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Estimating linear temporal trends from aggregated environmental monitoring data

机译:根据汇总的环境监测数据估算线性时间趋势

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摘要

Trend estimates are often used as part of environmental monitoring programs. These trends inform managers (e.g., are desired species increasing or undesired species decreasing?). Data colletted from environmental monitoring programs is often aggregated (i.e., averaged), which confounds sampling and process variation. State-space models allow sampling variation and process variations to be separated. We used simulated time-series to compare linear trend estimations from three state-space models, a simple linear regression model, and an auto-regressive model. We also compared the performance of these five models to estimate trends from a long term monitoring program. We specifically estimated trends for two species of fish and four species of aquatic vegetation from the Upper Mississippi River system. We found that the simple linear regression had the best performance of all the given models because it was best able to recover parameters and had consistent numerical convergence. Conversely, the simple linear regression did the worst job estimating populations in a given year. The state-space models did not estimate trends well, but estimated population sizes best when the models converged. We found that a simple linear regression performed better than more complex autoregression and state-space models when used to analyze aggregated environmental monitoring data. Published by Elsevier Ltd.
机译:趋势估计通常用作环境监控程序的一部分。这些趋势会通知管理者(例如,所需物种增加还是不必要的物种减少?)。通常将环境监控程序收集的数据汇总(即取平均值),这会混淆采样和过程变化。状态空间模型允许将采样变量和过程变量分开。我们使用模拟的时间序列来比较三种状态空间模型,简单的线性回归模型和自回归模型的线性趋势估计。我们还比较了这五个模型的性能,以根据长期监测计划估算趋势。我们专门估算了密西西比河上游系统的两种鱼类和四种水生植被的趋势。我们发现,简单线性回归在所有给定模型中均具有最佳性能,因为它最能恢复参数并具有一致的数值收敛性。相反,简单的线性回归在估计给定年份的人口方面做得最差。状态空间模型不能很好地估计趋势,但是当模型收敛时,估计种群的大小最好。我们发现,当用于分析汇总的环境监测数据时,简单的线性回归要比更复杂的自回归和状态空间模型更好。由Elsevier Ltd.发布

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