生态环境学报 ›› 2025, Vol. 34 ›› Issue (12): 1930-1943.DOI: 10.16258/j.cnki.1674-5906.2025.12.010

• 研究论文【环境科学】 • 上一篇    下一篇

基于无人机多光谱数据的海口长钦湖水质参数遥感反演及其与景观格局的相互关系

李清云1(), 肖亦敏1, 林卫2,4, 雷金睿2,5,*(), 王韫镭3, 孔玫蔓1, 杨云芳1   

  1. 1.浙江广厦建设职业技术大学城乡建设学院浙江 东阳 322100
    2.海南省林业科学研究院(海南省红树林研究院)海南 海口 571100
    3.中国热带农业科学院香料饮料研究所海南 万宁 571533
    4.海南大学热带农林学院海南 海口 570228
    5.海口市湿地保护工程技术研究开发中心海南 海口 571100
  • 收稿日期:2025-07-08 出版日期:2025-12-18 发布日期:2025-12-10
  • 通讯作者: *E-mail:raykingre@163.com
  • 作者简介:李清云(1987年生),女,博士研究生,研究方向为湿地生态与水环境科学。E-mail: lqy181268@126.com
  • 基金资助:
    海南省自然科学基金项目(723QN275);人才引进科研启动项目(2024ZX076);海南省财政科技计划项目(jscx202024)

Remote Sensing Inversion of Water Quality Parameters and Their Correlation with Landscape Patterns in Haikou Changqin Lake Based on UAV Multispectral Data

LI Qingyun1(), XIAO Yimin1, LIN Wei2,4, LEI Jinrui2,5,*(), WANG Yunlei3, KONG Meiman1, YANG Yunfang1   

  1. 1. Zhejiang Guangsha Vocational and Technical University of construction, College of Urban and Rural Construction, Dongyang 322100, P. R. China
    2. Hainan Academy of Forestry Sciences (Hainan Mangrove Research Institute), Haikou 571100, P. R. China
    3. Chinese Academy of Tropical Agricultural Sciences, Spiced Beverage Research Institute, Wanning 571533, P. R. China
    4. College of Tropical Agriculture and Forestry, Hainan University, Haikou 570228, P. R. China
    5. Haikou Wetland Protection Engineering Technology Research and Development Center, Haikou 571100, P. R. China
  • Received:2025-07-08 Online:2025-12-18 Published:2025-12-10

摘要: 土地利用景观是影响城市重要水域水质分布的关键因素,精确、高效监测水域水质对解释水质与景观格局之间的相关性具有重要意义,同时也是水质监管与治理的重要基础。选取海口市长钦湖为研究区,通过同步采集水质样品与无人机多光谱遥感数据,建立旱、雨季湿地水体总磷(TP)、总氮(TN)、浊度(TUB)和叶绿素a(Chl-a)浓度的最优反演模型,生成水体水质参数的空间分布,并分析其空间变化与景观格局的相互关系。结果表明,1)长钦湖湿地旱、雨季TP、TN、Chl-a反演模型均以多项式模型呈现最优精度,在TN反演模型中旱季以线性回归模型精度最优,在TUB反演模型中雨季以幂函数回归模型精度最高,反演结果显示长钦湖水质污染程度轻、状况较好。2)长钦湖水质参数存在一定时空变异特性,TP、TN、Chl-a平均及最大浓度雨季大于旱季,TUB平均及最大浓度旱季显著大于雨季。3)缓冲区尺度120 m为长钦湖景观变化重要节点,随缓冲区扩大,AI、LPI值递增,CONTAG、SHDI、SHEI值递减,DIVISION、PD、LSI先减后增,120 m后景观异质性与破碎化程度随半径增大而升高。4)旱季在特定尺度内水质参数与建设用地、旱地、LPI具有相关性;雨季TP、TUB浓度与各景观类型及格局指数无相关性,TN浓度与道路、PD、SHDI显著正相关,Chl-a浓度与建设用地呈正相关。研究成果可为城市重点湿地水质的高效监测及保护工作提供科学层面的支撑。

关键词: 水质参数, 无人机, 多光谱, 遥感反演, 景观格局, 相关性

Abstract:

Land use and landscape patterns are key factors influencing the distribution of water quality in critical urban water bodies. Accurate and efficient water quality monitoring is essential for elucidating the correlation between water quality and landscape patterns, as well as for providing a scientific basis for water quality regulation and management. In this study, Changqin Lake in Haikou City was selected as the study area. By synchronously collecting water samples and UAV-based multispectral remote sensing data, optimal inversion models for total phosphorus (TP), total nitrogen (TN), turbidity (TUB), and chlorophyll-a (Chl-a) concentrations in wetland water during the dry and wet seasons were developed. Spatial distributions of these water quality parameters were generated, and their relationships with the landscape patterns were analyzed. The results showed that 1) For TP, TN, and Chl-a, the best was for TN in the dry season, and power function regression was optimal for TUB in the wet season. The inversion results suggested that Changqin Lake exhibited relatively low pollution levels and had good water quality. 2) Spatiotemporal variations were observed in water quality parameters. The average and maximum concentrations of TP, TN, and Chl-a were higher in the wet season than in the dry season, whereas TUB showed significantly higher values in the dry season. 3) A 120-meter buffer zone was identified as a critical threshold for landscape pattern changes in Changqin Lake. As the buffer zone expanded, the aggregation index (AI) and largest patch index (LPI) increased, whereas the contagion index (CONTAG), Shannon’s diversity index (SHDI), and Shannon’s evenness index (SHEI) decreased. The division index (DIVISION), patch density (PD), and landscape shape index (LSI) initially decreased before increasing. Beyond 120 m, landscape heterogeneity and fragmentation intensified with increasing radius. 4) During the dry season, water quality parameters were correlated with construction land, dry farmland, and LPI at specific scales. In the wet season, TP and TUB were not correlated with landscape types or pattern indices, whereas TN was significantly positively correlated with roads, PD, and SHDI, and Chl-a was positively correlated with constructed land. These findings provide scientific support for the efficient monitoring and conservation of the water quality in key urban wetlands.

Key words: water quality parameters, UAV, multispectral, remote sensing inversion, landscape pattern, correlation

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