Short-Term Wind-Speed Forecasting Using Kernel Spectral Hidden Markov Models
Tsuzuki, Shunsuke, Nishiyama, Yu
In machine learning, a nonparametric forecasting algorithm for time series data has been proposed, called the kernel spectral hidden Markov model (KSHMM). In this paper, we propose a technique for short-term wind-speed prediction based on KSHMM. We numerically compared the performance of our KSHMMbased forecasting technique to other techniques with machine learning, using wind-speed data offered by the National Renewable Energy Laboratory. Our results demonstrate that, compared to these methods, the proposed technique offers comparable or better performance. Keywords: Wind-Speed Prediction, Kernel Methods, Kernel Mean Embedding, Spectral Learning, Hidden Markov Models. 1. Introduction Wind energy is one of the most attractive renewable energy sources.
Nov-15-2018
- Country:
- North America (0.28)
- Asia > Japan (0.28)
- Genre:
- Research Report > New Finding (0.86)
- Technology: