中文版 | English
题名

Contaminant Transport Modeling and Source Attribution With Attention-Based Graph Neural Network

作者
通讯作者Du, Erhu; Zheng, Chunmiao
发表日期
2024-06-01
DOI
发表期刊
ISSN
0043-1397
EISSN
1944-7973
卷号60期号:6
摘要
["Groundwater contamination induced by anthropogenic activities has long been a global issue. Characterizing and modeling contaminant transport processes is crucial to groundwater protection and management. However, challenges still exist in process complexity, data constraint, and computational cost. In the era of big data, the growth of machine learning has led to new opportunities in studying contaminant transport in groundwater systems. In this work, we introduce a new attention-based graph neural network (aGNN) for modeling contaminant transport with limited monitoring data and quantifying causal connections between contaminant sources (drivers) and their spreading (outcomes). In five synthetic case studies that involve varying monitoring networks in heterogeneous aquifers, aGNN is shown to outperform LSTM-based (long-short term memory) and CNN- based (convolutional neural network) methods in multistep predictions (i.e., transductive learning). It also demonstrates a high level of applicability in inferring observations for unmonitored sites (i.e., inductive learning). Furthermore, an explanatory analysis based on aGNN quantifies the influence of each contaminant source, which has been validated by a physics-based model with consistent outcomes with an R2 value exceeding 92%. The major advantage of aGNN is that it not only has a high level of predictive power in multiple scenario evaluations but also substantially reduces computational cost. Overall, this study shows that aGNN is efficient and robust for highly nonlinear spatiotemporal learning in subsurface contaminant transport, and provides a promising tool for groundwater management involving contaminant source attribution.","Groundwater contamination caused by human activities is a longstanding global challenge. Accurately characterizing and modeling the movement of contaminants is crucial for the protection and management of groundwater resources. However, the complexity of the processes, limitations in data availability, and high computational demands pose significant challenges. In the age of big data, machine learning offers new avenues for exploring contaminant transport in groundwater. In this study, we introduce a novel machine learning model called an attention-based graph neural network (aGNN) designed to model contaminant transport with sparse monitoring data and to analyze the causal relationships between contaminant sources and observed concentrations at specific locations. We conducted five synthetic case studies across diverse aquifer systems with varying monitoring setups, where aGNN demonstrated superior performance over models based on other approaches. It also proved highly capable of making inferences about pollution levels at unmonitored sites. Moreover, an explanatory analysis using aGNN effectively quantified the impact of each contaminant source, with results validated by a physics-based model. Overall, this study establishes aGNN as an efficient and robust method for complex spatiotemporal learning in subsurface contaminant transport, making it a valuable tool for groundwater management and contaminant source identification.","A novel graph-based deep learning method is proposed for modeling contaminant transport constrained by monitoring data The proposed model quantifies the contribution of each potential contaminant source to the observed concentration at an arbitrary location The deep learning method substantially reduces the computational cost compared with a physics-based contaminant transport model"]
关键词
相关链接[来源记录]
收录类别
SCI ; EI
语种
英语
学校署名
通讯
资助项目
Fundamental Research Funds for the Central Universities["B240201159","B240201014"] ; National Natural Science Foundation of China[51909118] ; Guangdong Provincial Key Laboratory of Soil and Groundwater Pollution Control[2023B1212060002] ; null[2022YFC3202300]
WOS研究方向
Environmental Sciences & Ecology ; Marine & Freshwater Biology ; Water Resources
WOS类目
Environmental Sciences ; Limnology ; Water Resources
WOS记录号
WOS:001237197400001
出版者
ESI学科分类
ENVIRONMENT/ECOLOGY
来源库
Web of Science
引用统计
成果类型期刊论文
条目标识符http://sustech.caswiz.com/handle/2SGJ60CL/788304
专题工学院_环境科学与工程学院
作者单位
1.Hohai Univ, Coll Hydrol & Water Resources, Nanjing, Peoples R China
2.Hohai Univ, Natl Key Lab Water Disaster Prevent, Nanjing, Peoples R China
3.Hohai Univ, Yangtze Inst Conservat & Dev, Nanjing, Peoples R China
4.Eastern Inst Technol, Eastern Inst Adv Study, Ningbo, Peoples R China
5.Southern Univ Sci & Technol, Sch Environm Sci & Engn, Guangdong Prov Key Lab Soil & Groundwater Pollut C, Shenzhen, Peoples R China
通讯作者单位环境科学与工程学院
推荐引用方式
GB/T 7714
Pang, Min,Du, Erhu,Zheng, Chunmiao. Contaminant Transport Modeling and Source Attribution With Attention-Based Graph Neural Network[J]. WATER RESOURCES RESEARCH,2024,60(6).
APA
Pang, Min,Du, Erhu,&Zheng, Chunmiao.(2024).Contaminant Transport Modeling and Source Attribution With Attention-Based Graph Neural Network.WATER RESOURCES RESEARCH,60(6).
MLA
Pang, Min,et al."Contaminant Transport Modeling and Source Attribution With Attention-Based Graph Neural Network".WATER RESOURCES RESEARCH 60.6(2024).
条目包含的文件
条目无相关文件。
个性服务
原文链接
推荐该条目
保存到收藏夹
查看访问统计
导出为Endnote文件
导出为Excel格式
导出为Csv格式
Altmetrics Score
谷歌学术
谷歌学术中相似的文章
[Pang, Min]的文章
[Du, Erhu]的文章
[Zheng, Chunmiao]的文章
百度学术
百度学术中相似的文章
[Pang, Min]的文章
[Du, Erhu]的文章
[Zheng, Chunmiao]的文章
必应学术
必应学术中相似的文章
[Pang, Min]的文章
[Du, Erhu]的文章
[Zheng, Chunmiao]的文章
相关权益政策
暂无数据
收藏/分享
所有评论 (0)
[发表评论/异议/意见]
暂无评论

除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。