Modern manufacturing faces a critical disconnect between digital design and physical execution, leaving production vulnerable to material volatility and supply chain shocks. My research bridges this gap by establishing a cognitive manufacturing infrastructure that grounds machine intelligence in fundamental physical laws. By integrating multi-scale, physics-informed machine learning with multimodal sensor fusion, I develop high-fidelity digital twins capable of autonomous, real-time control. This framework transforms reactive operations into a self-optimizing ecosystem, securing high-tech supply chains from raw materials to final logistics.
Research topics
1. Upstream Supply Resiliency & Critical Materials Extraction.
2. Multi-Scale, Multi-Physics Modeling & Digital Twin Anchoring.
3. Precision Nano-Fabrication & Scalable Quantum Devices
4. Closed-Loop Metrology & Non-Destructive Evaluation (NDE)