孙昭晨

个人信息Personal Information

教授

博士生导师

硕士生导师

性别:男

毕业院校:大连理工大学

学位:博士

所在单位:水利工程系

学科:港口、海岸及近海工程

电子邮箱:sunzc@dlut.edu.cn

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OPTIMAL DYNAMIC TEMPORAL-SPATIAL PARAMTER INVERSION METHODS FOR THE MARINE INTEGRATED ELEMENT WATER QUALITY MODEL USING A DATA-DRIVEN NEURAL NETWORK

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论文类型:期刊论文

发表时间:2012-10-01

发表刊物:JOURNAL OF MARINE SCIENCE AND TECHNOLOGY-TAIWAN

收录刊物:SCIE、Scopus

卷号:20

期号:5

页面范围:575-583

ISSN号:1023-2796

关键字:artificial neural network (ANN); data-driven model; integrated element; marine water quality model; temporal-spatial inversion

摘要:Certain marine water quality or ecosystem model parameters vary in space and time because of different plankton taxonomic compositions over a large domain. The same parameter vectors can result in suboptimal calibration. In the present paper, a data-driven model based on an artificial neural network is developed to inverse the values of model parameters dynamically. All training data used are calculated using numerical water quality models from the results of multi-parameter matching design cases such that physical properties are not disturbed. The aim is to determine the relationship between the model parameters and the pollution concentration values of interior stations. Field data are used in the analysis of the relationship for inversing optimal parameters. The temporal and spatial variations of sensitive parameters are considered using four inversion methods, namely, temporal-spatial, spatial, temporal and non-temporal, and non-spatial, to enhance the model accuracy. In water quality models, an integrated element method is simultaneously applied using grids for spatial variation. Case studies in the Bohai Sea, China, and an identical experiment using dissolved inorganic nitrogen are conducted to validate the aforementioned methods. The average maximum of absolute error is reduced from 0.0435 to 0.00756, with a reduction rate of 82.62%. The results show that the temporal-spatial inversion method improves the accuracy of the water quality model.