Spatially-Explicit Prediction of Capacity Density Advances Geographic Characterization of Wind Power Technical Potential
Dylan Harrison-Atlas,
Galen Maclaurin and
Eric Lantz
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Dylan Harrison-Atlas: National Renewable Energy Laboratory, Golden, CO 80401, USA
Galen Maclaurin: National Renewable Energy Laboratory, Golden, CO 80401, USA
Eric Lantz: National Renewable Energy Laboratory, Golden, CO 80401, USA
Energies, 2021, vol. 14, issue 12, 1-28
Abstract:
Mounting interest in ambitious clean energy goals is exposing critical gaps in our understanding of onshore wind power potential. Conventional approaches to evaluating wind power technical potential at the national scale rely on coarse geographic representations of land area requirements for wind power. These methods overlook sizable spatial variation in real-world capacity densities (i.e., nameplate power capacity per unit area) and assume that potential installation densities are uniform across space. Here, we propose a data-driven approach to overcome persistent challenges in characterizing localized deployment potentials over broad extents. We use machine learning to develop predictive relationships between observed capacity densities and geospatial variables. The model is validated against a comprehensive data set of United States (U.S.) wind facilities and subjected to interrogation techniques to reveal that key explanatory features behind geographic variation of capacity density are related to wind resource as well as urban accessibility and forest cover. We demonstrate application of the model by producing a high-resolution (2 km × 2 km) national map of capacity density for use in technical potential assessments for the United States. Our findings illustrate that this methodology offers meaningful improvements in the characterization of spatial aspects of technical potential, which are increasingly critical to draw reliable and actionable planning and research insights from renewable energy scenarios.
Keywords: wind power; capacity density; technical potential; renewable energy; machine learning; geospatial (search for similar items in EconPapers)
JEL-codes: Q Q0 Q4 Q40 Q41 Q42 Q43 Q47 Q48 Q49 (search for similar items in EconPapers)
Date: 2021
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Citations: View citations in EconPapers (2)
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Persistent link: https://EconPapers.repec.org/RePEc:gam:jeners:v:14:y:2021:i:12:p:3609-:d:576679
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