Supervisors: Adina MoraruTor Andre Myrvoll, Andrew Perkis

   

Figures. Left: raw physical model image, center: example of classified image, right: ML model (Son, 2020).

This master’s thesis will be part of the World of Wild Waters (WoWW) project.

WoWW aims to create digital twins based on the real-time visualization of floods in Norway.

The visualized flood scenarios are based on physical and prediction models.


 Starting point:

There is a flood physical model with high-resolution both temporally and pixel-wise, which allows customizing the size of the dataset used in this master’s thesis.

The images obtained from the physical model at different time intervals are available for classification and building a Deep Neural Network model that identifies the hotspots with highest flood probability.

The classification can be done using a set of pre-defined conditions that characterize hotspots where flooding occurs in a river. These conditions are provided from previous studies.

 

Target of the thesis:

Use flood images from the above described physical model together with a set of pre-defined conditions and create a Deep Neural Network that identifies flood hotspots. Prerequisites are:

i) able to use Python and

ii) be familiar with Deep Neural Networks.

Expectations from the student. To:

  • Select a suitable Machine Learning method
  • Use Machine Learning to classify images from a physical model
  • Build a Machine Learning model that can predict the location of flood hotspots
  • Analyze the performance of the prediction model

 

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