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Dive into the research topics where Mohammad Saifuzzaman is active.

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Featured researches published by Mohammad Saifuzzaman.


Accident Analysis & Prevention | 2015

Impact of mobile phone use on car-following behaviour of young drivers

Mohammad Saifuzzaman; Md. Mazharul Haque; Zuduo Zheng; Simon Washington

Multitasking, such as the concurrent use of a mobile phone and operating a motor vehicle, is a significant distraction that impairs driving performance and is becoming a leading cause of motor vehicle crashes. This study investigates the impact of mobile phone conversations on car-following behaviour. The CARRS-Q Advanced Driving Simulator was used to test a group of young Australian drivers aged 18-26 years on a car-following task in three randomised phone conditions: baseline (no phone conversation), hands-free and handheld. Repeated measure ANOVA was applied to examine the effect of mobile phone distraction on selected car-following variables such as driving speed, spacing, and time headway. Overall, drivers tended to select slower driving speeds, larger vehicle spacings, and longer time headways when they were engaged in either hands-free or handheld phone conversations, suggesting possible risk compensatory behaviour. In addition, phone conversations while driving influenced car-following behaviour such that variability was increased in driving speeds, vehicle spacings, and acceleration and decelerations. To further investigate car-following behaviour of distracted drivers, driver time headways were modelled using Generalized Estimation Equation (GEE). After controlling for various exogenous factors, the model predicts an increase of 0.33s in time headway when a driver is engaged in hands-free phone conversation and a 0.75s increase for handheld phone conversation. The findings will improve the collective understanding of distraction on driving performance, in particular car following behaviour which is most critical in the determination of rear-end crashes.


AHFE 2017 International Conference on Human Factors in Simulation and Modeling | 2017

Human Factors in Modelling Mixed Traffic of Traditional, Connected, and Automated Vehicles

Anshuman Sharma; Yasir Ali; Mohammad Saifuzzaman; Zuduo Zheng; Md. Mazharul Haque

Connected and automated vehicle technologies are widely expected to revolutionize transport systems, enhancing the mobility and quality of life while reducing the environmental impact. However, in the foreseeable future, connected and automated vehicles will have to co-exist with traditional vehicles, indicating a great research need of modelling mixed traffic flow. In few attempts of modelling mixed traffic flow recently, human factors are largely ignored, despite their critical roles in understanding traffic flow dynamics and effective operation and control of this mixed traffic flow. To properly investigate the role of human factors in mixed traffic, we have designed a series of experiments using a high-fidelity driving simulator. Complementary information is collected using questionnaires. This study can assist in developing accurate, realistic, and robust microscopic traffic flow models.


Traffic Injury Prevention | 2018

Crash severity along rural mountainous highways in Malaysia: An application of a combined decision tree and logistic regression model

Rusdi Rusli; Mazharul Haque; Mohammad Saifuzzaman; Mark J. King

Abstract Objective: Traffic crashes along mountainous highways may lead to injuries and fatalities more often than along highways on plain topography; however, research focusing on the injury outcome of such crashes is relatively scant. The objective of this study was to investigate the factors affecting the likelihood that traffic crashes along rural mountainous highways result in injuries. Method: This study proposes a combination of decision tree and logistic regression techniques to model crash severity (injury vs. noninjury), because the combined approach allows the specification of nonlinearities and interactions in addition to main effects. Both a scobit model and a random parameters logit model, respectively accounting for an imbalance response variable and unobserved heterogeneities, are tested and compared. The study data set contains a total of 5 years of crash data (2008–2012) on selected mountainous highways in Malaysia. To enrich the data quality, an extensive field survey was conducted to collect detailed information on horizontal alignment, longitudinal grades, cross-section elements, and roadside features. In addition, weather condition data from the meteorology department were merged using the time stamp and proximity measures in AutoCAD-Geolocation. Results: The random parameters logit model is found to outperform both the standard logit and scobit models, suggesting the importance of accounting for unobserved heterogeneity in crash severity models. Results suggest that proportion of segment lengths with simple curves, presence of horizontal curves along steep gradients, highway segments with unsealed shoulders, and highway segments with cliffs along both sides are positively associated with injury-producing crashes along rural mountainous highways. Interestingly, crashes during rainy conditions are associated with crashes that are less likely to involve injury. It is also found that the likelihood of injury-producing crashes decreases for rear-end collisions but increases for head-on collisions and crashes involving heavy vehicles. A higher order interaction suggests that single-vehicle crashes involving light and medium-sized vehicles are less severe along straight sections compared to road sections with horizontal curves. One the other hand, crash severity is higher when heavy vehicles are involved in crashes as single vehicles traveling along straight segments of rural mountainous highways. Conclusion: In addition to unobserved heterogeneity, it is important to account for higher order interactions to have a better understanding of factors that influence crash severity. A proper understanding of these factors will help develop targeted countermeasures to improve road safety along rural mountainous highways.


Transportation Research Part C-emerging Technologies | 2014

Incorporating human-factors in car-following models: A review of recent developments and research needs

Mohammad Saifuzzaman; Zhanle Zheng


Transportation Research Part B-methodological | 2015

Revisiting the Task–Capability Interface model for incorporating human factors into car-following models

Mohammad Saifuzzaman; Zuduo Zheng; Md. Mazharul Haque; Simon Washington


Transportation Research Part C-emerging Technologies | 2015

Exploring association between perceived importance of travel/traffic information and travel behaviour in natural disasters: A case study of the 2011 Brisbane floods

Zhanle Zheng; Jinwoo Lee; Mohammad Saifuzzaman; Jian Sun


Transportation Research Part B-methodological | 2017

Understanding the mechanism of traffic hysteresis and traffic oscillations through the change in task difficulty level

Mohammad Saifuzzaman; Zuduo Zheng; Md. Mazharul Haque; Simon Washington


School of Civil Engineering & Built Environment; Science & Engineering Faculty | 2016

Stockholm congestion charging: an assessment with METROPOLIS and SILVESTER

Mohammad Saifuzzaman; Leonid Engelson; Ida Kristoffersson; André de Palma


School of Civil Engineering & Built Environment; Science & Engineering Faculty | 2016

Incorporating risk taking and driver errors in car-following models

Mohammad Saifuzzaman


School of Civil Engineering & Built Environment; Institute of Health and Biomedical Innovation; Science & Engineering Faculty | 2016

Incorporating human factors into Gipps car-following model

Mohammad Saifuzzaman; Zuduo Zheng; Md. Mazharul Haque; Simon Washington

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Zuduo Zheng

Queensland University of Technology

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Md. Mazharul Haque

Queensland University of Technology

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Simon Washington

Queensland University of Technology

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Mazharul Haque

Queensland University of Technology

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Zhanle Zheng

Queensland University of Technology

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Anshuman Sharma

Queensland University of Technology

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Jinwoo Lee

Queensland University of Technology

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Mark J. King

Queensland University of Technology

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Rusdi Rusli

Queensland University of Technology

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