Stork, Jörg; Wenzel, Philip; Landwein, Severin; Algorri, Maria Elena; Zaefferer, Martin; Kusch, Wolfgang; Staubach, Martin; Bartz-Beielstein, Thomas; Köhn, Hartmut; Dejager, Hermann; Wolf, Christian:
Underwater Acoustic Networks for Security Risk Assessment in Public Drinking Water Reservoirs
In: De.arXiv.org (2021-07), pp. 1 - 24
2021-07Essay / Article in JournalOA Green
Faculty of Computer Science and Engineering Science » Institut für Automation & Industrial ITFaculty of Computer Science and Engineering Science » Institut für Data Science, Engineering, and AnalyticsFaculty of Computer Science and Engineering Science » :metabolon Institute
Title:
Underwater Acoustic Networks for Security Risk Assessment in Public Drinking Water Reservoirs
Author:
Stork, JörgTH Köln
DHSB-ID
THK0001690
SCOPUS
55637469700
Other
person connected with TH Köln
;
Wenzel, PhilipTH Köln
DHSB-ID
THK0001618
Other
person connected with TH Köln
;
Landwein, Severin;Algorri, Maria ElenaTH Köln
DHSB-ID
THK0002525
SCOPUS
6602943877
Other
person connected with TH Köln
;
Zaefferer, MartinTH Köln
DHSB-ID
THK0001564
SCOPUS
41262798300
Other
person connected with TH Köln
;
Kusch, Wolfgang;Staubach, Martin;Bartz-Beielstein, ThomasTH Köln
DHSB-ID
THK0001582
GND
124999476
ORCID
0000-0002-5938-5158ORCID iD
SCOPUS
57190702501
Other
person connected with TH Köln
;
Köhn, HartmutTH Köln
DHSB-ID
THK0001683
SCOPUS
57226606591
Other
person connected with TH Köln
;
Dejager, Hermann;Wolf, ChristianTH Köln
DHSB-ID
THK0001605
SCOPUS
57208787361
Other
person connected with TH Köln
Date published:
2021-07
„Publication Channel“:
OA Green
arXiv.org ID
Language of text:
English
Keyword, Topic:
Artificial Intelligence (cs.AI)
Type of resource:
Text
Access Rights:
open access
Peer Reviewed:
Not Peer Reviewed
Practice Partner:
Yes
Category:
Research
Part of statistic:
Part of statistic

Abstract in English:

We have built a novel system for the surveillance of drinking water reservoirs using underwater sensor networks. We implement an innovative AI-based approach to detect, classify and localize underwater events. In this paper, we describe the technology and cognitive AI architecture of the system based on one of the sensor networks, the hydrophone network. We discuss the challenges of installing and using the hydrophone network in a water reservoir where traffic, visitors, and variable water conditions create a complex, varying environment. Our AI solution uses an autoencoder for unsupervised learning of latent encodings for classification and anomaly detection, and time delay estimates for sound localization. Finally, we present the results of experiments carried out in a laboratory pool and the water reservoir and discuss the system's potential.