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Keywords = Beta-noise empirical risk loss

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11 pages, 699 KB  
Article
Kernel Ridge Regression Model Based on Beta-Noise and Its Application in Short-Term Wind Speed Forecasting
by Shiguang Zhang, Ting Zhou, Lin Sun and Chao Liu
Symmetry 2019, 11(2), 282; https://doi.org/10.3390/sym11020282 - 22 Feb 2019
Cited by 7 | Viewed by 4709
Abstract
The Kernel ridge regression ( K R R) model aims to find the hidden nonlinear structure in raw data. It makes an assumption that the noise in data satisfies the Gaussian model. However, it was pointed out that the noise in wind [...] Read more.
The Kernel ridge regression ( K R R) model aims to find the hidden nonlinear structure in raw data. It makes an assumption that the noise in data satisfies the Gaussian model. However, it was pointed out that the noise in wind speed/power forecasting obeys the Beta distribution. The classic regression techniques are not applicable to this case. Hence, we derive the empirical risk loss about the Beta distribution and propose a technique of the kernel ridge regression model based on the Beta-noise ( B N-K R R). The numerical experiments are carried out on real-world data. The results indicate that the proposed technique obtains good performance on short-term wind speed forecasting. Full article
(This article belongs to the Special Issue Information Technology and Its Applications 2021)
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