Short-term load forecasting method based on artificial neural network improved training strategy

An artificial neural network and short-term load forecasting technology, applied in forecasting, data processing applications, instruments, etc., can solve the problems of reduced forecasting accuracy, long load forecasting time, poor robustness of forecasting methods, etc., to improve forecasting accuracy and speed, The effect of simple operation of load forecasting and flexible network selection

Inactive Publication Date: 2016-01-13
JIANGSU ELECTRIC POWER CO +2
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Problems solved by technology

Although the above method has been proved to have achieved fruitful results in the field of short-term load forecasting, it has the following disadvantages: because the load in the urban core area is greatly affected by relevant factors, the load in different areas presents different regularities, and the robustness of the forecasting method is poor; most of the current research All studies are conducted on a single regional power grid, and the load characteristics of different urban areas are not systematically compare

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  • Short-term load forecasting method based on artificial neural network improved training strategy
  • Short-term load forecasting method based on artificial neural network improved training strategy
  • Short-term load forecasting method based on artificial neural network improved training strategy

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Embodiment Construction

[0038] The present invention is described in detail below in conjunction with accompanying drawing:

[0039] Such as figure 1 As shown, the specific training strategy of the improved Elman artificial neural network is as follows: the input training sample takes the load value of N time before / after M days before the short-term load to be predicted as the input value, and the load at this time of the M days before the time to be predicted is the value of each group The entered central value is fed into the predictive model for prediction. The output of the forecasting model is the forecasted load value at N moments before / after the day to be forecasted, and the central value of this group of data is the load at the time to be forecasted on the day to be forecasted.

[0040] Such as figure 2 As shown, the model training and prediction process steps of the present invention are as follows:

[0041] Step (1): Establish the Elman artificial neural network, set the number of neu...

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Abstract

The invention discloses a short-term load forecasting method based on an artificial neural network improved training strategy. The method comprises steps: an Elman artificial neural network is built, and pretreatment is carried out on original data to acquire a training sample; through setting different thresholds and weights, multiple groups of training results are acquired; by comparing the acquired multiple groups of training results, a forecast data set with the minimal error is recorded; initial hidden layer neuron numbers of the Elman artificial neural network are reset, and the training sample is substituted in the network for training; and an artificial neural network model corresponding to the group with the minimal validation sample error is selected as a forecasting model. A practice of multiple related day historical load data by inputting only one time point traditionally is changed into a practice of multiple related day historical load data by inputting multiple time points. When model forecasting is substituted, an intermediate value in a forecasting value sequence is only selected to serve as a target value for forecasting of the time, and influences on forecasting by edge effects and data fluctuation are avoided.

Description

technical field [0001] The invention relates to the technical field of power system load forecasting, in particular to a short-term load forecasting method based on an artificial neural network improved training strategy. Background technique [0002] With the continuous development of social economy and the rapid growth of urban power grid load, the requirements of modern production and life for power supply quantity and power supply quality have increased significantly. On the other hand, the load changes in the core area of ​​the urban power grid are complex and affected by many factors, which pose a challenge to the safe operation of the power grid dispatching department. How to quickly and accurately grasp the short-term load change characteristics of urban power grids and carry out accurate load forecasting is extremely important. [0003] Short-term load forecasting takes the continuous load change trend in the next few minutes, hours or days as the research object. ...

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Application Information

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IPC IPC(8): G06Q10/04G06Q50/06
Inventor 朱斌苏大威霍雪松张明吴海伟潘小辉孙凯祺王卓迪胡爽
Owner JIANGSU ELECTRIC POWER CO
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