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DDE_Find.zip from DDE-Find: learning delay differential equations from noisy, limited data

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Figshare2025-02-18 更新2026-04-28 收录
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https://figshare.com/articles/dataset/DDE_Find_zip_from_DDE-Find_learning_delay_differential_equations_from_noisy_limited_data/28439688
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资源简介:
Delay differential equations (DDEs) are a class of differential equations that can model diverse scientific phenomena. However, identifying the parameters, especially the time delay, that make a DDE’s predictions match experimental results can be challenging. We introduce DDE-Find, a data-driven framework for learning a DDE’s parameters, time delay and initial condition function. DDE-Find uses an adjoint-based approach to efficiently compute the gradient of a loss function with respect to the model parameters. We motivate and rigorously prove an expression for the gradients of the loss using the adjoint. DDE-Find builds upon recent developments in learning DDEs from data and delivers the first complete framework for learning DDEs from data. Through a series of numerical experiments, we demonstrate that DDE-Find can learn DDEs from noisy, limited data.
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2025-02-18
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