contributor author | Jing Zhao | |
contributor author | Jianzhou Wang | |
contributor author | Feng Liu | |
date accessioned | 2017-12-30T13:06:35Z | |
date available | 2017-12-30T13:06:35Z | |
date issued | 2016 | |
identifier other | %28ASCE%29EY.1943-7897.0000291.pdf | |
identifier uri | http://138.201.223.254:8080/yetl1/handle/yetl/4245727 | |
description abstract | Since wind fluctuates with strong variation even within a short-term period, it is quite difficult to describe the characteristics of wind or to estimate the power output that will be injected into the grid. In particular, short-term wind speed forecasting, an essential support for regulatory actions and short-term load dispatching planning during the operation of wind farms, is currently regarded as one of the most difficult problems to solve. This paper contributes to multistep forecasting for short-term wind speed by developing a three-stage hybrid approach named MECE; it is a combination of the ensemble empirical model decomposition (EEMD) method, cuckoo search (CS) algorithm, and extreme learning machine (ELM) method. As the first stage of the hybrid MECE approach, a signal filtering based on a decomposition and reconstruction strategy is adopted and copied by the EEMD method, and a denoised series can be obtained. Then, the CS-optimized ELM is designed as a novel learning method to construct a single layer feed-forward neural network (SLFN); the input weights and biases are determined by the CS algorithm instead of the random initialization within the original ELM. Next, a training and forecasting stage is taken; three different strategies are adopted for multistep forecasting. The chosen data sets are half-hour wind speed observations, including 16 samples, and the simulation indicates that the proposed MECE approach performs much better than the traditional ones when addressing short-term wind speed forecasting problems. | |
publisher | American Society of Civil Engineers | |
title | Multistep Forecasting for Short-Term Wind Speed Using an Optimized Extreme Learning Machine Network with Decomposition-Based Signal Filtering | |
type | Journal Paper | |
journal volume | 142 | |
journal issue | 3 | |
journal title | Journal of Energy Engineering | |
identifier doi | 10.1061/(ASCE)EY.1943-7897.0000291 | |
page | 04015036 | |
tree | Journal of Energy Engineering:;2016:;Volume ( 142 ):;issue: 003 | |
contenttype | Fulltext | |