published journal article

Indoor-Generated PM2.5 During COVID-19 Shutdowns Across California: Application of the PurpleAir Indoor–Outdoor Low-Cost Sensor Network

Environmental Science & Technology

Publication Date

May 4, 2021

Author(s)

Amirhosein Mousavi, Jun Wu

Abstract

Although evidences showed an overall reduction in outdoor air pollution levels across the globe due to COVID-19-related lockdown, no comprehensive assessment was available for indoor air quality during the period of stay-at-home orders, despite that the residential indoor environment contributes most to personal exposures. We examined temporal and diurnal variations of indoor PM2.5 based on real-time measurements from 139 indoor–outdoor co-located low-cost PurpleAir sensor sets across California for pre-, during, and post-lockdown periods in 2020 and “business-as-usual” periods in 2019. A two-step method was implemented to systematically control the quality of raw sensor data and calibrate the sensor data against co-located reference instruments. During the lockdown period, 17–24% higher indoor PM2.5 concentrations were observed in comparison to those in the 2019 business-as-usual period. In residential sites, a clear peak in PM2.5 concentrations in the afternoon and elevated evening levels toping at roughly 10 μg·m–3 was observed, which reflects enhanced human activity during lunch and dinner time (i.e., cooking) and possibly more cleaning and indoor movement that increase particle generation and resuspension in homes. The contribution of indoor-generated PM2.5 to total indoor concentrations increased as high as 80% during and post-lockdown periods compared to before lockdown.

Suggested Citation
Amirhosein Mousavi and Jun Wu (2021) “Indoor-Generated PM2.5 During COVID-19 Shutdowns Across California: Application of the PurpleAir Indoor–Outdoor Low-Cost Sensor Network”, Environmental Science & Technology, 55(9), pp. 5648–5656. Available at: 10.1021/acs.est.0c06937.

conference paper

Development of an adaptive origin-destination estimation methodology considering traffic operational characteristics

ICTE 2011

Publication Date

July 1, 2011

Author(s)

Xiaobo Liu, Lianyu Chu, Mei Chen
Suggested Citation
Xiaobo Liu, Lianyu Chu and Mei Chen (2011) “Development of an adaptive origin-destination estimation methodology considering traffic operational characteristics”, in ICTE 2011. American Society of Civil Engineers, pp. 364–369. Available at: 10.1061/41184(419)61.

Book/Book Chapter: Attitude-Behaviour Relationships in Travel-Demand Modelling

Phd Dissertation

Deep Learning Models for Spatio-Temporal Forecasting and Analysis

Abstract

Spatio-temporal problems arise in broad areas of environmental and transportation systems. These problems are challenging, because of both spatial and temporal neighborhood similarities and correlations. We consider traffic data, which is a complex example of spatio-temporal data. Traffic data is geo-referenced time series data, where fixed locations have observations for a period of time. Traffic data analysis and related machine learning tasks have an important role in intelligent transportation systems, such as designing navigation systems, traffic management, control systems and in the future will be essential for setting appropriate anticipatory tolls. Recent data collection methodologies dramatically increase the volume of available spatio-temporal data, which require scalable machine learning models. Moreover, deep learning models outperform traditional machine learning and statistical models due to their strong feature learning abilities in spatial and temporal domains. Increases in available data and recent advances in deep learning models in spatio-temporal domains are the main motivations of this dissertation. We first study, non data-driven and optimization-based solutions for the network flow problem, which appears in a wide range of applications including transportation systems and electricity networks. In these applications, the underlying physical layer of the systems can generate a very large graph resulting in an optimization problem with a large decision variable space. We present a distributed solution for the network flow problem. The model uses cycle basis and an alternating direction method of multipliers (ADMM) method to find a lower computational time and number of communications, while obtaining a centrally optimal solution. Second, we attempt to obtain spatio-temporal clusters in traffic data, which represent similar traffic data in terms of both spatial and temporal similarities. Clustering of traffic data are used to analyze traffic congestion propagation and detection. We obtain spatio-temporal clusters using a modification to Deep Embedded Clustering, which considers both spatial and temporal similarities in latent features. Also we define new evaluation metrics to evaluate spatio-temporal clusters of traffic flow data. Third, when sensors collect spatio-temporal data in a large geographical area, the existence of missing data cannot be escaped, which negatively impacts of prediction models. Here, we investigate the problem of incorporating both spatial and temporal contexts in missing traffic data imputation using convolutional and recurrent neural networks. We propose a convolutional-recurrent autoencoder for missing data imputation, and illustrate the performance of autoencoders for missing data imputation in spatio-temporal data. Finally, traffic flow prediction has an important role in diverse intelligent transportation systems and navigational systems. There is a large literature on this problem. However, the problem is challenging for high-dimensional traffic data. We explicitly design the neural network architecture for capturing various types of spatial and temporal patterns. We also define evaluation metrics for spatio-temporal forecasting problems to better evaluate generalization of the model over various spatial and temporal features.

