Authors
Jan Madsen, Thomas K Stidsen, Peter Kjaerulf, Shankar Mahadevan
Publication date
2006/10/11
Book
IFIP Working Conference on Distributed and Parallel Embedded Systems
Pages
185-194
Publisher
Springer US
Description
In this paper we present a multi-objective genetic algorithm to solve the problem of mapping a set of task graphs onto a heterogeneous multiprocessor platform. The objective is to meet all real-time deadlines subject to minimizing system cost and power consumption, while staying within bounds on local memory sizes and interface buffer sizes. Our approach allows for mapping onto a fixed platform or onto a flexible platform where architectural changes are explored during the mapping.
We demonstrate our approach through an exploration of a smart phone, where five task graphs with a total of 530 tasks after hyper period extension are mapped onto a multiprocessor platform. The results show four non-inferior solutions which tradeoffs the various objectives.
Total citations
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Scholar articles
J Madsen, TK Stidsen, P Kjaerulf, S Mahadevan - IFIP Working Conference on Distributed and Parallel …, 2006