Unleashing the Power of Dynamic Mode Decomposition and Deep Learning for
Rainfall Prediction in North-East India
- URL: http://arxiv.org/abs/2309.09336v1
- Date: Sun, 17 Sep 2023 17:58:06 GMT
- Title: Unleashing the Power of Dynamic Mode Decomposition and Deep Learning for
Rainfall Prediction in North-East India
- Authors: Paleti Nikhil Chowdary, Sathvika P, Pranav U, Rohan S, Sowmya V,
Gopalakrishnan E A, Dhanya M
- Abstract summary: This study investigates the use of two data-driven methods, Dynamic Mode Decomposition (DMD) and Long Short-Term Memory (LSTM) for rainfall forecasting.
We trained and validated our models to forecast future rainfall patterns using historical rainfall data from multiple weather stations.
Our findings suggest that data-driven methods can significantly improve rainfall forecasting accuracy in the North-East region of India.
- Score: 0.27488316163114823
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate rainfall forecasting is crucial for effective disaster preparedness
and mitigation in the North-East region of India, which is prone to extreme
weather events such as floods and landslides. In this study, we investigated
the use of two data-driven methods, Dynamic Mode Decomposition (DMD) and Long
Short-Term Memory (LSTM), for rainfall forecasting using daily rainfall data
collected from India Meteorological Department in northeast region over a
period of 118 years. We conducted a comparative analysis of these methods to
determine their relative effectiveness in predicting rainfall patterns. Using
historical rainfall data from multiple weather stations, we trained and
validated our models to forecast future rainfall patterns. Our results indicate
that both DMD and LSTM are effective in forecasting rainfall, with LSTM
outperforming DMD in terms of accuracy, revealing that LSTM has the ability to
capture complex nonlinear relationships in the data, making it a powerful tool
for rainfall forecasting. Our findings suggest that data-driven methods such as
DMD and deep learning approaches like LSTM can significantly improve rainfall
forecasting accuracy in the North-East region of India, helping to mitigate the
impact of extreme weather events and enhance the region's resilience to climate
change.
Related papers
- Data-driven rainfall prediction at a regional scale: a case study with Ghana [4.028179670997471]
State-of-the-art numerical weather prediction (NWP) models struggle to produce skillful rainfall forecasts in tropical regions of Africa.
We develop two U-Net convolutional neural network (CNN) models, to predict 24h rainfall at 12h and 30h lead-time.
We also find that combining our data-driven model with classical NWP further improves forecast accuracy.
arXiv Detail & Related papers (2024-10-17T22:07:53Z) - TCP-Diffusion: A Multi-modal Diffusion Model for Global Tropical Cyclone Precipitation Forecasting with Change Awareness [13.696784449863959]
Tropical Cyclone Precipitation Diffusion ( TCP-Diffusion) is a multi-modal model for global tropical cyclone precipitation forecasting.
It forecasts TC rainfall around the TC center for the next 12 hours at 3 hourly resolution based on past rainfall observations and multi-modal environmental variables.
Considering the influence of TC-related meteorological factors and the useful information from NWP model forecasts, we propose a multi-model framework with specialized encoders.
arXiv Detail & Related papers (2024-10-17T02:58:05Z) - Enhanced Precision in Rainfall Forecasting for Mumbai: Utilizing Physics Informed ConvLSTM2D Models for Finer Spatial and Temporal Resolution [0.0]
This study introduces deep learning spatial model aimed at enhancing rainfall prediction accuracy on a finer scale.
To test this hypothesis, we introduce a physics informed ConvLSTM2D model to predict precipitation 6hr and 12hr ahead for Mumbai, India.
arXiv Detail & Related papers (2024-04-01T13:56:12Z) - TRG-Net: An Interpretable and Controllable Rain Generator [61.2760968459789]
This study proposes a novel deep learning based rain generator, which fully takes the physical generation mechanism underlying rains into consideration.
Its significance lies in that the generator not only elaborately design essential elements of the rain to simulate expected rains, but also finely adapt to complicated and diverse practical rainy images.
Our unpaired generation experiments demonstrate that the rain generated by the proposed rain generator is not only of higher quality, but also more effective for deraining and downstream tasks.
arXiv Detail & Related papers (2024-03-15T03:27:39Z) - ExtremeCast: Boosting Extreme Value Prediction for Global Weather Forecast [57.6987191099507]
We introduce Exloss, a novel loss function that performs asymmetric optimization and highlights extreme values to obtain accurate extreme weather forecast.
We also introduce ExBooster, which captures the uncertainty in prediction outcomes by employing multiple random samples.
Our solution can achieve state-of-the-art performance in extreme weather prediction, while maintaining the overall forecast accuracy comparable to the top medium-range forecast models.
arXiv Detail & Related papers (2024-02-02T10:34:13Z) - Residual Corrective Diffusion Modeling for Km-scale Atmospheric Downscaling [58.456404022536425]
State of the art for physical hazard prediction from weather and climate requires expensive km-scale numerical simulations driven by coarser resolution global inputs.
Here, a generative diffusion architecture is explored for downscaling such global inputs to km-scale, as a cost-effective machine learning alternative.
The model is trained to predict 2km data from a regional weather model over Taiwan, conditioned on a 25km global reanalysis.
arXiv Detail & Related papers (2023-09-24T19:57:22Z) - Long-term drought prediction using deep neural networks based on geospatial weather data [75.38539438000072]
High-quality drought forecasting up to a year in advance is critical for agriculture planning and insurance.
We tackle drought data by introducing an end-to-end approach that adopts a systematic end-to-end approach.
Key findings are the exceptional performance of a Transformer model, EarthFormer, in making accurate short-term (up to six months) forecasts.
arXiv Detail & Related papers (2023-09-12T13:28:06Z) - Semi-Supervised Video Deraining with Dynamic Rain Generator [59.71640025072209]
This paper proposes a new semi-supervised video deraining method, in which a dynamic rain generator is employed to fit the rain layer.
Specifically, such dynamic generator consists of one emission model and one transition model to simultaneously encode the spatially physical structure and temporally continuous changes of rain streaks.
Various prior formats are designed for the labeled synthetic and unlabeled real data, so as to fully exploit the common knowledge underlying them.
arXiv Detail & Related papers (2021-03-14T14:28:57Z) - Prediction of Rainfall in Rajasthan, India using Deep and Wide Neural
Network [0.5735035463793008]
We propose a deep and wide rainfall prediction model (DWRPM) to predict rainfall in Indian state of Rajasthan.
Information of geographical parameters (latitude and longitude) are included in a unique way.
We compare our results with various deep-learning approaches like LSTM and CNN, which are observed to work well in sequence-based predictions.
arXiv Detail & Related papers (2020-10-22T15:01:22Z) - TRU-NET: A Deep Learning Approach to High Resolution Prediction of
Rainfall [21.399707529966474]
We present TRU-NET, an encoder-decoder model featuring a novel 2D cross attention mechanism between contiguous convolutional-recurrent layers.
We use a conditional-continuous loss function to capture the zero-skewed %extreme event patterns of rainfall.
Experiments show that our model consistently attains lower RMSE and MAE scores than a DL model prevalent in short term precipitation prediction.
arXiv Detail & Related papers (2020-08-20T17:27:59Z) - From Rain Generation to Rain Removal [67.71728610434698]
We build a full Bayesian generative model for rainy image where the rain layer is parameterized as a generator.
We employ the variational inference framework to approximate the expected statistical distribution of rainy image.
Comprehensive experiments substantiate that the proposed model can faithfully extract the complex rain distribution.
arXiv Detail & Related papers (2020-08-08T18:56:51Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.