Jump to main content
US EPA
United States Environmental Protection Agency
Search
Search
Main menu
Environmental Topics
Laws & Regulations
About EPA
Health & Environmental Research Online (HERO)
Contact Us
Print
Feedback
Export to File
Search:
This record has one attached file:
Add More Files
Attach File(s):
Display Name for File*:
Save
Citation
Tags
HERO ID
4178598
Reference Type
Journal Article
Title
Graph Signal Processing in Applications to Sensor Networks, Smart Grids, and Smart Cities
Author(s)
Jablonski, I
Year
2017
Is Peer Reviewed?
1
Journal
IEEE Sensors Journal
ISSN:
1530-437X
EISSN:
1558-1748
Volume
17
Issue
23
Page Numbers
7659-7666
DOI
10.1109/JSEN.2017.2733767
Web of Science Id
WOS:000415182100008
Abstract
This paper initiates a discussion on the application of the graph signal processing to exploration of complex and heterogeneous data and systems, and especially for the case of environmental monitoring in smart habitat of city, country, and continent. This emerging approach relates to the objects, which can be represented by a networked structure, but enables also the reconstruction of network-like associations from data when this kind of structured organization is not apparent. In this paper, the sensor network is perceived as the fundamental layer of the smart habitat, and inference is provided not only by direct operation on acquired signals, but also network model is identified for recorded ozone (O-3) data in 100 measurement points deployed in Poland. It means that a graph as a mathematical representation of the complex network is generated, which links system features and behaviors coded in measured data sets. Results of multiscale projections are commented for ozone data sets. Furthermore, in opposite to the classical signal processing, the spectral analysis for graph signals is demonstrated, including reconstruction of graph Laplacian and Fourier transform calculation for signals spanned on graph vertices. Finally, local (related to the location of sensor in network) properties and behaviors are clustered based on spectral maps generated for graph signals.
Keywords
Big data; signal processing; complex networks; sensor networks; smart cities
Tags
NAAQS
•
ISA-Ozone (2020 Final Project Page)
Literature Search Results
Literature Search - Included
Keyword Search
Topic Classified Exposure
Title-Abstract Screening (SWIFT-AS) - Excluded
Manually Excluded
Home
Learn about HERO
Using HERO
Search HERO
Projects in HERO
Risk Assessment
Transparency & Integrity