For the next academic year we are announcing the topics of dissertation theses in the new study programme Smart Process Control (code D-IRPxA). The topics will be visible in AIS from 19.3.2025 and you can apply via AIS until 30.5.2025. It is strongly recommended to meet with the supervisor before applying.
List of topics:
- Data Based Process Control (M. Fikar):
The main aim of this
proposed research is to investigate and design new advanced methods of
automatic control in process industries to improve efficiency
profitability, stability, and competitiveness of process plants. We will
focus on processes with heat and mass transfer where efficiency can be
improved significantly. These processes are inherently complex, exhibit
nonlinear and hybrid behavior that has consequences in control quality
and performance. The project will effectively achieve its aim by
implementing Model Predictive Control (MPC). We will focus on robust MPC
design, incorporating modern research directions utilizing data-based
models. Furthermore, we will prioritize the software implementation of
proposed solutions, making them accessible to a wider community through
open-source code. Finally, the effectiveness of the proposed methods
will be rigorously verified through laboratory experiments and
collaborations with industrial partners.
- Development of Advanced Methods for Embedded MPC (J. Oravec):
The
development of methods for embedded Model Predictive Control policies
focuses on creating advanced approaches and algorithms to enable
distributed or parallelizable control for complex and embedded systems.
These control strategies aim to optimize control performance of the
interconnected subsystems while ensuring computational efficiency,
closed-loop system stability, and robustness subject to uncertainties
and disturbances. The research project considers designing
mathematically tractable approaches that introduce robust control policy
to enable distributed and parallel decision-making, addressing
challenges such as communication constraints, subsystem interactions,
and the demands of real-time implementation.
- Design of Numerically Efficient Near-Optimal Control Methods (J. Oravec):
This
PhD thesis focuses on developing novel control strategies and
numerically efficient methods for evaluating near-optimal control laws.
In particular, the research aims to design advanced methods and
mathematically tractable control algorithms that enable real-time
implementations of approximated control laws. The methods are developed
with a special focus on minimizing computational complexity, addressing
physical constraints, ensuring closed-loop system stability, and
satisfying the recursive feasibility of the control law. By addressing
the challenges associated with designing near-optimal control laws under
the practical limitations of industrial implementations, this research
project aims to bridge the gap between theoretical optimal control
design methods and their real-world application in industrial plants. - Set-based control of nonlinear systems (R. Paulen):
As
the computers and algorithms get generally faster, many new control
concepts become tractable and can be developed. Set-based control is one
of these, where the primary use of sets is in enveloping a space of
possible evolutions of variables of a system over time. If these
envelopes can be obtained in reasonable time, many properties of dynamic
systems such as stability or robustness can be reasoned about. The
first goal of the thesis is to build a novel type of multi-base set
arithmetics that combines elements such as interval analysis, convex-set
theory, and polynomial-functions theory to achieve the best trade-off
between accuracy of representation and the burden associated with the
underlying calculations to obtain the envelopes. The second goal of the
thesis is to develop methods of synthesis of controllers that can be
used for safe and reliable control of nonlinear systems. The project of
the thesis will be finished with a successful demonstration of the
developed techniques on a laboratory plant. - Development of reliable and explainable models for industrial monitoring, optimization, and control (R. Paulen):
Safe and sustainable process systems, which constitute the backbone of a
modern, developed society, require sensing of key process variables,
estimation of unmeasured variables, and application of actions that
steer the systems towards desired goals. Automation of human decisions
in such tasks would make these decisions become fast, reliable, and
error-free. A key technology on the rise in this context is the use of
combined mathematical modelling and statistical learning to gather
information through software (soft) sensors to monitor, assess, and
steer the behaviour of dynamic systems (e.g., industrial processing
plants, water, gas and energy networks, or manmade machines and
vehicles) into desired operating regimes. The delivered tools will
exploit domain knowledge – making the designed mathematical models
explainable – and assess and improve the information content of the data
– making the models reliable and fit for industrial needs.
- Modelling, Optimal Design and Optimal Operation of Membrane Processes (R. Paulen):
Membrane
processes are crucial in various industrial sectors, including water
purification, pharmaceuticals, and food processing, due to their
efficiency and sustainability. This proposed research aims to develop an
integrative framework that combines advanced mathematical modeling
techniques with optimization algorithms to achieve optimal design and
operation of membrane processes. The study will involve the development
of comprehensive mathematical models that capture the complex phenomena
involved in membrane processes, considering factors such as mass
transfer, fluid dynamics, and membrane fouling. Furthermore, the
research will focus on optimizing the design parameters of membrane
systems to enhance performance, minimize energy consumption, and reduce
environmental impact. Finally, the proposed framework will facilitate
real-time optimization strategies for the optimal operation of membrane
processes, ensuring efficient and sustainable operation under varying
operating conditions. Overall, this research will contribute to the
advancement of membrane technology and its widespread adoption in
industrial applications.
Responsibility for content: prof. Ing. Miroslav Fikar, DrSc.
Last update:
26.02.2025 11:27