Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revisionPrevious revision
Next revision
Previous revision
en:safeav:softsys:summary [2026/04/09 12:16] airien:safeav:softsys:summary [2026/04/24 09:58] (current) raivo.sell
Line 1: Line 1:
 ====== Summary ====== ====== Summary ======
  
 +This chapter traces the evolution of software from programmable hardware foundations to a dominant force in modern computing systems. Early advances in hardware programmability—through configuration, programmable logic (e.g., FPGAs), and stored-program processors—enabled a separation between physical implementation and functional behavior. The introduction of stable computer architectures (notably IBM System/360) and operating systems created enduring abstractions that allowed software portability, scalability, and rapid innovation. Over time, networking and open-source ecosystems further accelerated the growth of information technology, establishing software as the central driver of capability across computing platforms.
  
 +As software methods entered cyber-physical systems (CPS)—including ground, airborne, marine, and space domains—they followed a distinct trajectory shaped by real-time constraints, safety requirements, and physical interaction. Initially introduced to enhance control and diagnostics, software evolved into the core coordinating layer for sensing, decision-making, and actuation, enabling autonomy. This transition was supported by the emergence of real-time operating systems (RTOSes), middleware, and layered software architectures that ensured deterministic behavior and modularity. Across all domains, systems evolved from isolated, hardware-centric designs to distributed, software-intensive platforms, with increasing reliance on standardized frameworks and communication protocols.
  
 +The chapter further highlights how software has transformed product development, supply chains, and validation practices. Cyber-physical systems are increasingly influenced by the faster-moving IT ecosystem, adopting open-source components, layered stacks, and continuous update models (e.g., software-defined vehicles). At the same time, safety standards (e.g., ISO 26262, DO-178C) and rigorous verification methods—such as hardware/software co-simulation (MIL, SIL, HIL)—have evolved to address the risks of software-driven behavior. Modern software supply chains are complex, incorporating third-party and open-source dependencies, requiring strong configuration management, traceability, and cybersecurity practices. Overall, the chapter emphasizes a fundamental shift: engineered systems are no longer hardware products with embedded software, but increasingly software platforms embodied in hardware.
  
 +
 +^ Stack Framework ^ Type ^ Core Covered Layers ^ Key Technologies ^ Domain Focus ^ Notes / Differentiation ^
 +| ROS 2 | Open-source middleware stack | Middleware, application | DDS, nodes, topics, Gazebo, RViz | Robotics, AV | De facto R&D standard; highly modular |
 +| AUTOSAR Adaptive | Automotive software platform | OS, middleware, apps | POSIX OS, SOME/IP, service-oriented | Automotive (ADAS/AV) | Designed for ISO 26262 + OTA updates |
 +| AUTOSAR Classic Platform | Embedded real-time stack | HAL, RTOS, basic software | OSEK or RTOS, CAN, ECU abstraction | Automotive ECUs | Deterministic, safety-certified |
 +| Apollo | Full autonomy stack | Full stack (perception → control) | Cyber RT, AI models, HD maps | Autonomous driving (L2–L4) | One of the most complete open AV stacks |
 +| Autoware | Open AV stack | Full autonomy pipeline | ROS 2, perception, planning modules | Automotive, robotics | Strong academic + industry ecosystem |
 +| NVIDIA DRIVE OS | Integrated platform | OS, middleware, AI runtime | CUDA, TensorRT, DriveWorks | Automotive autonomy | Tight HW/SW co-design with GPUs |
 +| QNX Neutrino | RTOS middleware | OS, safety layer | POSIX RTOS, microkernel | Automotive, industrial | Strong certification (ASIL-D) |
 +| VxWorks | RTOS | OS, middleware | Deterministic RTOS, ARINC653 | Aerospace, defense | Widely used in safety-critical systems |
 +| PX4 Autopilot | UAV autonomy stack | Control, middleware, perception | MAVLink, EKF, control loops | UAV / drones | Industry standard for drones |
 +| ArduPilot | UAV autonomy stack | Control + navigation | Mission planning, sensor fusion | UAV, marine robotics | Broad vehicle support (air/land/sea) |
 +| MOOS-IvP | Marine autonomy stack | Middleware | Behavior-based robotics | Marine robotics | Optimized for low bandwidth environments |
 +| DDS (Data Distribution Service) | Middleware standard | Communication layer | QoS messaging, pub-sub | Cross-domain CPS | Backbone of ROS 2 and many systems |
 +| AWS RoboMaker | Cloud robotics stack | Cloud, simulation | DevOps, ROS integration | Robotics, AV | Enables CI/CD + simulation workflows |
 +| Microsoft AirSim | Simulation stack | Simulation layer | Unreal Engine, physics models | UAV, AV | High-fidelity perception simulation |
 +| CARLA | Simulation stack | Simulation layer | OpenDRIVE, sensors, physics | Automotive | Widely used for AV validation |
 +| Gazebo | Simulation stack | Simulation integration | Physics engine, ROS integration | Robotics | Standard for ROS-based systems |
  
  
  
en/safeav/softsys/summary.1775726187.txt.gz · Last modified: by airi
CC Attribution-Share Alike 4.0 International
www.chimeric.de Valid CSS Driven by DokuWiki do yourself a favour and use a real browser - get firefox!! Recent changes RSS feed Valid XHTML 1.0