首页> 外文期刊>Journal of the American Water Resources Association >WATER QUALITY SAMPLING SCHEMES FOR VARIABLE FLOW CANALS AT REMOTE SITES
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WATER QUALITY SAMPLING SCHEMES FOR VARIABLE FLOW CANALS AT REMOTE SITES

机译:远程变径河道的水质采样方案

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摘要

Growing interest in water quality has resulted in the development of monitoring networks and intensive sampling for various constituents. Common purposes are regulatory, source and sink understanding, and trend observations. Water quality monitoring involves monitoring system design; sampling site instrumentation; and sampling, analysis, quality control, and assurance. Sampling is a process to gather information with the least cost and least error. Various water quality sampling schemes have been applied for different sampling objectives and time frames. In this study, a flow proportional composite sampling scheme is applied to variable flow remote canals where the flow rate is not known a priori. In this scheme, historical weekly flow data are analyzed to develop high flow and low flow sampling trigger volumes for auto-samplers. The median flow is used to estimate low flow sampling trigger volume and the five percent exceedence probability flow is used for high flow sampling trigger volume. A computer simulation of high resolution sampling is used to demonstrate the comparative bias in load estimation and operational cost among four sampling schemes. Weekly flow proportional composite auto-sampling resulted in the least bias in load estimation with competitive operational cost compared to daily grab, weekly grab sampling and time proportional auto-sampling.
机译:人们对水质的兴趣日益浓厚,导致监测网络的发展和对各种成分的密集采样。通用目的是对法规,对源和汇的理解以及趋势观察。水质监测涉及监测系统设计;采样现场仪器;以及抽样,分析,质量控制和保证。采样是一种以最少的成本和最少的错误收集信息的过程。各种水质采样方案已应用于不同的采样目标和时间范围。在这项研究中,流量比例复合采样方案应用于流量未知的先验条件下的变流量远程运河。在此方案中,将分析历史每周流量数据,以开发自动采样器的高流量和低流量采样触发量。中位流量用于估计低流量采样触发器的体积,百分之五的超出概率流量用于高流量采样触发器的体积。使用高分辨率采样的计算机仿真来证明四种采样方案在负荷估算和运营成本方面的相对偏差。与每日抓取,每周抓取采样和时间比例自动采样相比,每周流量比例复合自动采样在负载估算方面具有最小的偏差,并且具有竞争性的运营成本。

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