CNN-BiLSTM-AE-based short-term power load prediction method

The invention relates to a short-term load prediction method and system based on a combined deep learning model. In the invention, a short-term power load prediction model is developed, and a real load data set in a certain region of Australian is utilized to evaluate the short-term power load predi...

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Main Authors XU QIHANG, CAI HANFEI, CHEN XI
Format Patent
LanguageChinese
English
Published 24.10.2023
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Abstract The invention relates to a short-term load prediction method and system based on a combined deep learning model. In the invention, a short-term power load prediction model is developed, and a real load data set in a certain region of Australian is utilized to evaluate the short-term power load prediction model. The method comprises the following steps: firstly, preprocessing input data to delete missing, redundancy and outliers; next, different normalization technologies are applied to better represent the input data, so that an effective model is generated; furthermore, a new model CNN-BiLSTM-AE is developed by the invention. The model compares three prediction modules: CNN, BiLSTM-AE and FC. Firstly, two CNN layers are used for extracting information from several variables in a data set, then the information is input into BiLSTM-AE, BiLSTM converts a sequence into a coded feature vector, and then decoding is carried out through another BiLSTM. The coded feature vector layer copies the coded sequences, and f
AbstractList The invention relates to a short-term load prediction method and system based on a combined deep learning model. In the invention, a short-term power load prediction model is developed, and a real load data set in a certain region of Australian is utilized to evaluate the short-term power load prediction model. The method comprises the following steps: firstly, preprocessing input data to delete missing, redundancy and outliers; next, different normalization technologies are applied to better represent the input data, so that an effective model is generated; furthermore, a new model CNN-BiLSTM-AE is developed by the invention. The model compares three prediction modules: CNN, BiLSTM-AE and FC. Firstly, two CNN layers are used for extracting information from several variables in a data set, then the information is input into BiLSTM-AE, BiLSTM converts a sequence into a coded feature vector, and then decoding is carried out through another BiLSTM. The coded feature vector layer copies the coded sequences, and f
Author CAI HANFEI
CHEN XI
XU QIHANG
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DocumentTitleAlternate 一种基于CNN-BiLSTM-AE短期电力负荷预测方法
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Snippet The invention relates to a short-term load prediction method and system based on a combined deep learning model. In the invention, a short-term power load...
SourceID epo
SourceType Open Access Repository
SubjectTerms CALCULATING
CIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTINGELECTRIC POWER
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
COUNTING
DATA PROCESSING SYSTEMS OR METHODS, SPECIALLY ADAPTED FORADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL, SUPERVISORYOR FORECASTING PURPOSES
ELECTRICITY
GENERATION
PHYSICS
SYSTEMS FOR STORING ELECTRIC ENERGY
SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE,COMMERCIAL, FINANCIAL, MANAGERIAL, SUPERVISORY OR FORECASTINGPURPOSES, NOT OTHERWISE PROVIDED FOR
Title CNN-BiLSTM-AE-based short-term power load prediction method
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