System frequency response model modeling method based on AM-LSTM neural network

The invention discloses a system frequency response model modeling method based on an AM-LSTM neural network, and belongs to the field of power system frequency response model modeling. Aiming at themodeling problem of a wind-fire coupling system frequency response model, the invention provides a sy...

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Hauptverfasser: HU BO, HUANG CONGZHI, ZHANG JIANHUA, WANG YONGYUE, LI HONGRUI, HOU GUOLIAN, ZHOU GUIPING
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creator HU BO
HUANG CONGZHI
ZHANG JIANHUA
WANG YONGYUE
LI HONGRUI
HOU GUOLIAN
ZHOU GUIPING
description The invention discloses a system frequency response model modeling method based on an AM-LSTM neural network, and belongs to the field of power system frequency response model modeling. Aiming at themodeling problem of a wind-fire coupling system frequency response model, the invention provides a system frequency response model modeling method based on the combination of an attention mechanism and a long-short-term memory neural network, and the method comprises the steps: extracting the time sequence features inputted by the coupling system frequency response model through the attention mechanism; the wind-fire coupling system can be effectively utilized to input data; the long-short-term memory neural network is utilized to solve the problem of gradient disappearance of the recurrent neural network in the updating process, and in addition, the long-short-term memory neural network solves the problems that an existing coupling system frequency response model is difficult to describenonlinearity, uncertainty
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
HANDLING RECORD CARRIERS
PHYSICS
PRESENTATION OF DATA
RECOGNITION OF DATA
RECORD CARRIERS
title System frequency response model modeling method based on AM-LSTM neural network
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