Abstract

The uncertainty and regularity of wind power generation are caused by wind resources’ intermittent and randomness. Such volatility brings severe challenges to the wind power grid. The requirements for ultrashort-term and short-term wind power forecasting with high prediction accuracy of the model used, have great significance for reducing the phenomenon of abandoned wind power , optimizing the conventional power generation plan, adjusting the maintenance schedule and developing real-time monitoring systems. Therefore, accurate forecasting of wind power generation is important in electric load forecasting. The echo state network (ESN) is a new recurrent neural network composed of input, hidden layer and output layers. It can approximate well the nonlinear system and achieves great results in nonlinear chaotic time series forecasting. Besides, the ESN is simpler and less computationally demanding than the traditional neural network training, which provides more accurate training results. Aiming at addressing the disadvantages of standard ESN, this paper has made some improvements. Combined with the complementary advantages of particle swarm optimization and tabu search, the generalization of ESN is improved. To verify the validity and applicability of this method, case studies of multitime scale forecasting of wind power output are carried out to reconstruct the chaotic time series of the actual wind power generation data in a certain region to predict wind power generation. Meanwhile, the influence of seasonal factors on wind power is taken into consideration. Compared with the classical ESN and the conventional Back Propagation (BP) neural network, the results verify the superiority of the proposed method.

Highlights

  • The energy crisis is becoming more and more obvious with the continuous increase in energy consumption, overexploitation of traditional energy and exhaustion of fossil fuels

  • The conventional Back Propagation (BP) neural network, the results verify the superiority of the proposed method

  • BP, the relative error of the prediction results are both within 50%, the overall error of echo state network (ESN) is less than BP

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Summary

Introduction

The energy crisis is becoming more and more obvious with the continuous increase in energy consumption, overexploitation of traditional energy and exhaustion of fossil fuels. As a new recurrent neural network, echo state network (ESN) has greatly improved stability, global optimality and training process complexity phase compared with the traditional neural network [30], attracting wide attention of scholars at home and abroad It has been widely used in speech recognition, traffic control [26] and communication forecasting [31], but is rarely used in power system forecasting. The delay time and the embedding dimension are computed to reconstruct phase space; to overcome the shortcomings of the ESN network itself, this paper designs and trains an ESN to forecast short-term wind power by combining the two complementary optimization methods of particle swarm optimization and tabu search to improve the generalization ability of the model.

Chaos Identification and Phase Space Reconstruction
Mutual Information Method to Determine the Delay Time
The Maximum lyapunov Exponent for Chaotic Recognition
The Prediction Steps of Chaotic ESN
Theoretical Introduction of Optimization Algorithm
Basic Theory of Particle Swarm Optimization
Tabu Search
Hybrid Algorithm Based on Particle Swarm Algorithm and Tabu Search
Chaotic ESN Optimized by Particle Swarm and Tabu Search
Empirical Analysis
Curves
Short-Term Wind Power Generation Based on the Time Scale of 1 H
Multi2015
Findings
Conclusions
Full Text
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