2025 International Conference on Smart Manufacturing, Structural Health Monitoring and Digital Twin
Call For Papers
Home / Call For Papers



Call For Papers

2025 International Conference on Smart Manufacturing, Structural Health Monitoring and Digital Twin (ICSSD 2025) will bring together leading researchers, engineers and scientists in the domain of interest from around the world.

The topics of interest for submission include, but are not limited to:

◕ Smart Manufacturing and Production Optimization

Smart Manufacturing & Industry 4.0

Advanced Manufacturing Processes

CNC Machining & Automation

Flexible & Lean Manufacturing

Smart Factories & Digital Production

Green & Sustainable Manufacturing

Additive Manufacturing (3D Printing)

Industrial Robotics Applications

Smart Workshop Management

MES & Intelligent Scheduling

Supply Chain Optimization

Human-Robot Collaboration

Digital Assembly & Commissioning

Production Simulation & Optimization

Intelligent Control & Decision Support


◕ Digital Twin and Intelligent Manufacturing Systems

Digital Twin in Smart Manufacturing

Virtual Manufacturing & Optimization

Digital Twin for Process Optimization

Digital Modeling in Smart Factories

Production Data Acquisition & Analysis

AI in Digital Production

5G & Edge Computing in Manufacturing

Digital Twin for Production Simulation

Digital Twin for Production Systems

Digital Twin for Predictive Maintenance

AR/VR in Smart Manufacturing

Manufacturing Data & Decision Making

Industrial Big Data Optimization

Digital Twin for Supply Chain

Cyber-Physical Systems in Manufacturing


◕ Equipment Monitoring and Intelligent Maintenance

Health Monitoring & Predictive Maintenance

Smart Sensor Technologies

CNC Machine Monitoring

Big Data-Driven Life Prediction

ML for Intelligent Maintenance

Fault Diagnosis & Prediction

Remote Monitoring & Maintenance

IIoT for Equipment Monitoring

Structural Health & Vibration Analysis

Self-Healing Materials & Smart Maintenance

Intelligent Lubrication & Tribology

Energy Efficiency & Maintenance

Digital Twin for Equipment O&M

Condition-Based Manufacturing

Industrial AI for Equipment Management