Abstract

To plan operations and avoid any grid disturbances, power utilities require accurate power generation estimates for renewable generation. The generation estimates for wind power stations require an accurate prediction of wind speed and direction. This paper proposes a new prediction model for nowcasting the wind speed and direction, which can be used to predict the output of a wind power plant. The proposed model uses perturbed observations to train the ensemble networks. The trained model is then used to predict the wind speed and direction. The paper performs a comparative assessment of three artificial neural network models. It also studies the performance of introducing perturbed observations to the model using six different interpolation techniques. For each technique, the computational efficiency is measured and assessed. Furthermore, the paper presents an exhaustive investigation of the performance of neural network types and several techniques in training, data splitting, and interpolation. To check the efficacy of the proposed model, the power output from a real wind farm is predicted and compared with the actual recorded measurements. The results of the comprehensive analysis show that the proposed model outperforms contending models in terms of accuracy and execution time. Therefore, this model can be used by operators to reliably generate a dispatch plan.

Highlights

  • The wind is a sustainable energy resource that can be harnessed to generate clean energy

  • Due to the socio-economic benefits, many new renewable power generation plants based on wind energy are installed in the main power grids

  • This paper provides a new improved nowcasting model using artificial neural networks (ANN) for the prediction of both wind speed and direction

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Summary

Introduction

The wind is a sustainable energy resource that can be harnessed to generate clean energy. Due to the socio-economic benefits, many new renewable power generation plants based on wind energy are installed in the main power grids. The power ramp events caused due to the intermittency of wind can adversely affect the stability and security of the power system. Some recent undesired power grid events were caused due to the increased integration of wind energy into the main power grid [1]. To reduce the severity of the power ramp events, there is a need for an accurate model for forecasting wind power generation at different time intervals [2]. Precise models for forecasting the wind speed and direction are required to increase the dependability of a wind-based power generation plant [14,15,16,17].

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