Patrik Jansson

Professor of Computer Science


Curriculum vitae



+46317725415


Computer Science and Engineering

Chalmers University of Technology

Room number: EDIT-6452
My office is in the EDIT building of campus Johanneberg, near Rännvägen 6.



Computing optimal policies for clean energy and sustainable development


March 12, 2023

Together with N Botta at the Potsdam Institute for Climate Impact Research and N Smallbone at the Chalmers FP Unit we are planning a research project around computer-aided policy-making and increasingly correct scientific computing. We have some preliminary results, but are looking for funding.

A crucial aspect of decision making is finding the right tradeoff between multiple conflicting objectives. For example, in a fusion reactor, disruption events can release undesirable levels of heat and electromagnetic forces. They can be controlled by injecting a combination of neon and deuterium into the reactor core. Certain combinations reduce the amount of heat more; others reduce the forces more. What is the best combination? The task is to explore the space of possible combinations and quantify their tradeoffs.
This is a multi-objective control problem. There is a system, a space of parameters known as control policies, and objectives to be met. There is no single best control policy, but some policies are Pareto-optimal: one can not improve one objective without worsening another. The goal is to identify robust Pareto-optimal controls.
Unfortunately, the control space is usually high-dimensional and the exploration cannot be based on data from empirical experiments: the relationship between controls and objectives has to be approximated via numerical simulations and the objectives associated with a control are affected by different kinds of uncertainties.
The purpose of this project is to build and apply a toolkit of open-source computational methods for exploring safe, fair and Pareto-optimal control policies for multi-objective control problems under uncertainty in close collaboration with domain experts from high energy physics and sustainability science.

Related work: OptiFun: Optimising fusion with generative programming, Bayesian optimization of fusion experiment simulations, Responsibility Under Uncertainty, The impact of uncertainty on optimal emission policies, Testing versus proving in climate impact research

Share

Tools
Translate to