Using fusion effects to decrease uncertainty in distance sampling models when collating data from different surveys

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-01-19 DOI:10.1111/mms.13104
Floriane Plard, Hélder Araújo, Amaia Astarloa, Maite Louzao, Camilo Saavedra, José Antonio Vazquez Bonales, Graham John Pierce, Matthieu Authier
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Abstract

Estimates of population abundance are required to study the impacts of human activities on populations and assess their conservation status. Despite considerable effort to improve data collection, uncertainty around estimates of cetacean densities can remain large. A fundamental concept underlying distance sampling is the detection function. Here we focus on reducing the uncertainty in the estimation of detection function parameters in analyses combining data sets from multiple surveys, with known effects on the precision of density estimates. We developed detection functions using infinite mixture models that can be applied on data collating multiple species and/or surveys. These models enable automatic clustering by fusing the species and surveys with similar detection functions. We present a simulation analysis of a multisurvey data set in a Bayesian framework where we demonstrated that distance sampling models including fusion effects showed lower uncertainty than classical distance sampling models. We illustrated the benefits of this new model using data of line transect surveys from the Bay of Biscay and Iberian Coast. Future estimates of abundance using conventional distance sampling models on large multispecies surveys or on data sets combining multiple surveys could benefit from this new model to provide more precise density estimates.

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在整理来自不同调查的数据时,利用融合效应降低距离抽样模型的不确定性
要研究人类活动对鲸类种群的影响并评估其保护状况,就必须对其种群丰度进行估算。尽管在改进数据收集方面做了大量工作,但鲸目动物密度估计值的不确定性仍然很大。距离采样的一个基本概念是探测函数。在此,我们将重点放在降低探测函数参数估算的不确定性上,分析结合了来自多个调查的数据集,其对密度估算精度的影响是已知的。我们利用无限混合物模型开发了检测函数,可用于多个物种和/或调查数据的核对。这些模型通过融合具有相似检测函数的物种和调查,实现了自动聚类。我们在贝叶斯框架下对多调查数据集进行了模拟分析,结果表明,与传统的距离采样模型相比,包含融合效应的距离采样模型显示出更低的不确定性。我们利用比斯开湾和伊比利亚海岸的横断面调查数据说明了这种新模型的优势。未来在大型多物种调查或多种调查相结合的数据集上使用传统距离取样模型估算丰度时,可受益于这一新模型,以提供更精确的密度估算。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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