Digital Twins
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.51 GB | Duration: 4h 24m
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.51 GB | Duration: 4h 24m
From Concept to Application: Designing and Deploying Digital Twins in Complex Systems
What you'll learn
Explain the core concepts, architecture, and components of Digital Twin systems
Design and model Digital Twins using engineering principles
Evaluate the integration of AI, IoT, and simulation in Digital Twin applications
Apply Digital Twin solutions to real-world domains such as manufacturing, agriculture, and healthcare
Identify and apply Digital Twin Patterns
Requirements
A basic understanding of systems engineering or software development is helpful but not required.
Description
SummaryThe concept of Digital Twins has emerged as a transformative paradigm in the design, analysis, and operation of complex physical, cyber-physical, and socio-technical systems. A Digital Twin is more than just a model—it is a living, data-driven representation of a real-world entity that enables simulation, prediction, monitoring, and control in real time. This course explores the foundational concepts of Digital Twins, their reference architectures, common design patterns, and their powerful synergy with AI agents and data science methodologies. We will examine how Digital Twins enable intelligent system behavior, decision-making, and adaptation across various domains such as smart manufacturing, healthcare, agriculture, mobility, and infrastructure.The course offers a systematic overview of how to conceptualize, design, and evaluate Digital Twins using principles from systems engineering, software architecture, and artificial intelligence. Upon completion, learners will have a deep understanding of the Digital Twin paradigm, practical design strategies, and the role of AI and data technologies in enabling high-fidelity twin systems.Key Topics· Core concepts and definitions of Digital Twins· Digital Twin reference architectures· Digital Twin design patterns· Integration of AI agents with Digital Twins· Role of data science and machine learning· Modeling and simulation in Digital Twin environments· Synchronization between physical and virtual systems· Applications across sectors (e.g., health, agriculture, energy, mobility)· Challenges in scalability, interoperability, and real-time data handlingKey Learning Objectives· Understand the fundamental principles and lifecycle of Digital Twins· Analyze and design Digital Twin reference architectures· Apply common design patterns for structuring Digital Twin systems· Integrate AI agents and data-driven intelligence in Digital Twin environments· Evaluate synchronization, data pipelines, and real-time feedback mechanisms· Recognize domain-specific applications and limitations of Digital Twins· Assess the ethical and societal impact of implementing Digital TwinsLearn from a university professor with 30+ years of experience in systems engineering, software architecture, and AI!
Overview
Section 1: Foundations of Digital Twins
Lecture 1 What is a Digital Twin?
Lecture 2 Modeling and the Evolution Toward Digital Twins
Lecture 3 What Makes Digital Twins Feasible?
Lecture 4 Digital Twins Conceptual Architecture
Lecture 5 Core Terminology
Lecture 6 Key Uses Cases of Digital Twins
Lecture 7 Application Domains of Digital Twins
Section 2: Digital Twin Design Patterns
Lecture 8 Design Principles for Digital Twins
Lecture 9 Design Patterns
Lecture 10 Digital Twins Patterns Overview
Lecture 11 Digital Model Pattern
Lecture 12 Digital Generator Pattern
Lecture 13 Digital Shadow Pattern
Lecture 14 Digital Matching Pattern
Lecture 15 Digital Proxy Pattern
Lecture 16 Digital Restoration Pattern
Lecture 17 Digital Monitor Pattern
Lecture 18 Digital Control Pattern
Lecture 19 Digital Autonomy Pattern
Lecture 20 Selecting Digital Twin Patterns
Section 3: AI and Data Science Integration
Lecture 21 AI for Digital Twins
Lecture 22 Digital Twins for AI
Lecture 23 Challenges and Future Work
Engineers and system architects seeking to implement Digital Twins in real-world applications,Data scientists and AI professionals interested in integrating analytics and machine learning with Digital Twin systems,Software developers aiming to understand the modeling and architectural foundations of Digital Twins,Researchers and graduate students in computer science, systems engineering, or industrial engineering,Technology managers and decision-makers exploring the strategic value of Digital Twins for digital transformation,Professionals in domains such as manufacturing, agriculture, healthcare, energy, or smart cities looking to apply Digital Twin technologies,Anyone curious about how physical systems can be digitally represented, simulated, and optimized in real time