Journal article 123 views
Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data
IECE Transactions on Intelligent Systematics, Volume: 1, Issue: 1, Pages: 10 - 18
Swansea University Author: Hans Ren
Full text not available from this repository: check for access using links below.
DOI (Published version): 10.62762/tis.2024.136898
Abstract
To predict future trends based on the data from sensors is an important technology for many applications, such as the Internet of Things, smart cities, etc. Based on the predicted results, further decisions and system controls can be made. Raw sensor data sets are often complex non-linear data with...
Published in: | IECE Transactions on Intelligent Systematics |
---|---|
ISSN: | 2998-3320 2998-3355 |
Published: |
Institute of Emerging and Computer Engineers Inc
2024
|
Online Access: |
Check full text
|
URI: | https://cronfa.swan.ac.uk/Record/cronfa67603 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
first_indexed |
2024-09-06T13:59:48Z |
---|---|
last_indexed |
2024-09-06T13:59:48Z |
id |
cronfa67603 |
recordtype |
SURis |
fullrecord |
<?xml version="1.0" encoding="utf-8"?><rfc1807 xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns:xsd="http://www.w3.org/2001/XMLSchema"><bib-version>v2</bib-version><id>67603</id><entry>2024-09-06</entry><title>Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data</title><swanseaauthors><author><sid>9e043b899a2b786672a28ed4f864ffcc</sid><firstname>Hans</firstname><surname>Ren</surname><name>Hans Ren</name><active>true</active><ethesisStudent>false</ethesisStudent></author></swanseaauthors><date>2024-09-06</date><deptcode>MACS</deptcode><abstract>To predict future trends based on the data from sensors is an important technology for many applications, such as the Internet of Things, smart cities, etc. Based on the predicted results, further decisions and system controls can be made. Raw sensor data sets are often complex non-linear data with noise, which results in the difficulty of accurate prediction. This paper proposes a distributed deep prediction network based on a covariance intersection (CI) fusion algorithm in which the deep learning networks, such as long-term and short-term memory networks (LSTM) and gated recurrent unit networks (GRU) are fused by CI fusion algorithm to effectively develop the performance of prediction. Moreover, the variance is obtained to value the prediction results. The model is validated on the real weather dataset in Beijing. The experiments show that LSTM and GRU have their pros and cons for different data, CI fusion can develop the accuracy of the final predictions, and the entire framework has robust prediction results with a reasonable estimated variance.</abstract><type>Journal Article</type><journal>IECE Transactions on Intelligent Systematics</journal><volume>1</volume><journalNumber>1</journalNumber><paginationStart>10</paginationStart><paginationEnd>18</paginationEnd><publisher>Institute of Emerging and Computer Engineers Inc</publisher><placeOfPublication/><isbnPrint/><isbnElectronic/><issnPrint>2998-3320</issnPrint><issnElectronic>2998-3355</issnElectronic><keywords>Deep prediction network, covariance intersection (CI) fusion, sensor data analytics</keywords><publishedDay>25</publishedDay><publishedMonth>5</publishedMonth><publishedYear>2024</publishedYear><publishedDate>2024-05-25</publishedDate><doi>10.62762/tis.2024.136898</doi><url/><notes/><college>COLLEGE NANME</college><department>Mathematics and Computer Science School</department><CollegeCode>COLLEGE CODE</CollegeCode><DepartmentCode>MACS</DepartmentCode><institution>Swansea University</institution><apcterm>Not Required</apcterm><funders>This work was supported in part by the National Natural Science Foundation of China No. 62173002.</funders><projectreference/><lastEdited>2024-10-25T12:52:39.8420056</lastEdited><Created>2024-09-06T14:37:12.4858025</Created><path><level id="1">Faculty of Science and Engineering</level><level id="2">School of Mathematics and Computer Science - Computer Science</level></path><authors><author><firstname>Hans</firstname><surname>Ren</surname><order>1</order></author><author><firstname>Yeqing</firstname><surname>Wang</surname><order>2</order></author><author><firstname>Huijun</firstname><surname>Ma</surname><orcid>0009-0006-5003-0437</orcid><order>3</order></author></authors><documents/><OutputDurs/></rfc1807> |
spelling |
