Predicting Sea-Level Extremes and Wetland Change in the Maroochy River Floodplain Using Remote Sensing and Deep Learning Approach
Article
| Article Title | Predicting Sea-Level Extremes and Wetland Change in the Maroochy River Floodplain Using Remote Sensing and Deep Learning Approach |
|---|---|
| ERA Journal ID | 201448 |
| Article Category | Article |
| Authors | Raj, Nawin, Singh, Niharika, Downs, Nathan and Singh-Peterson, Lila |
| Journal Title | Remote Sensing |
| Journal Citation | 17 (17) |
| Article Number | 2988 |
| Number of Pages | 28 |
| Year | 2025 |
| Publisher | MDPI AG |
| Place of Publication | Switzerland |
| ISSN | 2072-4292 |
| Digital Object Identifier (DOI) | https://doi.org/10.3390/rs17172988 |
| Web Address (URL) | https://www.mdpi.com/2072-4292/17/17/2988 |
| Abstract | Wetlands are an important part of coastal ecosystems but are under increasing pressure from climate change-induced sea-level rise and flooding, in addition to development pressures associated with increasing human populations. The change in tidal events and their intensity due to sea-level rise is also reshaping and challenging the vitality of existing wetland systems, requiring more intensive localized studies to identify future-focused restoration and conservation strategies. To support this endeavor, this study utilizes tide gauge datasets from the Australian Bureau of Meteorology (BOM) for maximum sea-level (Hmax) prediction and Landsat Collection surface reflectance datasets obtained from the United States Geological Survey (USGS) database to detect and project patterns of change in the Maroochy River floodplain of Queensland, Australia. This study developed an efficient hybrid deep learning model combining a Convolutional Neural Network and Bidirectional Long Short-Term Memory (CNNBiLSTM) architecture for the prediction of maximum sea-level and tidal events. The proposed model significantly outperformed three benchmark models (Multiple Linear Regression (MLR), Support Vector Regression (SVR), and CatBoost) in achieving a high correlation coefficient (r = 0.9748) for maximum sea-level prediction. To further address the increasing frequency and intensity of tidal events linked to sea-level rise, a CNNBiLSTM classification model was also developed, achieving 96.72% accuracy in predicting extreme tidal occurrences. This study identified a significant positive linear increase in sea-level rise of 0.016 m/year between 2014 and 2024. Wetland change detection using Landsat imagery along the Maroochy River floodplain also identified a substantial vegetation loss of 395.64 hectares from 2009 to 2023. These findings highlight the strong potential of integrating deep learning and remote sensing for improved prediction and assessment of sea-level extremes and coastal ecosystem changes. The study outcomes provide valuable insights for informing not only conservation and restoration activities but also for providing localized projections of future change necessary for the progression of effective climate adaptation and mitigation strategies. |
| Keywords | maximum sea level (Hmax); CNNBiLSTM bidirectional long short-term memory (BiLSTM); convolutional neural network (CNN); deep learning (DL); machine learning (ML); successive variational mode decomposition (SVMD); categorical boosting (CatBoost); multilinear regression (MLR); support vector regression (SVR) |
| Article Publishing Charge (APC) Amount Paid | 0.0 |
| Article Publishing Charge (APC) Funding | Other |
| Contains Sensitive Content | Does not contain sensitive content |
| ANZSRC Field of Research 2020 | 410103. Human impacts of climate change and human adaptation |
| 460207. Modelling and simulation | |
| Byline Affiliations | School of Mathematics, Physics and Computing |
| UniSQ College (Pathways) | |
| School of Agriculture and Environmental Science |
https://research.usq.edu.au/item/zz7qw/predicting-sea-level-extremes-and-wetland-change-in-the-maroochy-river-floodplain-using-remote-sensing-and-deep-learning-approach
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