CN114611396A - Line loss analysis method based on big data - Google Patents

Line loss analysis method based on big data Download PDF

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CN114611396A
CN114611396A CN202210254768.6A CN202210254768A CN114611396A CN 114611396 A CN114611396 A CN 114611396A CN 202210254768 A CN202210254768 A CN 202210254768A CN 114611396 A CN114611396 A CN 114611396A
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吴仲超
朱明星
孙航
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Bengbu Power Supply Co of State Grid Anhui Electric Power Co Ltd
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Abstract

The invention provides a line loss analysis method, wherein the data to be analyzed is input into a line loss identification network model, and the electricity stealing identification network model comprises an input layer, a shallow layer feature extraction module, a first classifier, a deep layer feature extraction module and a second classifier; inputting a first feature obtained by shallow feature extraction into a first classifier to obtain a first classification result, wherein the first classification result is the probability of normal or abnormal line loss, and when the first classification result is abnormal, inputting the first feature into a deep feature extraction module to perform feature extraction to obtain a second feature and inputting the second feature into a second classifier to obtain a second classification result, wherein the second classification result comprises the line loss rate and a corresponding classification label, so that the efficiency is greatly improved; when the model is trained, the historical similar day data and the adjacent day data are comprehensively considered for data restoration, so that the accuracy of the model is greatly improved.

