Specification of data properties to identify anomalies in scientific sensor data

Environmental scientists use advanced sensor technology such as meteorological towers, wireless sensor networks and robotic trams equipped with sensors to perform data collection at remote research sites. Because the amount of environmental sensor data acquired by such instruments is increasing, the...

Full description

Bibliographic Details
Main Author: Gallegos, Irbis J
Format: Text
Language:English
Published: ScholarWorks@UTEP 2011
Subjects:
Online Access:https://scholarworks.utep.edu/dissertations/AAI3490104
id ftutep:oai:scholarworks.utep.edu:dissertations-7171
record_format openpolar
spelling ftutep:oai:scholarworks.utep.edu:dissertations-7171 2023-05-15T15:02:14+02:00 Specification of data properties to identify anomalies in scientific sensor data Gallegos, Irbis J 2011-01-01T08:00:00Z https://scholarworks.utep.edu/dissertations/AAI3490104 ENG eng ScholarWorks@UTEP https://scholarworks.utep.edu/dissertations/AAI3490104 ETD Collection for University of Texas, El Paso Environmental science|Computer science text 2011 ftutep 2023-01-23T21:11:31Z Environmental scientists use advanced sensor technology such as meteorological towers, wireless sensor networks and robotic trams equipped with sensors to perform data collection at remote research sites. Because the amount of environmental sensor data acquired by such instruments is increasing, the ability to evaluate the accuracy of the data at collection time and to check that the instrumentation is operating correctly become critical in order to not lose valuable time and information. The goal of the research is to define a solution, based on software-engineering techniques, to support the scientist's ability to specify data properties that can identify anomalies in scientific sensor data collected by instruments in remote locations. The research effort included deriving a data property categorization from the findings of a literature survey of 15 projects that collected environmental data from sensors and a case study conducted in the Arctic. More than 500 published data properties were manually extracted and analyzed from the surveyed projects and the Arctic case study with scientists, who were collecting hyperspectral data using robotic tram systems. The data property categorization catalogs recurrent data patterns that have been used by scientists. The Specification and Pattern System (SPS) from the software-engineering community was used as a model to develop a system, called Data Specification and Pattern System (D-SPS), to define patterns and scopes of data properties based on the data property categorization. D-SPS provides the foundation for the Data Property Specification (DaProS) tool that can assist scientists in specification of sensor data properties. A series of experiments were conducted in collaboration with experts working with Eddy covariance (EC) data from the Jornada Basin Experimental Range to determine if the approach for specifying data properties is effective for specifying data properties and identifying anomalies in sensor data. A complementary sensor data verification tool was ... Text Arctic University of Texas at El Paso: Digital Commons@UTEP Arctic
institution Open Polar
collection University of Texas at El Paso: Digital Commons@UTEP
op_collection_id ftutep
language English
topic Environmental science|Computer science
spellingShingle Environmental science|Computer science
Gallegos, Irbis J
Specification of data properties to identify anomalies in scientific sensor data
topic_facet Environmental science|Computer science
description Environmental scientists use advanced sensor technology such as meteorological towers, wireless sensor networks and robotic trams equipped with sensors to perform data collection at remote research sites. Because the amount of environmental sensor data acquired by such instruments is increasing, the ability to evaluate the accuracy of the data at collection time and to check that the instrumentation is operating correctly become critical in order to not lose valuable time and information. The goal of the research is to define a solution, based on software-engineering techniques, to support the scientist's ability to specify data properties that can identify anomalies in scientific sensor data collected by instruments in remote locations. The research effort included deriving a data property categorization from the findings of a literature survey of 15 projects that collected environmental data from sensors and a case study conducted in the Arctic. More than 500 published data properties were manually extracted and analyzed from the surveyed projects and the Arctic case study with scientists, who were collecting hyperspectral data using robotic tram systems. The data property categorization catalogs recurrent data patterns that have been used by scientists. The Specification and Pattern System (SPS) from the software-engineering community was used as a model to develop a system, called Data Specification and Pattern System (D-SPS), to define patterns and scopes of data properties based on the data property categorization. D-SPS provides the foundation for the Data Property Specification (DaProS) tool that can assist scientists in specification of sensor data properties. A series of experiments were conducted in collaboration with experts working with Eddy covariance (EC) data from the Jornada Basin Experimental Range to determine if the approach for specifying data properties is effective for specifying data properties and identifying anomalies in sensor data. A complementary sensor data verification tool was ...
format Text
author Gallegos, Irbis J
author_facet Gallegos, Irbis J
author_sort Gallegos, Irbis J
title Specification of data properties to identify anomalies in scientific sensor data
title_short Specification of data properties to identify anomalies in scientific sensor data
title_full Specification of data properties to identify anomalies in scientific sensor data
title_fullStr Specification of data properties to identify anomalies in scientific sensor data
title_full_unstemmed Specification of data properties to identify anomalies in scientific sensor data
title_sort specification of data properties to identify anomalies in scientific sensor data
publisher ScholarWorks@UTEP
publishDate 2011
url https://scholarworks.utep.edu/dissertations/AAI3490104
geographic Arctic
geographic_facet Arctic
genre Arctic
genre_facet Arctic
op_source ETD Collection for University of Texas, El Paso
op_relation https://scholarworks.utep.edu/dissertations/AAI3490104
_version_ 1766334203387969536