accelerator event
An Orientation Selective Neural Network for Pattern Identification in Particle Detectors
Abramowicz, Halina, Horn, David, Naftaly, Ury, Sahar-Pikielny, Carmit
A typical problem in experiments performed at high energy accelerators aimed at studying novel effects in the field of Elementary Particle Physics is that of preselecting interesting interactions at as early a stage as possible, in order to keep the data volume manageable. One class of events that have to be eliminated is due to cosmic muons that pass all trigger conditions.
An Orientation Selective Neural Network for Pattern Identification in Particle Detectors
Abramowicz, Halina, Horn, David, Naftaly, Ury, Sahar-Pikielny, Carmit
A typical problem in experiments performed at high energy accelerators aimed at studying novel effects in the field of Elementary Particle Physics is that of preselecting interesting interactions at as early a stage as possible, in order to keep the data volume manageable. One class of events that have to be eliminated is due to cosmic muons that pass all trigger conditions.
An Orientation Selective Neural Network for Pattern Identification in Particle Detectors
Abramowicz, Halina, Horn, David, Naftaly, Ury, Sahar-Pikielny, Carmit
Constructing amulti-layered neural network with fixed architecture which implements orientation selectivity, we define output elements corresponding todifferent orientations, which allow us to make a selection decision. The algorithm takes into account the granularity of the lattice as well as the presence of noise and inefficiencies. The method is applied to a sample of data collected with the ZEUS detector at HERA in order to identify cosmic muons that leave a linear pattern of signals in the segmented calorimeter. A two dimensional representation of the relevant part of the detector is used. The algorithm performs very well. Given its architecture, this system becomes a good candidate for fast pattern recognition in parallel processing devices.