• A machine learning model classifies European scenicness with a high accuracy • Land cover category and naturalness are the most important predictors • Scenic-area preservation cuts technical potential by 43% with minor cost impact • Stricter landscape preservation shifts Europe’s main onshore wind producers Visual impacts on scenic landscapes dominate public opposition to onshore wind turbines. Yet wind resource assessments often overlook landscape scenicness due to limited data availability. This study introduces a scalable machine learning framework for generating continental scenicness layers, trained on crowdsourced scenicness ratings from Great Britain and achieving high predictive performance. The resulting scenicness maps are integrated into an onshore wind resource assessment under three landscape preservation scenarios across 29 European countries. We show that prioritizing scenic landscapes in planning can reduce wind generation potential in certain countries by over 60%. However, it only modestly affects the continental median levelized costs of electricity (57 €/MWh and 54 €/MWh under low and high preservation scenarios), while substantially increasing regional costs in scenic mountainous regions such as the Alps and Norway. These findings demonstrate how data-driven approaches can enable socially aware and large-scale energy system planning.
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CHEN et al. (Wed,) studied this question.
synapsesocial.com/papers/69e1cdc45cdc762e9d857045 — DOI: https://doi.org/10.1016/j.egyai.2026.100752
Ruihong CHEN
ETH Zurich
Tristan Pelser
Forschungszentrum Jülich
Alena Lohrmann
Reykjavík University
Energy and AI
ETH Zurich
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