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Attention to detail: exploring effects of model resolution and complexity in geospatial electrification modelling

Abstract:
In 2021, 675 million people globally lack access to electricity. Geospatial electrification tools can be used to identify the mix of grid-extension, mini-grids and stand-alone technologies that can supply currently unelectrified areas at the lowest cost. Several such tools have been developed, at different levels of modelling detail and complexity. In this paper, we improve the Open Source Spatial Electrification Tool (OnSSET) to develop a flexible geospatial electrification tool that can still run lighter rapid assessments for a first estimate of the technology split, but now also more detailed analysis with higher spatial and temporal resolution used for grid routing, distribution network design and optimization of hybrid mini-grid generation introduced through new algorithms. We compare the existing light and new more detailed versions of the tool through a case study of the north-western parts of the Democratic Republic of the Congo. We find that the new grid routing algorithm led to more off-grid technologies, and that the detailed design of distribution networks leads to a reduction in stand-alone technologies. The detailed optimization of hybrid mini-grids displays varying effects at different demand levels. Given the increased computational effort that is observed with higher modelling detail, we discuss the implications for scenario design and selection of geospatial electrification tool for future analyses aiming to support the achievement of SDG 7.
Publication status:
Published
Peer review status:
Peer reviewed

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Publisher copy:
10.1007/s43937-025-00117-0

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Funder identifier:
https://ror.org/026vcq606


Publisher:
Springer
Journal:
Discover Energy More from this journal
Volume:
6
Issue:
1
Article number:
8
Publication date:
2026-01-14
Acceptance date:
2025-12-25
DOI:
EISSN:
2730-7719
ISSN:
2730-7719


Language:
English
Keywords:
Pubs id:
2374505
UUID:
uuid_4fbe78b8-7243-46d0-8985-1d7c84f593b9
Local pid:
pubs:2374505
Source identifiers:
3698542
Deposit date:
2026-01-27
ARK identifier:
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