Trending Now: FEA, CFD & Artifical Intelligence Simulation and Design for Medical and Biomedical Applications Physics-Informed Neural Networks (PINNs) & Surrogate Modeling|Reduced-Order Models (ROMs). VTOL, e-VTOL and UAM - Urban Air Mobility.
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Physics-Informed Machine Learning (PIML), Ansys, Simulia, Siemens, Integrated FEA | CFD with Artificial Intelligence & Machine Learning
Artificial Intelligence & Machine Learning Powers the Future of Simulation.
Simulation Dynamics
  • We hardwire fundamental physics into AI/ML models through governing PDEs, achieving <2% deviation from experimental benchmarks while accelerating simulations 10-50x compared to traditional methods.
    • Navier-Stokes Solutions:
      • Variational PINNs enforcing mass/momentum conservation with <1% continuity error
      • Turbulence modeling via embedded LES filters (resolving 90% of eddy scales)
      • Applications: Supersonic flow prediction, non-Newtonian fluid behavior
    • Structural Mechanics:
      • Constitutive law embedding for J2 plasticity and hyperelasticity
      • Fracture prediction via phase-field informed neural networks
      • Applications: Crash simulation, fatigue crack propagation in alloys
    • Multiphysics Systems:
      • Coupled PDE formulations for FSI with <3% energy conservation error
      • Thermo-electro-mechanical modeling of MEMS/piezoelectric devices
      • Applications: Battery thermal runaway, aeroelastic flutter prediction
    • Digital Twins:
      • Real-time ROMs updating at 100Hz+ via LSTM-encoded physics
      • Predictive maintenance with 85%+ fault detection accuracy
      • Applications: Turbine health monitoring, smart HVAC control
Key Advantage: Bridges the gap between data-driven ML and first-principles physics—delivering certified results for mission-critical systems while reducing computational costs by 90% versus high-fidelity simulation.