Geographic information science as an enabler of smarter cities and communities. BaÇão, F., Santos, M., Y., & Painho, M. Volume 217 of Lecture Notes in Geoinformation and Cartography, Springer International Publishing, 2015.
Website abstract bibtex Modern sensor networks monitor a wide range of phenomena. They are applied in environmental monitoring, health care, optimization of industrial pro- cesses, social media, smart city solutions, and many other domains. All in all, they provide a continuously pulse of the almost infinite activities that are happening in the physical space—and in cyber space. The handling of the massive amounts of generated measurements poses a series of (Big Data) challenges. Our work addresses one of these challenges: the detection of anomalies in real-time. In this paper, we propose a generic solution to this problem, and introduce a system that is capable of detecting anomalies, generating notifications, and displaying the recent situation to the user. We apply CUSUM a statistical control algorithm and adopt it so that it can be used inside the Storm framework—a robust and scalable real-time processing framework. We present a proof of concept implementation from the area of environmental monitoring.
@book{
title = {Geographic information science as an enabler of smarter cities and communities},
type = {book},
year = {2015},
source = {Lecture Notes in Geoinformation and Cartography},
identifiers = {[object Object]},
keywords = {Big data and real-time analysis,CUSUM,Environmental sensor data,STORM},
pages = {1-13},
volume = {217},
websites = {http://www.scopus.com/inward/record.url?eid=2-s2.0-84945960187&partnerID=tZOtx3y1},
publisher = {Springer International Publishing},
series = {Lecture Notes in Geoinformation and Cartography},
editors = {[object Object],[object Object],[object Object]},
id = {fc46a49f-f0f4-3430-af79-da56fa94f2fe},
created = {2016-06-02T07:55:33.000Z},
file_attached = {false},
profile_id = {05910fc8-b090-3c8e-ac9c-584445e4b049},
last_modified = {2018-06-17T20:17:54.232Z},
read = {false},
starred = {false},
authored = {true},
confirmed = {true},
hidden = {false},
private_publication = {false},
abstract = {Modern sensor networks monitor a wide range of phenomena. They are applied in environmental monitoring, health care, optimization of industrial pro- cesses, social media, smart city solutions, and many other domains. All in all, they provide a continuously pulse of the almost infinite activities that are happening in the physical space—and in cyber space. The handling of the massive amounts of generated measurements poses a series of (Big Data) challenges. Our work addresses one of these challenges: the detection of anomalies in real-time. In this paper, we propose a generic solution to this problem, and introduce a system that is capable of detecting anomalies, generating notifications, and displaying the recent situation to the user. We apply CUSUM a statistical control algorithm and adopt it so that it can be used inside the Storm framework—a robust and scalable real-time processing framework. We present a proof of concept implementation from the area of environmental monitoring.},
bibtype = {book},
author = {BaÇão, Fernando and Santos, Maribel Yasmina and Painho, Marco}
}
Downloads: 0
{"_id":"59dshZDz2cJcRr6HC","bibbaseid":"bao-santos-painho-geographicinformationscienceasanenablerofsmartercitiesandcommunities-2015","downloads":0,"creationDate":"2018-06-17T21:48:32.986Z","title":"Geographic information science as an enabler of smarter cities and communities","author_short":["BaÇão, F.","Santos, M., Y.","Painho, M."],"year":2015,"bibtype":"book","biburl":null,"bibdata":{"title":"Geographic information science as an enabler of smarter cities and communities","type":"book","year":"2015","source":"Lecture Notes in Geoinformation and Cartography","identifiers":"[object Object]","keywords":"Big data and real-time analysis,CUSUM,Environmental sensor data,STORM","pages":"1-13","volume":"217","websites":"http://www.scopus.com/inward/record.url?eid=2-s2.0-84945960187&partnerID=tZOtx3y1","publisher":"Springer International Publishing","series":"Lecture Notes in Geoinformation and