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首页> 外文期刊>Frontiers in Marine Science >Assessing the Role of Environmental Factors on Baltic Cod Recruitment, a Complex Adaptive System Emergent Property
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Assessing the Role of Environmental Factors on Baltic Cod Recruitment, a Complex Adaptive System Emergent Property

机译:评估环境因素在波罗的海鳕鱼招募方面的作用,这是一个复杂的适应系统的紧急特性

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For decades, fish recruitment has been a subject of intensive research with stock–recruitment models commonly used for recruitment prediction often only explaining a small fraction of the inter-annual recruitment variation. The use of environmental information to improve our ability to predict recruitment, could contribute considerably to fisheries management. However, the problem remains difficult because the mechanisms behind such complex relationships are often poorly understood; this in turn, makes it difficult to determine the forecast estimation robustness, leading to the failure of some relationships when new data become available. The utility of machine learning algorithms such as artificial neural networks (ANNs) for solving complex problems has been demonstrated in aquatic studies and has led many researchers to advocate ANNs as an attractive, non-linear alternative to traditional statistical methods. The goal of this study is to design a Baltic cod recruitment model (FishANN) that can account for complex ecosystem interactions. To this end, we (1) build a quantitative model representation of the conceptual understanding of the complex ecosystem interactions driving Baltic cod recruitment dynamics, and (2) apply the model to strengthen the current capability to project future changes in Baltic cod recruitment. FishANN is demonstrated to bring multiple stressors together into one model framework and estimate the relative importance of these stressors while interpreting the complex nonlinear interactions between them. Additional requirements to further improve the current study in the future are also proposed.
机译:几十年来,鱼类招募一直是密集研究的主题,通常将种群-招聘模型用于招募预测,通常仅解释年际招募变化的一小部分。利用环境信息来提高我们预测招聘的能力,可以大大有助于渔业管理。但是,这个问题仍然很棘手,因为这种复杂关系背后的机制通常很难被理解。反过来,这使得难以确定预测估计的稳健性,从而导致在获得新数据时某些关系失败。诸如人工神经网络(ANN)之类的机器学习算法用于解决复杂问题的效用已在水产研究中得到证明,并已导致许多研究人员提倡将ANN作为传统统计方法的一种有吸引力的非线性替代方法。这项研究的目的是设计一个可以解决复杂的生态系统相互作用的波罗的海鳕鱼募集模型(FishANN)。为此,我们(1)建立了量化模型,该模型表示了对推动波罗的海鳕鱼招募动态的复杂生态系统相互作用的概念理解,并且(2)应用该模型来增强当前预测波罗的海鳕鱼招募未来变化的能力。 FishANN被证明可以将多个压力源组合到一个模型框架中,并在解释它们之间的复杂非线性相互作用时估算这些压力源的相对重要性。还提出了进一步改进当前研究的其他要求。

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