A framework for evaluating network optimization techniques

Sarnoff Symposium(2012)

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摘要
There is little understanding about how network applications can benefit from mathematical/heuristic optimization techniques, such as cross-layer design. We propose CLASS, a component-based framework for evaluating and comparing network optimization techniques, such as cross-layer design. CLASS uniquely integrates network optimization with high-fidelity simulation to provide an “optimize-and-verify” loop to network designers. Within CLASS framework, we propose two optimization algorithms. One algorithm (ROCA) jointly optimizes routing and channel assignment for cognitive-radio networks. The other algorithm (Flow-Aware Routing or FAR) jointly optimizes routes and MAC schedules in single-channel networks. Both algorithms exploit spatial diversity by reusing channels or slots. We discuss the benefits and applicability of both algorithms in the context of surveillance applications.
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关键词
channel allocation,cognitive radio,heuristic programming,optimisation,radio networks,scheduling,telecommunication network routing,class component-based framework,far,mac scheduling,roca,channel assignment,cognitive-radio networks,cross-layer design,flow-aware routing,high-fidelity simulation,mathematical-heuristic optimization techniques,network optimization techniques,optimize-and-verify loop,single-channel networks,spatial diversity,manet design,tdma scheduling,evaluation framework,routing,network design,interference,optimization,algorithm design and analysis,throughput,cognitive radio networks,cognitive radio network
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