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Optimizing Allocation of monitoring Effort under Economic and Observational Constraints

机译:经济和观察约束下的监测工作优化分配

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摘要

Efforts to design monitoring regimes capable of detecting population trends can be thwarted by observational and economic constraints inherent to most biological surveys. Ensuring that limited resources are allocated efficiently requires evaluation of statistical power for alternative survey designs. We simulated the process of data collection on a landscape, where we initiated declines over 3 sample periods in species of varying prevalence and detectability. Changing occupancy levels were estimated using a technique that accounted for effects of false-negative errors on survey data. Declines were identified within a frequentist statistical framework, but the significance level was set at an optimal level rather than adhering to an arbitrary conventional threshold. By varying the number of sites sampled and repeat visits made, we show how managers can design an optimal monitoring regime that maximizes statistical power within fixed budget constraints. Results show that 2 to 3 visits/site are generally sufficient unless occupancy is very high or detectability is low. In both cases, the number of required visits increase. In an example of woodland bird monitoring in the Mt. Lofty Ranges, South Australia, we show that, although the budget required to monitor a relatively rare species of low detectability may be higher than that for a common, easily detectable species, survey design requirements for common species may be more stringent. We discuss implications for multi-species monitoring programs and application of our methods to more complex monitoring problems.
机译:大多数生物学调查固有的观察和经济限制可能阻碍设计能够检测人口趋势的监测制度的努力。要确保有效分配有限的资源,就需要对替代调查设计的统计能力进行评估。我们在一个景观上模拟了数据收集的过程,在该景观中,我们在3个采样周期内引发了流行率和可检测性不同的物种下降。使用说明假阴性错误对调查数据的影响的技术来估算入住率的变化。在常客主义统计框架内确定下降,但将显着性水平设置为最佳水平,而不是遵循任意常规阈值。通过改变采样地点的数量和重复访问的次数,我们展示了管理人员如何设计最佳的监视机制,以在固定预算限制内最大化统计能力。结果表明,除非占用率很高或可检测性很低,否则每个站点2到3次访问通常就足够了。在这两种情况下,所需的访问次数都会增加。以山中林地鸟类监测为例。我们展示了南澳大利亚的Lofty Ranges,尽管监视可检测性较低的相对稀有物种所需的预算可能会比常见且易于检测的物种所需的预算更高,但对常见物种的调查设计要求可能会更加严格。我们讨论了对多物种监视程序的含义以及将我们的方法应用于更复杂的监视问题。

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