Cartography","editors":"[object Object],[object Object],[object Object]","id":"fc46a49f-f0f4-3430-af79-da56fa94f2fe","created":"2016-06-02T07:55:33.000Z","file_attached":false,"profile_id":"05910fc8-b090-3c8e-ac9c-584445e4b049","last_modified":"2018-06-17T20:17:54.232Z","read":false,"starred":false,"authored":"true","confirmed":"true","hidden":false,"private_publication":false,"abstract":"Modern sensor networks monitor a wide range of phenomena. They are applied in environmental monitoring, health care, optimization of industrial pro- cesses, social media, smart city solutions, and many other domains. All in all, they provide a continuously pulse of the almost infinite activities that are happening in the physical space—and in cyber space. The handling of the massive amounts of generated measurements poses a series of (Big Data) challenges. Our work addresses one of these challenges: the detection of anomalies in real-time. In this paper, we propose a generic solution to this problem, and introduce a system that is capable of detecting anomalies, generating notifications, and displaying the recent situation to the user. We apply CUSUM a statistical control algorithm and adopt it so that it can be used inside the Storm framework—a robust and scalable real-time processing framework. We present a proof of concept implementation from the area of environmental monitoring.","bibtype":"book","author":"BaÇão, Fernando and Santos, Maribel Yasmina and Painho, Marco","bibtex":"@book{\n title = {Geographic information science as an enabler of smarter cities and communities},\n type = {book},\n year = {2015},\n source = {Lecture Notes in Geoinformation and Cartography},\n identifiers = {[object Object]},\n keywords = {Big data and real-time analysis,CUSUM,Environmental sensor data,STORM},\n pages = {1-13},\n volume = {217},\n websites = {http://www.scopus.com/inward/record.url?eid=2-s2.0-84945960187&partnerID=tZOtx3y1},\n publisher = {Springer International Publishing},\n series = {Lecture Notes in Geoinformation and Cartography},\n editors = {[object Object],[object Object],[object Object]},\n id = {fc46a49f-f0f4-3430-af79-da56fa94f2fe},\n created = {2016-06-02T07:55:33.000Z},\n file_attached = {false},\n profile_id = {05910fc8-b090-3c8e-ac9c-584445e4b049},\n last_modified = {2018-06-17T20:17:54.232Z},\n read = {false},\n starred = {false},\n authored = {true},\n confirmed = {true},\n hidden = {false},\n private_publication = {false},\n abstract = {Modern sensor networks monitor a wide range of phenomena. They are applied in environmental monitoring, health care, optimization of industrial pro- cesses, social media, smart city solutions, and many other domains. All in all, they provide a continuously pulse of the almost infinite activities that are happening in the physical space—and in cyber space. The handling of the massive amounts of generated measurements poses a series of (Big Data) challenges. Our work addresses one of these challenges: the detection of anomalies in real-time. In this paper, we propose a generic solution to this problem, and introduce a system that is capable of detecting anomalies, generating notifications, and displaying the recent situation to the user. We apply CUSUM a statistical control algorithm and adopt it so that it can be used inside the Storm framework—a robust and scalable real-time processing framework. We present a proof of concept implementation from the area of environmental monitoring.},\n bibtype = {book},\n author = {BaÇão, Fernando and Santos, Maribel Yasmina and Painho, Marco}\n}","author_short":["BaÇão, F.","Santos, M., Y.","Painho, M."],"urls":{"Website":"http://www.scopus.com/inward/record.url?eid=2-s2.0-84945960187&partnerID=tZOtx3y1"},"bibbaseid":"bao-santos-painho-geographicinformationscienceasanenablerofsmartercitiesandcommunities-2015","role":"author","keyword":["Big data and real-time analysis","CUSUM","Environmental sensor data","STORM"],"downloads":0},"search_terms":["geographic","information","science","enabler","smarter","cities","communities","bação","santos","painho"],"keywords":["big data and real-time analysis","cusum","environmental sensor data","storm"],"authorIDs":[]}