research report

Estimating the cost impacts of transit-service contracting. Final report

Publication Date

December 1, 1987

Author(s)

Roger Teal, Genevieve (Gen) Giuliano, Jacqueline Golob, T. Alexander, E.K. Morlok

Final Report

PB-88-241484/XAB

Areas of Expertise

Abstract

This study reports the results of an analysis of the potential cost impacts of private-sector-service contracting by transit agencies as well as the results of a nationwide survey of the magnitude and characteristics of existing transit-service contracting. Using cost models developed during the study, an evaluation was made of the cost impacts of contracting out 5 to 20% of the existing services of 19 medium and large transit agencies, and all service of 3 small agencies. The evaluation determined that large agencies would save 2 to 49% of the costs of the contracted service, with a mean savings of 28%, and that medium size agencies would save up to 31% of the cost of service they contracted, with a mean savings of 14%. No cost savings were indicated for some small and medium agencies. A separate analysis of potential cost savings, using a statistical model developed from data supplied by agencies which currently contract for fixed-route bus service, predicted that agencies of 100 or more vehicles would save 26 percent of the cost of contracted services.

Suggested Citation
Roger Teal, Genevieve Giuliano, J.M. Golob, T. Alexander and E.K. Morlok (1987) Estimating the cost impacts of transit-service contracting. Final report. Final Report PB-88-241484/XAB. Available at: https://www.osti.gov/biblio/6717744.

Phd Dissertation

Essays in Urban and Transportation Economics

Publication Date

January 1, 2012

Author(s)

Abstract

This thesis ventures to understand and explain aspects of the complex system of land usage, housing and transportation in cities. It proposes theoretical models and uses empirical analysis to aid its goal of explaining some stylized facts and anecdotal evidence available in the field of urban economics. It contributes to the literature on urban-transportation by proposing a theoretical model of industrial organization in the freight industry. The model sheds light on the nature of competition between freight carriers competing in transport price and service frequency. Another theoretical contribution is an economic model of squatting (illegal occupation of land), a widespread phenomenon observed especially in the cities of the developing world. This model has the potential to aid policy analysis of land use and housing in cities across the developing nations. A third contribution is a study that uses empirical methods to provide descriptive evidence regarding slum housing in Indonesia. It provides an understanding of the correlation between socio-economic attributes of households and the quality of dwellings occupied by these households. Overall, the dissertation carries out an economic analysis of various currently under-explored and less-understood aspects of urban and transportation economics. KeyWords: urban economics, developing countries, squatting, slums, slum-dwellers, theoretical modelling, empirical analysis, freight transportation, competition

Suggested Citation
Nilopa Shah (2012) Essays in Urban and Transportation Economics. Ph.D.. University of California, Irvine. Available at: https://uci.primo.exlibrisgroup.com/permalink/01CDL_IRV_INST/1gpb62p/alma991013352789704701 (Accessed: October 13, 2023).

presentation

Adoption of Mobility Care Plans Among African American Older Adults in Orange County

Suggested Citation
Natalia Nagata (2025) “Adoption of Mobility Care Plans Among African American Older Adults in Orange County”. 2025 Emerging Scholars Transportation Research Showcase II, ITS-Irvine, 24 October. Available at: https://youtu.be/W6lpxBvg1Ck?t=1602.

published journal article

Examining spatial disparities in electric vehicle charging station placements using machine learning