v2 67603 2024-09-06 Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data 9e043b899a2b786672a28ed4f864ffcc Hans Ren Hans Ren true false 2024-09-06 MACS To predict future trends based on the data from sensors is an important technology for many applications, such as the Internet of Things, smart cities, etc. Based on the predicted results, further decisions and system controls can be made. Raw sensor data sets are often complex non-linear data with noise, which results in the difficulty of accurate prediction. This paper proposes a distributed deep prediction network based on a covariance intersection (CI) fusion algorithm in which the deep learning networks, such as long-term and short-term memory networks (LSTM) and gated recurrent unit networks (GRU) are fused by CI fusion algorithm to effectively develop the performance of prediction. Moreover, the variance is obtained to value the prediction results. The model is validated on the real weather dataset in Beijing. The experiments show that LSTM and GRU have their pros and cons for different data, CI fusion can develop the accuracy of the final predictions, and the entire framework has robust prediction results with a reasonable estimated variance. Journal Article IECE Transactions on Intelligent Systematics 1 1 10 18 Institute of Emerging and Computer Engineers Inc 2998-3320 2998-3355 Deep prediction network, covariance intersection (CI) fusion, sensor data analytics 25 5 2024 2024-05-25 10.62762/tis.2024.136898 COLLEGE NANME Mathematics and Computer Science School COLLEGE CODE MACS Swansea University Not Required This work was supported in part by the National Natural Science Foundation of China No. 62173002. 2024-10-25T12:52:39.8420056 2024-09-06T14:37:12.4858025 Faculty of Science and Engineering School of Mathematics and Computer Science - Computer Science Hans Ren 1 Yeqing Wang 2 Huijun Ma 0009-0006-5003-0437 3 |
title |
Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data |
spellingShingle |
Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data Hans Ren |
title_short |
Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data |
title_full |
Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data |
title_fullStr |
Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data |
title_full_unstemmed |
Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data |
title_sort |
Deep Prediction Network Based on Covariance Intersection Fusion for Sensor Data |
author_id_str_mv |
9e043b899a2b786672a28ed4f864ffcc |
author_id_fullname_str_mv |
9e043b899a2b786672a28ed4f864ffcc_***_Hans Ren |
author |
Hans Ren |
author2 |
Hans Ren Yeqing Wang Huijun Ma |
format |
Journal article |
container_title |
IECE Transactions on Intelligent Systematics |
container_volume |
1 |
container_issue |
1 |
container_start_page |
10 |
publishDate |
2024 |
institution |
Swansea University |
issn |
2998-3320 2998-3355 |
doi_str_mv |
10.62762/tis.2024.136898 |
publisher |
Institute of Emerging and Computer Engineers Inc |
college_str |
Faculty of Science and Engineering |
hierarchytype |
|
hierarchy_top_id |
facultyofscienceandengineering |
hierarchy_top_title |
Faculty of Science and Engineering |
hierarchy_parent_id |
facultyofscienceandengineering |
hierarchy_parent_title |
Faculty of Science and Engineering |
department_str |
School of Mathematics and Computer Science - Computer Science{{{_:::_}}}Faculty of Science and Engineering{{{_:::_}}}School of Mathematics and Computer Science - Computer Science |
document_store_str |
0 |
active_str |
0 |
description |
To predict future trends based on the data from sensors is an important technology for many applications, such as the Internet of Things, smart cities, etc. Based on the predicted results, further decisions and system controls can be made. Raw sensor data sets are often complex non-linear data with noise, which results in the difficulty of accurate prediction. This paper proposes a distributed deep prediction network based on a covariance intersection (CI) fusion algorithm in which the deep learning networks, such as long-term and short-term memory networks (LSTM) and gated recurrent unit networks (GRU) are fused by CI fusion algorithm to effectively develop the performance of prediction. Moreover, the variance is obtained to value the prediction results. The model is validated on the real weather dataset in Beijing. The experiments show that LSTM and GRU have their pros and cons for different data, CI fusion can develop the accuracy of the final predictions, and the entire framework has robust prediction results with a reasonable estimated variance. |
published_date |
2024-05-25T12:52:38Z |
_version_ |
1813886699407671296 |
score |
11.037056 |