Regional Rainfall Prediction Using Support Vector Machine Classification
of Large-Scale Precipitation Maps
- URL: http://arxiv.org/abs/2007.15404v1
- Date: Thu, 30 Jul 2020 11:56:19 GMT
- Title: Regional Rainfall Prediction Using Support Vector Machine Classification
of Large-Scale Precipitation Maps
- Authors: Eslam A.Hussein, Mehrdad Ghaziasgar, Christopher Thron
- Abstract summary: This research investigates a class-based approach to rainfall prediction from 1-30 days in advance.
The study made regional predictions based on sequences of daily rainfall maps of the continental US, with rainfall quantized at 3 levels: light or no rain; moderate; and heavy rain.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Rainfall prediction helps planners anticipate potential social and economic
impacts produced by too much or too little rain. This research investigates a
class-based approach to rainfall prediction from 1-30 days in advance. The
study made regional predictions based on sequences of daily rainfall maps of
the continental US, with rainfall quantized at 3 levels: light or no rain;
moderate; and heavy rain. Three regions were selected, corresponding to three
squares from a $5\times5$ grid covering the map area. Rainfall predictions up
to 30 days ahead for these three regions were based on a support vector machine
(SVM) applied to consecutive sequences of prior daily rainfall map images. The
results show that predictions for corner squares in the grid were less accurate
than predictions obtained by a simple untrained classifier. However, SVM
predictions for a central region outperformed the other two regions, as well as
the untrained classifier. We conclude that there is some evidence that SVMs
applied to large-scale precipitation maps can under some conditions give useful
information for predicting regional rainfall, but care must be taken to avoid
pitfall
Related papers
- CasCast: Skillful High-resolution Precipitation Nowcasting via Cascaded
Modelling [93.65319031345197]
We propose CasCast, a cascaded framework composed of a deterministic and a probabilistic part to decouple predictions for mesoscale precipitation distributions and small-scale patterns.
CasCast significantly surpasses the baseline (up to +91.8%) for regional extreme-precipitation nowcasting.
arXiv Detail & Related papers (2024-02-06T08:30:47Z) - 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) - Rapid Flood Inundation Forecast Using Fourier Neural Operator [77.30160833875513]
Flood inundation forecast provides critical information for emergency planning before and during flood events.
High-resolution hydrodynamic modeling has become more accessible in recent years, however, predicting flood extents at the street and building levels in real-time is still computationally demanding.
We present a hybrid process-based and data-driven machine learning (ML) approach for flood extent and inundation depth prediction.
arXiv Detail & Related papers (2023-07-29T22:49:50Z) - Deep Learning for Day Forecasts from Sparse Observations [60.041805328514876]
Deep neural networks offer an alternative paradigm for modeling weather conditions.
MetNet-3 learns from both dense and sparse data sensors and makes predictions up to 24 hours ahead for precipitation, wind, temperature and dew point.
MetNet-3 has a high temporal and spatial resolution, respectively, up to 2 minutes and 1 km as well as a low operational latency.
arXiv Detail & Related papers (2023-06-06T07:07:54Z) - Pangu-Weather: A 3D High-Resolution Model for Fast and Accurate Global
Weather Forecast [91.9372563527801]
We present Pangu-Weather, a deep learning based system for fast and accurate global weather forecast.
For the first time, an AI-based method outperforms state-of-the-art numerical weather prediction (NWP) methods in terms of accuracy.
Pangu-Weather supports a wide range of downstream forecast scenarios, including extreme weather forecast and large-member ensemble forecast in real-time.
arXiv Detail & Related papers (2022-11-03T17:19:43Z) - Short-term precipitation prediction using deep learning [5.1589108738893215]
We show that a 3D convolutional neural network using a single frame of meteorology fields is capable of predicting the precipitation spatial distribution.
The network is developed based on 39-years (1980-2018) data of meteorology and daily precipitation over the contiguous United States.
arXiv Detail & Related papers (2021-10-05T06:37:24Z) - RAP-Net: Region Attention Predictive Network for Precipitation
Nowcasting [15.587959542301789]
We propose Recall Attention Mechanism (RAM) to improve the prediction.
The experiments show that the proposed Region Attention Predictive Network (RAP-Net) has outperformed the state-of-art method.
arXiv Detail & Related papers (2021-10-03T15:55:18Z) - Accurate and Clear Precipitation Nowcasting with Consecutive Attention
and Rain-map Discrimination [11.686939430992966]
We propose a new deep learning model for precipitation nowcasting that includes both the discrimination and attention techniques.
The model is examined on a newly-built benchmark dataset that contains both radar data and actual rain data.
arXiv Detail & Related papers (2021-02-16T14:22:54Z) - 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) - Rain-Code Fusion : Code-to-code ConvLSTM Forecasting Spatiotemporal
Precipitation [0.8057006406834465]
We propose a novel rainy feature that represents a temporal rainy process using multi-frame fusion for the timestep reduction.
We apply the radar analysis hourly data on the central region broader with an area of 136 x 148 km2.
arXiv Detail & Related papers (2020-09-30T11:33:45Z) - A generative adversarial network approach to (ensemble) weather
prediction [91.3755431537592]
We use a conditional deep convolutional generative adversarial network to predict the geopotential height of the 500 hPa pressure level, the two-meter temperature and the total precipitation for the next 24 hours over Europe.
The proposed models are trained on 4 years of ERA5 reanalysis data from 2015-2018 with the goal to predict the associated meteorological fields in 2019.
arXiv Detail & Related papers (2020-06-13T20:53:17Z)
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.