Deep machine learning methods have been studied for the software trigger of the future PANDA experiment at FAIR, using Monte Carlo simulated data from the GEANT-based detector simulation framework PandaRoot. Ten physics channels that cover the main physics topics, including electromagnetic, exotic, charmonium, open charm, and baryonic reaction channels, have been investigated at four different anti-proton beam momenta. Different classification concepts and network architectures have been studied. Finally a residual convolutional neural network with four residual blocks in a binary classification scheme has been chosen due to its extendability, performance and stability. The presented study represents a feasibility study of a completely soft...
High energy collider experiments produce several petabytes of data every year. Given the magnitude a...
Deep learning algorithms have gained importance in particle physics in the last few years. They have...
Machine learning, which builds on ideas in computer science, statistics, and optimization, focuses o...
Deep machine learning methods have been studied for the software trigger of the future PANDA experim...
Deep machine learning methods have been studied for the software trigger of the future PANDA experim...
This Masters thesis outlines the application of machine learning techniques, predominantly deep lear...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
Over the last years, machine learning tools have been successfully applied to a wealth of problems i...
We present a simulation-based study using deep convolutional neural networks (DCNNs) to identify neu...
The purpose of this thesis is to apply more recent machine learning algorithms based on neural netwo...
PANDA is one of the four experiments that will run at the new facility FAIR that is being built in D...
Compelling experimental evidence suggests the existence of new physics beyond the well-established a...
In this project a classifier of new physics events is developed using machine learning, in particula...
AbstractDue to the anti-proton annihilation at Darmstadt (PANDA) experiment has rich physics studies...
Theoretical and algorithmic advances, availability of data, and computing power are driving AI. Spec...
High energy collider experiments produce several petabytes of data every year. Given the magnitude a...
Deep learning algorithms have gained importance in particle physics in the last few years. They have...
Machine learning, which builds on ideas in computer science, statistics, and optimization, focuses o...
Deep machine learning methods have been studied for the software trigger of the future PANDA experim...
Deep machine learning methods have been studied for the software trigger of the future PANDA experim...
This Masters thesis outlines the application of machine learning techniques, predominantly deep lear...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
Over the last years, machine learning tools have been successfully applied to a wealth of problems i...
We present a simulation-based study using deep convolutional neural networks (DCNNs) to identify neu...
The purpose of this thesis is to apply more recent machine learning algorithms based on neural netwo...
PANDA is one of the four experiments that will run at the new facility FAIR that is being built in D...
Compelling experimental evidence suggests the existence of new physics beyond the well-established a...
In this project a classifier of new physics events is developed using machine learning, in particula...
AbstractDue to the anti-proton annihilation at Darmstadt (PANDA) experiment has rich physics studies...
Theoretical and algorithmic advances, availability of data, and computing power are driving AI. Spec...
High energy collider experiments produce several petabytes of data every year. Given the magnitude a...
Deep learning algorithms have gained importance in particle physics in the last few years. They have...
Machine learning, which builds on ideas in computer science, statistics, and optimization, focuses o...