AI-Driven Manufacturing Process Optimization
by Abdelmoula Khdoudi
1. Research Objectives
1.1. Enhance process effeciency
1.2. Improve quality control
1.3. Develop advanced decision support
2. Key Contributions
2.1. Automated Parameter Setting
2.1.1. 15% reduction in tria runs
2.2. Predictive Quality Assurance
2.2.1. 90% accuracy in quality prediction
2.3. Real-time Process Optimization
2.3.1. 50% faster response to process drifts
2.4. Digital Twin for Process Simulation
2.4.1. 25% improvement in OEE
3. Methodologies
3.1. Machine Learning
3.1.1. Regression models
3.2. Deep Learning
3.2.1. Neural networks
3.3. Reinforcement Learning
3.3.1. Policy optimization
3.4. Digital Twin Technology
3.4.1. Virtual process simulation
4. Case Studies
4.1. Ultrasonic Welding
4.1.1. ML for parameter prediction
4.2. Tempered Glass Manufacturing
4.2.1. Real-time quality forecasting
4.3. Plastic Injection Molding
4.3.1. RL-based process optimization