2023
DOI: 10.1108/gs-12-2022-0119
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Learning latent dynamics with a grey neural ODE prediction model and its application

Abstract: PurposeIn this study, a new neural differential grey model is proposed for the purpose of accurately excavating the evolution of real systems.Design/methodology/approachFor this, the proposed model introduces a new image equation that is solved by the Runge-Kutta fourth order method, which makes it possible to optimize the sequence prediction function. The novel model can then capture the characteristics of the input data and completely excavate the system's evolution law through a learning procedure.FindingsT… Show more

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Cited by 5 publications
(1 citation statement)
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“…Professor Deng cleverly developed the grey system approach to look into the evolutionary laws of the restricted data system in order to solve a system where sufficient data are absent. Due to its increased data utilisation and improved forecasting performance after Deng's seminal work, the grey system theory has been widely applied in the energy fields (Sapnken et al, 2023;Wang et al, 2023). This could be anticipated to provide more remarkable and effective prediction methods for electricity demand (Guefano et al, 2021).…”
Section: Convolution Model To Electricity Demandmentioning
confidence: 99%
“…Professor Deng cleverly developed the grey system approach to look into the evolutionary laws of the restricted data system in order to solve a system where sufficient data are absent. Due to its increased data utilisation and improved forecasting performance after Deng's seminal work, the grey system theory has been widely applied in the energy fields (Sapnken et al, 2023;Wang et al, 2023). This could be anticipated to provide more remarkable and effective prediction methods for electricity demand (Guefano et al, 2021).…”
Section: Convolution Model To Electricity Demandmentioning
confidence: 99%