Statistics > Applications
[Submitted on 1 Dec 2024
(v1)
, last revised 16 Apr 2025 (this version, v2)]
Title: The ecological forecast limit revisited: Potential, actual and relative system predictability
Title: 重新审视生态预测的限制:潜力、实际性和相对系统可预测性
Abstract: Ecological forecasts are model-based statements about currently unknown ecosystem states in time or space. For a model forecast to be useful to inform decision makers, model validation and verification determine adequateness. The measure of forecast goodness that can be translated into a limit up to which a forecast is acceptable is known as the 'forecast limit'. While verification in weather forecasting follows strict criteria with established metrics and forecast limits, assessments of ecological forecasting models still remain experiment-specific, and forecast limits are rarely reported. As such, users of ecological forecasts remain uninformed of how far into the future statements can be trusted. In this work, we synthesise existing approaches to define empirical forecast limits in a unified framework for assessing ecological predictability and offer recipes for their computation. We distinguish the model's potential and absolute forecast limit, and show how a benchmark model can help determine its relative forecast limit. The approaches are demonstrated with three case studies from population, ecosystem, and Earth system research. We found that forecast limits can be computed with three requirements: A verification reference, a scoring function, and a predictive error tolerance. Within our framework, forecast limits are defined for practically any ecological forecast and support research on ecological predictability analysis.
Submission history
From: Marieke Wesselkamp [view email][v1] Sun, 1 Dec 2024 10:14:42 UTC (4,941 KB)
[v2] Wed, 16 Apr 2025 08:56:10 UTC (7,550 KB)
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