Ideas for thesis topics
Commonly, we expect student to develop their own topics for a thesis, and we are available to brainstorm on potential topics that fit the students interests and skill sets. Occassionally, we post topics to this page that we feel are interesting for a thesis.
Time for Activities
One of the most important driver of travel behavior is the amount of time we spent on various activities at different places. Typically, we use the household travel survey MiD to explore activities. We know, however, that many activities are underreported (such as the visit at the bakery might not be reportet because it feels to be too short to be relevant or because it was simply overlooked). Therefore, it is important to compare the amount of time spent on various activities and the resulting travel across several data sources.
A valuable data source that is currently underused in travel behavior analyses are time use studies. The German time use study provides detailed data how people spend their day. This thesis will analyse the amount of time spent on various activities and travel from three data sources: The German time use study, the MiD household travel survey and the MOP mobility panel dataset. The data will be provided to the student. Finding (in)consistencies will be an important step to better understand and explain travel behavior.
Automatized link volume estimation using open data
With the advances of the digital world and the willingness to create and share more and more data sets collaboratively, new opportunities for data analysis and use have also emerged for research. For some applications, such as assessing the environmental impact of traffic, traffic volumes are needed. In this thesis, we will develop a tool chain that estimates daily traffic volumes per road using widely available free data, such as OpenStreetMap or facebook data for goods. The goal is to process traffic volumes for noise analysis, which is why characteristics such as trip purpose, origin-destination relation, etc. are irrelevant. As a classical input-output problem, a machine learning approach is preferred, which is transferable to the whole of Germany if possible. One focus of the work will be to evaluate the quality of the model with respect to large-scale application.
Impact of access restrictions for diesel vehicles in Munich starting in 2023
Starting in 2023, Munich will restrict access for older diesel vehicles in an attempt to reduce emissions, particularly particulate-matter emissions. While this move appears to be warranted from an environmental point of view as well as from a public health perspective, the social equity implications could be significant. In this study, it shall be analyzed with an agent-based simulation model who is affected by this ban from older diesel vehicles. The model needs to be expanded to distinguish vehicle types. A statistical analysis shall define who is most likely to own vehicles that will be banned from entering Munich. The equity analysis will explore to which degree which segement of the population is affected, and whether these people have transport alternatives other than buying a newer car. The topic requires some interest in working with models, including some programming in Java and statistical analysis of car ownership data.
Contribution of travel emission by population segment
The transport sector contributes about one quarter of all Greenhouse Gas emissions. But not everyone contributes equally. There is evidence that high-income and well-educated people tend to contribute more to transport-related GHG emissions than other people.
In this thesis, the German household travel survey shall be analyzed to identify which segment of the German population contributes which share to the travel demand. This travel demand shall be converted into environmental impacts, in particular gaseous emissions and particulate matter. This research builds on work done by Wadud et al. (2022) (https://doi.org/10.1016/j.trd.2022.103377) for the UK and identifies differences in the German context.
Impact of weather on travel behavior
Travel is influenced by weather. Rain, fog, snow, wind and particularly high or low temperatures influence whether people leave their home, what time of day they travel, how far they travel and which mode they choose. In this research, weather data shall be attached to a household travel survey to identify which weather events affect to which degree different aspects of travel behavior. Statistical analyses may include regression analysis, discrete choice analyses and/or machine learning approaches.