Week 1: Lecture 1 : Introduction to Automation, Principles and Strategies of Automation and enhancement of Productivity
Lecture 2 : Essential Elements of an Automated System
Week 2: Lecture 3 : Autonomous Mining System I: Autonomous Haulage Systems
Lecture 4 : Autonomous Mining System II: Automated Drilling System
Lecture 5 : Autonomous Mining System III: Fleet Management System: TDS
Week 3: Lecture 6 : Computerised Maintenance Management System, ERP for Mining Industry
Lecture 7 : Mine Robotics: Mining Remote Operations & Control
Week 4: Lecture 8 Proximity Sensors and Control Systems
Lecture 9 Radar Systems, RFID in Mining Engineering
Lecture 10 Geo-fencing, CCD camera in Mining for safety and management
Week 5: Lecture 11 Global Navigational Satellite System in Mining production planning and efficient control of the machine
Lecture 12 Automated Communication and Tracking Technologies: Image Processing
Week 6: Lecture 13 Automated Communication and Tracking Technologies: SCADA
Lecture 14 Virtual Reality Applications: Mining Equipment Concept development, Mine Safety Applications, Mining operation simulations – Part 1
Lecture 15 Virtual Reality Applications: Mining Equipment Concept development, Mine Safety Applications, Mining operation simulations – Part 2
Week 7: Lecture 16 Virtual Reality Applications: Mining Equipment Concept development, Mine Safety Applications, Mining operation simulations – Part 3
Lecture 17 Descriptive Statistics: Introduction
Week 8: Lecture 18 Probability Distributions and Inferential Statistics: Hypothesis tests – Part 1 Lecture 19 Probability Distributions and Inferential Statistics: Hypothesis tests – Part 2
Lecture 20 Probability Distributions and Inferential Statistics: Hypothesis tests – Part 3
Week 9: Lecture 21 Probability Distributions and Inferential Statistics: Hypothesis tests – Part 4
Lecture 22 Regression & ANOVA
Week 10: Lecture 23 Machine Learning: Introduction
Lecture 24 Perceptron: Linear Classifier
Lecture 25 Support Vector Machine
Week 11: Lecture 26 Concepts of Supervised Learning: Neural Networks, Deep learning
Lecture 27 Unsupervised Learning and Challenges for Big Data Analytics: Clustering
Week 12: Lecture 28 Application of Big Data Analytics and Artificial Intelligence (AI) in Mining
Lecture 29 Case studies on Cognitive Maintenance of Mining Systems
Lecture 30 Case studies on Orebody modelling and Mine Design etc.
DOWNLOAD APP
FOLLOW US