T4R - Learning journey

Learning with Microlearning Units

Applications of Efficient Data Flows

FRAMEWORK:
TECHNICAL DESIGN

MODULE:
Data Flows in Digital Twins

EQF 6

TEC-206

Cities face the challenge of transforming fragmented data into actionable insights for decision-making using Local Digital Twins (LDTs). The core issue is not merely accumulating data but optimizing the flow of information to be efficient, secure, and aligned with governance for real-time applications like traffic optimization and emergency alerts. To address this, Local Digital Twins must incorporate efficient data flows using a five-layer architecture framework. This ensures purposeful, secure, resilient, and responsive flows, enabling effective decision-making. Minimizing interoperability barriers and fostering continuous feedback loops transitions digital models into full-fledged, bi-directional digital twins. This learning unit explores designing data flows using real-world case studies, emphasizing the importance of each flow layer—from sensors to application interfaces. By applying the Triple-Loop Learning model and Minimal Interoperability Mechanisms, participants map and critique data flows for better local governance and transformative public value realization.

TEC-200

third loop

Applications of Efficient Data Flows

Learner analyzes city use cases such as traffic management and energy balancing to describe how efficient data flows create public value. Learner assesses data-flow methodologies using the five-layer architecture and the Data → Insight → Decision → Action → Feedback loop. Learner leads peers in designing, improving, and replicating value-driven Local Digital Twin data flows.

Privacy Overview

This website uses cookies so that we can provide you with the best user experience possible. Cookie information is stored in your browser and performs functions such as recognising you when you return to our website and helping our team to understand which sections of the website you find most interesting and useful.