Suggested Citation
REZA ASADI (2020) Deep Learning Models for Spatio-Temporal Forecasting and Analysis. PhD Dissertation. UC Irvine. Available at: https://escholarship.org/uc/item/59t1p05b.

published journal article

Gradient projection method for simulation-based dynamic traffic assignment

Transportation Research Record

Publication Date

January 1, 2012
Suggested Citation
Inchul Yang and R. Jayakrishnan (2012) “Gradient projection method for simulation-based dynamic traffic assignment”, Transportation Research Record, 2284(1), pp. 70–80. Available at: 10.3141/2284-09.

working paper

Relationships Between Social-Psychological Variables and Individual Travel Behavior

Publication Date

April 1, 1978

Working Paper

UCI-ITS-WP-78-7

Areas of Expertise

Abstract

The purpose of this paper is to introduce variables ·which may yield explanations of travel behavior which go beyond the economic and transportation-related explanations of existing models. This analysis explores whether improvements can be made in the understanding of individual travel behavior and in the predictive power of travel demand models. This applied emphasis extends the author’s previous work which demonstrated how attitudinal and behavioral information can be used to structure the development and marketing of transportation improvements (Fielding, 1972; Fielding, et.al., 1976).

Suggested Citation
Gordon J. Fielding and Timothy J. Tardiff (1978) Relationships Between Social-Psychological Variables and Individual Travel Behavior. Working Paper UCI-ITS-WP-78-7. Institute of Transportation Studies, Irvine. Available at: https://escholarship.org/uc/item/7945t2zr.

working paper

How Congestion Pricing Reduces Property Values

Publication Date

April 16, 2002

Working Paper

UCI-ITS-WP-02-1

Areas of Expertise

Abstract

Congestion tolls which increase an individual’s cost of commuting will reduce the number of commuters, and therefore reduce demand for housing within commuting distance of the employment center. Aggregate property values will therefore decline, generating opposition even to congestion tolls which are efficient.

Suggested Citation
Amihai Glazer and Kurt Van Dender (2002) How Congestion Pricing Reduces Property Values. Working Paper UCI-ITS-WP-02-1. Institute of Transportation Studies, Irvine. Available at: https://escholarship.org/uc/item/4r13k4n8.

conference paper

Architecture integrating symbolic and connectionist models for traffic management center decision support

Proceedings of the international conference on applications of advanced technologies in transportation engineering

Publication Date

January 1, 1996

Author(s)

Martin Molina, Filippo Logi, Stephen Ritchie, Jose Cuena
Suggested Citation
Martin Molina, Filippo Logi, Stephen G. Ritchie and Jose Cuena (1996) “Architecture integrating symbolic and connectionist models for traffic management center decision support”, in Proceedings of the international conference on applications of advanced technologies in transportation engineering, pp. 320–324.

published journal article

A theory of urban squatting and land-tenure formalization in developing countries

American Economic Journal: Economic Policy

Publication Date

January 1, 2009

Author(s)

Jan Brueckner, Harris Selod

Abstract

This paper offers a new theoretical approach to urban squatting, reflecting the view that squatters and formal residents compete for land within a city. The key implication is that squatters “squeeze” the formal market, raising the price paid by formal residents. The squatter organizer ensures that squeezing is not too severe, since otherwise, the formal price will rise to a level that invites eviction by landowners. Because eviction is absent in equilibrium, the model differs from previous analytical frameworks, where eviction occurs with some probability. It also facilitates a general equilibrium analysis of squatter formalization policies. (JEL O15, Q15, R14)

Suggested Citation
Jan K Brueckner and Harris Selod (2009) “A theory of urban squatting and land-tenure formalization in developing countries”, American Economic Journal: Economic Policy, 1(1), pp. 28–51. Available at: 10.1257/pol.1.1.28.

research report

Deployment Paths of ATIS: Impact on Commercial Vehicle Operations, Private Sector Providers and the Public Sector

Abstract

Most studies of the economic benefits of Advanced Traveler Information Systems (ATIS) have focused on the passenger transportation market. Few analyses have addressed the applications of ATIS to freight operations even though using ATIS to route or divert commercial vehicles can make a significant improvement in overall traffic flow and system performance. In this study, multivariate demand models were estimated based on large-scale surveys of commercial vehicle operators in California to determine the current use and perceptions of advanced information technologies, especially advanced traveler information systems (ATIS), among these firms. Data were used to identify organizational and operational characteristics that made these technologies more or less attractive, and to predict potential adoption of the technologies by carrier type. Many characteristics proved influential including company size, type and location of operation, length of load moves, provision of intermodal service and private versus for-hire status. A secondary goal was to explore the extent to which new logistics intermediaries,especially “infomediaries” are likely to develop advanced information technologies for the freight industry. Private sector providers of ATIS have not lived up to earlier expectations. While there still may be a significant future role for private sector involvement in providing this type of information, for now the burden appears to fall primarily on state and local transportation agencies.

Suggested Citation
Amelia C. Regan and Thomas F. Golob (2002) Deployment Paths of ATIS: Impact on Commercial Vehicle Operations, Private Sector Providers and the Public Sector. Final Report UCB-ITS-PRR-2002-31. ITS-Irvine: University of California, Berkeley / California Partners for Advanced Transit and Highways. Available at: https://escholarship.org/uc/item/2578j4bj.