May 26, 2026  
2026-2027 Catalog 
    
2026-2027 Catalog
Add to Portfolio (opens a new window)

MEC 221 - Advanced Industrial Robotics


Credits: 3
3 Skills Lab Hours

Prerequisites: MEC 112  

 
Description
This course builds on MEC 112,  Introduction to Robotics, through a series of hands-on exercises performed in the lab. Topics covered include fundamentals of computer vision including edge detection, lighting, neural networks and training data.  Students learn the process of inspecting robots for manufacturing, automated ground vehicles and concepts of autonomy and path planning. Students program multiple robotic systems, including collaborative robots in real-world workcell configurations throughout this course. 


Learning Outcomes
Upon successful completion of the course, the student will:

  1. Simulate physical workcells using digital models.
  2. Configure real-world workcell parameters using simulation data.
  3. Interface robots to other devices using robot, digital, group and other types of I/O.
  4. Describe the fundamentals of computer vision techniques.
  5. Train a neural network to function as an object classifier.
  6. Explain how systemic flaws in training data can produce artificial intelligence systems that have built-in bias.
  7. Share program execution data with a Manufacturing Execution System (MES).
  8. Troubleshoot issues with sensor data and data streams.
Listed Topics
  1. Computer vision
  2. Collaborative robots
  3. Object detection techniques
  4. Path planning and autonomy
  5. Integration with other systems
  6. Neural networks and machine learning
  7. Part inspection
  8. Workcell design
  9. Simulation software
Reference Materials
Instructor-approved textbook and materials
Students who successfully complete this course acquire general knowledge, skills and abilities that align with CCAC’s definition of an educated person. Specifically, this course fulfills these General Education Goals:
  • Information Literacy
  • Critical Thinking & Problem Solving
Approved By: Dr. Quintin B. Bullock Date Approved: 03/09/2026
Last Reviewed: 03/09/2026


Course and Section Search




Add to Portfolio (opens a new window)