Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs

Detalhes bibliográficos
Autor(a) principal: Zechin, Douglas
Data de Publicação: 2023
Tipo de documento: Tese
Idioma: eng
Título da fonte: Biblioteca Digital de Teses e Dissertações da UFRGS
Texto Completo: http://hdl.handle.net/10183/258394
Resumo: Robust artificial intelligence models have been criticized for their lack of uncertainty control and inability to explain feature importance, which has limited their adoption. However, probabilistic machine learning and explainable artificial intelligence have shown great scientific and technical advances, and have slowly permeated other areas, such as Traffic Engineering. This thesis fulfils a literature gap related to probabilistic traffic breakdown forecasting. We propose a traffic breakdown probability calculation methodology based on probabilistic speed predictions. Since the probabilistic characteristic is absent in traditional formulations of neural networks, we suggest using Variational LSTMs to make the speed forecasts. This Recurrent Neural Network uses Dropout to produce a Bayesian approximation and generate probabilistic outputs. This thesis also investigates the effects of inclement weather on traffic breakdown probability and methods for identifying traffic breakdowns. The proposed methodology produces great control over the probability of congestion, which could not be achieved using deterministic models, resulting in important theoretical and practical contributions.
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spelling Zechin, DouglasCybis, Helena Beatriz Bettella2023-05-23T03:27:46Z2023http://hdl.handle.net/10183/258394001167921Robust artificial intelligence models have been criticized for their lack of uncertainty control and inability to explain feature importance, which has limited their adoption. However, probabilistic machine learning and explainable artificial intelligence have shown great scientific and technical advances, and have slowly permeated other areas, such as Traffic Engineering. This thesis fulfils a literature gap related to probabilistic traffic breakdown forecasting. We propose a traffic breakdown probability calculation methodology based on probabilistic speed predictions. Since the probabilistic characteristic is absent in traditional formulations of neural networks, we suggest using Variational LSTMs to make the speed forecasts. This Recurrent Neural Network uses Dropout to produce a Bayesian approximation and generate probabilistic outputs. This thesis also investigates the effects of inclement weather on traffic breakdown probability and methods for identifying traffic breakdowns. The proposed methodology produces great control over the probability of congestion, which could not be achieved using deterministic models, resulting in important theoretical and practical contributions.application/pdfengControle de tráfegoModelos de previsãoRedes neuraisRodoviasTraffic breakdownTraffic forecastingNeural networksInclement weatherBayesian statisticsProbabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMsinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/doctoralThesisUniversidade Federal do Rio Grande do SulEscola de EngenhariaPrograma de Pós-Graduação em Engenharia de Produção e TransportesPorto Alegre, BR-RS2023doutoradoinfo:eu-repo/semantics/openAccessreponame:Biblioteca Digital de Teses e Dissertações da UFRGSinstname:Universidade Federal do Rio Grande do Sul (UFRGS)instacron:UFRGSTEXT001167921.pdf.txt001167921.pdf.txtExtracted Texttext/plain195676http://www.lume.ufrgs.br/bitstream/10183/258394/2/001167921.pdf.txt30dd81c9ce96f60b027e805341df6381MD52ORIGINAL001167921.pdfTexto completo (inglês)application/pdf5270991http://www.lume.ufrgs.br/bitstream/10183/258394/1/001167921.pdfd36ba1ef319ed0697cf5410c990c7af7MD5110183/2583942023-05-28 03:33:35.541993oai:www.lume.ufrgs.br:10183/258394Biblioteca Digital de Teses e Dissertaçõeshttps://lume.ufrgs.br/handle/10183/2PUBhttps://lume.ufrgs.br/oai/requestlume@ufrgs.br||lume@ufrgs.bropendoar:18532023-05-28T06:33:35Biblioteca Digital de Teses e Dissertações da UFRGS - Universidade Federal do Rio Grande do Sul (UFRGS)false
dc.title.pt_BR.fl_str_mv Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs
title Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs
spellingShingle Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs
Zechin, Douglas
Controle de tráfego
Modelos de previsão
Redes neurais
Rodovias
Traffic breakdown
Traffic forecasting
Neural networks
Inclement weather
Bayesian statistics
title_short Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs
title_full Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs
title_fullStr Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs
title_full_unstemmed Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs
title_sort Probabilistic traffic breakdown forecasting through Bayesian approximation using variational LSTMs
author Zechin, Douglas
author_facet Zechin, Douglas
author_role author
dc.contributor.author.fl_str_mv Zechin, Douglas
dc.contributor.advisor1.fl_str_mv Cybis, Helena Beatriz Bettella
contributor_str_mv Cybis, Helena Beatriz Bettella
dc.subject.por.fl_str_mv Controle de tráfego
Modelos de previsão
Redes neurais
Rodovias
topic Controle de tráfego
Modelos de previsão
Redes neurais
Rodovias
Traffic breakdown
Traffic forecasting
Neural networks
Inclement weather
Bayesian statistics
dc.subject.eng.fl_str_mv Traffic breakdown
Traffic forecasting
Neural networks
Inclement weather
Bayesian statistics
description Robust artificial intelligence models have been criticized for their lack of uncertainty control and inability to explain feature importance, which has limited their adoption. However, probabilistic machine learning and explainable artificial intelligence have shown great scientific and technical advances, and have slowly permeated other areas, such as Traffic Engineering. This thesis fulfils a literature gap related to probabilistic traffic breakdown forecasting. We propose a traffic breakdown probability calculation methodology based on probabilistic speed predictions. Since the probabilistic characteristic is absent in traditional formulations of neural networks, we suggest using Variational LSTMs to make the speed forecasts. This Recurrent Neural Network uses Dropout to produce a Bayesian approximation and generate probabilistic outputs. This thesis also investigates the effects of inclement weather on traffic breakdown probability and methods for identifying traffic breakdowns. The proposed methodology produces great control over the probability of congestion, which could not be achieved using deterministic models, resulting in important theoretical and practical contributions.
publishDate 2023
dc.date.accessioned.fl_str_mv 2023-05-23T03:27:46Z
dc.date.issued.fl_str_mv 2023
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