基于GF1_WFV的千岛湖水体叶绿素a浓度时空变化

徐鹏飞, 毛峰, 金平斌, 程乾

中国环境科学 ›› 2020, Vol. 40 ›› Issue (10) : 4580-4588.

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PDF(3131 KB)
中国环境科学 ›› 2020, Vol. 40 ›› Issue (10) : 4580-4588.
环境生态

基于GF1_WFV的千岛湖水体叶绿素a浓度时空变化

  • 徐鹏飞1, 毛峰2, 金平斌3, 程乾1
作者信息 +

Spatial-temporal variations of chlorophyll-a in Qiandao lake using GF1_WFV data

  • XU Peng-fei1, MAO Feng2, JIN Ping-bin3, CHENG Qian1
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摘要

基于高分一号(GF-1)遥感影像以及水体实测样点数据,运用波段对数组合,以千岛湖为研究对象,构建和择优了叶绿素a浓度反演模型,对2013~2019年千岛湖区域水体叶绿素a浓度值进行了估算,并利用变异系数、Mann-Kendall显著性检验模型、Theil-Sen趋势分析模型对其时空变化特征进行了分析.研究表明,基于波段对数组合的反演模型可用于千岛湖清洁水体叶绿素a浓度值的反演(R2=0.8976);年际变化分析发现,在研究期限内,千岛湖水体叶绿素a浓度平均值维持在较低水平,近94%的水体像元叶绿素a浓度小于3.65μg/L,水质较佳;时空动态分析进一步发现,千岛湖水体叶绿素a浓度值大都经历了较为微小的波动变化,其中,有超过67%的水体像元浓度值呈现出微小的增长趋势,在分布上也呈现出一定的空间格局形态.

Abstract

We established a simulating model based on the GF-1spectral reflectance features and field survey results. The model was then applied to estimate the concentration and distribution of chlorophyll-a in Qiandao lake from 2013~2019. Our model could effectively estimate the chlorophyll-a concentration in clean water (R2=0.8976). Pixel level analysis revealed that over 94% of water pixels contained less than 3.65μg/L of chlorophyll-a, indicating that the chlorophyll-a concentration of Qiandao lake was quite low during the study period. Moreover, the spatial-temporal analysis showed that the chlorophyll-a concentration in most water pixels experienced a small variation. More than 67% water regions had a slight increase.

关键词

高分一号影像 / 千岛湖 / 时空变化 / 叶绿素a

Key words

chlorophyll-a / GF-1 satellite / Qiandao Lake / spatial-temporal variation

引用本文

导出引用
徐鹏飞, 毛峰, 金平斌, 程乾. 基于GF1_WFV的千岛湖水体叶绿素a浓度时空变化[J]. 中国环境科学. 2020, 40(10): 4580-4588
XU Peng-fei, MAO Feng, JIN Ping-bin, CHENG Qian. Spatial-temporal variations of chlorophyll-a in Qiandao lake using GF1_WFV data[J]. China Environmental Science. 2020, 40(10): 4580-4588
中图分类号: X524   

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基金

国家重点研发计划项目(2017YFB0503902)

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