Exploring effective strategies of communicating flood forecasting using a CHANS modelling framework

Supervisors: Qiuhua Liang (LU), Katie Parsons (LU), Huili Chen (LU)

Contact email: Q.Liang@lboro.ac.uk

Location: Loughborough

Project Rational: Surface water flooding - also referred to as pluvial flooding - is caused by intense, highly localised convective rainfall creating excessive runoff that cannot drain away quickly enough. According to a recent Defra report [1], it is the UK’s most widespread form of flooding, with 3.2m properties at risk in England alone. Recent events, e.g., the July 2021 floods in London, demonstrate inadequate preparedness for such events [2]. Several recent UK government reports highlight an urgent need for surface water flood risk mitigation and management so owners of at-risk homes and businesses can better protect their property (e.g., [1]).

Under the National Surface Water Management Action Plan [1], the Environment Agency (EA), Met Office and Flood Forecasting Centre are committed to exploring improved surface water flood forecasting. Such an urgent need is further recognised at the “Surface water flood forecasting and real-time communication symposium” jointly organised by EA, Met Office, Leeds and Oxford Universities in Jan 2024. The challenge of effective communication of forecasts and warnings was further emphasised at the symposium, and users specifically pointed out flood forecasting and warning is ‘30% technology and 70% communication’. This project will deliver inter-disciplinary research to address this important challenge.

Methodology: The aim is to apply a newly developed Coupled Human And Natural Systems (CHANS) model [3] to simulate and understand the interactive human behaviours and social dynamics before and during a surface water flood event induced by intense rainfall. This will be related to different scenarios of flood forecasting and warning provision. Subsequently, we will design and carry out systematic numerical experiments to explore effective strategies of communicating flood forecasting and warning.

The adopted CHANS modelling framework consists of a distributed agent-based model (ABM) to represent the human systems and a hydrodynamic model (the High-Performance Integrated hydrodynamic Modelling System (HiPIMS)) to predict the flooding dynamics in a natural system. The CHANS model is implemented on high-performance multiple graphics processing units to support large-scale high-resolution simulations.

In the ABM, agents can be flexibly defined and used to represent individuals, households and related organisations to depict the interactive social dynamics interrupted by flooding or other driving factors. Data from different sources, e.g. UK national census, social media, literature, will be processed to understand and describe human and organisational behaviours. Participatory Action Research methodologies will be deployed to unlock a deeper understanding of different groups and types of agents and their interactions in order to construct the coupled human and natural system in the case study site (jointly decided with the partners). Scenarios will be co-developed and simulated to understand the human response to flood forecasting and warnings and explore effective communication strategies that maximize their impact on flood forecasting and warning effectiveness.

Background Reading:
[1] Defra (2021) Surface water management: a government update.

[2] GLA (2022) Surface Water Flooding in London. Roundtable progress report.

[3] Qin H, Liang Q, Chen H, De Silva V (2024) A high-performance Coupled Human And Natural Systems (CHANS) model for flood risk assessment and reduction. Water Resources Research, 60(7), e2023WR036269.

FLOOD-CDT
This PhD is being advertised as part of the Centre for Doctoral Training for Resilient Flood Futures (FLOOD-CDT). Further details about FLOOD-CDT can be seen here https://flood-cdt.ac.uk. Please note, that your application will be assessed upon: (1) Motivation and Career Aspirations; (2) Potential & Intellectual Excellence; (3) Suitability for specific project and (4) Fit to FLOOD-CDT. So please familiarise yourselves with FLOOD-CDT before applying. During the application process candidates will need to upload:
• a 1 page statement of your research interests in flooding and FLOOD-CDT and your rationale for your choice of project;
• a curriculum vitae giving details of your academic record and stating your research interests;
• name two current academic referees together with an institutional email addresses; on submission of your online application your referees will be automatically emailed requesting they send a reference to us directly by email;
• academic transcripts and degree certificates (translated if not in English) - if you have completed both a BSc & an MSc, we require both; and
• a IELTS/TOEFL certificate, if applicable.
Please upload all documents in PDF format. You are encouraged to contact potential supervisors by email to discuss project-specific aspects of the proposed prior to submitting your application. If you have any general questions please contact floodcdt@soton.ac.uk.

Apply
To apply for this project, please apply through the Loughborough University application portal (available on this link https://noc.ac.uk/gsnocs/project/exploring-effective-strategies-communic...) and quote reference number FCDT-25-LU6

Location: 
Loughborough