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A hybrid method for identifying and estimating key dynamic parameters for exciters, PSS and governors based on event-recorded measurements.

机译:一种基于事件记录的测量值来识别和估计励磁机,PSS和调速器关键动态参数的混合方法。

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摘要

Following the power market deregulation, power systems have become more complex and are found to be consistently operating closer to their stability limits. Power system dynamic modeling and studies which provide significant insight into the dynamic characteristics of the system are bound to play increasingly critical roles. The dynamic simulation results are highly dependent on certain key parameters that govern the dynamics of the power system such as governors and/or exciters in the case of generation facilities. However, the dynamic parameters in the system database maintained by the Independent System Operator (ISO) are not accurate due to numerous reasons ranging from data submissions not corresponding to "as-built facilities" to data not being updated to reflect changes at the facility.;Such inconsistencies in the dynamic models utilized to represent actual system facilities have led to tremendous research in the field of dynamic parameter estimation. Numerous algorithms have been proposed for dynamic parameter estimation. The conventional gradient-based optimization approach suffers from an obvious and inherent dependency on the initial conditions and is found to have convergence problems when starting with a poor initial guess. On the other hand, some inherently initial-value independent intelligent methods suffer from tremendous computation burden. This dissertation proposes a hybrid two-step method to achieve the accurate dynamic parameters in a balanced manner by making an optimal trade-off between convergence and computation speed. The concept of Particle Swarm Optimization (PSO) is employed to find an approximate solution at the first step, followed by a sensitivity analysis is run to achieve an accurate solution starting with the approximate solution obtained in the first step.;This dissertation describes how various categories are set up for the dynamic parameters and identifies the key parameters for parameter estimation to decrease the complexity of the problem and computation burden. While the approach documented in this dissertation is generic in terms of applicability to dynamic parameter estimation, the generator dynamic parameters have been utilized to illustrate the efficiency of the approach. All exciter and governor models in the Electrical Reliability Council of Texas (ERCOT) system are prescanned to identify the key parameters using the PSS/E response test.;The proposed hybrid method shows the validity and distinct advantages in the assumed test case. The exciter and governor parameters are successfully estimated using the proposed hybrid method. Reasonably accurate values can be achieved under some level of noise according to uncertainty analysis. Multi-core computation is utilized to dramatically decrease the computation burden.;The proposed hybrid method also successfully tunes the dynamic parameters of exciter and power system stabilizer (PSS) in a power plant to drive the trend of simulation results to match the recording information on file following a generator trip in ERCOT system.
机译:在电力市场放松管制之后,电力系统变得更加复杂,并且发现其始终在接近其稳定极限的状态下运行。电力系统动态建模和研究可提供对系统动态特性的深刻洞察,必将发挥越来越重要的作用。动态仿真结果高度依赖于控制电力系统动态的某些关键参数,例如发电设备中的调速器和/或励磁机。但是,由独立系统操作员(ISO)维护的系统数据库中的动态参数由于许多原因而不准确,这些原因从不符合“建成设施”的数据提交到无法更新以反映设施变化的数据。 ;用于表示实际系统设施的动态模型中的此类不一致导致了在动态参数估计领域的大量研究。已经提出了许多用于动态参数估计的算法。常规的基于梯度的优化方法受初始条件的明显和固有依赖性的困扰,并且当从较差的初始猜测开始时发现存在收敛问题。另一方面,一些固有的初始值无关的智能方法遭受巨大的计算负担。本文提出了一种混合两步法,通过在收敛性和计算速度之间进行最佳权衡,以平衡的方式获得准确的动态参数。首先采用粒子群优化(PSO)的概念来寻找一个近似解,然后进行敏感性分析以从第一步中获得的近似解开始获得一个精确的解。为动态参数设置类别,并标识用于参数估计的关键参数,以减少问题的复杂性和计算负担。尽管本文所记录的方法在动态参数估计的适用性方面是通用的,但发电机动态参数已被用来说明该方法的效率。使用PSS / E响应测试对德克萨斯州电气可靠性委员会(ERCOT)系统中的所有励磁机和调速器模型进行预扫描,以识别关键参数。所提出的混合方法在假定的测试案例中显示了有效性和明显的优势。使用所提出的混合方法成功地估计了激励器和调速器参数。根据不确定性分析,可以在一定水平的噪声下获得合理的准确值。利用多核计算可以大大减少计算负担。所提出的混合方法还成功地调整了电厂中励磁机和电力系统稳定器(PSS)的动态参数,以驱动模拟结果的趋势以匹配记录信息。在ERCOT系统中发生发电机跳闸后的文件。

著录项

  • 作者

    Cheng, Yunzhi.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 120 p.
  • 总页数 120
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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