Sustainable Cities and Society

Abstract

Electric vehicles (EVs) are an emerging mode of transportation that has the potential to reshape the transportation sector by significantly reducing carbon emissions thereby promoting a cleaner environment and pushing the boundaries of climate progress. Nevertheless, there remain significant hurdles to the widespread adoption of electric vehicles in the United States ranging from the high cost of EVs to the inequitable placement of EV charging stations (EVCS). A deeper understanding of the underlying complex interactions of social, economic, and demographic factors that may lead to such emerging disparities in EVCS placements is, therefore, necessary to mitigate accessibility issues and improve EV usage among people of all ages and abilities. In this study, we develop a machine learning framework to examine spatial disparities in EVCS placements by using a predictive approach. We first identify the essential socioeconomic factors that may contribute to spatial disparities in EVCS access. Second, using these factors along with ground truth data from existing EVCS placements we predict future ECVS density at multiple spatial scales using machine learning algorithms and compare their predictive accuracy to identify the most optimal spatial resolution for our predictions. Finally, we compare the most accurately predicted EVCS placement density with a spatial inequity indicator to quantify how equitably these placements would be for Orange County, California. Our method achieved the highest predictive accuracy (94.9%) of EVCS placement density at a spatial resolution of 3 km using Random Forests. Our results indicate that a total of 11.04% of predicted EVCS placements in Orange County will lie within a high spatial inequity zone – indicating populations with the lowest accessibility may require greater investments in EVCS placements. 69.52% of the study area experience moderate accessibility issues and the remaining 19.11% face the least accessibility issues w.r.t EV charging stations. Within the least accessible areas, 7.8% of the area will require a low density of predicted EVCS placements, 3.4% will require a medium density of predicted EVCS placements and 0.55% will require a high density of EVCS placements. The moderately accessible areas would require the highest placements of EVCS but mostly with low-density placements covering 54.42% of the area. The findings from this study highlight a generalizable framework to quantify inequities in EVCS placements that will enable policymakers to identify underserved communities and facilitate targeted infrastructure investments for widespread EV usage and adoption for all. The findings from this study highlight a generalizable framework to quantify inequities in EVCS placements that will enable policymakers to identify underserved communities and facilitate targeted infrastructure investments for widespread EV usage and adoption for all.
, Electric vehicles (EVs) are an emerging mode of transportation that has the potential to reshape the transportation sector by significantly reducing carbon emissions thereby promoting a cleaner environment and pushing the boundaries of climate progress. Nevertheless, there remain significant hurdles to the widespread adoption of electric vehicles in the United States ranging from the high cost of EVs to the inequitable placement of EV charging stations (EVCS). A deeper understanding of the underlying complex interactions of social, economic, and demographic factors that may lead to such emerging disparities in EVCS placements is, therefore, necessary to mitigate accessibility issues and improve EV usage among people of all ages and abilities. In this study, we develop a machine learning framework to examine spatial disparities in EVCS placements by using a predictive approach. We first identify the essential socioeconomic factors that may contribute to spatial disparities in EVCS access. Second, using these factors along with ground truth data from existing EVCS placements we predict future ECVS density at multiple spatial scales using machine learning algorithms and compare their predictive accuracy to identify the most optimal spatial resolution for our predictions. Finally, we compare the most accurately predicted EVCS placement density with a spatial inequity indicator to quantify how equitably these placements would be for Orange County, California. Our method achieved the highest predictive accuracy (94.9%) of EVCS placement density at a spatial resolution of 3 km using Random Forests. Our results indicate that a total of 11.04% of predicted EVCS placements in Orange County will lie within a high spatial inequity zone – indicating populations with the lowest accessibility may require greater investments in EVCS placements. 69.52% of the study area experience moderate accessibility issues and the remaining 19.11% face the least accessibility issues w.r.t EV charging stations. Within the least accessible areas, 7.8% of the area will require a low density of predicted EVCS placements, 3.4% will require a medium density of predicted EVCS placements and 0.55% will require a high density of EVCS placements. The moderately accessible areas would require the highest placements of EVCS but mostly with low-density placements covering 54.42% of the area. The findings from this study highlight a generalizable framework to quantify inequities in EVCS placements that will enable policymakers to identify underserved communities and facilitate targeted infrastructure investments for widespread EV usage and adoption for all. The findings from this study highlight a generalizable framework to quantify inequities in EVCS placements that will enable policymakers to identify underserved communities and facilitate targeted infrastructure investments for widespread EV usage and adoption for all.

Suggested Citation
Avipsa Roy and Mankin Law (2022) “Examining spatial disparities in electric vehicle charging station placements using machine learning”, Sustainable Cities and Society, 83, p. 103978. Available at: 10.1016/j.scs.2022.103978.

Phd Dissertation

Inferring and Replicating Activity Selection and Scheduling Behavior of Individuals

