The temporal overfitting problem with applications in wind power curve
modeling
- URL: http://arxiv.org/abs/2012.01349v1
- Date: Wed, 2 Dec 2020 17:39:57 GMT
- Title: The temporal overfitting problem with applications in wind power curve
modeling
- Authors: Abhinav Prakash, Rui Tuo and Yu Ding
- Abstract summary: We propose a new method to tackle the temporal overfitting problem.
Our specific application in this paper targets the power curve modeling in wind energy.
- Score: 8.057262184815636
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper is concerned with a nonparametric regression problem in which the
independence assumption of the input variables and the residuals is no longer
valid. Using existing model selection methods, like cross validation, the
presence of temporal autocorrelation in the input variables and the error terms
leads to model overfitting. This phenomenon is referred to as temporal
overfitting, which causes loss of performance while predicting responses for a
time domain different from the training time domain. We propose a new method to
tackle the temporal overfitting problem. Our nonparametric model is partitioned
into two parts -- a time-invariant component and a time-varying component, each
of which is modeled through a Gaussian process regression. The key in our
inference is a thinning-based strategy, an idea borrowed from Markov chain
Monte Carlo sampling, to estimate the two components, respectively. Our
specific application in this paper targets the power curve modeling in wind
energy. In our numerical studies, we compare extensively our proposed method
with both existing power curve models and available ideas for handling temporal
overfitting. Our approach yields significant improvement in prediction both in
and outside the time domain covered by the training data.
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