Electric network metering early-warning system and method based on load characteristic pre-estimation

A technology of load characteristics and power grid, applied in the direction of forecasting, calculation, instrumentation, etc., can solve problems such as hysteresis effect, low filtering efficiency, difficulty in meeting operation requirements, etc., and achieve the goal of improving accuracy, orderliness, and prediction accuracy Effect

Active Publication Date: 2016-08-03
梁海东
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Problems solved by technology

Kalman filtering can predict the predicted value at the next moment through the state space model. The disadvantage is that when the statistical characteristics of the noise are completely unknown or partially known, the filtering efficiency will be too low or even invalid.
The exponential smoothing method is simple and easy to implement. It uses a weighted moving average method to eliminate the fluctuation data of the historical power load, and can find out the development trend of the power load. It is suitable for data preprocessing. The disadvantage is that it will produce a lag effect and seriously affect the forecast. precision
[0006] At the same time, the current forecasting methods, when establishing load optimization characteristic indicators in the data preprocessing process, are currently too single to achieve multi-objective load characteristic analysis, and lack comprehensive consideration of uncertainty and multi-objective attributes. The clustered results cannot eliminate the influence of uncertain factors under the multi-objective framework, and it is difficult to meet the actual operation requirements

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  • Electric network metering early-warning system and method based on load characteristic pre-estimation
  • Electric network metering early-warning system and method based on load characteristic pre-estimation
  • Electric network metering early-warning system and method based on load characteristic pre-estimation

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Embodiment Construction

[0049] The present invention will be further described below in conjunction with the accompanying drawings and embodiments.

[0050] Such as figure 1 As shown, a grid metering early warning method based on load characteristic estimation includes the following steps:

[0051] (1) Collect historical data of power load, draw load curves, construct sample sets, and use K-MEDOIDS algorithm to determine typical load curves of power users;

[0052] (2) Segment the sample data uniformly according to the time interval, and use the fluctuation intensity of each minimum time length in the time series, the digital characteristics of the time series, security load, limitable load, peak time difference rate, peak valley difference rate and monthly imbalance The coefficient is used to construct the cluster feature vector for the characteristic index, and the characteristic index is selected from the typical daily load curve;

[0053] (3) Give the sample data a bias parameter, based on the ...

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Abstract

The invention discloses an electric network metering early-warning system and method based on load characteristic pre-estimation. Historical data of power load is collected, a load curve is drafted, a sample set is constructed, and a K-MEDOIDS algorithm is used to determine a typical load curve of a power user; sample data is segmented in a unified manner according to time interval, multiple targets are used as characteristic vectors, and a characteristic index is selected from a typical daily load curve; and a clustering result is combined with a Markov chain to establish a prediction chain, prediction is carried out, a prediction result is compared with actual measurement data detected by a metering device to determine whether invalid power utilization occurs and whether the metering device works normally, and it is determined that invalid power utilization occurs or the metering device is abnormal, invalid power utilization or the metering device is marked, and early warning is carried out.

Description

technical field [0001] The invention relates to a grid metering and early warning system and method based on load characteristic estimation. Background technique [0002] In recent years, with the development of the economy, the demand for electricity is increasing. During many peak hours, there will be a tight supply and demand of electricity. Whether it is an individual user or a large enterprise user, it is necessary to measure and calculate electricity consumption and electricity charges. It is very important to be able to measure and calculate correctly, and it can also be of great help to the safe and efficient operation of the power grid. [0003] Therefore, it is very important to be able to accurately count the user's power consumption during metering, and to judge whether the value is within the normal range, and there is no leakage, stealing or stealing of electricity. [0004] However, the current monitoring of electricity consumption mainly relies on manual wo...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06Q50/06
CPCG06Q10/04G06Q50/06
Inventor 梁海东于海东赵晓燕梁惠文于航王新宇
Owner 梁海东
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