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Qiu et al., 2015 - Google Patents

A decoupling receding horizon search approach to agent routing and optical sensor tasking based on brain storm optimization

Qiu et al., 2015

Document ID
2589460137626950947
Author
Qiu H
Duan H
Shi Y
Publication year
Publication venue
Optik

External Links

Snippet

Search problem of unmanned air vehicles (UAVs) is a rather complicated multi-objective optimization problem with different constrains under complex combat field environment, the crux of which is the joint optimization for agent and optical sensor. In this paper, a …
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