
CODMn入海通量长时序演变:瓯江遥感影像光谱信息反演
Long-term changes of CODMn flux into the sea: Retrieval of spectral information from remote sensing images of Oujiang River
瓯江作为浙江省第二大入海河流,每年约有200亿m3水体输入东海。为探究瓯江高锰酸盐指数(CODMn)的入海通量及其长时序变化特征,该文基于实测数据与Landsat-8遥感影像光谱信息之间的相关性,构建了瓯江CODMn遥感反演模型(平均相对误差为28%),获得了1986—2020年瓯江中下游河段CODMn反演结果。此外,进一步结合降水数据估算了瓯江入海径流量和CODMn入海通量,实现了瓯江CODMn入海通量长时序变化遥感监测。结果表明,瓯江入海段CODMn干、湿季差异并不明显,但总体而言,CODMn在湿季略高于干季; 1986—2020年,瓯江CODMn入海通量整体波动较大,略呈下降趋势。
As the second largest river in Zhejiang Province, Oujiang River has about 20 billion cubic meters of water flowing into the East China Sea every year. In order to explore the CODMn flux of Oujiang River into the sea and its characteristics of long-term changes based on the correlation between the measured data and the spectral information of Landsat-8 remote sensing image, the Oujiang River CODMn remote sensing inversion model was constructed (the average relative error is 28%) and the inversion results of CODMn in the middle and lower reaches of Oujiang River in 1986-2020 were obtained. In addition, based on rainfall data, the runoff and CODMn flux into the sea was further estimated and then remote sensing monitoring of long-term changes of Oujiang CODMn flux into the sea was realized. The results show that the difference of CODMn between dry and wet seasons in the Oujiang River Estuary is not obvious, but in general, the CODMn in wet season was slightly higher than that in dry season. From 1986 to 2020, the CODMn flux of Oujiang River into the sea fluctuated greatly, with a slight downward trend.
瓯江 / CODMn / 入海通量 / 卫星遥感 / 变化趋势
Oujiang River / CODMn / flux into the sea / satellite remote sensing / change trend
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