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PNAS PlusFrom the Cover: Equation-free mechanistic ecosystem forecasting using empirical dynamic modeling

机译:从封面开始:使用经验动态建模的无方程式机械生态系统预测

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摘要

It is well known that current equilibrium-based models fall short as predictive descriptions of natural ecosystems, and particularly of fisheries systems that exhibit nonlinear dynamics. For example, model parameters assumed to be fixed constants may actually vary in time, models may fit well to existing data but lack out-of-sample predictive skill, and key driving variables may be misidentified due to transient (mirage) correlations that are common in nonlinear systems. With these frailties, it is somewhat surprising that static equilibrium models continue to be widely used. Here, we examine empirical dynamic modeling (EDM) as an alternative to imposed model equations and that accommodates both nonequilibrium dynamics and nonlinearity. Using time series from nine stocks of sockeye salmon (Oncorhynchus nerka) from the Fraser River system in British Columbia, Canada, we perform, for the the first time to our knowledge, real-data comparison of contemporary fisheries models with equivalent EDM formulations that explicitly use spawning stock and environmental variables to forecast recruitment. We find that EDM models produce more accurate and precise forecasts, and unlike extensions of the classic Ricker spawner–recruit equation, they show significant improvements when environmental factors are included. Our analysis demonstrates the strategic utility of EDM for incorporating environmental influences into fisheries forecasts and, more generally, for providing insight into how environmental factors can operate in forecast models, thus paving the way for equation-free mechanistic forecasting to be applied in management contexts.
机译:众所周知,当前基于平衡的模型不足以作为对自然生态系统,特别是表现出非线性动力学的渔业系统的预测性描述。例如,假定为固定常数的模型参数实际上可能会随时间变化,模型可能很适合现有数据,但缺乏样本外的预测能力,并且由于常见的瞬态(镜像)相关性,可能会误识别关键的驱动变量在非线性系统中。由于这些脆弱性,静态平衡模型继续被广泛使用有些令人惊讶。在这里,我们研究了经验动态建模(EDM),作为强加模型方程的一种替代方法,它可以同时容纳非平衡动力学和非线性。我们使用来自加拿大不列颠哥伦比亚省弗雷泽河系统的九种鲑鱼(大眼鲑)的时间序列,第一次对我们的知识进行了当代渔业模型与等效EDM公式的真实数据比较,该模型明确地使用产卵种群和环境变量来预测招聘。我们发现,EDM模型可产生更准确,更精确的预测,并且与经典Ricker生成器-招聘方程式的扩展不同,当包括环境因素时,它们显示出显着的改进。我们的分析证明了EDM的战略效用,它将环境影响纳入渔业预测,并且更广泛地来说,它可提供对环境因素如何在预测模型中运行的洞察力,从而为在管理环境中应用无方程式的机械预测铺平了道路。

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