Power load probability density prediction method based on fuzzy support vector quantile regression

A technology of fuzzy support vector and quantile regression, applied in forecasting, data processing applications, climate sustainability, etc., which can solve problems such as uncertainty in load accuracy, ignoring uncertainty in historical data, and ambiguity

Active Publication Date: 2016-12-21
HEFEI UNIV OF TECH
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AI Technical Summary

Problems solved by technology

How these factors affect load accuracy is uncertain or ambiguous
However, traditional power load forecasting methods do not preprocess these uncertain factors.
That is to say, the historical data used in the prediction are all definite values, but the formation of these historical data has certain accidental factors, ign

Method used

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  • Power load probability density prediction method based on fuzzy support vector quantile regression
  • Power load probability density prediction method based on fuzzy support vector quantile regression
  • Power load probability density prediction method based on fuzzy support vector quantile regression

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Embodiment Construction

[0049] In the implementation process, a power load probability density forecasting method based on fuzzy support vector quantile regression mainly considers the influence of average temperature on power load forecasting. Flowchart such as figure 1 shown, and proceed as follows:

[0050] Step 1. There are many factors affecting power load forecasting. Through research and analysis, it is concluded that the average temperature factor has a greater impact on the power load forecasting results;

[0051] Step 1.1, the present invention selects the data of the global load forecasting competition that EUNITE network organizes to test, and this data comprises the load data of the time interval of 48 hours every day in 1997-1998 (corresponding to a load point every half hour), and 1997-1998 Average daily temperature data for the year. This data is complete data. And predict the daily maximum load data for 31 days in January 1999;

[0052] Step 1.2, collect and determine the daily m...

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Abstract

The invention discloses a power load probability density prediction method based on fuzzy support vector quantile regression. According to the method, maximum day load data and average temperature data before a prediction day are collected; a train set and a test set are established through adoption of history data; lagrangian multipliers and support vector subscripts of a fuzzy support vector quantile regression model are obtained through utilization of the train set; the fuzzy support vector quantile regression prediction model is established according to obtained model parameter values; the test set is substituted into the model to obtain prediction values; and probability density prediction of the maximum day load is realized through utilization of the obtained prediction values under different quantiles and through application of kernel density estimation. According to the method, prediction errors can be effectively reduced, the power load prediction precision is improved, the good prediction effect is obtained, and the relatively reliable basis is provided for a power system scheduling department to adjust power consumption plans and optimize generator set contribution.

Description

technical field [0001] The invention belongs to the field of power load prediction combining statistical methods and intelligent calculations, and mainly relates to a power load probability density prediction method based on fuzzy support vector quantile regression. Background technique [0002] Power system load forecasting is based on the historical data of power load, economy, society, weather, etc., to explore the influence of the change law of the historical data of power load on the future load, and to seek the internal relationship between the power load and various related factors, so as to predict the future. Scientific prediction of power load. Accurate power system load forecasting is of great significance for power system dispatching, power consumption, planning, making power purchase plans, and arranging operation modes. This also requires power system researchers to propose more effective methods to improve prediction accuracy. [0003] In recent years, with ...

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Application Information

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IPC IPC(8): G06Q10/04G06Q50/06
CPCG06Q10/04G06Q50/06Y02D10/00
Inventor 何耀耀刘瑞李海燕王刚郑丫丫秦杨严煜东
Owner HEFEI UNIV OF TECH
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