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Developing spatially-explicit weighting factors to account for bias associated with missed GPS fixes in resource selection studies

机译:在资源选择研究中开发空间明晰的加权因子以解决与GPS定位丢失有关的偏差

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Global positioning system (GPS) collars are prone to locational error and missed fixes caused by vegetation and topography, meaning that locational error may be greater, or fix success lower, in certain habitats. These forms of error can lead to bias associated with data loss or censoring. The goals of this paper were to: 1) estimate resource selection functions using logistic regression to map probability of acquisition (P-acq) of a GPS location and subsequent censoring of locational error in relation to landscape features and 2) develop a spatially-explicit map of weighting factors across the landscape to avoid over- or underestimating resource selection. Female mule deer Odocoileus hemionus were used as a case example and to validate maps. Locational error and P-acq were influenced by vegetation and topography, thus necessitating a means to weight the data. Applying logistic regression to quantify P-acq allowed an easy and straightforward approach to mapping P-acq and subsequently, weighting factors (weight = 1/P-acq). Weighting landscape characteristics improved validation of deer-occurrence maps compared to using the original, unweighted landscape values. Using the best validating deer-occurrence map, we found that 87.5-90.2% of locations (N = 1,043) from an independent sample of deer (N = 4) occurred within the highest probability of use bin (similar to 20% of the landscape); 95.4-96.9% of independent locations occurred within the two highest probability of use bins (similar to 40% of the landscape). By accounting for, and modeling, missed GPS fixes and locational error, we improved the predictive ability of maps based on an independent sample of deer. Without correction (i.e. weighting) factors, the importance of habitat types and terrain features may be over- or underestimated, which could have serious consequences when interpreting resource selection by animals and developing management recommendations.
机译:全球定位系统(GPS)项圈易于出现植被和地形造成的位置误差和固定缺失,这意味着在某些栖息地中,位置误差可能更大,或者成功率较低。这些形式的错误可能导致与数据丢失或审查相关的偏差。本文的目标是:1)使用逻辑回归估计资源选择函数,以绘制GPS位置的获取概率(P-acq),并随后对与景观特征相关的位置误差进行检查; 2)开发空间明晰的遍及整个景观的权重因子地图,以避免高估或低估资源选择。以母m鹿Odocoileus hemionus为例,验证地图。位置误差和P-acq受植被和地形的影响,因此需要一种加权数据的方法。应用logistic回归对P-acq进行量化可以轻松,直接地映射P-acq,然后映射加权因子(权重= 1 / P-acq)。与使用原始的未加权景观值相比,对景观特征进行加权可以改善鹿图的验证。使用最佳验证鹿的出现图,我们发现来自独立鹿样本(N = 4)的位置(N = 1,043)的87.5-90.2%发生在最高使用箱率内(类似于风景的20%) ); 95.4-96.9%的独立位置出现在两个最高使用箱概率内(类似于景观的40%)。通过考虑和建模,遗漏的GPS定位和位置误差,我们基于独立的鹿样本提高了地图的预测能力。如果没有校正(即加权)因素,栖息地类型和地形特征的重要性可能会被高估或低估,这在解释动物选择资源和制定管理建议时可能会产生严重后果。

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