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Synchrophasor Sensing and Processing based Smart Grid Security Assessment for Renewable Energy Integration.

机译:基于同步相量传感和处理的可再生能源集成智能电网安全评估。

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摘要

With the evolution of energy and power systems, the emerging Smart Grid (SG) is mainly featured by distributed renewable energy generations, demand-response control and huge amount of heterogeneous data sources. Widely distributed synchrophasor sensors, such as phasor measurement units (PMUs) and fault disturbance recorders (FDRs), can record multi-modal signals, for power system situational awareness and renewable energy integration.;An effective and economical approach is proposed for wide-area security assessment. This approach is based on wavelet analysis for detecting and locating the short-term and long-term faults in SG, using voltage signals collected by distributed synchrophasor sensors.;A data-driven approach for fault detection, identification and location is proposed and studied. This approach is based on matching pursuit decomposition (MPD) using Gaussian atom dictionary, hidden Markov model (HMM) of real-time frequency and voltage variation features, and fault contour maps generated by machine learning algorithms in SG systems. In addition, considering the economic issues, the placement optimization of distributed synchrophasor sensors is studied to reduce the number of the sensors without affecting the accuracy and effectiveness of the proposed approach. Furthermore, because the natural hazards is a critical issue for power system security, this approach is studied under different types of faults caused by natural hazards.;A fast steady-state approach is proposed for voltage security of power systems with a wind power plant connected. The impedance matrix can be calculated by the voltage and current information collected by the PMUs. Based on the impedance matrix, locations in SG can be identified, where cause the greatest impact on the voltage at the wind power plants point of interconnection. Furthermore, because this dynamic voltage security assessment method relies on time-domain simulations of faults at different locations, the proposed approach is feasible, convenient and effective.;Conventionally, wind energy is highly location-dependent. Many desirable wind resources are located in rural areas without direct access to the transmission grid. By connecting MW-scale wind turbines or wind farms to the distributions system of SG, the cost of building long transmission facilities can be avoid and wind power supplied to consumers can be greatly increased. After the effective wide area monitoring (WAM) approach is built, an event-driven control strategy is proposed for renewable energy integration. This approach is based on support vector machine (SVM) predictor and multiple-input and multiple-output (MIMO) model predictive control (MPC) on linear time-invariant (LTI) and linear time-variant (LTV) systems. The voltage condition of the distribution system is predicted by the SVM classifier using synchrophasor measurement data. The controllers equipped with wind turbine generators are triggered by the prediction results. Both transmission level and distribution level are designed based on this proposed approach.;Considering economic issues in the power system, a statistical scheduling approach to economic dispatch and energy reserves is proposed. The proposed approach focuses on minimizing the overall power operating cost with considerations of renewable energy uncertainty and power system security. The hybrid power system scheduling is formulated as a convex programming problem to minimize power operating cost, taking considerations of renewable energy generation, power generation-consumption balance and power system security. A genetic algorithm based approach is used for solving the minimization of the power operating cost.;In addition, with technology development, it can be predicted that the renewable energy such as wind turbine generators and PV panels will be pervasively located in distribution systems. The distribution system is an unbalanced system, which contains single-phase, two-phase and three-phase loads, and distribution lines. The complex configuration brings a challenge to power flow calculation. A topology analysis based iterative approach is used to solve this problem. In this approach, a self-adaptive topology recognition method is used to analyze the distribution system, and the backward/forward sweep algorithm is used to generate the power flow results.;Finally, for the numerical simulations, the IEEE 14-bus, 30-bus, 39-bus and 118-bus systems are studied for fault detection, identification and location. Both transmission level and distribution level models are employed with the proposed control strategy for voltage stability of renewable energy integration. The simulation results demonstrate the effectiveness of the proposed methods. The IEEE 24-bus reliability test system (IEEE-RTS), which is commonly used for evaluating the price stability and reliability of power system, is used as the test bench for verifying and evaluating system performance of the proposed scheduling approach.
机译:随着能源和电力系统的发展,新兴的智能电网(SG)主要具有分布式可再生能源发电,需求响应控制和大量异构数据源的特点。广泛分布的同步相量传感器,例如相量测量单元(PMU)和故障扰动记录仪(FDR),可以记录多模式信号,用于电力系统态势感知和可再生能源整合。安全评估。该方法基于小波分析,利用分布式同步相量传感器采集的电压信号检测和定位SG中的短期和长期故障。提出并研究了一种数据驱动的故障检测,识别和定位方法。该方法基于使用高斯原子字典的匹配追踪分解(MPD),实时频率和电压变化特征的隐马尔可夫模型(HMM),以及由SG系统中的机器学习算法生成的故障轮廓图。此外,考虑到经济问题,研究了分布式同步相量传感器的布局优化,以减少传感器的数量,而不会影响所提出方法的准确性和有效性。此外,由于自然灾害是电力系统安全的关键问题,因此,在自然灾害引起的各种故障类型下研究该方法。;提出了一种快速稳态方法,用于连接风力发电厂的电力系统的电压安全。可以通过PMU收集的电压和电流信息来计算阻抗矩阵。基于阻抗矩阵,可以确定SG中的位置,在这些位置上对风电厂互连点处的电压产生最大影响。此外,由于这种动态电压安全性评估方法依赖于不同位置故障的时域模拟,因此该方法是可行,方便和有效的。传统上,风能高度依赖位置。许多理想的风资源都位于农村地区,而没有直接进入输电网络。通过将兆瓦级的风力涡轮机或风电场连接到SG的配电系统,可以避免建造长距离传输设施的成本,并且可以大大增加提供给消费者的风力。建立有效的广域监视(WAM)方法后,提出了一种事件驱动的控制策略,用于可再生能源集成。此方法基于支持向量机(SVM)预测器和线性时不变(LTI)和线性时变(LTV)系统上的多输入多输出(MIMO)模型预测控制(MPC)。 SVM分类器使用同步相量测量数据预测配电系统的电压条件。预测结果将触发配备风力发电机的控制器。在此基础上,设计了输电水平和配电水平。考虑到电力系统中的经济问题,提出了一种经济调度和能源储备的统计调度方法。拟议的方法着重于在考虑可再生能源不确定性和电力系统安全性的情况下将总电力运营成本降至最低。考虑到可再生能源发电,发电-能耗平衡和电力系统安全性,将混合动力系统调度表述为凸规划问题,以最大程度地降低电力运营成本。使用基于遗传算法的方法来解决电力运行成本的最小化。此外,随着技术的发展,可以预见风力发电机和光伏面板等可再生能源将广泛分布在配电系统中。配电系统是一个不平衡系统,它包含单相,两相和三相负载以及配电线路。复杂的配置给潮流计算带来了挑战。基于拓扑分析的迭代方法用于解决此问题。在这种方法中,采用自适应拓扑识别方法来分析配电系统,并使用后向/前向扫描算法来生成潮流结果。最后,对于数值模拟,IEEE 14总线,30对总线,39总线和118总线系统进行了研究,以进行故障检测,识别和定位。传输级别和分布级别模型都与建议的控制策略一起使用,以实现可再生能源集成的电压稳定性。仿真结果证明了所提方法的有效性。 IEEE 24总线可靠性测试系统(IEEE-RTS),通常用于评估电力系统的价格稳定性和可靠性用作测试平台,以验证和评估所提出的调度方法的系统性能。

著录项

  • 作者

    Jiang, Huaiguang.;

  • 作者单位

    University of Denver.;

  • 授予单位 University of Denver.;
  • 学科 Electrical engineering.;Alternative Energy.;Energy.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 171 p.
  • 总页数 171
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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