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Forecasting of wind, PV generation, and market price for the optimal operations of the regional PEV charging stations.

机译:预测区域性PEV充电站的最佳运行所需的风能,光伏发电和市场价格。

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摘要

The transition from the conventional spark ignition engine vehicles to the electric vehicular technologies helps reduce greenhouse gas (GHG) emissions as well as improve the energy efficiency in the transportation sector. In the transformation of the electric vehicle, the hybrid electric vehicle (HEV) has evolved into the plug-in electric vehicle (PEV) due to the advancement in battery technologies that extend the electric driving distance of vehicles; however, this trend also creates concern among PEV users about how long or how far they might travel per battery charge.;A well-planned charging infrastructure with a fast (level 3) charging station is critical to overcome the range anxiety of PEV users, which can then promote the deployment and public acceptance of PEV. In addition, the PEV charging station must be considered from a regional point of view, especially in terms of operation optimization and support for the high penetration of PEVs in metro areas. Integrating renewable energy sources such as wind and solar PV power generation with electricity from the grid into PEV charging stations is critical for sustainable future development. A PEV charging station with a distributed energy storage system will be able to participate in the deregulated market to support the power system and optimize its operational cost. However, sufficient accuracy in the forecasting of energy sources and market prices are prerequisite to achieving the above mentioned benefits and goals.;Using the Dallas/Fort Worth (DFW) as an example, this dissertation develops novel approaches for the wind/PV generation and market price predictions. These predictions are calculated every 15 minutes (15-minute ahead prediction) for the following 15-minute settlement interval set by the Electric Reliability Council of Texas (ERCOT) market. Support Vector Classification (SVC) and Support Vector Regression (SVR) of Support Vector Machines (SVMs) are adopted for the prediction of categorical and continuous values, respectively.;SVR is used to predict the wind/PV generation because they are considered continuous functions. The validations of the estimation performance for these two predictions are illustrated using the wind power data from a wind farm in Oklahoma (a virtual wind farm for this study) and the PV generation from Dallas Redbird airport, respectively. The proposed method improves the forecasting performance of both predictions compared to the persistence model.;In addition to attaining accurate market price predictions in the deregulated market, a hybrid market price forecasting method (HMPFM) including SVC and SVR with data clustering techniques is proposed. SVC is adopted to predict spike price occurrence, and SVR is used for market price magnitude prediction of both non-spike and spike prices. Additionally, three clustering techniques including Classification and Regression Trees, K-means, and Stratification methods are introduced to mitigate the higher error of spike magnitude estimation. The performance of the proposed hybrid method is validated with the ERCOT wholesale market price. The results from the proposed method show significant improvement over typical approaches.;In order to fulfill the comprehensive study, the characteristics of the forecast uncertainty have to be investigated to understand their stochastic nature for optimizing the benefits of operating PEV charging stations. In this dissertation, the Martingale Model Forecast Evolution (MMFE) is used for the investigation, since it explores the multivariate random vector of the forecast change, which can apply to the multivariate case in this problem. Finally, the results show the effectiveness of the MMFE to generate the stochastic nature of the proposed predictions.
机译:从传统的火花点火发动机车辆向电动汽车技术的过渡有助于减少温室气体(GHG)排放,并提高运输部门的能源效率。在电动汽车的转型中,由于电池技术的进步,混合动力电动汽车(HEV)演变为插电式电动汽车(PEV),从而延长了车辆的电动行驶距离。然而,这种趋势也引起了PEV用户对每次电池充电可以行驶多长时间或多远的担忧。;精心设计的带有快速(3级)充电站的充电基础设施对于克服PEV用户的范围焦虑至关重要,然后可以促进PEV的部署和公众接受。此外,必须从区域角度考虑PEV充电站,尤其是在运营优化和对PEV在城市地区的高渗透率的支持方面。将风能和太阳能光伏发电等可再生能源与来自电网的电能整合到PEV充电站中,对于可持续的未来发展至关重要。具有分布式储能系统的PEV充电站将能够参与放松管制的市场,以支持电力系统并优化其运营成本。然而,能源和市场价格的准确预测是实现上述收益和目标的先决条件。以达拉斯/沃思堡(DFW)为例,本论文为风能/光伏发电开发了新颖的方法。市场价格预测。对于德克萨斯州电力可靠性委员会(ERCOT)市场设定的以下15分钟结算间隔,每15分钟(提前15分钟预测)计算这些预测。支持向量机(SVM)的支持向量分类(SVC)和支持向量回归(SVR)分别用于分类值和连续值的预测;; SVR用于预测风/光伏发电,因为它们被认为是连续函数。分别使用俄克拉荷马州一家风电场(本研究中的虚拟风电场)的风能数据和达拉斯红鸟机场的PV发电量,对这两个预测的估计性能进行了验证。与持久化模型相比,该方法提高了两种预测的预测性能。除了在放松管制的市场中获得准确的市场价格预测之外,还提出了一种包括SVC和SVR以及数据聚类技术的混合市场价格预测方法(HMPFM)。 SVC用于预测峰值价格发生,而SVR用于预测非峰值和峰值价格的市场价格幅度。此外,引入了三种聚类技术,包括分类树和回归树,K均值和分层方法,以减轻尖峰幅度估计的较高误差。所提出的混合方法的性能已通过ERCOT批发市场价格进行了验证。所提出的方法的结果显示了对典型方法的显着改进。;为了完成全面的研究,必须调查预测不确定性的特征,以了解其随机性,以优化运行中的电动汽车充电站的效益。本文利用the模型预测进化模型(MMFE)进行研究,因为它探索了预测变化的多元随机向量,可以应用于该问题的多元情况。最后,结果显示了MMFE产生所提出的预测的随机性的有效性。

著录项

  • 作者

    Sarikprueck, Piampoom.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 121 p.
  • 总页数 121
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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