Combining the generated labels with an early-obtainable, strong-confidence hand-labeled dataset.
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In 2021, Roland Lowe et al.
[17] showed how topographic deep learning can be used to estimate the depth of an urban pluvial flood. This study looks into how deep learning was set up to predict 2D supreme depth maps during urban flood events as accurately as possible. This was accomplished by adapting the U-NET neural network design, which is frequently used for image segmentation. The results reveal reduced CSI to 0.5 and RMSE scores (0.08 m) for screening procedures. However, the double-peak event’s increased forecast inaccuracy highlighted a weakness in accurately catching the dynamics of flood occurrences.
In 2021, Marcel Motta et al.
[18] showed how to anticipate urban floods utilising both machine learning and geographic information systems. In order to create a flood prediction system that can be utilised as a useful tool for urban management, this project will combine machine learning classifiers with GIS methodologies. This method created reasonable risk indices and factors for the occurrence of floods and was useful for developing a long-term smart city plan. Random forest was the most effective machine learning model, with an accuracy of 0.96 and a Matthew’s correlation coefficient of 0.77. However, the higher sensitivity resulted in a larger false-positive rate, indicating that the system threshold needs to be further adjusted.
In 2021, Mahdi Panahi et al.
[19] proposed two deep learning neural network architectures, CNN and RNN, for the spatial prediction and mapping of flood possibilities. A geospatial database with information for previous flood disasters and the environmental parameters of the Golestan Province in northern Iran was built in order to design and validate the predictive models. The SWARA weights were used to train the CNN and RNN models, and the characteristic method was employed to validate them. According to the findings, the CNN model performed marginally better at forecasting future floods than RNN (AUC = 0.814, RMSE = 0.181). However, they frequently produce incorrect results and have a tendency to shorten the complicated form of flood disasters.
In 2021, Susanna Dazzi et al.
[20] proposed the concept of predicting the flood stage by means of ML models. Using mostly upstream stage observations, this work evaluated the ML models’ propensity to forecast flood stages at a crucial gauge station. All models offered adequately accurate predictions up to 6 h in advance (e.g., root mean square error (RMSE) 15 cm and Nash–Sutcliffe efficiency (NSE) coefficient > 0.99). Additionally, the outcomes imply that the LSTM model should be used because, while taking the most training time, it was reliable and accurate at forecasting peak standards.
In 2021, Xinxiang Lei et al.
[21] presented convolutional neural network (NNETC) and recurrent neural network (NNETR) models for flood prediction. After that, flooded areas were spatially divided at random in a 70:30 ratio for the construction and validation of flood models. By means of area under the curve (AUC) and RMSE, the models’ prediction accuracy was verified. The validation findings showed that the NNETC model’s prediction performance (AUC = 84%, RMSE = 0.163) was marginally superior to the NNETR model’s (AUC = 82%, RMSE = 0.186). To create a flood danger map for metropolitan areas even though the output contains a relative error of up to 20% (based on AUC).
In 2022, Georgios I. Drakonakis et al.
[22] presented supervised flood mapping via CNN by employing multitemporal Sentinel-1 and Sentinel-2. In this paper, OmbriaNet was presented, which completely depends on CNN. It uses the temporal variations between flood episodes that are retrieved by various sensors to detect variations among permanent and flooded water areas. This paper demonstrated how to build a supervised dataset on new platforms, assisting in the management of flood disasters. But, CNNs have been applied to supervised classification with limited spatial scale and delivering acceptable outcomes.
In 2022, Kamza et al.
[23] developed remote sensing and geographic information system (GIS) technology to examine the changes in the northeastern Caspian Sea coastline and forecast the severity of flooding with rising water levels. The proposed method (remote sensing and GIS) for making dynamic maps was being used to track the coastline and predict how much flooding would occur in a certain area. As a result, it was possible to forecast the flooding of the northeast coast using a single map. But this research contains a variation in sea level and continuous ecosystem deterioration current, which reduces the prediction quality.
In 2022, Tanim et al.
[24] suggested a novel unsupervised machine learning (ML) method for detecting urban floods that included the Otsu method, fuzzy rules, ISO-clustering techniques, and was focused on change detection (CD) methodology. In order to create and train ML algorithms for flood detection, this research integrated data from remote sensing satellite imagery with information from ground-based observations generated from police department reports about road closures. By utilizing satellite images and lowering the risk of flooding in transport design and urban infrastructure development, this systematic technique is ideally helpful for other cities in danger of urban flooding as well as for identifying nuisance floods.
In 2022, Peifeng Li et al.
[25] presented a deep learning algorithm (CNN–LSTM) to directly compute runoff in two-dimensional rainfall radar maps. The NSE results from the research mentioned above are lower or on par with those from this study’s CNN–LSTM model. If the training data are carefully chosen, the model’s Nash–Sutcliffe efficiency (NSE) value for runoff simulation throughout the periods could exceed 0.85. When the extreme values were missed in the one-fold training dataset, the CNN–LSTM miscalculated the extreme flows.
According to the aforementioned research, the information that was retrieved from the data typically exceeds the limitations of the measurements, even if the satellite data have a high degree of uncertainty. However, the data have not been properly analysed in order to determine how various remote sensing techniques and analyses were used to locate the flooded area.
Until now, many approaches have been implemented to evaluate remote sensing-based systems. Unsupervised deep learning algorithms are more reliable because they are faster, use less training data, take less time to run, and also provide superior computing efficiency. Therefore, a hybrid deep learning model named DHMFP–CHHSSO is proposed for flood detection, which provides greater performance with a lower data count and processing time for improved fast flood mapping. The suggested technique helps other towns in danger of urban flooding by using satellite data to reduce the flood risk of transportation projects and urban structure development in addition to flood detection.