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Model Recovery at the Edge under Resource Constraints for Physical AI

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Model Recovery (MR) enables safe, explainable decision making in mission-critical autonomous systems (MCAS) by learning governing dynamical equations, but its deployment on edge devices is hindered by the iterative nature of neural ordinary differential equations (NODEs), which are inefficient on FPGAs. Memory and energy consumption are the main concerns when applying MR on edge devices for real-time operation. We propose MERINDA, a novel FPGA-accelerated MR framework that replaces iterative solvers with a parallelizable neural architecture equivalent to NODEs. MERINDA achieves nearly 11x lower DRAM usage and 2.2x faster runtime compared to mobile GPUs. Experiments reveal an inverse relationship between memory and energy at fixed accuracy, highlighting MERINDA's suitability for resource-constrained, real-time MCAS.

Bin Xu, Ayan Banerjee, Sandeep K.S. Gupta• 2025

Related benchmarks

TaskDatasetResultRank
Model RecoveryNonlinear Dynamics Models
Avg Error2.9
9
Model ReconstructionLotka Volterra
Reconstruction MSE0.03
6
Model ReconstructionF8 Cruiser
Reconstruction MSE5.1
6
Model ReconstructionPathogenic Attack
MSE (Reconstruction)15.1
6
Synthetic Dynamical System ModelingLorenz--
4
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