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利用公民科学监测重新定居的大型食草动物所面临的机遇与挑战。

Opportunities and challenges for monitoring a recolonizing large herbivore using citizen science.

作者信息

Ostermann-Miyashita Emu-Felicitas, Bluhm Hendrik, Dobiáš Kornelia, Gandl Nina, Hibler Sophia, Look Samantha, Michler Frank-Uwe, Weltgen Leonie, Smaga Aleksandra, König Hannes J, Kuemmerle Tobias, Kiffner Christian

机构信息

Faculty of Life Sciences Thaer-Institute of Agricultural and Horticultural Sciences, Humboldt Universität zu Berlin Berlin Germany.

Leibniz Centre for Agricultural Landscape Research (ZALF) Müncheberg Germany.

出版信息

Ecol Evol. 2023 Sep 2;13(9):e10484. doi: 10.1002/ece3.10484. eCollection 2023 Sep.

Abstract

Monitoring is a prerequisite for evidence-based wildlife management and conservation planning, yet conventional monitoring approaches are often ineffective for species occurring at low densities. However, some species such as large mammals are often observed by lay people and this information can be leveraged through citizen science monitoring schemes. To ensure that such wildlife monitoring efforts provide robust inferences, assessing the quantity, quality, and potential biases of citizen science data is crucial. For Eurasian moose (), a species currently recolonizing north-eastern Germany and occurring in very low numbers, we applied three citizen science tools: a mail/email report system, a smartphone application, and a webpage. Among these monitoring tools, the mail/email report system yielded the greatest number of moose reports in absolute and in standardized (corrected for time effort) terms. The reported moose were predominantly identified as single, adult, male individuals, and reports occurred mostly during late summer. Overlaying citizen science data with independently generated habitat suitability and connectivity maps showed that members of the public detected moose in suitable habitats but not necessarily in movement corridors. Also, moose detections were often recorded near roads, suggestive of spatial bias in the sampling effort. Our results suggest that citizen science-based data collection can be facilitated by brief, intuitive digital reporting systems. However, inference from the resulting data can be limited due to unquantified and possibly biased sampling effort. To overcome these challenges, we offer specific recommendations such as more structured monitoring efforts involving the public in areas likely to be roamed by moose for improving quantity, quality, and analysis of citizen science-based data for making robust inferences.

摘要

监测是基于证据的野生动物管理和保护规划的前提条件,但传统监测方法对于低密度分布的物种往往效果不佳。然而,一些物种,如大型哺乳动物,常被非专业人员观察到,这些信息可通过公民科学监测计划加以利用。为确保此类野生动物监测工作能得出可靠的推断,评估公民科学数据的数量、质量和潜在偏差至关重要。对于目前正在德国东北部重新定居且数量极少的欧亚驼鹿,我们应用了三种公民科学工具:邮件/电子邮件报告系统、智能手机应用程序和网页。在这些监测工具中,邮件/电子邮件报告系统无论是在绝对数量上还是在标准化(考虑时间投入进行校正)数量上,产生的驼鹿报告数量最多。报告的驼鹿主要被确认为单个成年雄性个体,报告大多发生在夏末。将公民科学数据与独立生成的栖息地适宜性和连通性地图叠加显示,公众在适宜栖息地发现了驼鹿,但不一定是在移动廊道中。此外,驼鹿的发现记录经常出现在道路附近,这表明抽样工作存在空间偏差。我们的结果表明,简短、直观的数字报告系统有助于基于公民科学的数据收集。然而,由于抽样工作未量化且可能存在偏差,从所得数据得出的推断可能会受到限制。为克服这些挑战,我们提出了具体建议,例如在驼鹿可能出没的地区开展更有组织的监测工作,让公众参与其中,以提高基于公民科学的数据的数量、质量和分析水平,从而做出可靠的推断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4931/10474824/7cd07246a51a/ECE3-13-e10484-g003.jpg

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