Space power load prediction method based on load density coordination coefficient

A technology of load density and coordination coefficient, used in forecasting, data processing applications, instruments, etc., can solve problems such as uneven distribution

Inactive Publication Date: 2016-06-01
STATE GRID CORP OF CHINA +2
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Problems solved by technology

[0005] The purpose of the present invention is to propose a scientific and reasonable, highly applicable, and effective space power load forecasting method based on the coordination coefficient of load density. By introducing a new coordination coefficient algorithm, it can better reflect the similar loads in different cells. Different load densities, as well as the development trend of the coordination coefficient of the load density of the same cell, and can overcome the problem of uneven distribution of similar loads in different cells; Constraint relationship among them, realizing in-depth mining of historical load data and spatial power load forecasting

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  • Space power load prediction method based on load density coordination coefficient
  • Space power load prediction method based on load density coordination coefficient
  • Space power load prediction method based on load density coordination coefficient

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[0049] Utilize example below to further illustrate the present invention.

[0050] A kind of space power load forecasting method based on load density coordination coefficient of the present invention comprises the following steps:

[0051] When the load of each 10kV feeder in the area to be predicted and its power supply range are known, the power geographic information system (geographic information system, GIS) is used. In the power GIS environment, combined with the current land use information, the location and area of ​​the classified load within the power supply range of each feeder can be obtained, so that the relationship equation between the load of each feeder and the classified load density can be established, and the calendar year can be obtained by the least square method According to the obtained classification load density index and load density coordination coefficient, predict the size of classification load density index and load density coordination coeffic...

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Abstract

The invention brings forward a space power load prediction method based on a load density coordination coefficient. The method is characterized by comprising the steps of generating cells, determining classification load density coordination coefficients, solving classification load density indexes and establishing a model. Through introducing a new coordination coefficient calculation method, different load densities of the same kind of loads in the different cells and the development trend of the load density coordination coefficient of the same cell can be better demonstrated, and the problem of nonuniform distribution of the same kind of loads in the different cells can be overcome. According to the invention, deep excavation of historical load data is realized according to constraint relations between actually measured cell historical loads and power supply areas, land information and classification load densities, and the load on each unit area is predicted under specific power load space resolution. The method provided by the invention has the advantages of being scientific and reasonable and being easy and simple to implement, accuracy in prediction and high in adaptability, thereby being suitable for city space load prediction.

Description

technical field [0001] The invention relates to a spatial electric load forecasting method based on load density coordination coefficient, which is suitable for spatial load forecasting of power grids. Background technique [0002] The main task of Spatial Load Forecasting (SLF) is to predict the location and size of future loads, which is an indispensable part of urban power grid planning. The prediction results are the basis for determining the capacity and distribution of power supply equipment required. The accuracy of the results has a profound impact on the economy and safety of urban power grid construction and operation. [0003] The SLF method is mainly classified from the theory of forecasting algorithm, which can be generally divided into: trend method, multivariate method, land use simulation method, and load density index method. The prediction accuracy of the trend method is not high, so it is not commonly used at present; the multivariate method requires rela...

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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 牛湘智李介夫高洁张焱王传宇张东健韩东韩洁平闫晶王燕涛李勇
Owner STATE GRID CORP OF CHINA
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