Data-Driven Regionalization of Decarbonized Energy Systems for Reflecting Their Changing Topologies in Planning and Optimization

The decarbonization of energy systems has led to a fundamental change in their topology since generation is shifted to locations with favorable renewable conditions. In planning, this change is reflected by applying optimization models to regions within a country to optimize the distribution of gene...

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Main Authors: Martin Kueppers, Christian Perau, Marco Franken, Hans Joerg Heger, Matthias Huber, Michael Metzger, Stefan Niessen
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Energies
Subjects:
GIS
Online Access:https://www.mdpi.com/1996-1073/13/16/4076
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spelling doaj-a869604ebf5c4172b9000f086aa76ce02020-11-25T03:12:02ZengMDPI AGEnergies1996-10732020-08-01134076407610.3390/en13164076Data-Driven Regionalization of Decarbonized Energy Systems for Reflecting Their Changing Topologies in Planning and OptimizationMartin Kueppers0Christian Perau1Marco Franken2Hans Joerg Heger3Matthias Huber4Michael Metzger5Stefan Niessen6Siemens AG, Corporate Technology, Otto-Hahn Ring 6, 81739 Munich, GermanySiemens AG, Corporate Technology, Otto-Hahn Ring 6, 81739 Munich, GermanyInstitute for High Voltage Equipment and Grids, Digitalization and Energy Economics (IAEW), RWTH Aachen University, Schinkelstraße 6, 52062 Aachen, GermanySiemens AG, Corporate Technology, Otto-Hahn Ring 6, 81739 Munich, GermanySiemens AG, Corporate Technology, Otto-Hahn Ring 6, 81739 Munich, GermanySiemens AG, Corporate Technology, Otto-Hahn Ring 6, 81739 Munich, GermanyTechnology and Economics of Multimodal Energy Systems, Technical University of Darmstadt, Landgraf-Georg-Str. 4, 64283 Darmstadt, GermanyThe decarbonization of energy systems has led to a fundamental change in their topology since generation is shifted to locations with favorable renewable conditions. In planning, this change is reflected by applying optimization models to regions within a country to optimize the distribution of generation units and to evaluate the resulting impact on the grid topology. This paper proposes a globally applicable framework to find a suitable regionalization for energy system models with a data-driven approach. Based on a global, spatially resolved database of demand, generation, and renewable profiles, hierarchical clustering with fine-tuning is performed. This regionalization approach is applied by modeling the resulting regions in an optimization model including a synthesized grid. In an exemplary case study, South Africa’s energy system is examined. The results show that the data-driven regionalization is beneficial compared to the common approach of using political regions. Furthermore, the results of a modeled 80% decarbonization until 2045 demonstrate that the integration of renewable energy sources fundamentally changes the role of regions within South Africa’s energy system. Thereby, the electricity exchange between regions is also impacted, leading to a different grid topology. Using clustered regions improves the understanding and analysis of regional transformations in the decarbonization process.https://www.mdpi.com/1996-1073/13/16/4076spatial clusteringenergy system modeloptimizationGISSouth Africaenergy transition
collection DOAJ
language English
format Article
sources DOAJ
author Martin Kueppers
Christian Perau
Marco Franken
Hans Joerg Heger
Matthias Huber
Michael Metzger
Stefan Niessen
spellingShingle Martin Kueppers
Christian Perau
Marco Franken
Hans Joerg Heger
Matthias Huber
Michael Metzger
Stefan Niessen
Data-Driven Regionalization of Decarbonized Energy Systems for Reflecting Their Changing Topologies in Planning and Optimization
Energies
spatial clustering
energy system model
optimization
GIS
South Africa
energy transition
author_facet Martin Kueppers
Christian Perau
Marco Franken
Hans Joerg Heger
Matthias Huber
Michael Metzger
Stefan Niessen
author_sort Martin Kueppers
title Data-Driven Regionalization of Decarbonized Energy Systems for Reflecting Their Changing Topologies in Planning and Optimization
title_short Data-Driven Regionalization of Decarbonized Energy Systems for Reflecting Their Changing Topologies in Planning and Optimization
title_full Data-Driven Regionalization of Decarbonized Energy Systems for Reflecting Their Changing Topologies in Planning and Optimization
title_fullStr Data-Driven Regionalization of Decarbonized Energy Systems for Reflecting Their Changing Topologies in Planning and Optimization
title_full_unstemmed Data-Driven Regionalization of Decarbonized Energy Systems for Reflecting Their Changing Topologies in Planning and Optimization
title_sort data-driven regionalization of decarbonized energy systems for reflecting their changing topologies in planning and optimization
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2020-08-01
description The decarbonization of energy systems has led to a fundamental change in their topology since generation is shifted to locations with favorable renewable conditions. In planning, this change is reflected by applying optimization models to regions within a country to optimize the distribution of generation units and to evaluate the resulting impact on the grid topology. This paper proposes a globally applicable framework to find a suitable regionalization for energy system models with a data-driven approach. Based on a global, spatially resolved database of demand, generation, and renewable profiles, hierarchical clustering with fine-tuning is performed. This regionalization approach is applied by modeling the resulting regions in an optimization model including a synthesized grid. In an exemplary case study, South Africa’s energy system is examined. The results show that the data-driven regionalization is beneficial compared to the common approach of using political regions. Furthermore, the results of a modeled 80% decarbonization until 2045 demonstrate that the integration of renewable energy sources fundamentally changes the role of regions within South Africa’s energy system. Thereby, the electricity exchange between regions is also impacted, leading to a different grid topology. Using clustered regions improves the understanding and analysis of regional transformations in the decarbonization process.
topic spatial clustering
energy system model
optimization
GIS
South Africa
energy transition
url https://www.mdpi.com/1996-1073/13/16/4076
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