应用 PCLake 模型预测热带水库水质的可行性

Q3 Environmental Science
Pongsakorn Wongpipun, Sanya Sirivithayapakorn, Narumol Vongthanasunthorn
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引用次数: 0

摘要

PCLake 模型以前从未用于热带水库。本研究尝试应用 PCLake 模型预测泰国一个热带水库的叶绿素 a 浓度(Chl-a)。在浮游植物模块中,对影响 Chl-a 预测的常数进行了敏感性分析。利用最敏感常数的调整值和 2020 年 7 月至 12 月的观测数据对模型进行了校准。评估了水库初始营养状态对模拟 Chl-a 的影响。结果表明,Chl-a 对六个常数敏感。在这些常数中,根据所研究水库的典型湖泊参数计算值调整了残渣的比消光值(cExtSpDet)。校准结果的统计分析以及随后与 2022 年 2 月至 9 月的观测数据进行的验证如下:NSE=0.55 和 0.37,RSR=0.67 和 0.79,PBIAS=27% 和 9%。水库的初始营养状态对 Chl-a 的长期预测没有影响。这一初步研究表明,PCLake 模型无需复杂的修改即可用于预测 Chl-a,而 Chl-a 是热带水库中藻类生物量的代表,对水质模型至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feasible Application of PCLake Model to Predict Water Quality in Tropical Reservoirs
The PCLake model has not previously been used for tropical reservoirs. This study attempted to apply the PCLake model to predict the chlorophyll a concentrations (Chl-a) in a tropical reservoir in Thailand. Sensitivity analyses were performed for the constants affecting the prediction of Chl-a in the phytoplankton module. The model calibration was performed by using the adjusted value of the most sensitive constant with the observed data from July to December 2020. The effects of the initial trophic state of the reservoir on the simulated Chl-a were evaluated. The results showed that Chl-a were sensitive to six constants. Among these constants, the value of the specific extinction of detritus (cExtSpDet) was adjusted using the calculated values from the typical limnological parameters of the studied reservoir. Statistical analyses of the results of calibration and the subsequent validation with the observed data from February to September 2022 were listed as follows: NSE=0.55 and 0.37, RSR=0.67 and 0.79, and PBIAS=27% and 9%, respectively. The initial trophic state of the reservoir had no influence on the long-term prediction of Chl-a. This preliminary effort indicates that the PCLake model can be used to predict Chl-a, which is representative of algal biomass in tropical reservoirs and is essential to water quality models, without complex modifications.
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来源期刊
Environment and Natural Resources Journal
Environment and Natural Resources Journal Environmental Science-Environmental Science (all)
CiteScore
1.90
自引率
0.00%
发文量
49
审稿时长
8 weeks
期刊介绍: The Environment and Natural Resources Journal is a peer-reviewed journal, which provides insight scientific knowledge into the diverse dimensions of integrated environmental and natural resource management. The journal aims to provide a platform for exchange and distribution of the knowledge and cutting-edge research in the fields of environmental science and natural resource management to academicians, scientists and researchers. The journal accepts a varied array of manuscripts on all aspects of environmental science and natural resource management. The journal scope covers the integration of multidisciplinary sciences for prevention, control, treatment, environmental clean-up and restoration. The study of the existing or emerging problems of environment and natural resources in the region of Southeast Asia and the creation of novel knowledge and/or recommendations of mitigation measures for sustainable development policies are emphasized. The subject areas are diverse, but specific topics of interest include: -Biodiversity -Climate change -Detection and monitoring of polluted sources e.g., industry, mining -Disaster e.g., forest fire, flooding, earthquake, tsunami, or tidal wave -Ecological/Environmental modelling -Emerging contaminants/hazardous wastes investigation and remediation -Environmental dynamics e.g., coastal erosion, sea level rise -Environmental assessment tools, policy and management e.g., GIS, remote sensing, Environmental -Management System (EMS) -Environmental pollution and other novel solutions to pollution -Remediation technology of contaminated environments -Transboundary pollution -Waste and wastewater treatments and disposal technology
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