汤加海洋科学站基于操作分类单元的浮游动物种群数量时间模型的置信区间最优监测频率估计

Q4 Engineering
Hong-Yeon Cho, Sung Kim, Youn-Ho Lee, Gila Jung, Choong-gon Kim, D. Jeong, Yu-Cheol Lee, Mee-Hye Kang, Hana Kim, Hae-young Choi, Jina Oh, Jung-Goo Myong, Hee-Jung Choi
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引用次数: 0

摘要

浮游动物物种数量的时间变化是了解海洋生态系统基本特征和物种多样性的重要信息。本研究的目的是估计最佳监测频率,以保证和预测海洋生态系统研究的最小物种数量。根据通扬沿海海域的操作分类单元,通过每两周监测一次浮游动物物种数据,使用浮游动物物种的时间数量来估计OMF。最优模型包括两个项,一个常数(最优平均值)和一个一年周期的余弦函数。使用bootstrap方法估计了具有监测频率的模型的置信区间(CI)范围。CI范围被用作估计最佳监测频率的参考。通常,最小监测频率(每年的数量)直接取决于目标(可接受的)估计误差。当可接受误差(CI的范围)增加时,监测频率降低,因为大的可接受误差表示粗略估计。如果浮游动物物种数量的可接受误差(单位:数值)设置为3,则最小监测频率(每年次)为24。模型的残差分布服从正态分布。该模型可用于估计满足目标误差边界的最小监测频率,因为该模型提供了浮游动物物种数量与监测频率的误差估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Monitoring Frequency Estimation Using Confidence Intervals for the Temporal Model of a Zooplankton Species Number Based on Operational Taxonomic Units at the Tongyoung Marine Science Station
Temporal changes in the number of zooplankton species are important information for understanding basic characteristics and species diversity in marine ecosystems. The aim of the present study was to estimate the optimal monitoring frequency (OMF) to guarantee and predict the minimum number of species occurrences for studies concerning marine ecosystems. The OMF is estimated using the temporal number of zooplankton species through bi-weekly monitoring of zooplankton species data according to operational taxonomic units in the Tongyoung coastal sea. The optimal model comprises two terms, a constant (optimal mean) and a cosine function with a one-year period. The confidence interval (CI) range of the model with monitoring frequency was estimated using a bootstrap method. The CI range was used as a reference to estimate the optimal monitoring frequency. In general, the minimum monitoring frequency (numbers per year) directly depends on the target (acceptable) estimation error. When the acceptable error (range of the CI) increases, the monitoring frequency decreases because the large acceptable error signals a rough estimation. If the acceptable error (unit: number value) of the number of the zooplankton species is set to 3, the minimum monitoring frequency (times per year) is 24. The residual distribution of the model followed a normal distribution. This model can be applied for the estimation of the minimal monitoring frequency that satisfies the target error bounds, as this model provides an estimation of the error of the zooplankton species numbers with monitoring frequencies.
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来源期刊
Ocean and Polar Research
Ocean and Polar Research Engineering-Ocean Engineering
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0.80
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