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Ultra-short-term power load forecasting and early warning method

A power load, ultra-short-term technology, applied in the field of information, can solve the problems of complex factors affecting the power load of industrial enterprises, the impact of data fluctuations on accuracy, and the unpredictable changes in ultra-short-term fluctuations. The effect of reducing dispatch workload and reducing electricity pollution

Inactive Publication Date: 2013-09-11
SHENYANG AEROSPACE UNIVERSITY
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AI Technical Summary

Problems solved by technology

[0004] In the prior art, a general forecasting method is used to forecast the power load. The forecasting principle is based on the time series method. This scheme has the following problems: the factors affecting the power load of industrial enterprises are complex, and the power consumption characteristics of the process sections are different. The load fluctuates greatly, the general modeling method is very dependent on the data, and the data fluctuation has a great impact on the accuracy
However, in this invention, all maintenance, power consumption and production plans of each user in the enterprise power system are input as training features, which increases the complexity of the model, and this method can only use a large amount of historical scheduling data for long-term power consumption such as It is difficult to predict the power consumption of several days, weeks, and months, and it is impossible to predict the dynamic ultra-short-term fluctuations, such as the prediction of the next 15 minutes to half an hour.

Method used

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  • Ultra-short-term power load forecasting and early warning method

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Embodiment 1

[0040] Example 1: Ultra-short-term load forecasting of power load in an industrial enterprise;

[0041] seefigure 1 Shown, in the embodiment of the present invention 1 described large-scale industrial enterprise power load forecasting method is to realize according to the following steps:

[0042] Step 1, read and process power load-related data: read the predicted power load data through the real-time database in the on-site energy system, and perform dimension unification, normalization and noise reduction processing on the data. The core part of the ultra-short-term power load forecasting system includes three modules: load forecasting, model training, and model early warning. According to the requirements of demand analysis and the realization of various functions, the use case diagram of the ultra-short-term load forecasting subsystem is as follows figure 1 shown.

[0043] The specific implementation method is:

[0044] (1) Select a certain time interval [t a ,t b ](...

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Abstract

The invention discloses an ultra-short-term power load forecasting and early warning method based on a Kalman filter and wavelet echo state network. In order to solve the problem that noise and the like are contained in power load data, a Kalman filtering method is adopted to conduct real-time estimating on 'collected data', with the help of a forgetting factor, the weight of old-fashioned data is weakened, and prediction accuracy is improved. Before ultra-short-term load forecasting is conducted, firstly, a principal component is used for analyzing and determining main working procedures for influencing the change of a power load, the main working procedures are used as the input of a power load capacity prediction model, afterwards, wavelets are used for decomposing the loads of different spectral characteristics (high frequency, follow-up and stability) of the power load, echo state network singe power loads are respectively established for predicting and modeling, various forecasting components are integrated to obtain a total load variation trend, and ultimately an early warning test is conducted on the prediction model specified by a user.

Description

Technical field: [0001] The invention relates to a power load forecasting and early warning method, in particular to an ultra-short-term power load forecasting and early warning method based on Kalman filter and wavelet echo state network, belonging to the field of information technology. Background technique: [0002] Large-scale industrial enterprises are large consumers of power loads. The production process is composed of many interrelated production links. The power consumption of each link is determined by its power consumption characteristics and production operation conditions. The total load of the power grid is closely related to the production and operation status of the enterprise. The particularity of production leads to high frequency and large amplitude of power load shocks in some processes, which show significantly different characteristics from the usual regional power grids. Although the enterprise's self-provided power plant has sufficient power generatio...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06Q50/06
Inventor 崔展博张庆新王路平梅莉陈磊吕品
Owner SHENYANG AEROSPACE UNIVERSITY
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