人民长江 ›› 2022, Vol. 53 ›› Issue (9): 13-18.doi: 10.16232/j.cnki.1001-4179.2022.09.003

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基于机器学习的浐灞河水质参数遥感反演研究

王喆;连炎清;李晓娜;王璇;方焱;徐新涵   

  • 发布日期:2022-10-20

Research on remote sensing inversion of water quality parameters in Chanhe River and Bahe River based on machine learning

WANG Zhe1,LIAN Yanqing2,LI Xiaona2,WANG Xuan1,FANG Yan1, XU Xinhan1   

  • Published:2022-10-20

摘要: 西安市浐灞河水资源丰富,但受周边市区工业化与城市化开发的影响,水质较差。近年政府对浐灞河进行了重点治理,为观测其治理效果,以浐灞河下游河段为研究区,基于Sentinel-2卫星遥感影像,首先利用水体指数法提取了研究区河段水体,然后利用人工神经网络算法(ANN)与随机森林法(RF)构建总氮(TN)和高锰酸盐指数(CODMn)水质参数反演模型,获取了整个水域水质参数的空间分布和变化特征。研究结果表明:ANN反演结果整体优于RF,ANN水质参数反演模型在该地区有良好的适用性,且精度满足模拟要求;研究区TN和CODMn浓度值整体上分布较为均匀且波动较小,部分区域出现高值,同时TN与CODMn也呈现出一定的季节性规律,与沿岸和上游的人类活动有关。

关键词: 水质参数;遥感反演;人工神经网络;随机森林法;浐河;灞河;

Abstract: The Chanhe River and Bahe River in Xi'an City has abundant water resources, however, influenced by the surrounding industrialization and urbanization, the water quality is poor. In recent years, the local government has paid many efforts on the water quality improvement. In order to evaluate the control effect, by selecting the downstream section of Chanhe River and Bahe River as study area, we firstly extracted water bodies based on Sentinel-2 satellite remote sensing images using the water body index method. Then, water quality inversion model of total nitrogen (TN) and permanganate index (CODMn) was constructed using artificial neural network algorithm (ANN) and random forest method (RF), and the temporal and spatial characteristics of these two parameters were finally analyzed. The results showed that the ANN had better performance than RF in inverting water quality parameters, and the ANN had well applicability in the study area with acceptable precision. The distribution of TN and CODMn values was relatively uniform with small fluctuation however some high values existed in local area. Meanwhile, both TN and CODMn values presented a significant seasonal trend, which was closely related to the human activities along the riverbank and upstream reaches.

Key words: water quality parameters; remote sensing inversion;artificial neural network; random forest method; Chanhe River; Bahe River