Hard-Constrained Neural Networks with Physics-Embedded Architecture for Residual Dynamics Learning and Invariant Enforcement in Cyber-Physical Systems
About
This paper presents a framework for physics-informed learning in complex cyber-physical systems governed by differential equations with both unknown dynamics and algebraic invariants. First, we formalize the Hybrid Recurrent Physics-Informed Neural Network (HRPINN), a general-purpose architecture that embeds known physics as a hard structural constraint within a recurrent integrator to learn only residual dynamics. Second, we introduce the Projected HRPINN (PHRPINN), a novel extension that integrates a predict-project mechanism to strictly enforce algebraic invariants by design. The framework is supported by a theoretical analysis of its representational capacity. We validate HRPINN on a real-world battery prognostics DAE and evaluate PHRPINN on a suite of standard constrained benchmarks. The results demonstrate the framework's potential for achieving high accuracy and data efficiency, while also highlighting critical trade-offs between physical consistency, computational cost, and numerical stability, providing practical guidance for its deployment.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Dynamics Modeling | MassSpring Standard Benchmark (CS2) | MAE0.011 | 6 | |
| Battery Prognostics | Battery Prognostics CS1 | MAE (Voltage)0.0377 | 4 | |
| Dynamics Modeling | RobotArm Standard Benchmark (CS2) | MAE0.0021 | 3 | |
| Dynamics Modeling | RigidBody Standard Benchmark (CS2) | MAE0.0186 | 3 | |
| Dynamics Modeling | TwoBody CS2 | MAE0.239 | 3 | |
| Dynamics Modeling | LotkaVolterra CS2 | MAE0.0687 | 3 |