A Collection and Categorization of Open-Source Wind and Wind Power
Datasets
- URL: http://arxiv.org/abs/2202.08524v1
- Date: Thu, 17 Feb 2022 08:53:09 GMT
- Title: A Collection and Categorization of Open-Source Wind and Wind Power
Datasets
- Authors: Nina Effenberger and Nicole Ludwig
- Abstract summary: We show that there are publicly available datasets sufficient for wind power forecasting tasks.
We also discuss the different data groups properties to enable researchers to choose appropriate open-source datasets.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Wind power and other forms of renewable energy sources play an ever more
important role in the energy supply of today's power grids. Forecasting
renewable energy sources has therefore become essential in balancing the power
grid. While a lot of focus is placed on new forecasting methods, little
attention is given on how to compare, reproduce and transfer the methods to
other use cases and data. One reason for this lack of attention is the limited
availability of open-source datasets, as many currently used datasets are
non-disclosed and make reproducibility of research impossible. This
unavailability of open-source datasets is especially prevalent in commercially
interesting fields such as wind power forecasting. However, with this paper we
want to enable researchers to compare their methods on publicly available
datasets by providing the, to our knowledge, largest up-to-date overview of
existing open-source wind power datasets, and a categorization into different
groups of datasets that can be used for wind power forecasting. We show that
there are publicly available datasets sufficient for wind power forecasting
tasks and discuss the different data groups properties to enable researchers to
choose appropriate open-source datasets and compare their methods on them.
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