raybet体育在线 院报 ›› 2025, Vol. 42 ›› Issue (5): 34-42.DOI: 10.11988/ckyyb.20231281

• 河湖保护与治理 • 上一篇    下一篇

基于Copula函数的汉江生态流量定值及水华调控风险

农翕智1(), 赖程1, 靖争2, 叶晔3()   

  1. 1 广西大学 土木建筑工程学院,南宁 530000
    2 raybet体育在线 流域水环境研究所,武汉 430010
    3 中日友好环境保护中心,北京 100029
  • 收稿日期:2023-11-21 修回日期:2024-03-08 出版日期:2025-05-01 发布日期:2025-05-01
  • 通信作者:
    叶 晔(1980-),女,浙江武义人,高级工程师,博士,主要从事生态环境科技项目管理与研究。E-mail:
  • 作者简介:

    农翕智(1992-),男,广西百色人,副教授,博士,主要从事水资源高效利用研究。E-mail:

  • 基金资助:
    广西科技基地和人才专项(桂科AD22035185); 广西自然科学基金青年基金项目(2023GXNSFBA026296); 国家自然科学基金项目(52309016); “一带一路”水与可持续发展科技基金面上项目(2022nkms06)

A Copula-based Method for River Ecological Flow Quantification and Algal Bloom Risk Assessment in the Hanjiang River

NONG Xi-zhi1(), LAI Cheng1, JING Zheng2, YE Ye3()   

  1. 1 School of Civil Engineering and Architecture,Guangxi University,Nanning 530000, China
    2 WaterEnvironment Department, Changjiang River Scientific Research Institute, Wuhan 430010, China
    3 Sino-Japan Friendship Center for Environmental Protection, Beijing 100029, China
  • Received:2023-11-21 Revised:2024-03-08 Published:2025-05-01 Online:2025-05-01

摘要: 生态流量定值研究对于维持河流生态健康与稳定十分重要,然而目前的生态流量定值方法尚有对水文、生态的多条件联合对比以及计算情景单一的不足。基于Copula函数与贝叶斯理论构建了2018年汉江水华暴发期间流量与藻密度的联合风险模型,并在多情景中对不同藻密度概率下的生态流量进行了定值计算,所得结果与Tennant法、水文拐点法等传统生态流量计算方法进行比较。结果表明:2018年汉江水华暴发期间,当流量高于728.00 m3/s和1 096.30 m3/s时,藻密度分别有超过80%的概率>2 561.10×104 cells/L和902.93×104 cells/L;与Copula模型相比,Tennant法和水文拐点法往往忽视了变量间的相依性结构,从而导致对整体风险低估。研究成果为研究河流水文、生态因子间相关关系以及多情景生态流量定值的系统分析提供参考,对河流水华风险预警与调控提供依据。

关键词: 生态流量, Copula函数, 水华暴发, 多情景水文分析, 水文生态因子, 汉江

Abstract:

[Objective] Riverine ecological flow quantification is essential for maintaining riverine ecological health. Traditional methods often overlook the joint risks of hydrological and ecological factors and tend to rely on single-scenario calculations. This study aims to establish a joint risk model based on Copula functions and Bayesian theory to quantify the interdependence between hydrological (flow) and ecological (algal density) factors in the middle and lower reaches of Hanjiang River, thereby achieving scientific quantification of ecological flow under multiple scenarios and providing a basis for early warning and regulation of algal bloom risks in rivers. [Methods] Using flow data from Xiantao station and algal density data from Yuekou cross-section during the 2018 algal bloom outbreak in Hanjiang River,this study first determined the marginal distributions of flow and algal density using the Kolmogorov-Smirnov (K-S) test and Akaike Information Criterion (AIC). The optimal Copula functions were then selected using maximum likelihood estimation and goodness-of-fit test. Finally, a joint distribution model of flow and algal density was established, and the Bayesian conditional probability formula was applied to analyze the probability of algal density exceeding the threshold of algal bloom occurrence under different flow scenarios. The results from Copula functions were compared with those from the Tennant method and Hydrological Inflection-Point (HIP) analysis for validation. [Results] (1) The joint distribution model based on Gaussian Copula function passed the K-S test and effectively captured the significant negative dependence structure between flow and algal density.(2) During the 2018 algal bloom outbreak in Hanjiang River, when the flow exceeded 728.00 m3/s and 1 096.30 m3/s, there was over an 80% probability that algal density would exceed 2 561.10×104 cells/L and 902.93×104 cells/L, respectively. (3) The hydrological inflection point method calculated the initial flow of algal bloom with an error within 100 m3/s, demonstrating higher accuracy than the Tennant method. However, both methods underestimated the overall risk due to their neglect of variable dependency. Through bivariate analysis, the Copula model revealed risk details that traditional methods failed to capture. [Conclusions] (1) The joint risk model based on Copula functions can quantitatively capture the complex dependency between hydrological and ecological factors, overcoming limitations of traditional methods that depend on long-term data and neglect multi-factor interactions. It provides an efficient tool for analyzing ecological flow during a single algal bloom outbreak.(2) The multi-scenario conditional probability analysis demonstrates that risk probabilities of algal density differed significantly across different flow ranges, offering refined flow thresholds for reservoir operations and bloom prevention.(3) In complex hydro-ecological systems, it is necessary to integrate multi-factor models like Copula to avoid risk underestimation. This study provides a new method for multi-factor joint risk evaluation and ecological flow quantification in rivers. Future research can further incorporate multiple variables such as water quality and temperature to establish more complex Copula models, improving prediction accuracy and scenario simulation capabilities.

Key words: ecological flow, Copula functions, algal bloom outbreak, multi-scenario hydrological analysis, hydro-ecological factors, Hanjiang River

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