Study on the Multi-parameter Inversion of Reservoir Water Quality Based on GF-1 WFV Image and Neural Network Model

Autor: ZHENG Yanhui, ZHANG Yuanbo, HE Yanhu
Jazyk: čínština
Rok vydání: 2020
Předmět:
Zdroj: Renmin Zhujiang, Vol 41 (2020)
Druh dokumentu: article
ISSN: 1001-9235
DOI: 10.3969/j.issn.1001-9235.2020.07.009
Popis: This paper establishes a multi-parameter quantitative inversion model of water qualityin multispectral remote sensing images by domestic GF-1 WFV image and neural network model toachieve high-efficiency, large-scale, continuous-space and multi-parameter change monitoring ofreservoir water quality, explores the application feasibility of domestic satellite image inremotesensing inversion of water quality, and provide technical support for lake chief system and lakeeutrophication assessment. Taking a medium-sized reservoir in Foshan City, Guangdong Province asan example, based on the GF-1 WFV image, a quantitative inversion model between 5 water qualityparameters of Chl-a, SD, TP, TN and CODMn) and image data of Dongfeng Reservoiris established withneural network models, the determination coefficient (R2) between the predicted and measuredvalues of the 5 water quality parameters all reached above 0.8, with the average relative errorsof less than 40%. The results confirm the feasibility of domestic satellite image for remotesensing inversion of water quality,which can provide a reference for the water quality andeutrophication monitoring of the reservoir.
Databáze: Directory of Open Access Journals