A parallel online trajectory compression approach for supporting big data workflow

A parallel online trajectory compression approach for supporting big data workflow Nowadays with booming of sensor technology, location big data exhibit as high complexity, massive volume, real-time and stream-based characteristic. The current workflow systems are facing the challenge hardly to efficiently process the real-time location big data like trajectory stream. Online compression method is an available solution to preprocess these trajectory data in order to speed up the processing of big data workflow. However, the current online compression methods are in a serial execution that are hard to fast compress massive real-time original trajectory data. Aiming at this problem, we employ the multi-core and many-core approaches to accelerate a representative online trajectory compression method SQUISH-E. First a parallel version of SQUISH-E is proposed. PSQUISH-E used a data parallel scheme based on overlap technique and OpenMP to achieve the implementation over multiple-core CPUs. For further reducing compression time, we combine iteration method and GPU Hyper-Q feature to develop GPU-aided PSQUISH-E algorithm called as G-PSQUISH-E. The experimental results showed that (1) the data parallel scheme based on overlap can reach a similar SED error as the SQUISH-E (2) the proposed PSQUISH-E running on multi-core CPU achieved 3.8 times acceleration effect, and (3) G-PSQUISH-E further accelerated the effect of about 3 times compared with PSQUISH-E. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png Computing Springer Journals

A parallel online trajectory compression approach for supporting big data workflow

Loading next page...
 
/lp/springer_journal/a-parallel-online-trajectory-compression-approach-for-supporting-big-CWHgSja6p7
Publisher
Springer Vienna
Copyright
Copyright © 2017 by Springer-Verlag GmbH Austria
Subject
Computer Science; Computer Science, general; Information Systems Applications (incl.Internet); Computer Communication Networks; Software Engineering; Artificial Intelligence (incl. Robotics); Computer Appl. in Administrative Data Processing
ISSN
0010-485X
eISSN
1436-5057
D.O.I.
10.1007/s00607-017-0563-8
Publisher site
See Article on Publisher Site

Abstract

Nowadays with booming of sensor technology, location big data exhibit as high complexity, massive volume, real-time and stream-based characteristic. The current workflow systems are facing the challenge hardly to efficiently process the real-time location big data like trajectory stream. Online compression method is an available solution to preprocess these trajectory data in order to speed up the processing of big data workflow. However, the current online compression methods are in a serial execution that are hard to fast compress massive real-time original trajectory data. Aiming at this problem, we employ the multi-core and many-core approaches to accelerate a representative online trajectory compression method SQUISH-E. First a parallel version of SQUISH-E is proposed. PSQUISH-E used a data parallel scheme based on overlap technique and OpenMP to achieve the implementation over multiple-core CPUs. For further reducing compression time, we combine iteration method and GPU Hyper-Q feature to develop GPU-aided PSQUISH-E algorithm called as G-PSQUISH-E. The experimental results showed that (1) the data parallel scheme based on overlap can reach a similar SED error as the SQUISH-E (2) the proposed PSQUISH-E running on multi-core CPU achieved 3.8 times acceleration effect, and (3) G-PSQUISH-E further accelerated the effect of about 3 times compared with PSQUISH-E.

Journal

ComputingSpringer Journals

Published: Jun 20, 2017

References

You’re reading a free preview. Subscribe to read the entire article.


DeepDyve is your
personal research library

It’s your single place to instantly
discover and read the research
that matters to you.

Enjoy affordable access to
over 18 million articles from more than
15,000 peer-reviewed journals.

All for just $49/month

Explore the DeepDyve Library

Search

Query the DeepDyve database, plus search all of PubMed and Google Scholar seamlessly

Organize

Save any article or search result from DeepDyve, PubMed, and Google Scholar... all in one place.

Access

Get unlimited, online access to over 18 million full-text articles from more than 15,000 scientific journals.

Your journals are on DeepDyve

Read from thousands of the leading scholarly journals from SpringerNature, Elsevier, Wiley-Blackwell, Oxford University Press and more.

All the latest content is available, no embargo periods.

See the journals in your area

DeepDyve

Freelancer

DeepDyve

Pro

Price

FREE

$49/month
$360/year

Save searches from
Google Scholar,
PubMed

Create lists to
organize your research

Export lists, citations

Read DeepDyve articles

Abstract access only

Unlimited access to over
18 million full-text articles

Print

20 pages / month

PDF Discount

20% off