Long-term load combined prediction method based on multiple linear regression and gray Verhulst model

A multiple linear regression and combined forecasting technology, applied in forecasting, data processing applications, instruments, etc., can solve the problems that it is difficult to fully consider the characteristics of load data changes, and achieve the effect of improving accuracy

Inactive Publication Date: 2020-02-04
WUHAN UNIV
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Problems solved by technology

Existing studies have shown that a single long-term load forecasting method often performs better in individual aspects, but it is difficult to fully consider the changing characteristics of load data. Therefore, it is necessary to study a long-term load forecasting method that can comprehensively consider the changing characteristics of load in each period

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  • Long-term load combined prediction method based on multiple linear regression and gray Verhulst model
  • Long-term load combined prediction method based on multiple linear regression and gray Verhulst model
  • Long-term load combined prediction method based on multiple linear regression and gray Verhulst model

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Embodiment Construction

[0034] Embodiments of the present invention will be described in detail below in conjunction with the accompanying drawings.

[0035] This embodiment solves the problem of power forecasting in long-term power load forecasting, and can predict power consumption for as long as 10 to 20 years. First, the gray Verhusl model is used to predict future electricity consumption based on historical electricity consumption. Second, use linear forecasting, that is, use multiple factors to linearly predict future electricity consumption, and the selection of these factors is to exclude insignificant independent variables through Stepwise Regression. Finally, using the combination method, the final long-term load forecasting results are obtained by combining the two forecasting results.

[0036] This embodiment is realized through the following technical solutions, a long-term load combination forecasting method based on the multiple linear regression model and the gray Verhulst model, whi...

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Abstract

The invention relates to power system automation technology, in particular to a long-term load combined prediction method based on multiple linear regression and a gray Verhulst model, which comprises the following steps of: collecting load prediction data; constructing a multiple linear regression model; creating a gray Verhulst model, and the gray Verhulst model; creating a combined predictionmodel. The divergence and convergence of load curve growth are comprehensively considered;. Firstly, a multiple linear regression model capable of embodying load growth divergence is constructed, then, a gray Verhulst model capable of embodying load growth convergence is constructed, and finally, a combined prediction model is constructed by integrating two single models, so that the problem thatchange characteristics of load data are difficult to comprehensively consider in long-term load prediction is solved. The change rule of the load can be comprehensively mastered, and the accuracy of long-term load prediction is improved.

Description

technical field [0001] The invention belongs to the technical field of power system automation, in particular to a long-term load combination forecasting method based on multiple linear regression and gray Verhulst models. Background technique [0002] Accurate power load forecasting can provide support for power industry planning, power enterprise investment decision-making, and operation management. In the past few decades of long-term load forecasting development, the research on forecasting methods has been very in-depth. Many mathematical algorithms have been combined with power load forecasting. There are also many disciplines and power load forecasting that have conducted cross-research, and many research results have been achieved. . Existing studies have shown that a single long-term load forecasting method often performs better in individual aspects, but it is difficult to fully consider the changing characteristics of load data. Therefore, it is necessary to stud...

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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 刘志雄陈红坤
Owner WUHAN UNIV
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