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Quantile probabilistic short-term power load prediction integration method

A short-term power load and power load technology, applied in forecasting, probabilistic networks, integrated learning, etc., can solve problems such as integrated research on probability forecasting without quantiles, and achieve improved probabilistic load forecasting accuracy, good application prospects, and improved forecasting. The effect of precision

Active Publication Date: 2018-11-20
TSINGHUA UNIV
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Problems solved by technology

In the context of increasing load uncertainty due to load diversification, probabilistic power load forecasting models have been proposed more and more. However, in the field of power load forecasting, there is no related research on the integration of quantile probability forecasting. Research

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  • Quantile probabilistic short-term power load prediction integration method
  • Quantile probabilistic short-term power load prediction integration method
  • Quantile probabilistic short-term power load prediction integration method

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Embodiment Construction

[0053] Quantile probabilistic short-term power load forecasting method proposed by the present invention, its flow chart is as follows figure 1 shown, including the following steps:

[0054] (1) Divide the historical power load data D of the electric power system with a length of T into the length T according to the set ratio 1 and T 2 The two datasets D 1 and D 2 , the ratio is 4:1 in one embodiment of the present invention;

[0055] (2) For the above electric load data set D 1 Carry out sampling with replacement (bootstrap sampling) to form M data sets, respectively D 11 ,D 12 ,...D 1m ,...D 1M , m=1, 2, 3, ..., M;

[0056] (3) Train the above M data sets D respectively 11 ,D 12 ,...D 1m ,...D 1M The neural network quantile regression model, random forest quantile regression model and progressive gradient regression tree quantile regression model, including the following steps;

[0057] (3-1) For any data set D in M ​​data sets 1m , to the data set D 1m The n...

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Abstract

The invention relates to a quantile probabilistic short-term power load prediction integration method, and belongs to the technical field of power system analysis. The method comprises the steps of: dividing historical load data into two parts, wherein the first part is used for training a single quantile probabilistic prediction model; and the second part is used for determining the weights of multiple prediction methods, so that load prediction is integrated; performing bootstrap sampling on the first part of data, so that multiple new training data sets are obtained; for each training dataset, training three regression models including a neural network quantile regression model, a random forest quantile regression model and a gradual gradient regression tree quantile regression model;and, establishing an optimization model by taking the quantile loss minimization as a target function on the second part of data set, and determining the weights of all kinds of quantile regression models, so that a quantile probabilistic integration load prediction model is finally obtained. By means of the method in the invention, on the basis of all kinds of single prediction models, the probabilistic load prediction precision is further improved; and the running cost of the power system is easily reduced.

Description

technical field [0001] The invention relates to a quantile probabilistic short-term power load forecasting integration method, which belongs to the technical field of power system analysis. Background technique [0002] Load forecasting is the basis of power system planning and operation. High-precision load forecasting can assist the power system to make better decisions, thereby effectively reducing the corresponding planning and operating costs. Traditional point forecasting can only provide an estimate of future load, but cannot describe the uncertainty of future load. However, in recent years, with the continuous growth of distributed renewable energy and the access of energy storage and electric vehicles, the power load has shown stronger uncertainty. So more and more scholars carry out the research of probabilistic load forecasting. Probabilistic load forecasting can represent the uncertainty of the load to be forecasted in the form of confidence intervals, probabi...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06Q50/06
CPCG06Q10/04G06Q50/06G06N20/20G06N3/08Y04S10/50G06N5/01G06N7/01G06N3/04
Inventor 王毅张宁康重庆杜尔顺
Owner TSINGHUA UNIV
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