A deep learning model to predict thunderstorms within 400km2 south Texas domains

dc.contributor.advisorKing, Scott A.
dc.contributor.advisorTissot, Philippe
dc.contributor.authorKamangir, Hamid
dc.contributor.committeeMemberLi, Longzhuang
dc.creator.orcidhttps://orcid.org/0000-0001-9718-7518
dc.creator.orcid0000-0001-9718-7518en_US
dc.date.accessioned2020-05-23T22:44:41Z
dc.date.available2020-05-23T22:44:41Z
dc.date.issued2019-12
dc.description.abstractHigh resolution predictions, both temporally and spatially, remain a challenge for the prediction of thunderstorms and related impacts such as lightning strikes. The goal of this work is to improve and extend a machine learning method to predict thunderstorms at a 3km resolution with lead times of up to 15 hours. A deep learning neural networks (DLNN) was developed to post process deterministic High-Resolution Rapid Refresh (HRRR) numerical weather prediction (NWP) model output to develop DLNN thunderstorm prediction models (categorical and/or probabilistic output) with performance exceeding that of the HRRR and other models currently available to National Weather Service (NWS) operational forecasters. Notwithstanding the discovery that shallow neural network models can approximate any continuous function (provided the number of hidden layer neurons is sufficient), studies have demonstrated that DLNN models based on representation learning can perform superior to shallow models with respect to weather and air quality predictions. In particular, we use the method known as stacked autoencoder representation learning, yet more specifically, greedy layer-wise unsupervised pretraining. The training domain is slightly large specific area in Corpus Christi, Texas (CRP). The domain is separated into a grid of 13×22 equidistant points with a grid spacing of 20 km. These points serve as boundaries/centres for 286 20 × 20 km (400 km2 ) square regions. The strategy is that DLNN model train on whole boxes and test on three most important boxes to evaluate the model. The target refers to the existence, or non-existence, of thunderstorms (categorical). Cloud to Ground (CG) lightning was chosen as the proxy for thunderstorm occurrence. Logistic regression was then applied to SDAE output to train the predictive model. An iterative technique was used to determine the optimal SDAE architecture. The performance of the optimized DLNN classifiers exceeded that of the corresponding shallow neural network models developed by Collins and Tissot [12], a classifier via a combination of principal component analysis and logistic regression, and operational weather forecasters, based on the same dataset.en_US
dc.description.collegeCollege of Science and Engineeringen_US
dc.description.departmentComputing Sciencesen_US
dc.format.extent62 pagesen_US
dc.identifier.urihttps://hdl.handle.net/1969.6/87889
dc.language.isoen_USen_US
dc.rightsThis material is made available for use in research, teaching, and private study, pursuant to U.S. Copyright law. The user assumes full responsibility for any use of the materials, including but not limited to, infringement of copyright and publication rights of reproduced materials. Any materials used should be fully credited with its source. All rights are reserved and retained regardless of current or future development or laws that may apply to fair use standards. Permission for publication of this material, in part or in full, must be secured with the author and/or publisher.en_US
dc.subjectdeep learningen_US
dc.subjectlightning predictionen_US
dc.subjectmachine learningen_US
dc.titleA deep learning model to predict thunderstorms within 400km2 south Texas domainsen_US
dc.typeTexten_US
dc.type.genreThesisen_US
thesis.degree.disciplineComputer Scienceen_US
thesis.degree.grantorTexas A & M University--Corpus Christien_US
thesis.degree.levelMastersen_US
thesis.degree.nameMaster of Scienceen_US

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