Hybrid Time-Domain Behavior Model Based on Neural Differential Equations and RNNs
Journal:
arXiv
Published Date:
Mar 28, 2025
Abstract
Nonlinear dynamics system identification is crucial for circuit emulation.
Traditional continuous-time domain modeling approaches have limitations in
fitting capability and computational efficiency when used for modeling circuit
IPs and device behaviors.This paper presents a novel continuous-time domain
hybrid modeling paradigm. It integrates neural network differential models with
recurrent neural networks (RNNs), creating NODE-RNN and NCDE-RNN models based
on neural ordinary differential equations (NODE) and neural controlled
differential equations (NCDE), respectively.Theoretical analysis shows that
this hybrid model has mathematical advantages in event-driven dynamic mutation
response and gradient propagation stability. Validation using real data from
PIN diodes in high-power microwave environments shows NCDE-RNN improves fitting
accuracy by 33\% over traditional NCDE, and NODE-RNN by 24\% over CTRNN,
especially in capturing nonlinear memory effects.The model has been
successfully deployed in Verilog-A and validated through circuit emulation,
confirming its compatibility with existing platforms and practical value.This
hybrid dynamics paradigm, by restructuring the neural differential equation
solution path, offers new ideas for high-precision circuit time-domain modeling
and is significant for complex nonlinear circuit system modeling.