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Modelling the spatial distribution of three Portunidae crabs in Haizhou Bay China

机译:模拟中国海州湾三只大闸蟹的空间分布

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摘要

Crab species are economically and ecologically important in coastal ecosystems, and their spatial distributions are pivotal for conservation and fisheries management. This study was focused on modelling the spatial distributions of three Portunidae crabs (Charybdis bimaculata, Charybdis japonica, and Portunus trituberculatus) in Haizhou Bay, China. We applied three analytical approaches (Generalized additive model (GAM), random forest (RF), and artificial neural network (ANN)) to spring and fall bottom trawl survey data (2011, 2013–2016) to develop and compare species distribution models (SDMs). Model predictability was evaluated using cross-validation based on the observed species distribution. Results showed that sea bottom temperature (SBT), sea bottom salinity (SBS), and sediment type were the most important factors affecting crab distributions. The relative importance of candidate variables was not consistent among species, season, or model. In general, we found ANNs to have less stability than both RFs and GAMs. GAMs overall yielded the least complex response curve structure. C. japonica was more pronounced in southwestern portion of Haizhou Bay, and C. bimaculata tended to stay in offshore areas. P. trituberculatus was the least region-specific and exhibited substantial annual variations in abundance. The comparison of multiple SDMs was informative to understand species responses to environmental factors and predict species distributions. This study contributes to better understanding the environmental niches of crabs and demonstrates best practices for the application of SDMs for management and conservation planning.
机译:螃蟹物种在沿海生态系统中具有重要的经济和生态意义,其空间分布对于养护和渔业管理至关重要。这项研究的重点是模拟中国海州湾的三种Portunidae蟹(Charybdis bimaculata,Charybdis japonica和Portunus trituberculatus)的空间分布。我们将三种分析方法(广义加性模型(GAM),随机森林(RF)和人工神经网络(ANN))应用于春季和秋季底拖网调查数据(2011、2013-2016),以开发和比较物种分布模型( SDM)。基于观察到的物种分布,使用交叉验证评估模型的可预测性。结果表明,海底温度(SBT),海底盐度(SBS)和沉积物类型是影响螃蟹分布的最重要因素。候选变量的相对重要性在物种,季节或模型之间不一致。一般而言,我们发现人工神经网络的稳定性要低于射频和GAM。 GAM总体上产生了最复杂的响应曲线结构。在海州湾的西南部,粳稻更为明显,而长双壳蟹则倾向于留在近海地区。 P. trituberculatus是最不专一的区域,并且在丰度方面表现出很大的年度变化。多个SDM的比较有助于了解物种对环境因素的反应并预测物种分布。这项研究有助于更好地了解螃蟹的环境优势,并展示了将SDM用于管理和保护计划的最佳实践。

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