Track 3 - Real-Time Systems and Applications
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Industry is increasingly depended on real-time behavior, e.g., by embedded systems that support complex functionality, distributed intelligence, and adaptive behavior. Some of these features are deployed locally, leveraging increasingly powerful computing architectures, while others are offloaded to edge or remote computing infrastructures through ubiquitous connectivity and global networks. This track focuses on the challenges arising from the design of real-time systems, under power, reliability, resource, and other system constraints.
Topics under this track include:
- Real-time and worst-case analysis and performance modeling
- Analytical and empirical evaluation methods for real-time systems
- Formal modeling, verification, and validation techniques for real-time guarantees
- Timing predictability, composability, and isolation in real-time systems
- Multi-/many-core, and SoC-based embedded systems for real-time applications
- Hardware–software integration and co-design for real-time systems
- Energy-aware design and performance optimization under real-time constraints
- Adaptive and (self-)reconfigurable real-time systems
- Mixed-criticality real-time systems
- Reliable, fault-tolerant, and dependable real-time systems
- Safety- and mission-critical real-time systems
- Wired industrial real-time communication systems (e.g., PROFINET, TSN)
- Wireless industrial real-time communication (e.g., sensor and actuator networks, Industrial Internet of Things (IIoT))
- Software-defined networks for real-time applications
- Edge and cloud architectures for real-time applications
- Security aspects of real-time communication and embedded systems
- Privacy-enhancing technologies for real-time systems
- Software development for embedded and real-time systems
- Design tools and methodologies for real-time embedded systems
- Industrial case studies, system integration, and deployment experience of real-time systems
- AI- and data-driven techniques in real-time and embedded systems