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首页> 外文期刊>Ecology: A Publication of the Ecological Society of America >Incorporating citizen science data in spatially explicit integrated population models
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Incorporating citizen science data in spatially explicit integrated population models

机译:在空间显式综合人口模型中纳入公民科学数据

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Information about population abundance, distribution, and demographic rates is critical for understanding a species' ecology and for effective conservation and management. To collect data over large spatial and temporal extents for such inferences, especially for species with low densities or wide distributions, citizen science can be an efficient approach. Integrated models have also emerged as an important methodology to estimate population parameters by combining multiple types of data, including citizen science data. We developed a spatially explicit integrated model that combines opportunistically collected presence-absence (PA) data, commonly collected in citizen science efforts, with systematically collected spatial capture- recapture (SCR) data, which are often limited to small spatial and temporal extents. We conducted single and multi-season simulations with parameters informed by North American black bear (Ursus americanus) populations, to evaluate the influence of varying amounts of opportunistic PA data collected at larger spatial and temporal extents on the estimation of population-level parameters. Integrating opportunistic PA data increased the precision and accuracy of posterior estimates of abundance, and survival and recruitment rates. In some cases, adding PA locations improved abundance estimates more than increasing PA detection probability. Posterior estimates were as precise and unbiased as when higher quality, but sparse, SCR data were available. We also applied the integrated model to SCR and citizen science PA data collected on black bears in New York, with results consistent with our simulations. Our findings indicate that citizen science in integrated models can be a cost-efficient way to improve estimates of population parameters and increase the spatiotemporal extent of inference. Continued developments with integrated models and citizen science data will offer additional ways to improve our understanding of population structure and de
机译:有关人口丰富,分配和人口率的信息对于了解物种生态和有效的保护和管理至关重要。为了为这种推断的大量空间和时间范围收集数据,特别是对于具有低密度或广泛分布的物种,公民科学可能是一种有效的方法。通过组合多种类型的数据,包括公民科学数据,综合模型也是估计人口参数的重要方法。我们开发了一个空间明确的集成模型,该模型结合了机会收集的存在(PA)数据,通常收集在公民科学工作中,具有系统地收集的空间捕获 - 重新捕获(SCR)数据,通常限于空间和时间范围。我们通过北美黑熊(URSUS Americanus)群体通知的参数进行单季和多赛季模拟,以评估在较大的空间和时间范围内收集的机会性PA数据的影响,以估计人口级参数。整合机会主义的PA数据提高了丰度估算的精度和准确性,并生存和招聘率。在某些情况下,添加PA位置的提高估计超过了增加PA检测概率。后估计估计与更高质量但稀疏,SCR数据一样精确和无偏见。我们还将综合模型应用于纽约的黑熊收集的SCR和公民科学PA数据,结果与我们的模拟一致。我们的调查结果表明,综合模型中的公民科学可以是改善人口参数估计的成本有效的方法,并增加了不推断的时空程度。持续的发展综合模型和公民科学数据将提供额外的方法来提高我们对人口结构和DE的理解

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