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Data-Driven Approaches for Traffic State and Emission Estimation
Linköping University, Department of Science and Technology, Communications and Transport Systems. Linköping University, Faculty of Science & Engineering.ORCID iD: 0000-0003-2767-9415
2021 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Traffic congestion is one of the most severe problems in modern urban areas. Besides the amplified travel times, traffic congestion intensifies the amount of emitted pollutants impacting human health and the environment. By making the appropriate interventions in traffic, transportation planners can mitigate congestion and enhance the performance of a traffic system. One crucial step in traffic planning and management is the estimation of the current or historical traffic state of a network. The estimation of the traffic state variables (traffic flow, density and speed) reveals the problematic parts of a network, namely, the parts associated with severe congestion and high emission rates. Traffic-related observations and traffic models constitute two core elements of a traffic state estimation approach. While the available observation data explicitly or implicitly provide partial information on the traffic state, traffic models define the traffic behaviour and contribute to estimating the variables when they are not directly observable. The estimated traffic state variables form the input to the so-called emission models, which estimate the mass of the emitted pollutants.

The type and availability level of the observation data play a key role in traffic state and emission estimation. Traditionally, the primary source of traffic-related field data are stationary detectors (loop detectors, radar sensors or cameras). Today, following the late advances in communication systems, a vast amount of traffic-related data from mobile sources (GPS or cellular networks) is available. Such high data availability may give transportation planners new insights into understanding traffic behaviour. Appropriate exploitation of data coming from mobile sources can improve the existing approaches for estimating the traffic state and emissions.

The broad aim of this thesis is to enhance the quality of traffic state and emission estimation. A special focus is given to the development of methods for exploiting the growing availability of traffic-related field data. By combining traffic data and models, the thesis proposes data-driven approaches for traffic state and emission estimation.

The first part of the thesis (Paper I and Paper II) focuses on improving the current approaches for network-wide emission estimation. Traditionally, network-wide emission estimations rely on a static traffic-modelling framework. In Paper I, we suggest an alternative emission estimation approach, which is based on a quasi-dynamic traffic model. To evaluate our approach, we perform field experiments on a 19 km long highway stretch in Stockholm. The results show that our method can improve the spatiotemporal distribution of the estimated emissions. In Paper II, the approach suggested in Paper I is applied to a more extensive network covering the city of Norrköping. The results indicate that our approach yields a realistic spatial layout of emissions.

The second part of the thesis (Paper III and Paper IV) suggests novel data-driven approaches for estimating network-wide traffic flows and demand. More specifically, in Paper III, we develop a data-driven traffic-flow propagation approach by utilising traveltime observations. Our method is based on a piecewise linear approximation of the travel time function, which allows the use of an efficient event-based structure for propagating the traffic flow. We evaluate our approach through simulation-based experiments, and the results provide proof of the concept. In Paper IV, we exploit the approach suggested in Paper III to develop an efficient data-driven scheme for estimating the traffic demand. The results of the simulation-based experiments indicate that our approach might lead to more accurate estimations compared to other data-driven estimation approaches suggested in the literature.

Finally, the last part of the thesis (Paper V) focuses on the estimation of fuel consumption and emissions at a vehicle level. In paper V, we propose a novel method for generating virtual vehicle trajectories by fusing data from different sources. Our approach provides a detailed description of vehicle kinematics, and thus, it permits the use of the underlying virtual vehicle trajectories to vehicle dynamics-sensitive applications, such as emission modelling. The results of our experiments show that the advanced modelling of vehicle kinematics can enhance the accuracy of the estimated emissions.

Place, publisher, year, edition, pages
Linköping: Linköping University Electronic Press, 2021. , p. 61
Series
Linköping Studies in Science and Technology. Dissertations, ISSN 0345-7524 ; 2144
National Category
Transport Systems and Logistics
Identifiers
URN: urn:nbn:se:liu:diva-175738DOI: 10.3384/diss.diva-175738ISBN: 9789179296452 (print)OAI: oai:DiVA.org:liu-175738DiVA, id: diva2:1554995
Public defence
2021-06-17, Online through Zoom (contact nikolaos.tsanakas@liu.se) and TPM55, Täppan, Campus Norrköping, Norrköping (to attend on location, contact viveka.nilson@liu.se), 13:15 (English)
Opponent
Supervisors
Funder
Swedish Energy AgencySwedish Transport AdministrationAvailable from: 2021-05-17 Created: 2021-05-17 Last updated: 2021-05-17Bibliographically approved
List of papers
1. Estimating Emissions from Static Traffic Models: Problems and Solutions
Open this publication in new window or tab >>Estimating Emissions from Static Traffic Models: Problems and Solutions
2020 (English)In: Journal of Advanced Transportation, ISSN 0197-6729, E-ISSN 2042-3195, Vol. 2020, article id 5401792Article in journal (Refereed) Published
Abstract [en]

