IEE/Institute/Team
Luca Santosuosso
Dott. Dott. Mag.
Phone
+43 316 873 - 7990

Researcher Profiles
Pure: luca-santosuosso
OrcID: 0000-0002-7865-3883
Google Scholar ID: Adli6vMAAAAJ
SCOPUS: 58795488600
ResearchGate: Luca_Santosuosso
HAL: luca-santosuosso
LinkedIn: lucasantosuosso

Biography
Luca Santosuosso obtained a Bachelor's degree in Computer Engineering from Roma Tre University in July 2019 and a Master's degree in Control Engineering from Sapienza University of Rome in October 2021. He completed his Ph.D. in Energy and Processes at Mines Paris – PSL in January 2025, where he also worked as a research engineer in 2021 on the European Horizon 2020 project Smart4RES. In 2024, he was a visiting PhD student at DTU Wind and Energy Systems. Since February 2025, he has been a postdoctoral researcher at Graz University of Technology. His research focuses on optimization and control, with applications to energy systems.

Areas of interest
Optimization, Control, Operations Research, Power Systems

Publications

Journal Article
Luca Santosuosso, Simon Camal, Arthur Lett, Guillaume Bontron and Georges Kariniotakis Distributed economic model predictive control for the joint energy dispatch of wind farms and run-of-the-river hydropower plants Electric Power Systems Research , 2024
DOI: https://doi.org/10.1016/j.epsr.2024.110805
L. Santosuosso, S. Camal, F. Liberati, A. Di Giorgio, A. Michiorri and G. Kariniotakis Stochastic economic model predictive control for renewable energy and ancillary services trading with storage Sustainable Energy, Grids and Networks , 2024
DOI: https://doi.org/10.1016/j.segan.2024.101373
Conference/Workshop Article
L. Santosuosso, S. Camal, A. Di Giorgio, F. Liberati, A. Michiorri, G. Bontron and G. Kariniotakis ECONOMIC MODEL PREDICTIVE CONTROL FOR THE ENERGY MANAGEMENT PROBLEM OF A VIRTUAL POWER PLANT INCLUDING RESOURCES AT DIFFERENT VOLTAGE LEVELSIET Conference Proceedings

Projects

One of the fundamental problems of using optimization models that represent complex systems – e.g. power systems on their path towards achieving net-zero emissions – is the trade-off between model accuracy and computational tractability. Many applied optimization models that use different time series as data input have become increasingly challenging to solve due to the large time horizons they span and the high complexity of technical constraints with short- and long-term time dynamics. To overcome computational intractability of these optimization models, the dimension of input data and model size is commonly reduced through time series aggregation (TSA) methods. However, applying TSA for optimization models that are governed by varying time dynamics simultaneously is quite challenging. TSA methods mostly focus on short-term dynamics, and rarely include long-term dynamics due to the inherent limitations of TSA. As a result, longer-term dynamics are not captured well by aggregated models, which is imperative for reliably modelling many complex systems. Moreover, traditional TSA methods are based on the common belief that the clusters that best approximate the input data also lead to the aggregated model that best approximates the full model, while the metric that really matters –the resulting output error in optimization results – is not well addressed. This belief is mainly based on the lack of theoretical underpinning relating inputs and output error, rendering existing methods trial-and-error heuristics at best. We plan to challenge this belief by discovering the currently unknown relation between input and output error, and to overcome existing TSA shortcomings by developing the novel theoretical TSA framework for optimization models with varying time dynamics, thereby tapping into unprecedented potential of computational efficiency and accuracy. If this project is successful, it would have untangled the Gordian knot of data aggregation in optimization.
Funding sources
  • European Commission - Europäische Kommission, EU
Start: 31.12.2023
End: 30.12.2028
Details
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Institute of Electricity Economics and Energy Innovation
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Tel.: +43 316 873 7901

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