Least square support vector machine power consumption prediction method based on adaptive genetic algorithm

A technology of support vector machine and least squares, applied in the fields of genetic law, prediction, data processing application, etc., can solve the problems of high redundancy, large deviation of results, and low prediction accuracy.

Pending Publication Date: 2020-02-25
SUWEN ELECTRIC ENERGY TECH
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Problems solved by technology

[0006] As mentioned above, the existing electricity consumption forecasting methods often use forecasting models to directly predict them, and the prediction accuracy is not high. In order to obtain more information about the time series of electricity consumption, the predecessors often used BP Neural network analysis method, but it has the disadvantages of high redundancy and large deviation of results; while genetic algorithm optimizes parameters, the crossover probability and mutation probability often do not change. Therefore, a method based on adaptive genetic algorithm and The method of least squares support vector machine combination forecasting electricity consumption is of great significance

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  • Least square support vector machine power consumption prediction method based on adaptive genetic algorithm
  • Least square support vector machine power consumption prediction method based on adaptive genetic algorithm
  • Least square support vector machine power consumption prediction method based on adaptive genetic algorithm

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[0095] The present invention will be described in detail in conjunction with accompanying drawing now. This figure is a simplified schematic diagram only illustrating the basic structure of the present invention in a schematic manner, so it only shows the components relevant to the present invention.

[0096] Such as figure 1 As shown, a kind of least squares support vector machine power consumption prediction method based on adaptive genetic algorithm of the present invention comprises:

[0097] S1: Collect the historical electricity consumption data of a certain enterprise. The number of collected samples is generally more than 500, and the Gaussian weighted moving filter is used to denoise the collected electricity consumption time series. In the implementation process of the present invention, the electricity consumption data of a certain enterprise history within 2 years are collected, and the collection time is 24 o'clock every day, and the sample size n is 730, as show...

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Abstract

The invention provides a least square support vector machine power consumption prediction method based on an adaptive genetic algorithm, and the method comprises the steps: collecting historical powerconsumption data from a certain enterprise, and carrying out the denoising processing through a Gaussian filter; decomposing the data after noise filtering into a plurality of basic mode components and margins by adopting an empirical mode decomposition method, and normalizing the basic mode components and the margins; secondly, predicting the normalized components and margins by adopting a leastsquare support vector machine, and optimizing two parameters of the least square support vector machine by adopting a crossover probability and mutation probability adaptive genetic algorithm to findan optimal parameter combination; and finally, obtaining a prediction result by adopting a least square support vector machine model. The method has high prediction precision for the power consumption of the enterprise, and is an efficient power consumption prediction method.

Description

technical field [0001] The invention belongs to the technical field of power consumption forecasting methods, in particular to a least squares support vector machine power consumption forecasting method based on an adaptive genetic algorithm. Background technique [0002] With the deepening of the reform of the electricity sales side and the liberalization of the electricity sales market, the number of electricity sales companies and the forms of participating in market transactions have continued to increase. At present, my country's electricity sales companies are still in the initial stage of development, and their development model is still in the formation stage. As the "spokesperson" of the electricity market reform, electricity sales companies, in addition to market-oriented electricity transactions and providing users with personalized energy services In addition to reducing the cost of comprehensive energy use, it also needs to assume the role of a "firewall" to supp...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06Q50/06G06F17/12G06N3/12
CPCG06Q10/04G06Q50/06G06F17/12G06N3/126Y02P80/10
Inventor 范海玲
Owner SUWEN ELECTRIC ENERGY TECH
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