Scalable and reliable multi-dimensional aggregation of sensor data streams
Scalable and reliable multi-dimensional aggregation of sensor data streams
Ever-increasing amounts of data and requirements to process them in real time lead to more and more analytics platforms and software systems being designed according to the concept of stream processing. A common area of application is the processing of continuous data streams from sensors, for example, IoT devices or performance monitoring tools. In addition to analyzing pure sensor data, analyses of data for groups of sensors often need to be performed as well. Therefore, data streams of the individual sensors have to be continuously aggregated to a data stream for a group. Motivated by a real-world application scenario, we propose that such a stream aggregation approach has to allow for aggregating sensors in hierarchical groups, support multiple such hierarchies in parallel, provide reconfiguration at runtime, and preserve the scalability and reliability qualities induced by applying stream processing techniques. We propose a stream processing architecture fulfilling these requirements, which can be integrated into existing big data architectures. We present a pilot implementation of such an extended architecture and show how it is used in industry. Furthermore, in experimental evaluations we show that our solution scales linearly with the amount of sensors and provides adequate reliability in the case of faults.
3512-3517
Henning, Soren
e09ef4ea-8a2f-4d11-903b-db51d6371fcb
Hasselbring, Wilhelm
ee89c5c9-a900-40b1-82c1-552268cd01bd
Henning, Soren
e09ef4ea-8a2f-4d11-903b-db51d6371fcb
Hasselbring, Wilhelm
ee89c5c9-a900-40b1-82c1-552268cd01bd
Henning, Soren and Hasselbring, Wilhelm
(2020)
Scalable and reliable multi-dimensional aggregation of sensor data streams.
Baru, Chaitanya, Huan, Jun, Khan, Latifur, Hu, Xiaohua Tony, Ak, Ronay, Tian, Yuanyuan, Barga, Roger, Zaniolo, Carlo, Lee, Kisung and Ye, Yanfang Fanny
(eds.)
In 2019 IEEE International Conference on Big Data (Big Data).
IEEE.
.
(doi:10.1109/BigData47090.2019.9006452).
Record type:
Conference or Workshop Item
(Paper)
Abstract
Ever-increasing amounts of data and requirements to process them in real time lead to more and more analytics platforms and software systems being designed according to the concept of stream processing. A common area of application is the processing of continuous data streams from sensors, for example, IoT devices or performance monitoring tools. In addition to analyzing pure sensor data, analyses of data for groups of sensors often need to be performed as well. Therefore, data streams of the individual sensors have to be continuously aggregated to a data stream for a group. Motivated by a real-world application scenario, we propose that such a stream aggregation approach has to allow for aggregating sensors in hierarchical groups, support multiple such hierarchies in parallel, provide reconfiguration at runtime, and preserve the scalability and reliability qualities induced by applying stream processing techniques. We propose a stream processing architecture fulfilling these requirements, which can be integrated into existing big data architectures. We present a pilot implementation of such an extended architecture and show how it is used in industry. Furthermore, in experimental evaluations we show that our solution scales linearly with the amount of sensors and provides adequate reliability in the case of faults.
This record has no associated files available for download.
More information
e-pub ahead of print date: 24 February 2020
Venue - Dates:
2019 IEEE International Conference on Big Data, Big Data 2019, , Los Angeles, United States, 2019-12-09 - 2019-12-12
Identifiers
Local EPrints ID: 488756
URI: http://eprints.soton.ac.uk/id/eprint/488756
PURE UUID: 0cfe7f21-87ce-408e-996c-a4b5fee9c532
Catalogue record
Date deposited: 05 Apr 2024 16:36
Last modified: 10 Apr 2024 02:15
Export record
Altmetrics
Contributors
Author:
Soren Henning
Author:
Wilhelm Hasselbring
Editor:
Chaitanya Baru
Editor:
Jun Huan
Editor:
Latifur Khan
Editor:
Xiaohua Tony Hu
Editor:
Ronay Ak
Editor:
Yuanyuan Tian
Editor:
Roger Barga
Editor:
Carlo Zaniolo
Editor:
Kisung Lee
Editor:
Yanfang Fanny Ye
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics