Abstract

In this research, two hybrid intelligent models are proposed for prediction accuracy enhancement for wind speed and power modeling. The established models are based on the hybridisation of Ensemble Empirical Mode Decomposition (EEMD) with a Pattern Sequence-based Forecasting (PSF) model and the integration of EEMD-PSF with Autoregressive Integrated Moving Average (ARIMA) model. In both models (i.e., EEMD-PSF and EEMD-PSF-ARIMA), the EEMD method is used to decompose the time-series into a set of sub-series and the forecasting of each sub-series is initiated by respective prediction models. In the EEMD-PSF model, all sub-series are predicted using the PSF model, whereas in the EEMD-PSF-ARIMA model, the sub-series with high and low frequencies are predicted using PSF and ARIMA, respectively. The selection of the PSF or ARIMA models for the prediction process is dependent on the time-series characteristics of the decomposed series obtained with the EEMD method. The proposed models are examined for predicting wind speed and wind power time-series at Maharashtra state, India. In case of short-term wind power time-series prediction, both proposed methods have shown at least 18.03 and 14.78 percentage improvement in forecast accuracy in terms of root mean square error (RMSE) as compared to contemporary methods considered in this study for direct and iterated strategies, respectively. Similarly, for wind speed data, those improvement observed to be 20.00 and 23.80 percentages, respectively. These attained prediction results evidenced the potential of the proposed models for the wind speed and wind power forecasting. The current proposed methodology is transformed into R package ‘decomposedPSF’ which is discussed in the Appendix.

Highlights

  • Wind energy is a clean and renewable source, which can be dependent on for the very long-term future [1,2]

  • The Ensemble Empirical Mode Decomposition (EEMD)-Pattern Sequence-based Forecasting (PSF) model is the hybridization of PSF and EEMD

  • The EEMD method is used to decompose the original wind speed or power series into a finite number of sub-series and the forecasting of each sub-series was established by respective prediction methods

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Summary

Introduction

Wind energy is a clean and renewable source, which can be dependent on for the very long-term future [1,2]. Energies 2020, 13, 1666 generated energy does not lead to greenhouse gases and radioactivity. This encourages the use of the wind as a free, clean and sustainable source of energy across the world [3,4]. To minimize the uncertainty due to intermittent winds, the accurate forecast of wind energy is observed to be the utmost important task for energy managers and electricity operators. The precise wind energy forecast became a very important task with large benefits and a huge impact for the mankind

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