2,128 research outputs found

    On-line reconstruction algorithms for the CBM and ALICE experiments

    Get PDF
    Diese Dissertation präsentiert verschiedenen Algorithmen, die für die Echtzeit-Ereignisrekonstruktion im CBM-Experiment der GSI (in Darmstadt) und im ALICE-Experiment am CERN (in Genf) entwickelt wurden. Obwohl diese Experimente unterschiedlich sind - CBM ist ein Fixed-Target Experiment mit Forward-Geometrie, während ALICE eine typische Collider-Geometrie hat - gibt es bei der Rekonstruktion gemeinsame Aspekte. Diese Arbeit beschreibt: — allgemeine Änderungen an der Kalman-Filter-Methode, die bestehende Fit-Algorithmen (auch Anpassungsalgorithmen genannt) beschleunigen, vereinfachen sowie deren numerische Stabilität verbessern. — Fit-Algorithmen, die für die CBM und ALICE Experimente entwickelt wurden, inklusive einer neuen Methode für die Spurextrapolation in nicht-homogenen Magnetfeldern. — die entwickelten Algorithmen für die Bestimmung der primären und sekundären Vertices in beiden Experimenten. Insbesondere wird eine Methode zur Rekonstruktion der zerfallenen Teilchen vorgestellt. — parallelisierte Methoden für die Echtzeit-Spursuche im CBM Experiment. — parallelisierte Methoden zur Echtzeit-Spursuche im High Level Trigger des ALICE-Experiments. — die Realisierung der Spurrekonsturtion auf moderner Hardware, insbesondere Vektorprozessoren und GPUs. Alle vorgestellten Methoden sind vom oder mit direkter Beteiligung des Autors entwickelt worden.This thesis presents various algorithms which have been developed for on-line event reconstruction in the CBM experiment at GSI, Darmstadt and the ALICE experiment at CERN, Geneve. Despite the fact that the experiments are different — CBM is a fixed target experiment with forward geometry, while ALICE has a typical collider geometry — they share common aspects when reconstruction is concerned. The thesis describes: — general modifications to the Kalman filter method, which allows one to accelerate, to improve, and to simplify existing fit algorithms; — developed algorithms for track fit in CBM and ALICE experiment, including a new method for track extrapolation in non-homogeneous magnetic field. — developed algorithms for primary and secondary vertex fit in the both experiments. In particular, a new method of reconstruction of decayed particles is presented. — developed parallel algorithm for the on-line tracking in the CBM experiment. — developed parallel algorithm for the on-line tracking in High Level Trigger of the ALICE experiment. — the realisation of the track finders on modern hardware, such as SIMD CPU registers and GPU accelerators. All the presented methods have been developed by or with the direct participation of the author

    GPU-based Online Track Reconstruction for the ALICE TPC in Run 3 with Continuous Read-Out

    Full text link
    In LHC Run 3, ALICE will increase the data taking rate significantly to 50 kHz continuous read-out of minimum bias Pb-Pb collisions. The reconstruction strategy of the online-offline computing upgrade foresees a first synchronous online reconstruction stage during data taking enabling detector calibration and data compression, and a posterior calibrated asynchronous reconstruction stage. Many new challenges arise, among them continuous TPC read-out, more overlapping collisions, no a priori knowledge of the primary vertex and of location-dependent calibration in the synchronous phase, identification of low-momentum looping tracks, and sophisticated raw data compression. The tracking algorithm for the Time Projection Chamber (TPC) will be based on a Cellular Automaton and the Kalman filter. The reconstruction shall run online, processing 50 times more collisions per second than today, while yielding results comparable to current offline reconstruction. Our TPC track finding leverages the potential of hardware accelerators via the OpenCL and CUDA APIs in a shared source code for CPUs and GPUs for both reconstruction stages. We give an overview of the status of Run 3 tracking including performance on processors and GPUs and achieved compression ratios.Comment: 8 pages, 7 figures, contribution to CHEP 2018 conferenc

