Using a neural network approach for muon reconstruction and triggering
classification
⚛️ physics.data-an
cond-mat.dis-nn
keywords
triggeringnetworkneuralarchitecturefirstmuonsimulationtrigger
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The extremely high rate of events that will be produced in the future Large Hadron Collider requires the triggering mechanism to take precise decisions in a few nano-seconds. We present a study which used an artificial neural network triggering algorithm and compared it to the performance of a dedicated electronic muon triggering system. Relatively simple architecture was used to solve a complicated inverse problem. A comparison with a realistic example of the ATLAS first level trigger simulation was in favour of the neural network. A similar architecture trained after the simulation of the electronics first trigger stage showed a further background rejection.
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