Publication Date

January 1, 2014

Abstract

Understanding the choices that each individual in the population makes regarding daily plans and activity participation behavior is crucial to forecasting spatial-temporal travel demand in the region. In this dissertation, we develop a comprehensive mathematical/statistical framework to infer and replicate travel behavior of individuals in terms of their socio-demographic profiles. The framework comprises series of distinct modules that employ statistical segmentation, Bayesian econometrics, data mining, and optimization techniques to predict individuals’ activity types, activity frequencies, and the travel linkages that make them possible. The key advantages of the model are: first, providing the likely content of activity agenda as part of the inference procedure; second, integrating transportation network topology within activity scheduling step; and third, capability of integrating modal components. The data used for the analysis is the California Household Travel Survey data, 2000-2001, (Caltrans, 2002). After preprocessing (which includes queries to match, clean, and prepare data), the final cleaned data is consisted of activity patterns of 26,269 individuals. In the model-building process, we initially cluster individuals in the sample based on their reported (one-day) activity patterns. Later, we argue and demonstrate that clustering activity/travel patterns in terms of such activity characteristics as type, duration, scheduling, and location can be an effective tool to capture preferential distributions of arrival time, departure time, and duration, which are unobservable inputs to activity-based travel models. Representative patterns are found based on two measures of dissimilarities between activity patterns, Sequence Alignment Method and Agenda dissimilarity, resulting in 8 clusters. A decision tree based on socio-demographics of individuals is fitted to infer the cluster to which each individual belongs. Inference on agenda formation in each cluster is based on ensemble of three different modules–“multivariate probit model,” “Markov chains with conditional random fields,” and “adaptive boosting”– applied to individuals within each cluster. In each of these modules, the inputs are socio-demographic attributes of individuals, and the outputs are discrete outcomes indicating participation in each activity type. Arrival time and activity duration inference for each activity type in each cluster, is performed using the adaptive boosting algorithm. Having identified the type of activities, and their arrival time and duration, activities are scheduled in the agenda using two approaches: decision rules, and Household Activity Pattern Problem (HAPP: a variation of pickup and delivery problem with time windows, (Recker, 1995) ). Testing the entire modeling system on an out-of-sample population–15% of the entire sample– shows that the model is able to predict on average 80.3% of daily activities of individuals; correct activities during 867 minutes of 1080 awake minutes in a day was predicted.

Suggested Citation
Mahdieh Allahviranloo (2014) Inferring and Replicating Activity Selection and Scheduling Behavior of Individuals. UC Irvine. Available at: https://uci.primo.exlibrisgroup.com/permalink/01CDL_IRV_INST/1gpb62p/alma991002201239704701 (Accessed: October 12, 2023).

published journal article

Internalization of airport congestion: A network analysis

International Journal of Industrial Organization

Publication Date

September 1, 2005

Author(s)

Suggested Citation
Jan K. Brueckner (2005) “Internalization of airport congestion: A network analysis”, International Journal of Industrial Organization, 23(7-8), pp. 599–614. Available at: 10.1016/j.ijindorg.2005.03.007.

published journal article

Locational factors in automobile ownership decisions

The Annals of Regional Science

Publication Date

December 1, 1973

Author(s)

Martin J. Beckmann, Richard L. Gustafson, Thomas Golob
Suggested Citation
Martin J. Beckmann, Richard L. Gustafson and Thomas F. Golob (1973) “Locational factors in automobile ownership decisions”, The Annals of Regional Science, 7(2), pp. 1–12. Available at: 10.1007/BF01283480.

published journal article

Intimate partner violence victims seeking a temporary restraining order. Social Support and Resilience Attenuating Psychological Distress

Journal of interpersonal violence

Publication Date

July 1, 2016

Author(s)

Rupa Jose, Raymond Novaco
Suggested Citation
Rupa Jose and Raymond W. Novaco (2016) “Intimate partner violence victims seeking a temporary restraining order. Social Support and Resilience Attenuating Psychological Distress”, Journal of interpersonal violence, 31(20), pp. 3352–3376. Available at: 10.1177/0886260515584352.

published journal article

Partial fiscal decentralization and demand responsiveness of the local public sector: Theory and evidence from Norway

Journal of Urban Economics

Publication Date

March 1, 2014

Author(s)

Lars-Erik Borge, Jan Brueckner, Jorn Rattsø

Abstract

This paper provides an empirical test of a principal tenet of fiscal federalism: that spending discretion, when granted to localities, allows public-good levels to adjust to suit local demands. The test is based on a simple model of partial fiscal decentralization, under which earmarking of central transfers for particular uses is eliminated, allowing funds to be spent according to local tastes. The greater role of local demand determinants following partial decentralization is confirmed by the paper’s empirical results, which show the effects of the 1986 Norwegian reform. (C) 2014 Elsevier Inc. All rights reserved.

Suggested Citation
Lars-Erik Borge, Jan K. Brueckner and Jorn Rattsø (2014) “Partial fiscal decentralization and demand responsiveness of the local public sector: Theory and evidence from Norway”, Journal of Urban Economics, 80, pp. 153–163. Available at: 10.1016/j.jue.2014.01.003.

conference paper

Spatio-temporal clustering of traffic data with deep embedded clustering

Proceedings of the 3rd ACM SIGSPATIAL international workshop on prediction of human mobility - PredictGIS'19

Publication Date

January 1, 2019
Suggested Citation
Reza Asadi and Amelia Regan (2019) “Spatio-temporal clustering of traffic data with deep embedded clustering”, in Proceedings of the 3rd ACM SIGSPATIAL international workshop on prediction of human mobility - PredictGIS'19. ACM Press. Available at: 10.1145/3356995.3364537.