Description

Line loss analysis method based on big data
Technical Field
The invention belongs to the field of electric energy loss of a power grid, and particularly relates to a line loss analysis method based on big data.
Background
The problem of line loss management of the current power system in power supply management still generally has a large amount of power loss phenomena, so how to take active and effective measures to improve the line loss management level in the power system, and reducing power consumption is an important problem to be solved urgently by the current relevant power management departments.
According to the generation reason, the line loss rate calculation method comprises theoretical line loss and synchronous line loss, the theoretical line loss is the line loss rate obtained according to the topological structure and parameters of the power grid, and the synchronous line loss is calculated based on the collected data of the intelligent electric meter. The method for calculating the synchronous line loss depends on the collection condition of the intelligent electric meter, in order to ensure the accuracy and the integrity of electric meter data, in the prior art, different measures are adopted for repairing through stage mean values, historical similar days, adjacent days, same-day electric quantity of similar distribution areas and abnormal condition classification, however, the repairing through the method needs to classify the condition of interrupted collection, and then different repairing measures are selected, so that the efficiency is low. When the line loss rate is classified, CN113866562A classifies the input data through the convolutional neural network to obtain the line loss rate and the corresponding classification labels, however, because the user amount is large, the number collected through the smart electric meters is large, the time spent for classifying through the above method is long, when the missing value is repaired, the classification analysis is performed through the missing condition of the missing data, and the efficiency is low.
Disclosure of Invention
The present invention is to solve the above problems in the prior art, and provide a method for analyzing line loss based on big data, so as to improve the efficiency and accuracy of line loss identification.
The invention is realized by the following technical scheme:
the application provides a line loss analysis method based on big data, which comprises the following steps:
acquiring data to be analyzed, wherein the data to be analyzed comprises a transformer resistance parameter, a line impedance parameter, an inductive reactance parameter, a capacity parameter, a power parameter, total station active power, a power factor, a transformer load factor, voltage and current;
carrying out data preprocessing on the data to be analyzed to obtain the data to be analyzed;
inputting the data to be analyzed into a line loss identification network model, wherein the electricity stealing identification network model comprises an input layer, a shallow layer feature extraction module, a first classifier, a deep layer feature extraction module and a second classifier; inputting a first feature obtained by shallow feature extraction into a first classifier to obtain a first classification result, wherein the first classification result is the probability of normal or abnormal line loss, when the first classification result is abnormal, inputting the first feature into a deep feature extraction module to perform feature extraction to obtain a second feature, and inputting the second feature into a second classifier to obtain a second classification result, wherein the second classification result comprises a line loss rate and a corresponding classification label, and the classification label comprises large negative loss, small negative loss, high loss and super large loss;
the line loss identification network model adopts historical data as candidate training samples; performing data preprocessing and manual marking on the candidate training samples to obtain training samples; and constructing a line loss recognition network model, and training the network model based on the training samples.
The data preprocessing of the candidate training samples comprises: data cleaning, data integration, data transformation and data specification.
The data cleaning includes null value processing and noise data processing.
The vacancy value Hij is obtained through the following steps:
based on historical data, a historical data matrix is established
Figure BDA0003548125520000021
Wherein n is the number of historical data, m is 10, and each row of data comprises a transformer resistance parameter, a line impedance parameter, an inductive reactance parameter and a capacitanceThe corresponding values of the quantity parameter, the power parameter, the total active power of the transformer area, the power factor, the load factor of the transformer, the voltage and the current;
selecting k pieces of historical similar day data with vacant data items Hi to obtain a historical similar day data matrix S, wherein the historical similar day data matrix S is obtained
Figure BDA0003548125520000031
The historical similar day data is obtained through calculation of a KNN algorithm;
selecting p adjacent day data with vacant data items Hi to obtain an adjacent day data matrix N, wherein the adjacent day data matrix is defined as N
Figure BDA0003548125520000032
The missing term Hij of the empty data entry Hi is obtained by the following formula,
Figure BDA0003548125520000033
the above-mentioned
Figure BDA0003548125520000034
And the dsi and the dni are respectively the similarity between each piece of data in the historical similar day data matrix and the Hi and the similarity between each piece of data in the adjacent day data matrix and the Hi, and the similarity can be obtained by Euclidean distance calculation.
The shallow layer feature extraction module comprises a first convolution layer and a second convolution layer.
The deep feature extraction module constructs a deep feature extraction network using N sets of lightweight network structures, where the lightweight network structure is SqueezeNet, N is a positive integer, and preferably, N is 4.
Compared with the prior art, the invention judges whether the line loss is abnormal or not through the shallow layer characteristics, and the line loss rate classification is further carried out only when the line loss classification result is abnormal, thereby improving the efficiency; when the model is trained, the accuracy of data restoration is improved by comprehensively considering historical similar day data and adjacent day data and by means of weighted average, and then the line loss recognition network model is improved.
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Fig. 1 is a model structure of a power stealing recognition network model.
Detailed Description
In order to make the technical means, the creation characteristics, the achievement purposes and the functions of the invention clearer and easier to understand, the invention is further explained by combining the drawings and the detailed implementation mode:
the application provides a line loss analysis method based on big data, which comprises the following steps:
acquiring data to be analyzed, wherein the data to be analyzed comprises a transformer resistance parameter, a line impedance parameter, an inductive reactance parameter, a capacity parameter, a power parameter, total station active power, a power factor, a transformer load factor, voltage and current;
carrying out data preprocessing on the data to be analyzed to obtain the data to be analyzed;
inputting the data to be analyzed into a line loss identification network model, wherein the electricity stealing identification network model comprises an input layer, a shallow layer feature extraction module, a first classifier, a deep layer feature extraction module and a second classifier; inputting a first feature obtained by shallow feature extraction into a first classifier to obtain a first classification result, wherein the first classification result is the probability of normal or abnormal line loss, when the first classification result is abnormal, inputting the first feature into a deep feature extraction module to perform feature extraction to obtain a second feature, and inputting the second feature into a second classifier to obtain a second classification result, wherein the second classification result comprises a line loss rate and a corresponding classification label, and the classification label comprises large negative loss, small negative loss, high loss and super large loss;
the line loss identification network model adopts historical data as candidate training samples; performing data preprocessing and manual marking on the candidate training samples to obtain training samples; and constructing a line loss recognition network model, and training the network model based on the training samples.
The data preprocessing of the candidate training samples comprises: data cleaning, data integration, data transformation and data specification.
The data cleaning includes null value processing and noise data processing.
The quality of data can be improved through data preprocessing technology, thereby being beneficial to improving the precision and the performance of subsequent data processing.
There are attributes that for some reason are not recorded, and these null values must be processed.
The loss of line loss data can be classified into two types, mechanical and artificial. The data is lost due to mechanical reasons, such as data storage failure, memory damage and mechanical failure, caused by data collection or storage errors caused by mechanical reasons. The artificial reason is that data is missing due to subjective errors of people, historical limitations or deliberate hiding operations, for example, a line loss on-site transcriber mistakenly records data during data recording.
From a mathematical statistical point of view, missing data can also be classified as completely random, and non-random.
Common vacancy value processing includes: the method for filling the vacancy values is simple but quite unreliable, and the vacancy values are filled in the following mode.
The vacancy value Hij is obtained through the following steps:
based on historical data, a historical data matrix is established
Figure BDA0003548125520000051
Wherein n is the number of historical data, m is 10, and each row of data comprises values corresponding to a transformer resistance parameter, a line impedance parameter, an inductive reactance parameter, a capacity parameter, a power parameter, total station active power, a power factor, a transformer load factor, voltage and current;
selecting k pieces of historical similar day data with vacant data items Hi to obtain a historical similar day data matrix S, wherein the historical similar day data matrix S is obtained
Figure BDA0003548125520000052
The calendarCalculating history similar day data by a KNN algorithm;
selecting p adjacent day data with vacant data items Hi to obtain an adjacent day data matrix N, wherein the adjacent day data matrix is defined as N
Figure BDA0003548125520000053
The missing items Hij of the missing data entries Hi may be calculated by means of weighted average, however, considering the similarity of the data in the near days and other factors, the missing items Hij of the missing data entries Hi may also be obtained by the following method:
the missing term Hij of the empty data entry Hi is obtained by the following formula,
Figure BDA0003548125520000054
the above-mentioned
Figure BDA0003548125520000055
And the dsi and the dni are respectively the similarity between each piece of data in the historical similar day data matrix and the Hi and the similarity between each piece of data in the adjacent day data matrix and the Hi, and the similarity can be obtained by Euclidean distance calculation.
The shallow layer feature extraction module comprises a first convolution layer and a second convolution layer.
The deep feature extraction module constructs a deep feature extraction network using N sets of lightweight network structures, where the lightweight network structure is SqueezeNet, N is a positive integer, and preferably, N is 4.
Finally, it should be noted that the above-mentioned technical solution is only one embodiment of the present invention, and it will be apparent to those skilled in the art that various modifications and variations can be easily made based on the application method and principle of the present invention disclosed, and the method is not limited to the above-mentioned specific embodiment of the present invention, so that the above-mentioned embodiment is only preferred, and not restrictive.

