Keyword search (4,163 papers available)

"Patterson Z" Authored Publications:

Title Authors PubMed ID
1 From data to action in flood forecasting leveraging graph neural networks and digital twin visualization Roudbari NS; Punekar SR; Patterson Z; Eicker U; Poullis C; 39127785
ENCS
2 FishSegSSL: A Semi-Supervised Semantic Segmentation Framework for Fish-Eye Images Paul S; Patterson Z; Bouguila N; 38535151
ENCS
3 Who's cooking tonight? A time-use study of coupled adults in Toronto, Canada Liu B; Widener MJ; Smith LG; Farber S; Gesink D; Minaker LM; Patterson Z; Larsen K; Gilliland J; 36339032
ENCS
4 Activity space-based measures of the food environment and their relationships to food purchasing behaviours for young urban adults in Canada. Widener MJ, Minaker LM, Reid JL, Patterson Z, Ahmadi TK, Hammond D 29547369
CONCORDIA
5 Evaluating the Impact of Neighborhood Characteristics on Differences between Residential and Mobility-Based Exposures to Outdoor Air Pollution. Fallah-Shorshani M, Hatzopoulou M, Ross NA, Patterson Z, Weichenthal S 30119601
ENCS

 

Title:From data to action in flood forecasting leveraging graph neural networks and digital twin visualization
Authors:Roudbari NSPunekar SRPatterson ZEicker UPoullis C
Link:https://pubmed.ncbi.nlm.nih.gov/39127785/
DOI:10.1038/s41598-024-68857-y
Publication:Scientific reports
Keywords:
PMID:39127785 Category: Date Added:2024-08-11
Dept Affiliation: ENCS
1 Immersive and Creative Technologies Lab, Department Computer Science and Software Engineering, Concordia University, Montreal, Canada. naghmeh.shafiee@concordia.ca.
2 Immersive and Creative Technologies Lab, Department Computer Science and Software Engineering, Concordia University, Montreal, Canada.
3 Gina Cody School of Engineering and Computer Science, Concordia University, Montreal, Canada.

Description:

Forecasting floods encompasses significant complexity due to the nonlinear nature of hydrological systems, which involve intricate interactions among precipitation, landscapes, river systems, and hydrological networks. Recent efforts in hydrology have aimed at predicting water flow, floods, and quality, yet most methodologies overlook the influence of adjacent areas and lack advanced visualization for water level assessment. Our contribution is two-fold: firstly, we introduce a graph neural network model (LocalFLoodNet) equipped with a graph learning module to capture the interconnections of water systems and the connectivity between stations to predict future water levels. Secondly, we develop a simulation prototype offering visual insights for decision-making in disaster prevention and policy-making. This prototype visualizes predicted water levels and facilitates data analysis using decades of historical information. Focusing on the Greater Montreal Area (GMA), particularly Terrebonne, Quebec, Canada, we apply LocalFLoodNet and prototype to demonstrate a comprehensive method for assessing flood impacts. By utilizing a digital twin of Terrebonne, our simulation tool allows users to interactively modify the landscape and simulate various flood scenarios, thereby providing valuable insights into preventive strategies. This research aims to enhance water level prediction and evaluation of preventive measures, setting a benchmark for similar applications across different geographic areas.





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