| Keyword search (4,163 papers available) | ![]() |
"Resilience" Keyword-tagged Publications:
| Title | Authors | PubMed ID | |
|---|---|---|---|
| 1 | Biological sex and bilingualism: Its impact on risk and resilience for dementia | Calvo N; Phillips N; Bialystok E; Einstein G; | 41573422 PSYCHOLOGY |
| 2 | Evolution from the physical process-based approaches to machine learning approaches to predicting urban floods: a literature review | Md Shike Bin Mazid Anik | 40692624 ENCS |
| 3 | Ten new insights in climate science 2024 | Schaeffer R; Schipper ELF; Ospina D; Mirazo P; Alencar A; Anvari M; Artaxo P; Biresselioglu ME; Blome T; Boeckmann M; Brink E; Broadgate W; Bustamante M; Cai W; Canadell JG; Cardinale R; Chidichimo MP; Ditlevsen P; Eicker U; Feron S; Fikru MG; Fuss S; Gaye AT; Gustafsson Ö; Harring N; He C; Hebden S; Heilemann A; Hirota M; Janardhanan N; Juhola S; Jung TY; Kejun J; Kilki? S; Kumarasinghe N; Lapola D; Lee JY; Levis C; Lusambili A; Maasakkers JD; MacIntosh C; Mahmood J; Mankin JS; Marchegiani P; Martin M; Muk | 40546753 PHYSICS |
| 4 | Resilience, Stress, and Mental Health Among University Students: A Test of the Resilience Portfolio Model | Fang S; Barker E; Arasaratnam G; Lane V; Rabinovich D; Panaccio A; O' Connor RM; Nguyen CT; Doucerain MM; | 39641152 PSYCHOLOGY |
| 5 | Vulnerability and narrative in later life | de Medeiros K; Ermoshkina P; | 38761242 SOCANTH |
| 6 | Insights on the COVID-19 pandemic: Youth engagement through photovoice | Pickering CJ; Al-Baldawi Z; McVean L; Adan M; Amany RA; Al-Baldawi Z; Baker L; O' Sullivan T; | 36373152 PSYCHOLOGY |
| 7 | We're building it up to burn it down: fire occurrence and fire-related climatic patterns in Brazilian biomes | Diele Viegas LM; Sales L; Hipólito J; Amorim C; Johnson de Pereira E; Ferreira P; Folta C; Ferrante L; Fearnside P; Mendes Malhado AC; Frederico Duarte Rocha C; M Vale M; | 36312759 BIOLOGY |
| 8 | The Association Between Dietary Pattern Adherence, Cognitive Stimulating Lifestyle, and Cognitive Function Among Older Adults From the Quebec Longitudinal Study on Nutrition and Successful Aging | Parrott MD; Carmichael PH; Laurin D; Greenwood CE; Anderson ND; Ferland G; Gaudreau P; Belleville S; Morais JA; Kergoat MJ; Fiocco AJ; | 33063101 PERFORM |
| 9 | Serotonin transporter gene promoter methylation in peripheral cells in healthy adults: Neural correlates and tissue specificity. | Ismaylova E, Di Sante J, Szyf M, Nemoda Z, Yu WJ, Pomares FB, Turecki G, Gobbi G, Vitaro F, Tremblay RE, Booij L | 28774705 PSYCHOLOGY |
| Title: | Evolution from the physical process-based approaches to machine learning approaches to predicting urban floods: a literature review | ||||
| Authors: | Md Shike Bin Mazid Anik | ||||
| Link: | https://pubmed.ncbi.nlm.nih.gov/40692624/ | ||||
| DOI: | 10.1186/s40068-025-00409-3 | ||||
| Publication: | Environmental systems research | ||||
| Keywords: | Artificial intelligence; GIS; Green infrastructure; Machine learning; Remote sensing; Urban flooding; Urban resilience; | ||||
| PMID: | 40692624 | Category: | Date Added: | 2025-07-22 | |
| Dept Affiliation: |
ENCS
1 Department of Building, Civil, and Environmental Engineering, Concordia University, Montreal, QC H3G 1M8 Canada. |
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Description: |
Urban flooding has become a growing concern for many cities due to accelerating urbanisation, changing weather, and drainage system aging. Earlier studies of floods have taken primarily the traditional process-based approach to predicting urban floods, offering limited exploration of recent advancements in AI-driven, real-time, and community-integrated approach, which this paper brings into focus. This paper reviews how flood prediction has improved over the last two decades. It begins by reviewing physical process-based models (PPBMs), which often could not handle the fast changes in cities. New tools like geographic information systems (GIS), light detection and ranging (LiDAR), and satellite images helped improve flood mapping and planning. A big shift came with the use of AI and machine learning. They have made predictions faster, smarter, and more accurately. They allow many types of data, like weather information, sensor data, and social media (crowdsourcing) data. Recently, new tools like Internet of Things devices, deep learning, and hybrid models have brought even more progress. However, there are still challenges. Many cities still do not have the data, sensors, or systems needed to use these tools. Many models work on their own, not linked with city planning or community efforts. Flood solutions must now be more than just technical. Future systems should combine AI, hydrodynamics, GIS, and real-time monitoring, adapt to city change, and include input from communities. Open-source tools, public education, and better planning are also needed to make cities safer and more resilient to costly floods. |



