SystemC Kernel Extensions for Heterogeneous System Modeling: A Framework for Multi-MoC Modeling & Simulation
β Scribed by Hiren D. Patel, Sandeep K. Shukla
- Publisher
- Springer
- Year
- 2004
- Tongue
- English
- Leaves
- 194
- Series
- Solid Mechanics and Its Applications
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
SystemC Kernel Extensions for Heterogeneous System Modeling is a result of an almost two year endeavour on our part to understand how SystemC can be made useful for system level modeling at higher levels of abstraction. Making it a truly heterogeneous modeling language and platform, for hardware/software co-design as well as complex embedded hardware designs has been our focus in the work reported in this book.
π SIMILAR VOLUMES
<p><STRONG>SystemC Kernel Extensions for Heterogeneous System Modeling</STRONG> is a result of an almost two year endeavour on our part to understand how SystemC can be made useful for system level modeling at higher levels of abstraction. Making it a truly heterogeneous modeling language and platfo
<p>Robert Siegfried presents a framework for efficient agent-based modeling and simulation of complex systems. He compares different approaches for describing structure and dynamics of agent-based models in detail. Based on this evaluation the author introduces the βGeneral Reference Model for Agent
<P>The growing mobility needs of travellers have led to the development of increasingly complex and integrated multi-modal transit networks. Hence, transport agencies and transit operators are now more urgently required to assist in the challenging task of effectively and efficiently planning, manag
The modeling of healthcare components and systems in order to develop a complete understanding of component interactions is one of the more challenging simulation and modeling problems for software agent systems. Multi-Agent Systems for Healthcare Simulation and Modeling: Applications for System I
The Neural Simulation Language (NSL), developed by Alfredo Weitzenfeld, Michael Arbib, and Amanda Alexander, provides a simulation environment for modular brain modeling. NSL is an object-oriented language offering object-oriented protocols applicable to all levels of neural simulation. One of NSL's