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How sampling affects estimates of demographic parameters.

机译:抽样如何影响人口统计参数的估计。

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Question: Demographic rates are often modelled using small data sets over short time frames. Here, we use fully sampled populations as a basis for testing how the intensity of two different sampling approaches (individual random-tree and n-tree distance plots) can affect estimates of growth parameters and the timing of population development. How do sampling method and intensity affect estimates of early stages of population growth Location: North-central Wyoming, USA. Methods: We used a data set in which every individual in each of four discrete ponderosa pine populations was mapped and aged. We calculated cumulative population growth and fitted it to a logistic regression model. Based on this model, we estimated population growth rate, first colonization, timing of population growth initiation, maximum growth rate and growth saturation. We conducted simulations for two sampling methods. First, individual trees were chosen at random, with different percentages of the full population being chosen. Second, we simulated n-tree distance plot sampling, where we changed the number of plots that were laid in each population. For each method and at each intensity, 10 000 simulation runs were performed. The simulation results were fitted to a logistic regression model. We then looked at the difference between the full and partially sampled population results to examine how lowering sampling intensity affected the results. Results: Population growth rate was not significantly affected by sampling intensity except at low levels of sampling. However, first colonization and timing of population initiation were affected by sampling intensity. For both parameters, the individual random-tree method produced more accurate results than the n-distance method as sampling intensity decreased. Conclusions: Accurate estimation of population growth parameters is critical for both ecological understanding and resource management. Results are encouraging in that they indicate that moderate levels of sampling will reliably estimate population growth parameters. However, our results are specific to ponderosa pine and may not apply to other species with different life-history characteristics. Our results also highlight the fact that population structure can play a major role in sampling accuracy and needs to be considered in choosing the appropriate method and intensity.
机译:问题:人口率通常是在短时间内使用小型数据集来建模的。在这里,我们使用完全抽样的种群作为基础,以测试两种不同抽样方法(个体随机树和n树距离图)的强度如何影响生长参数的估计和种群发展的时机。抽样方法和强度如何影响人口增长早期阶段的估算地点:美国怀俄明州中北部。方法:我们使用了一个数据集,其中对四个离散的美国黄松种群中的每个个体进行了映射和老化。我们计算了人口的累积增长,并将其拟合为逻辑回归模型。基于此模型,我们估计了人口增长率,首次定居,人口增长开始的时间,最大增长率和增长饱和度。我们对两种采样方法进行了仿真。首先,随机选择单个树木,并选择全部树木的不同百分比。其次,我们模拟了n树距离图采样,在其中我们更改了每个人口中放置的图的数量。对于每种方法和每种强度,进行了10000次模拟运行。模拟结果拟合到逻辑回归模型。然后,我们查看了全部抽样和部分抽样的人口结果之间的差异,以研究降低抽样强度如何影响结果。结果:人口增长速度不受抽样强度的影响,除非抽样水平较低。但是,第一次定植和种群开始的时间受到采样强度的影响。对于这两个参数,随着采样强度的降低,单个随机树方法产生的结果比n距离方法更准确。结论:准确估算人口增长参数对于生态理解和资源管理都至关重要。结果令人鼓舞,因为它们表明中等水平的抽样将可靠地估计人口增长参数。但是,我们的结果仅针对美国黄松,而不适用于具有不同生活史特征的其他物种。我们的研究结果还凸显了这样一个事实,即人口结构在抽样准确性中起着重要作用,在选择合适的方法和强度时需要加以考虑。

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