LGSYAug 4, 2025

Physics-Embedded Neural ODEs for Sim2Real Edge Digital Twins of Hybrid Power Electronics Systems

arXiv:2508.02887v12 citationsh-index: 57
Originality Incremental advance
AI Analysis

This addresses the challenge of Sim-to-Real generalization for monitoring and control on resource-constrained edge devices, representing a domain-specific incremental improvement.

The paper tackled the problem of modeling hybrid dynamics in Power Electronics Systems for Edge Digital Twins, proposing Physics-Embedded Neural ODEs (PENODE) that achieved significantly higher accuracy in benchmarks with a 75% reduction in neuron count.

Edge Digital Twins (EDTs) are crucial for monitoring and control of Power Electronics Systems (PES). However, existing modeling approaches struggle to consistently capture continuously evolving hybrid dynamics that are inherent in PES, degrading Sim-to-Real generalization on resource-constrained edge devices. To address these challenges, this paper proposes a Physics-Embedded Neural ODEs (PENODE) that (i) embeds the hybrid operating mechanism as an event automaton to explicitly govern discrete switching and (ii) injects known governing ODE components directly into the neural parameterization of unmodeled dynamics. This unified design yields a differentiable end-to-end trainable architecture that preserves physical interpretability while reducing redundancy, and it supports a cloud-to-edge toolchain for efficient FPGA deployment. Experimental results demonstrate that PENODE achieves significantly higher accuracy in benchmarks in white-box, gray-box, and black-box scenarios, with a 75% reduction in neuron count, validating that the proposed PENODE maintains physical interpretability, efficient edge deployment, and real-time control enhancement.

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