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A cost-precision model for marine environmental monitoring, based on time-integrated averages

机译:基于时间积分平均值的海洋环境监测成本精确模型

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摘要

Ongoing marine monitoring programs are seldom designed to detect changes in the environment between different years, mainly due to the high number of samples required for a sufficient statistical precision. We here show that pooling over time (time integration) of seasonal measurements provides an efficient method of reducing variability, thereby improving the precision and power in detecting inter-annual differences. Such data from weekly environmental sensor profiles at 21 stations in the northern Bothnian Sea was used in a cost-precision spatio-temporal allocation model. Time-integrated averages for six different variables over 6 months from a rather heterogeneous area showed low variability between stations (coefficient of variation, CV, range of 0.6-12.4%) compared to variability between stations in a single day (CV range 2.4-88.6%), or variability over time for a single station (CV range 0.4-110.7%). Reduced sampling frequency from weekly to approximately monthly sampling did not change the results markedly, whereas lower frequency differed more from results with weekly sampling. With monthly sampling, high precision and power of estimates could therefore be achieved with a low number of stations. With input of cost factors like ship time, labor, and analyses, the model can predict the cost for a given required precision in the time-integrated average of each variable by optimizing sampling allocation. A following power analysis can provide information on minimum sample size to detect differences between years with a required power. Alternatively, the model can predict the precision of annual means for the included variables when the program has a pre-defined budget. Use of time-integrated results from sampling stations with different areal coverage and environmental heterogeneity can thus be an efficient strategy to detect environmental differences between single years, as well as a long-term temporal trend. Use of the presented allocation model will then help to minimize the cost and effort of a monitoring program.
机译:正在进行的海洋监测计划很少设计用来检测不同年份之间环境的变化,这主要是由于要获得足够的统计精度需要大量的样本。我们在这里显示季节性测量随时间的合并(时间积分)提供了减少变异性的有效方法,从而提高了检测年际差异的精度和功效。来自北博特尼亚海21个站的每周环境传感器概况的此类数据用于成本精确的时空分配模型。相对异质区域六个月以来六个不同变量的时间积分平均值显示站点之间的变异性较低(变异系数,CV,范围为0.6-12.4%),而一天之间站点之间的变异性较低(CV范围为2.4-88.6) %)或单个工作站随时间的变化(CV范围为0.4-110.7%)。从每周采样减少到大约每月采样的频率并没有明显改变结果,而较低的频率与每周采样的结果差异更大。通过每月采样,可以在较少的站数的情况下实现高精度和强大的估计能力。通过输入成本因素(如运输时间,人工和分析),该模型可以通过优化采样分配,以给定的所需精度在每个变量的时间积分平均值中预测成本。随后的功效分析可以提供有关最小样本量的信息,以检测具有所需功效的年份之间的差异。或者,当程序具有预定义的预算时,该模型可以预测所包含变量的年度平均值的精度。因此,使用来自具有不同面积覆盖范围和环境异质性的采样站的时间积分结果可以是检测单年之间环境差异以及长期趋势的有效策略。然后,使用所提供的分配模型将有助于最小化监视程序的成本和精力。

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