Power grid monitoring alarm event identification method based on convolution and long-term and short-term memory network
A technology of long-term and short-term memory and alarm events, which is applied in neural learning methods, biological neural network models, and electrical digital data processing. The effect of low efficiency, improving work efficiency, and reducing the pressure on the monitor screen
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Embodiment 1
[0063] refer to figure 1 , figure 2 and image 3 , the method of the present invention is carried out according to the following steps:
[0064] The first step is to collect historical monitoring alarm information and the time stamp of each alarm information in the power grid monitoring system, and all substations and line names contained in the alarm information to form the training data set required for the grid monitoring alarm event recognition model;
[0065] The second step is to perform data preprocessing on the historical monitoring alarm information, conduct unsupervised training on the monitoring alarm information through the word2vec model, and generate an information vector containing signal features. The specific process is as follows:
[0066] (1) Word segmentation and removal of stop words
[0067] Update the power thesaurus, and collect the power thesaurus through data review, and import the substation name and line name derived from the historical monitori...
Embodiment 2
[0109] Taking more than 14 million pieces of historical monitoring alarm information of a city power grid company in 2016 and 2017 as the original corpus, 9 types of alarm event samples were extracted from it to train and test the recognition model. Take 90% of each type of alarm event samples as the training set and 10% as the test set. The types of alarm events and the number of samples of each type are shown in Table 1.
[0110] Table 1 Number of samples of alarm events
[0111]
[0112] In the event classification task, the classification result of the recognition model is generally represented by a confusion matrix, and the meaning of the binary classification confusion matrix is shown in Table 2.
[0113] Table 2 Confusion matrix in event recognition
[0114]
[0115] The confusion matrix divides all events into four categories according to their actual attribution and identification attribution, and defines four indicators of accuracy (Accuracy), precision (Pre...
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