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Smoothing of wind farm output power using prediction based flywheel energy storage system.

机译:使用基于预测的飞轮储能系统对风电场输出功率进行平滑处理。

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摘要

Being socially beneficial, economically competitive and environment friendly, wind energy is now considered to be the world's fastest growing renewable energy source. However, the stochastic nature of wind imposes a considerable challenge in the optimal management and operation of wind power system. Wind speed prediction is critical for wind energy conversion system since it greatly influences the issues related to effective energy management, dynamic control of wind turbine, and improvement of the overall efficiency of the power generation system. This thesis focuses on integration of energy storage system with wind farm, considering wind speed prediction in the control scheme to overcome the problems associated with wind power fluctuations. In this thesis, flywheel energy storage system (FESS) with adjustable speed rotary machine has been considered for smoothing of output power in a wind farm composed of a fixed speed wind turbine generator (FSWTG). Since FESS has both active and reactive power compensation ability, it enhances the stability of the system effectively. An efficient energy management system combined with supervisory control unit (SCU) for FESS and wind speed prediction has been developed to improve the smoothing of the wind farm output effectively. Wind speed prediction model is developed by artificial neural network (ANN) which has advantages over the conventional prediction scheme including data error tolerance and ease in adaptability. The model for prediction with ANN is developed in MATLAB/Simulink and interfaced with PSCAD/EMTDC. Effectiveness of the proposed control system is illustrated using real wind speed data in various operating conditions.
机译:由于具有社会效益,经济竞争力和环境友好性,风能现在被认为是世界上增长最快的可再生能源。然而,风的随机性对风电系统的最佳管理和运行提出了相当大的挑战。风速预测对于风能转换系统至关重要,因为风速预测会极大地影响与有效的能源管理,风力发电机的动态控制以及发电系统整体效率的提高有关的问题。本文主要研究储能系统与风电场的集成,在控制方案中考虑风速预测,以克服与风电波动相关的问题。在本文中,已经考虑了具有可调速旋转电机的飞轮储能系统(FESS),以平滑由定速风力发电机(FSWTG)组成的风电场中的输出功率。由于FESS同时具有有功和无功补偿能力,因此有效地提高了系统的稳定性。已经开发了一种结合了用于FESS和风速预测的监督控制单元(SCU)的高效能源管理系统,以有效提高风电场输出的平稳性。利用人工神经网络(ANN)开发的风速预测模型具有优于传统预测方案的优势,包括数据误差容限和易适应性。用ANN进行预测的模型是在MATLAB / Simulink中开发的,并与PSCAD / EMTDC接口。在各种工况下使用实际风速数据说明了所提出的控制系统的有效性。

著录项

  • 作者

    Islam, Farzana.;

  • 作者单位

    The Petroleum Institute (United Arab Emirates).;

  • 授予单位 The Petroleum Institute (United Arab Emirates).;
  • 学科 Alternative Energy.;Energy.;Engineering Electronics and Electrical.
  • 学位 M.S.
  • 年度 2012
  • 页码 108 p.
  • 总页数 108
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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