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The influence of probability of detection when modeling species occurrence using GIS and survey data.

机译:使用GIS和调查数据对物种发生进行建模时,检测概率的影响。

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摘要

I compared the performance of habitat models created from data of differing reliability. Because the reliability is dependent on the probability of detecting the species, I experimented to estimate detectability for a salamander species. Based on these estimates, I investigated the sensitivity of habitat models to varying detectability.; Models were created using a database of amphibian and reptile observations at Fort A.P. Hill, Virginia, USA. Performance was compared among modeling methods, taxa, life histories, and sample sizes. Model performance was poor for all methods and species, except for the carpenter frog (Rana virgatipes ). Discriminant function analysis and ecological niche factor analysis (ENFA) predicted presence better than logistic regression and Bayesian logistic regression models. Database collections of observations have limited value as input for modeling because of the lack of absence data. Without knowledge of detectability, it is unknown whether nondetection represents absence.; To estimate detectability, I experimented with red-backed salamanders (Plethodon cinereus) using daytime, cover-object searches and nighttime, visual surveys. Salamanders were maintained in enclosures (n = 124) assigned to four treatments, daytime-low density, daytime-high density, nighttime-low density, and nighttime-high density. Multiple observations of each enclosure were made. Detectability was higher using daytime, cover-object searches (64%) than nighttime, visual surveys (20%). Detection was also higher in high-density (49%) versus low-density enclosures (35%).; Because of variation in detectability, I tested model sensitivity to the probability of detection. A simulated distribution was created using functions relating habitat suitability to environmental variables from a landscape. Surveys were replicated by randomly selecting locations (n = 50, 100, 200, or 500) and determining whether the species was observed, based on the probability of detection (p = 40%, 60%, 80%, or 100%). Bayesian logistic regression and ENFA models were created for each sample. When detection was 80--100%, Bayesian predictions were more correlated with the known suitability and identified presence more accurately than ENFA.; Probability of detection was variable among sampling methods and effort. Models created from presence/absence data were sensitive to the probability of detection in the input data. This stresses the importance of quantifying detectability and using presence-only modeling methods when detectability is low. If planning for sampling as an input for suitability modeling, it is important to choose sampling methods to ensure that detection is 80% or higher.
机译:我比较了根据不同可靠性数据创建的栖息地模型的性能。由于可靠性取决于检测物种的可能性,因此我尝试估算to的可检测性。基于这些估计,我研究了生境模型对各种可检测性的敏感性。使用美国弗吉尼亚州Fort A.P. Hill的两栖动物和爬行动物观测数据库创建模型。在建模方法,分类单元,生活史和样本量之间比较了性能。除木蛙(Rana virgatipes)外,所有方法和物种的模型性能均较差。判别函数分析和生态位因子分析(ENFA)预测的存在比逻辑回归和贝叶斯逻辑回归模型更好。由于缺少缺勤数据,数据库的观测值作为建模输入的价值有限。在没有可检测性的知识的情况下,未知未被检测是否表示不存在。为了估计可检测性,我使用白天,覆盖物搜索以及夜间,视觉调查对红背am(Plethodon cinereus)进行了实验。将保存在指定为四种处理的隔间(n = 124)中,白天低密度,白天高密度,夜间低密度和夜间高密度。对每个外壳进行了多次观察。白天使用掩体搜索的可检测性较高(64%),而夜间使用视觉调查的可检测性较高(20%)。高密度(49%)的检测率也比低密度外壳(35%)高。由于可检测性的差异,我测试了模型对检测概率的敏感性。使用将栖息地适应性与景观环境变量相关联的函数创建了模拟分布。通过随机选择位置(n = 50、100、200或500)并根据检测概率(p = 40%,60%,80%或100%)确定是否观察到该物种来重复调查。为每个样本创建贝叶斯逻辑回归和ENFA模型。当检出率为80--100%时,贝叶斯预测与已知适用性的相关性更高,并且比ENFA更准确地识别存在。检测的概率在采样方法和工作量之间是可变的。根据存在/不存在数据创建的模型对输入数据中的检测概率很敏感。这强调了量化可检测性和在可检测性较低时使用仅存在建模方法的重要性。如果计划将采样作为适应性建模的输入,那么选择采样方法以确保检测率为80%或更高很重要。

著录项

  • 作者

    Williams, Alison K.;

  • 作者单位

    Virginia Polytechnic Institute and State University.;

  • 授予单位 Virginia Polytechnic Institute and State University.;
  • 学科 Agriculture Forestry and Wildlife.; Biology Ecology.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 146 p.
  • 总页数 146
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 森林生物学;生态学(生物生态学);
  • 关键词

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