Low-order black-box models for control system design in large power systems

I. Kamwa, G. Trudel, L. Gérin-Lajoie
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引用次数: 114

Abstract

The paper studies two multi-input multi-output (MIMO) procedures for the identification of low-order state-space models of power systems, by probing the network in open loop with low-energy pulses or random signals. Although such data may result from actual measurements, the development assumes simulated responses from a transient stability program, hence benefiting from the existing large base of stability models. While pulse data is processed using the eigensystem realization algorithm, the analysis of random responses is done by means of subspace identification methods. On a prototype Hydro-Quebec power system, including SVCs, DC lines, series compensation, and more than 1100 buses, it is verified that the two approaches are equivalent only when strict requirements are imposed on the pulse length and magnitude. The 10th-order equivalent models derived by random-signal probing allow for effective tuning of decentralized power system stabilizers (PSSs) able to damp both local and very slow inter-area modes.
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大型电力系统控制系统设计中的低阶黑箱模型
本文研究了两种多输入多输出(MIMO)方法,通过用低能量脉冲或随机信号在开环中探测网络来识别电力系统的低阶状态空间模型。虽然这些数据可能来自实际测量,但开发假设了瞬态稳定程序的模拟响应,因此受益于现有的大量稳定模型。脉冲数据处理采用特征系统实现算法,随机响应分析采用子空间识别方法。在包括svc、直流线路、串联补偿和1100多根母线的魁北克水电原型系统中,验证了只有在对脉冲长度和幅度有严格要求的情况下,这两种方法是等效的。由随机信号探测导出的10阶等效模型允许对分散电力系统稳定器(pss)进行有效调谐,该稳定器能够抑制局部和非常慢的区域间模式。
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Development of the Intercontrol Center Communications Protocol (ICCP) [power system control] Hydropower generation management under uncertainty via scenario analysis and parallel computation Optimal fuzzy inference for short-term load forecasting Long-term/mid-term resource optimization of a hydro-dominant power system using interior point method The design of next generation SCADA systems
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