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首页> 外文期刊>New Zealand Journal of Ecology >Reduction of bias when estimating bird abundance within small habitat fragments
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Reduction of bias when estimating bird abundance within small habitat fragments

机译:估计小栖息地碎片中的鸟类数量时减少偏见

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We used the distance detection function from five-minute point counts entirely within large woody vegetation patches to derive a method of truncating counts of birds detected close to the observer to estimate their relative abundance in small habitatpatches. Our method trades off loss of information by truncation of bird sightings at successively larger distances from the observer to reduce sampling bias. Truncation of counts to include detections within 10 m of the observer gave similar absolute density as distance methods for the six most abundant native and six introduced species. Distance analysis showed that introduced species were in general more conspicuous than New Zealand native species. Use of counts very close to the observer reduces detectability biases for species and habitat comparisons to give more robust measures of community structure, allows inclusion of very small habitat fragments into the analysis, and provides a density measure for infrequently encountered species. However, the counts are still best treated as relative indices rather than absolute density estimates. Much of the international literature using counts and distance sampling estimation methods to claim increased bird diversity and abundance in larger habitat patches may be unreliable because these include directional biased estimation of abundance in small patches.
机译:我们使用了完全在大型木质植被斑块内五分钟点计数的距离检测功能,来推导一种截断靠近观察者的鸟类计数的方法,以估计小型栖息地中它们的相对丰度。我们的方法通过在距观察者连续较大的距离处截断鸟类瞄准点来权衡信息损失,以减少采样偏差。截断计数以包括距离观察者10 m以内的检测,得出的绝对密度与六个最丰富的原生物种和六个引入物种的距离方法相似。距离分析表明,引进物种总体上比新西兰本土物种更为引人注目。使用非常接近观察者的计数可减少物种和生境比较的可检测性偏差,从而提供更健壮的群落结构度量,允许将非常小的生境碎片纳入分析中,并为不经常遇到的物种提供密度度量。但是,仍最好将计数作为相对指数而不是绝对密度估计。许多国际文献使用计数和距离采样估计方法声称较大栖息地斑块中鸟类的多样性和丰度增加是不可靠的,因为这些方法包括对小斑块中的丰度进行定向偏差估计。

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