BOOSTR: A Dataset for Accelerator Control Systems
The Booster Operation Optimization Sequential Time-series for Regression (<i>BOOSTR</i>) dataset was created to provide a cycle-by-cycle time series of readings and settings from instruments and controllable devices of the Booster, Fermilab’s Rapid-Cycling Synchrotron (RCS) operating at...
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doaj-ac7b2f1a68e540cbb49412ba1353073b2021-04-16T23:02:43ZengMDPI AGData2306-57292021-04-016424210.3390/data6040042BOOSTR: A Dataset for Accelerator Control SystemsDiana Kafkes0Jason St. John1Fermi National Accelerator Laboratory, Batavia, IL 60510, USAFermi National Accelerator Laboratory, Batavia, IL 60510, USAThe Booster Operation Optimization Sequential Time-series for Regression (<i>BOOSTR</i>) dataset was created to provide a cycle-by-cycle time series of readings and settings from instruments and controllable devices of the Booster, Fermilab’s Rapid-Cycling Synchrotron (RCS) operating at 15 Hz. <i>BOOSTR</i> provides a time series from 55 device readings and settings that pertain most directly to the high-precision regulation of the Booster’s gradient magnet power supply (GMPS). To our knowledge, this is one of the first well-documented datasets of accelerator device parameters made publicly available. We are releasing it in the hopes that it can be used to demonstrate aspects of artificial intelligence for advanced control systems, such as reinforcement learning and autonomous anomaly detection.https://www.mdpi.com/2306-5729/6/4/42datasetartificial intelligencemachine learningaccelerator control systemsanomaly detection |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Diana Kafkes Jason St. John |
spellingShingle |
Diana Kafkes Jason St. John BOOSTR: A Dataset for Accelerator Control Systems Data dataset artificial intelligence machine learning accelerator control systems anomaly detection |
author_facet |
Diana Kafkes Jason St. John |
author_sort |
Diana Kafkes |
title |
BOOSTR: A Dataset for Accelerator Control Systems |
title_short |
BOOSTR: A Dataset for Accelerator Control Systems |
title_full |
BOOSTR: A Dataset for Accelerator Control Systems |
title_fullStr |
BOOSTR: A Dataset for Accelerator Control Systems |
title_full_unstemmed |
BOOSTR: A Dataset for Accelerator Control Systems |
title_sort |
boostr: a dataset for accelerator control systems |
publisher |
MDPI AG |
series |
Data |
issn |
2306-5729 |
publishDate |
2021-04-01 |
description |
The Booster Operation Optimization Sequential Time-series for Regression (<i>BOOSTR</i>) dataset was created to provide a cycle-by-cycle time series of readings and settings from instruments and controllable devices of the Booster, Fermilab’s Rapid-Cycling Synchrotron (RCS) operating at 15 Hz. <i>BOOSTR</i> provides a time series from 55 device readings and settings that pertain most directly to the high-precision regulation of the Booster’s gradient magnet power supply (GMPS). To our knowledge, this is one of the first well-documented datasets of accelerator device parameters made publicly available. We are releasing it in the hopes that it can be used to demonstrate aspects of artificial intelligence for advanced control systems, such as reinforcement learning and autonomous anomaly detection. |
topic |
dataset artificial intelligence machine learning accelerator control systems anomaly detection |
url |
https://www.mdpi.com/2306-5729/6/4/42 |
work_keys_str_mv |
AT dianakafkes boostradatasetforacceleratorcontrolsystems AT jasonstjohn boostradatasetforacceleratorcontrolsystems |
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1721524266813358080 |