Forced oscillation hierarchical positioning method based on multi-stage transfer learning

A technology of forced oscillation and transfer learning, applied in the field of forced oscillation hierarchical positioning based on multi-stage transfer learning, can solve the problems of changing system operation mode, complex power grid characteristics, and immaturity, so as to alleviate the burden of data processing and make it feasible to operate The effect of high sex and reduced training volume

Active Publication Date: 2020-01-10
SOUTHEAST UNIV
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Problems solved by technology

However, as the scale of the power grid expands, the system operation mode becomes more changeable, which will lead to some important assumptions of the above method no longer valid.
For example, when using the traveling wave detection method for positioning, the technology is not mature enough for the occurrence of multi-mode oscillation, which may lead to misjudgment; when using the transient energy function to locate the disturbance source, for the case of large network loss, it may Two or more positioning results will be obtained
At present, studies have pointed out that the transient energy function method sets too strict model assumptions for the power system network and loads, which leads to great limitations in the case of forced power oscillations in the actual power system.
In addition, with the development of large-area interconnection of the power grid, the characteristics of the power grid are becoming more and more complex. It is increasingly difficult to solve the problem of disturbance source location only from the physical mechanism of forced oscillation itself and manual experience, and there are problems such as harsh operating conditions and low accuracy.
Moreover, analyzing the location of the disturbance source from the perspective of the entire network, due to the need to transmit and process the data of the entire network, there will be problems of excessive data volume and information redundancy

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  • Forced oscillation hierarchical positioning method based on multi-stage transfer learning
  • Forced oscillation hierarchical positioning method based on multi-stage transfer learning
  • Forced oscillation hierarchical positioning method based on multi-stage transfer learning

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Embodiment Construction

[0017] The present invention will be described in further detail below in conjunction with the accompanying drawings.

[0018] The general process of the multi-stage migration learning-based forced oscillation hierarchical localization method of the present invention includes an offline training process and an online localization process. The offline training process is roughly as follows: first, partition the entire power system according to the generator correlation, extract its oscillation principal components in each partition, and use smooth pseudo Wigner-Ville distribution (WVD) to transform, visualize it and get forced WVD image of the oscillation interval. Then, the first stage of migration learning is performed on the pre-trained convolutional neural network to obtain a first-layer partition localization model that can locate the partition where the disturbance source is located. Then input the WVD image of each unit in the partition, use the first-level positioning ...

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Abstract

The invention discloses a forced oscillation hierarchical positioning method based on multi-stage transfer learning. The method comprises an offline training part and an online positioning part, and comprises the steps of firstly, partitioning a power system according to the generator correlation, visualizing the smooth pseudo Wigner-Ville distribution of the oscillation principal components of all partitions, and forming an interval WVD image; performing the first-stage transfer learning on a pre-trained convolutional neural network to obtain a first-layer partition positioning model; and inputting a WVD image in a positioning subarea, and performing the second-stage transfer learning on the subarea positioning model to obtain a second-layer unit positioning model, and finally, verifyingthe offline positioning accuracy of the method. According to the present invention, the online positioning of a disturbance source is achieved by sequentially inputting an interval where the forced power oscillation actually occurs and the WVD image in the interval into a partition positioning model and a unit positioning model respectively. The method not only has the higher positioning accuracy,but also has the characteristics of high positioning speed, high adaptability, strong robustness and the like.

Description

technical field [0001] The invention relates to a forced oscillation hierarchical positioning method, in particular to a forced oscillation hierarchical positioning method based on multi-stage transfer learning. Background technique [0002] In the context of the interconnection of large regional power grids, the risk of low-frequency oscillations in power systems is increasing. As a kind of low-frequency oscillation, forced power oscillation may seriously threaten the safe and stable operation of the power system once it occurs and is not dealt with in time due to its zero-attenuation characteristics. It occurs because there are continuous periodic disturbance sources in the power system. The most direct suppression method is to find the location of the disturbance source in the power grid and remove it quickly. However, when the disturbance frequency of the disturbance source is equal to or close to the natural frequency of the system, the power system will have low-frequ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/62H02J3/24
CPCH02J3/24G06F2218/02G06F2218/08G06F2218/12G06F18/2135G06F18/241
Inventor 冯双陈佳宁史豪汤奕
Owner SOUTHEAST UNIV
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