Title:
Development of a real-time connected corridor data-driven digital twin and data imputation methods

dc.contributor.advisor Hunter, Michael P.
dc.contributor.author Saroj, Abhilasha Jairam
dc.contributor.committeeMember Guin, Angshuman
dc.contributor.committeeMember Guensler, Randall
dc.contributor.committeeMember Rodgers, Michael O.
dc.contributor.committeeMember Fujimoto, Richard
dc.contributor.department Civil and Environmental Engineering
dc.date.accessioned 2020-09-08T12:47:18Z
dc.date.available 2020-09-08T12:47:18Z
dc.date.created 2020-08
dc.date.issued 2020-07-09
dc.date.submitted August 2020
dc.date.updated 2020-09-08T12:47:18Z
dc.description.abstract Smart cities -- equipped with connected infrastructure -- receive significant real-time traffic data. The simulation platform developed in this research leverages these high-frequency connected data streams to derive meaningful insights on the current traffic state by providing near real-time corridor performance measures. A data-driven traffic simulation model, i.e. digital twin, capable of providing environmental and traffic performance measures in near real-time is developed for a connected corridor. The data streams driving the developed simulation model are traffic volumes and signal indications. The research demonstrates the feasibility of the overall connected corridor simulation approach. In addition, investigation of the real-time data streams from the connected corridor revealed the presence of data gaps. Such data gaps can impact the simulation generated performance measures. This research investigates the sensitivity of simulated performance measures to data loss and data imputations developed to infill the detector stream gaps. The impact of data stream gaps on the simulated performance measures is seen, in part, to be dependent on the combination of intersection approaches experiencing data loss. This combination effect can be attributed to both the vehicle volumes observed at these approaches and the ability of the approaches to process additional vehicles. The corridor location of the intersection approaches that have missing data, as well as the travel path of interest, also influence performance measure accuracy. The research demonstrates that to successfully leverage real-time high frequency connected corridor data streams for (near) real-time applications, it is crucial to develop data imputation methodologies that can both learn from historically available data and adapt to recent data trends. In this research, a Long Short Term Memory Recurrent Neural Network layers approach, modeling univariate and multivariate time series data, is developed for data imputation. Experiments are conducted to compare the performance of the univariate and multivariate models and to investigate the impact of these imputation approaches on the simulation performance measures. The findings show the potential advantages of using a multivariate model approach for imputations over a univariate model under atypical traffic conditions. Results also suggest better performance of the univariate model to impute missing data under typical traffic conditions. Future work includes additional development of the model using increased training and validation data along with hyper parameter tuning to increase robustness of the model performance.
dc.description.degree Ph.D.
dc.format.mimetype application/pdf
dc.identifier.uri http://hdl.handle.net/1853/63642
dc.language.iso en_US
dc.publisher Georgia Institute of Technology
dc.subject Smart city
dc.subject Connected corridor
dc.subject Digital twin
dc.subject Traffic simulation
dc.subject RNN
dc.subject LSTM RNN
dc.title Development of a real-time connected corridor data-driven digital twin and data imputation methods
dc.type Text
dc.type.genre Dissertation
dspace.entity.type Publication
local.contributor.advisor Hunter, Michael P.
local.contributor.corporatename School of Civil and Environmental Engineering
local.contributor.corporatename College of Engineering
relation.isAdvisorOfPublication 9db01061-14c2-4451-8340-e8230033f407
relation.isOrgUnitOfPublication 88639fad-d3ae-4867-9e7a-7c9e6d2ecc7c
relation.isOrgUnitOfPublication 7c022d60-21d5-497c-b552-95e489a06569
thesis.degree.level Doctoral
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