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Fault moment determining and fault region location method based on random matrix theory

A technology of random matrix theory and fault time, applied in the field of power system, can solve problems such as bad data and interference of WAMS, and achieve the effect of timely detection of system anomalies and good practicability

Inactive Publication Date: 2018-06-12
HUAZHONG UNIV OF SCI & TECH +1
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  • Abstract
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  • Claims
  • Application Information

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Problems solved by technology

[0004] Aiming at the above defects or improvement needs of the prior art, the present invention provides a fault time determination and fault area location method based on random matrix theory, thereby solving the problem that the current fault diagnosis method based on wide-area measurement system data is vulnerable to WAMS defects. Technical Issues of Data Interference

Method used

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  • Fault moment determining and fault region location method based on random matrix theory
  • Fault moment determining and fault region location method based on random matrix theory
  • Fault moment determining and fault region location method based on random matrix theory

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Embodiment 1

[0074] By applying the above method in the figure 2 The verification is carried out on the 10-machine 39-node system shown, and the calculation and analysis adopts the PSST software under Matlab / Simulink, and the simulation step length Δt=0.01s. The measurement data is obtained by adding the random error to the transient simulation calculation result, the random error is set to Gaussian white noise, the standard deviation of the amplitude is 1%, and the standard deviation of the phase angle is 1 degree. In Embodiment 1, all bus node voltage amplitudes (39 groups in total) are selected to form the original data matrix X, and the real-time sliding time window width is T w =80.

[0075] Set the line 9-39 close to the busbar 9 when an instantaneous three-phase short circuit occurs at t=5.00s, and the fault is eliminated at t=5.10s. After a short-circuit fault occurs on the line near node 9, the voltage change curves of each node are as follows: image 3As shown, the correspond...

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Abstract

The invention discloses a fault moment determining and fault region location method based on a random matrix theory, and the method comprises the steps: obtaining the PMU data and signal to noise ratio of each node in a power system in a time period T, obtaining an original data matrix according to the PMU data of each node, carrying out the standardization processing of the original data matrix,and then obtaining the mean spectral radius at each moment of the time period T through a monocyclic theorem; obtaining an augmented matrix and a reference augmented matrix of each node according to the signal to noise ratio and the original data matrix, obtaining the mean spectral radius difference and mean spectral radius integral of the augmented matrix and the reference augmented matrix of each node in the time period T through the monocyclic theorem, wherein the moment when the mean spectral radius at each moment of the time period T is less than a normal operation value of the mean spectral radius is determined as a fault moment, and a node with the largest mean spectral radius in the nodes with the difference of the mean spectral radiuses of all nodes in the time period T being greater than a critical value is determined as a fault region. The method cannot be affected by bad data.

Description

technical field [0001] The invention belongs to the field of power systems, and more specifically relates to a method for determining fault time and locating a fault area based on random matrix theory. Background technique [0002] Power system failures caused by extreme weather and equipment failures pose serious challenges to its safe and stable operation, and even lead to large-scale power outages in severe cases. Therefore, how to quickly and accurately complete power grid fault diagnosis, provide fault diagnosis results to assist operation dispatchers to deal with faults in time, prevent accidents from expanding, and reduce power outage losses are of great significance to ensure the safe and stable operation of power systems. The popularization and application of the wide-area measurement system (WAMS) in the power system provides high-dimensional and massive wide-area electrical quantity information with a unified time scale for power system fault diagnosis, and also p...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01R31/08
CPCG01R31/086Y02E40/70Y02E60/00Y04S10/00Y04S10/22
Inventor 姚伟熊永新陈伟彪陈亦平文劲宇
Owner HUAZHONG UNIV OF SCI & TECH
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