PhD Researcher in Adaptive Planning of Transport Infrastructure under Uncertainty

 
Published
WorkplaceZürich, Zurich region, Switzerland
Category
Position

PhD Researcher in Adaptive Planning of Transport Infrastructure under Uncertainty

100%, Singapore, fixed-term



ETH Zurich is one of the leading universities of the world with a strong focus on science and engineering. In 2010 it established the Singapore-ETH Centre (SEC) in collaboration with the National Research Foundation (NRF) to do interdisciplinary research on pressing problems.

The centre currently runs several research programmes with the Future Cities Laboratory (FCL) as one of the programmes. It is home to a community of over 100 PhD, postdoctoral and Professorial researchers working on diverse themes related to sustainable cities and resilient infrastructure systems. In the course of their work, researchers actively collaborate with universities, research institutes, industry, and government agencies with the aim of offering practical solutions.

The Chair of Infrastructure Management lead by Professor Dr. Bryan T. Adey in the Institute of Construction and Infrastructure Management of the Department of Civil, Environmental and Geomatic Engineering has an opening for a PhD researcher in the planning of transportation infrastructure.


Project background


In recent times, cities have experienced an unprecedented period of flux, whether triggered by disruptive technology, political upheavals, emergent social trends or the ongoing global pandemic. These growing uncertainties have prompted cities to rethink land use and transportation infrastructure provision planned for the future. In this sense, adaptive planning proposes to cope with uncertainty by committing to a few short-term actions, leaving options open for the future and continually adapting by learning how uncertainty unfolds over time. The ETH and NUS have a new project “AMIL” within the Future Cities Lab – Global Research Programme (FCL-G) that aims to integrate mobility, land use and infrastructure into a resilient, adaptive system that responds to changing needs, through a three-pronged approach. First, social network surveys in Zurich and Singapore will monitor and examine the ‘drivers of change’, by assessing changes in social and economic activity. Second, novel transport modelling and simulation techniques will be developed that can handle the unique challenges posed by the ‘city in flux’, with dynamically adaptive land use and demand responsive transportation systems. Third, exploratory modelling, decision-making under uncertainty methods (e.g. real-options) and optimization methods will be employed to formulate adaptive plans that can respond to short-term and long-term change. The project will bring tools, insights, methods and procedures that can provide decision-support for planning across relevant scales of time and space. Simulation models and software tools will be developed in consultation with an expert panel of practitioners and policymakers, with a goal to enable adaptive planning, improve resilience to shocks such as COVID-19, and reduce misalignment of provision and emerging demand in the long-term. These learnings will be applied to a study of infrastructure corridors and urban development across intercity, city-wide and local scales in both Alpine and Southeast Asian contexts, with Zurich and Singapore as the main hubs under study. The project will be guided by regular stakeholder workshops in both contexts, and will produce a suite of open-source software tools and planning recommendations developed in collaboration with an inter-agency working group for adaptive mobility, land use and infrastructure.


Job description


The goal of the research is to advance the state-of-the-art of infrastructure planning under uncertainty by developing new tools and methods for model-based adaptive planning for infrastructure systems. The research is to improve the adaptive infrastructure planning process through the development of future scenarios, the potential interventions on the system, the monitoring strategy and the selection and optimization phase. The main contributions of this research will be: 1) advancing the modelling of future uncertainty, including its spatial distribution and endogeneity; 2) developing top-down models (e.g. system dynamics) and integrating them with bottom-up models (e.g. agent-based modelling) for adaptive planning, and 3) exploring the use of advanced techniques in sequential decision-making, such as reinforcement learning, for complex planning problems to circumvent the “curse of dimensionality”.

The case study to be used in the research is the city-state of Singapore and regional connections (e.g. Singapore-Johor corridor). Potential interventions to be evaluated include but are not limited to the expansion of highways and rail infrastructure, mobility on-demand services, Integrated Transport Hubs and flexible land use policies (see, for example, the Singapore Land Transport Master Plan by LTA and the Long Term Plan Review by URA). This research will contribute to the development of a methodology to be used to plan infrastructure systems that are more responsive to future needs, and will consequently result in improved success and prosperity for the regions in which they are embedded.

The candidate is expected to work closely with other researchers in Singapore who will focus on the assessment of future societal trends, their implications on transport needs and the impact of potential interventions through agent-based models (MATSIM). Additionally, the candidate is expected to participate in regular exchanges and coordination with the research team in Zürich working on similar topics.


Your profile


The successful candidate for this PhD position will have a

  • Masters degree in spatial planning, transport planning, civil engineering, systems engineering or a related field, and
  • will have experience with computer modelling and simulation (e.g. random networks, exploratory modelling, reinforcement learning)
  • Good grasp of probability theory, traffic modelling, risk assessment, R, python and GIS.
  • Proficiency in written and spoken English.



We value diversity


In line with our values, ETH Zurich encourages an inclusive culture. We promote equality of opportunity, value diversity and nurture a working and learning environment in which the rights and dignity of all our staff and students are respected. Visit our Equal Opportunities and Diversity website to find out how we ensure a fair and open environment that allows everyone to grow and flourish.




Curious? So are we.


We look forward to receiving your online application with the following documents:

  • A letter of interest, including your understanding of the problem and thoughts on a way forward.
  • A publication in which you were the first author.
  • A curriculum vitae (with a list of publications and contact information of at least two referees).
  • Grade records of all university courses taken as well as diplomas.

Please note that we exclusively accept applications submitted through MyCareersFutrure.sg and our online application portal. Applications via email or postal services will not be considered.

For further information about the position, please contact Ms. Nathalie Dietrich by e-mail: dietrichibi.baug.ethz.ch (no applications) and visit our website: ?url=www.ibi.baug.ethz.ch&module=jobs&id=2343930" target="_blank" rel="nofollow">?url=www.ibi.baug.ethz.ch&module=jobs&id=2343930" target="_blank" rel="nofollow">www.ibi.baug.ethz.ch .

Screening of applications starts on 01 September 2022. Applications will be accepted until the position is filled.

Starting date: The preferred start date is 01 November 2022, although others are possible.

The Singapore-ETH Centre is an equal opportunity and family-friendly employer. All candidates will be evaluated on their merits and qualifications, without regards to gender, race, age or religion.



Apply online now





The Singapore-ETH Centre provides a multicultural and interdisciplinary environment to researchers working on diverse themes focussed on sustainable and liveable cities, resilient urban systems, and patient-centric healthcare. The centre is home to a community of over 100 doctoral, postdoctoral and professorial researchers working in three main programmes: Future Cities Laboratory, Future Resilient Systems, and Future Health Technologies.



 
In your application, please refer to myScience.org and reference JobID 2343930.