Claims (7)

1. A method of analyzing line loss based on big data, the method comprising: acquiring data to be analyzed, wherein the data to be analyzed comprises a transformer resistance parameter, a line impedance parameter, an inductive reactance parameter, a capacity parameter, a power parameter, total station active power, a power factor, a transformer load factor, voltage and current;
carrying out data preprocessing on the data to be analyzed to obtain the data to be analyzed;
inputting the data to be analyzed into a line loss identification network model, wherein the electricity stealing identification network model comprises an input layer, a shallow layer feature extraction module, a first classifier, a deep layer feature extraction module and a second classifier; inputting a first feature obtained by shallow feature extraction into a first classifier to obtain a first classification result, wherein the first classification result is the probability of normal or abnormal line loss, when the first classification result is abnormal, inputting the first feature into a deep feature extraction module to perform feature extraction to obtain a second feature, and inputting the second feature into a second classifier to obtain a second classification result, wherein the second classification result comprises a line loss rate and a corresponding classification label, and the classification label comprises large negative loss, small negative loss, high loss and super large loss;
the line loss identification network model adopts historical data as candidate training samples; performing data preprocessing and manual marking on the candidate training samples to obtain training samples; and constructing a line loss recognition network model, and training the network model based on the training samples.
2. The method for analyzing line loss based on big data as claimed in claim 1, wherein the pre-processing the candidate training samples comprises: data cleaning, data integration, data transformation and data specification.
3. The method for analyzing line loss based on big data as claimed in claim 2, wherein the data cleaning comprises null value processing and noise data processing.
4. The method for analyzing line loss based on big data according to claim 3, wherein the vacancy value Hij is obtained by the following steps:
based on historical data, a historical data matrix is established
Figure FDA0003548125510000011
Wherein n is the number of historical data, m is 10, and each row of data comprises values corresponding to a transformer resistance parameter, a line impedance parameter, an inductive reactance parameter, a capacity parameter, a power parameter, total station active power, a power factor, a transformer load factor, voltage and current;
selecting k pieces of historical similar day data with vacant data items Hi to obtain a historical similar day data matrix S, wherein the historical similar day data matrix S is obtained
Figure FDA0003548125510000021
The historical similar day data is obtained through calculation of a KNN algorithm;
selecting p adjacent day data with vacant data items Hi to obtain an adjacent day data matrix N, wherein the adjacent day data matrix is defined as N
Figure FDA0003548125510000022
The missing term Hij of the empty data entry Hi is obtained by the following formula,
Figure FDA0003548125510000023
the above-mentioned
Figure FDA0003548125510000024
And the dsi and the dni are respectively the similarity between each piece of data in the historical similar day data matrix and the Hi and the similarity between each piece of data in the adjacent day data matrix and the Hi, and the similarity can be obtained by Euclidean distance calculation.
5. The method of claim 1, wherein the shallow feature extraction module comprises a first convolution layer and a second convolution layer.
6. The method of claim 1, wherein the deep feature extraction module constructs the deep feature extraction network using N sets of lightweight network structures, wherein the lightweight network structures are SqueezeNet and N is a positive integer.
7. The big-data-based line loss analysis method according to claim 6, wherein the deep feature extraction module uses N sets of lightweight network structures to construct the deep feature extraction network, preferably, N-4.
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