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首页> 外文期刊>Ecological Modelling >An individual-based model for the migration of pike (Esox lucius) in the river Yser, Belgium
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An individual-based model for the migration of pike (Esox lucius) in the river Yser, Belgium

机译:基于个体的比利时伊瑟河中长矛(Esox lucius)迁移的模型

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For many decades, pike populations in Belgium have been suffering from a decline of the environmental quality due to habitat deterioration, water pollution and many other degrading phenomena. Since past attempts to rehabilitate the pike populations had only limited success, it is of importance to gain insight into the spatio-temporal dynamics of pike such that more effective restoration programs can be effectuated in the future. Ideally, this can be accomplished by relying on telemetry data, but since the collection of such data is both labour-intensive and costly, researchers often resort to a simulation-based approach, which on its turn requires a sound spatio-temporal model. Therefore, and as a first step towards an integrated individual-based model (IBM) for describing pike dynamics in rivers, an IBM mimicking the movement of pike in the river Yser, Belgium, is proposed in this paper. This model considers the specificities of pike, such as its seasonally dependent migration, swimming speed and habitat preference, and is based upon environmental data from the river Yser. It is shown that the in silico spatio-temporal dynamics coincides with the one that is typically inferred from in situ observations. Amongst other things, the proposed model may be relied upon to identify the most appropriate management and restoration measures through a scenario analysis.
机译:数十年来,由于栖息地恶化,水污染和许多其他退化现象,比利时的长矛种群一直遭受环境质量下降的困扰。由于过去修复派克种群的尝试仅取得了有限的成功,因此重要的是了解派克的时空动态,以便将来可以实施更有效的修复计划。理想情况下,这可以依靠遥测数据来完成,但是由于此类数据的收集既费力又费钱,因此研究人员经常求助于基于仿真的方法,而这又需要一个合理的时空模型。因此,作为迈向描述河流中派克动态的基于个人的综合模型(IBM)的第一步,本文提出了一种模仿比利时伊瑟河中派克运动的IBM。该模型考虑了派克的特殊性,例如其季节性依赖的迁徙,游泳速度和栖息地偏好,并且基于来自伊瑟河的环境数据。结果表明,计算机时空动力学与原位观测通常得出的一致。除其他外,可以通过场景分析来依靠建议的模型来确定最合适的管理和恢复措施。

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