Abstract
Large damages and losses resulting from floods are widely reported across the globe. Thus, the identification of the flood‐prone zones on a flood susceptibility map is very essential. To do so, 13 conditioning factors influencing the flood occurrence in Brisbane river catchment in Australia (i.e., topographic, water‐related, geological, and land use factors) were acquired for further processing and modeling. In this study, artificial neural networks (ANN), deep learning neural networks (DLNN), and optimized DLNN using particle swarm optimization (PSO) were exploited to predict and estimate the susceptible areas to the future floods. The significance of the conditioning factors analysis for the region highlighted that altitude, distance from river, STI, and slope played the most important roles, whereas SPI did not contribute to the hazardous situation. The performance of the models was evaluated against the statistical tests such as sensitivity, specificity, the area under curve (AUC), and true skill statistic (TSS). DLNN and PSO‐DLNN models obtained the highest values of sensitivity (0.99) for the training stage to compare with ANN. Moreover, the vali-dations of specificity and TSS for PSO‐DLNN recorded the highest values of 0.98 and 0.90, respec-tively, compared with those obtained by ANN and DLNN. The best accuracies by AUC were evaluated in PSO‐DLNN (0.99 in training and 0.98 in testing datasets), followed by DLNN and ANN. Therefore, the optimized PSO‐DLNN proved its robustness to compare with other methods.
| Original language | English |
|---|---|
| Article number | 2638 |
| Pages (from-to) | 1-23 |
| Number of pages | 23 |
| Journal | Remote Sensing |
| Volume | 13 |
| Issue number | 13 |
| Early online date | 5 Jul 2021 |
| DOIs | |
| Publication status | Published - Jul 2021 |
Bibliographical note
Copyright the Publisher 2021. Version archived for private and non-commercial use with the permission of the author/s and according to publisher conditions. For further rights please contact the publisher.Keywords
- Deep learning neural network
- Flood susceptibility mapping
- Particle swarm optimization
- Australia