecological relationships and their uncertainty and investigates how forecast skill changes with shorter lead times. The Multi-Factor Coral Disease Risk product introduced here uses a combination of ecological and marine environmental conditions to predict the risk of white syndromes and growth anomalies across reefs in the central and western Pacific and along the east coast of Australia and is available through the US National Oceanic and Atmospheric Administration Coral Reef Watch program. This product produces weekly forecasts for a moving window of 6 months at a resolution of ~5 km based on quantile regression forests. The forecasts show superior skill at predicting disease risk on withheld survey data from 2012 to 2020 compared with predecessor forecast systems, with the biggest improvements shown for predicting disease risk at mid- to high-disease levels. Most of the prediction uncertainty arises from model uncertainty, so prediction accuracy and precision do not improve substantially with shorter lead times. This result arises because many predictor variables cannot be accurately forecasted, which is a common challenge across ecosystems. Weekly forecasts and scenarios can be explored through an online decision support tool and data explorer, co-developed with end-user groups to improve use and understanding of ecological forecasts. The models provide near-real-time disease risk assessments and allow users to refine predictions and assess intervention scenarios. This work advances the field of ecological forecasting with real-world complexities and, in doing so, better supports near-term decision making for coral reef ecosystem managers and stakeholders. Secondarily, we identify clear needs and provide recommendations to further enhance our ability to forecast coral disease risk.

Abstract Image

多因素珊瑚病风险:用于预警和管理的新产品。
生态预测正日益成为保护和管理的宝贵工具。然而,很少有近乎实时的预测系统能考虑到广泛的生态复杂性。我们开发了一种新的珊瑚病生态预报系统,该系统探索了一系列生态关系及其不确定性,并研究了预报技能如何随更短的准备时间而变化。这里介绍的多因素珊瑚疾病风险产品利用生态和海洋环境条件的组合来预测太平洋中部和西部以及澳大利亚东海岸珊瑚礁的白色综合症和生长异常的风险,该产品可通过美国国家海洋和大气管理局珊瑚礁观察计划获得。该产品以量子回归森林为基础,在约 5 千米的分辨率上对 6 个月的移动窗口进行每周预测。与前代预测系统相比,该预测系统在预测 2012 年至 2020 年扣留的调查数据的疾病风险方面显示出卓越的技能,在预测中高疾病水平的疾病风险方面显示出最大的改进。预测的不确定性大多来自模型的不确定性,因此预测的准确性和精确度并没有随着提前期的缩短而大幅提高。造成这一结果的原因是许多预测变量无法准确预测,这也是生态系统面临的共同挑战。可以通过与最终用户群体共同开发的在线决策支持工具和数据资源管理器来探索每周的预测和情景,以提高对生态预测的使用和理解。这些模型可提供近乎实时的疾病风险评估,并允许用户完善预测和评估干预方案。这项工作推进了具有现实世界复杂性的生态预测领域,从而更好地支持珊瑚礁生态系统管理者和利益相关者的近期决策。其次,我们明确了需求并提出了建议,以进一步提高我们预测珊瑚疾病风险的能力。
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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来源期刊
Ecological Applications
Ecological Applications 环境科学-环境科学
CiteScore
9.50
自引率
2.00%
发文量
268
审稿时长
6 months
期刊介绍: The pages of Ecological Applications are open to research and discussion papers that integrate ecological science and concepts with their application and implications. Of special interest are papers that develop the basic scientific principles on which environmental decision-making should rest, and those that discuss the application of ecological concepts to environmental problem solving, policy, and management. Papers that deal explicitly with policy matters are welcome. Interdisciplinary approaches are encouraged, as are short communications on emerging environmental challenges.
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