    Track Reconstruction in the ALICE TPC using GPUs for LHC Run 3

    Full text link
    In LHC Run 3, ALICE will increase the data taking rate significantly to continuous readout of 50 kHz minimum bias Pb-Pb collisions. The reconstruction strategy of the online offline computing upgrade foresees a first synchronous online reconstruction stage during data taking enabling detector calibration, and a posterior calibrated asynchronous reconstruction stage. We present a tracking algorithm for the Time Projection Chamber (TPC), the main tracking detector of ALICE. The reconstruction must yield results comparable to current offline reconstruction and meet the time constraints like in the current High Level Trigger (HLT), processing 50 times as many collisions per second as today. It is derived from the current online tracking in the HLT, which is based on a Cellular automaton and the Kalman filter, and we integrate missing features from offline tracking for improved resolution. The continuous TPC readout and overlapping collisions pose new challenges: conversion to spatial coordinates and the application of time- and location dependent calibration must happen in between of track seeding and track fitting while the TPC occupancy increases five-fold. The huge data volume requires a data reduction factor of 20, which imposes additional requirements: the momentum range must be extended to identify low-pt looping tracks and a special refit in uncalibrated coordinates improves the track model entropy encoding. Our TPC track finding leverages the potential of hardware accelerators via the OpenCL and CUDA APIs in a shared source code for CPUs, GPUs, and both reconstruction stages. Porting more reconstruction steps like the remainder of the TPC reconstruction and tracking for other detectors will shift the computing balance from traditional processors to GPUs.Comment: 13 pages, 10 figures, proceedings to Connecting The Dots Workshop, Seattle, 201

    Fast TPC Online Tracking on GPUs and Asynchronous Data Processing in the ALICE HLT to facilitate Online Calibration

    Full text link
    ALICE (A Large Heavy Ion Experiment) is one of the four major experiments at the Large Hadron Collider (LHC) at CERN, which is today the most powerful particle accelerator worldwide. The High Level Trigger (HLT) is an online compute farm of about 200 nodes, which reconstructs events measured by the ALICE detector in real-time. The HLT uses a custom online data-transport framework to distribute data and workload among the compute nodes. ALICE employs several calibration-sensitive subdetectors, e.g. the TPC (Time Projection Chamber). For a precise reconstruction, the HLT has to perform the calibration online. Online-calibration can make certain Offline calibration steps obsolete and can thus speed up Offline analysis. Looking forward to ALICE Run III starting in 2020, online calibration becomes a necessity. The main detector used for track reconstruction is the TPC. Reconstructing the trajectories in the TPC is the most compute-intense step during event reconstruction. Therefore, a fast tracking implementation is of great importance. Reconstructed TPC tracks build the basis for the calibration making a fast online-tracking mandatory. We present several components developed for the ALICE High Level Trigger to perform fast event reconstruction and to provide features required for online calibration. As first topic, we present our TPC tracker, which employs GPUs to speed up the processing, and which bases on a Cellular Automaton and on the Kalman filter. Our TPC tracking algorithm has been successfully used in 2011 and 2012 in the lead-lead and the proton-lead runs. We have improved it to leverage features of newer GPUs and we have ported it to support OpenCL, CUDA, and CPUs with a single common source code. This makes us vendor independent. As second topic, we present framework extensions required for online calibration. ...Comment: 8 pages, 6 figures, contribution to CHEP 2015 conferenc

    Comparative analysis of two control algorithms of resonant oscillations of the vibration machine driven by an asynchronous AC motor

    Get PDF
    In this paper, the problem of automatic tuning of vibration technological machines (e.g. vibrating screens) to resonant mode is considered. The purpose of the study is to develop a control system to provide the initial resonant setup and its control, regardless parameters variations such as operating loads. To achieve this two control algorithms are proposed. The first algorithm is based on linear approximation, while the second one is based on the preliminary analysis of some relations between the system parameters. The advantages and disadvantages of the proposed algorithms are considered and the applicability limitations are determined

    Extreme value statistics in Raman fiber lasers

    Get PDF
    We present the numerical study of the statistical properties of the partially coherent quasi-CW high-Q cavity Raman fiber laser. The statistical properties are different for the radiation generated at the spectrum center or spectral wings. It is found that rare extreme events are generated at the far spectral wings at one pass only. The mechanism of the extreme events generation is a turbulent-like four-wave mixing of numerous longitudinal generation modes. The similar mechanism of extreme waves appearance during the laser generation could be important in other types of fiber lasers
    • …
    corecore