In large urban areas, the estimation of vehicular traffic emissions is commonly based on the outputs of transport planning models, such as Static Traffic Assignment (STA) models. However, such models, being used in a strategic context, imply some important simplifications regarding the variation of traffic conditions, and their outputs are heavily aggregated in time. In addition, dynamic traffic flow phenomena, such as queue spillback, cannot be captured, leading to inaccurate modelling of congestion. As congestion is strongly correlated with increased emission rates, using STA may lead to unreliable emission estimations. The first objective of this paper is to identify the errors that STA models introduce into an emission estimation. Then, considering the type and the nature of the errors, our aim is to suggest potential solutions. According to our findings, the main errors are related to STA inability of accurately modelling the level and the location of congestion. For this reason, we suggest and evaluate the postprocessing of STA outputs through quasidynamic network loading. Then, we evaluate our suggested approach using the HBEFA emission factors and a 19 km long motorway segment in Stockholm as a case study. Although, in terms of total emissions, the differences compared to the simple static case are not so vital, the postprocessor performs better regarding the spatial distribution of emissions. Considering the location-specific effects of traffic emissions, the latter may lead to substantial improvements in applications of emission modelling such as dispersion, air quality, and exposure modelling.

Place, publisher, year, edition, pages
WILEY-HINDAWI, 2020
National Category
Transport Systems and Logistics
Identifiers
urn:nbn:se:liu:diva-164205 (URN)10.1155/2020/5401792 (DOI)000514363900013 ()
Note

Funding Agencies|Swedish Energy AgencySwedish Energy Agency [38921-1]

Available from: 2020-03-10 Created: 2020-03-10 Last updated: 2021-05-17
2. Traffic emission estimation based on quasi-dynamic network loading
Open this publication in new window or tab >>Traffic emission estimation based on quasi-dynamic network loading
2019 (English)Conference paper, Published paper (Refereed)
National Category
Transport Systems and Logistics
Identifiers
urn:nbn:se:liu:diva-175739 (URN)
Conference
hEART 2019: 8th Symposium of the European Association for Research in Transportation, Budapest, September 4-6, 2019
Available from: 2021-05-17 Created: 2021-05-17 Last updated: 2021-05-17Bibliographically approved
3. Data-driven network loading
Open this publication in new window or tab >>Data-driven network loading
Show others...
2021 (English)In: Transportmetrica B: Transport Dynamics, ISSN 2168-0566, Vol. 9, no 1, p. 237-265Article in journal (Refereed) Published
Abstract [en]

Dynamic Network Loading (DNL) models are typically formulated as a system of differential equations where travel times, densities or any other variable that indicates congestion is endogenous. However, such endogeneities increase the complexity of the Dynamic Traffic Assignment (DTA) problem due to the interdependence of DNL, route choice and demand. In this paper, attempting to exploit the growing accessibility of traffic-related data, we suggest that congestion can be instead captured by exogenous variables, such as travel time observations. We propagate the traffic flow based on an exogenous travel time function, which has a piece-wise linear form. Given piece-wise stationary route flows, the piece-wise linear form of the travel time function allows us to use an efficient event-based modelling structure. Our Data-Driven Network Loading (DDNL) approach is developed in accordance with the theoretical DNL framework ensuring vehicle conservation and FIFO. The first simulation experiment-based results are encouraging, indicating that the DDNL can contribute to improving the efficiency of applications where the monitoring of historical network-wide flows is required. Abbreviations: DDNL - Data Driven Network Loading; DNL - Dynamic Network Loading; DTA - Dynamic Traffic Assignment; ITS - Intelligent Transportation Systems; OD - Origin Destination; TTF - Travel Time Function; LTT - Linear Travel Time; DL - Demand level

Place, publisher, year, edition, pages
TAYLOR & FRANCIS LTD, 2021
Keywords
Data-driven assignment; network loading; network-wide flows
National Category
Transport Systems and Logistics
Identifiers
urn:nbn:se:liu:diva-173416 (URN)10.1080/21680566.2020.1847213 (DOI)000613805600001 ()
Note

Funding Agencies|Swedish Energy AgencySwedish Energy Agency [46963-1]

Available from: 2021-02-20 Created: 2021-02-20 Last updated: 2021-11-18

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