=Paper= {{Paper |id=Vol-2451/paper-14 |storemode=property |title=Employing Geospatial Semantics and Semantic Web Technologies in Natural Disaster Management |pdfUrl=https://ceur-ws.org/Vol-2451/paper-14.pdf |volume=Vol-2451 |authors=Tobias Hellmund,Manfred Schenk,Philipp Hertweck,Jürgen Moßgraber |dblpUrl=https://dblp.org/rec/conf/i-semantics/HellmundSHM19 }} ==Employing Geospatial Semantics and Semantic Web Technologies in Natural Disaster Management== https://ceur-ws.org/Vol-2451/paper-14.pdf
              Employing Geospatial Semantics and Semantic Web
                Technologies in Natural Disaster Management

          Tobias Hellmund*1, Manfred Schenk1[0000-0001-6463-0704], Philipp Hertweck1, and Jürgen
                                    Moßgraber1[0000-0002-2614-4980]
                 1 Fraunhofer Institute of Optronics, System Technologies and Image Exploitation

                                      IOSB, Karlsruhe, Germany
                    {tobias.hellmund, manfred.schenk, philipp.hertweck,
                           juergen.mossgraber}@iosb.fraunhofer.de
                                    https://www.iosb.fraunhofer.de



                  Abstract. In a natural disaster situation, it is crucial to orchestrate an efficient
                  response, which prevents, or - at least - mitigates damages. Based on the assump-
                  tion, that a well-informed decision maker can make the best decisions, s/he
                  should have access to all available information. Thus, employing both internal
                  and external data empowers decision makers. Since natural disasters are usually
                  limited to a certain (previously unknown) area, it is of high importance to get to
                  know about the local context of a disaster. Critical infrastructure, such as hospi-
                  tals, energy supply, buildings with vulnerable beings (kindergarten, elder care,
                  etc.) play an important role in crisis management. Nevertheless, a decision maker
                  might not be aware of all of these places; yet, knowledge about these can often
                  be found in external, public knowledge bases, such as Wikidata. Semantic Web
                  Technology offers tools to integrate data from diverse data stores, offering a giant
                  source of information. To improve situational awareness, this information should
                  be tapped. By employing geospatial semantic features of knowledge bases, it is
                  possible to integrate several data stores and only find information, that is valid
                  within the range of a disaster and therefore of interest to a decision maker. The
                  poster presents the integration of Wikidata as an external knowledge-base into a
                  Decision-Support-System by using federated queries. Through employing geo-
                  spatial semantic features, only relevant information is retrieved.

                  Keywords: Crisis Management, Geospatial Semantics, Situational Awareness,
                  Federated Queries


         1        Introduction

           During a crisis situation, responsible managers have to take momentous decisions:
         while good decisions can mitigate or even prevent damage, bad decisions can allow or
         even amplify the extent. In a flood or large-scale fire event for example, authorities
         must decide if buildings in the endangered area need special protection or whether they
         have to be evacuated. Based on the assumption, that good decisions are likely to be
         made, when all available information is taken into account, a decision maker should




Copyright © 2019 for this paper by its authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0).
2


have access to all available data sources to ensure situational awareness. Nevertheless,
information overload must be prevented [1]. To do so, Decision Support Systems (DSS)
disburden decision makers by (amongst other functionality) preprocessing and select-
ing relevant information and appropriately presenting their informational content [2].
We present an approach, in which an external knowledge base is integrated into an
existing DSS through Semantic Web Technology whereas irrelevant information is
sorted out by geospatial aspects.


2       Related Work

    The poster presents an approach to retrieve data, based on geospatial semantics
through federated queries, as well as visualizing the data and integrating it into a crisis-
management context. Related work from all the named domains, preliminary work, as
well as the project in which this approach was developed, is going to be presented be-
low.
    The discussed approach was developed in the context of the project beAWARE 1.
It’s holistic approach yields into a single DSS, providing support over all phases of a
natural disaster, including the forecasting and early warning phases until the end and
reflection of such. Amongst other things, the beAWARE-platform comprises new tools
for information retrieval and analysis, e.g. algorithms analyzing multi-modal input in
form of pictures, videos, speech recordings and written texts from social media or mes-
sages directly sent to the platform. To ensure the correct understanding of the data, it is
semantically integrated through the beAWARE Ontology, where the spatiotemporal
context is saved. This ontology is presented by Kontopoulos et al. [3]. The interested
reader can access the ontology on https://github.com/beAWARE-project/ontology.
    In the presented approach, we utilize the Knowledge Base (KB) Wikidata, in which
RDF-structured data is publicly made available. It offers data and information about a
broad field, including places of interest during a natural disaster. Since it also contains
geospatial metadata, it could offer information that is a priori not known to a decision
maker in a natural disaster situation [4]. An often-criticized aspect of Wikidata is data
vandalism requiring the verification of retrieved data [5].
    For geospatial semantics, GeoSPARQL was established as a standard developed by
the Open Geospatial Consortium. It defines a top-level ontology for spatial objects and
geometries to explicitly capture the semantics of these. Additionally, it standardizes
functions to support topological queries [6] [7].
    Schulze et al. present an approach to combine datasets from different sources, such
as mobile devices, Social Media and Semantic Web to empower authorities to detect
natural disasters. The application is an event detection system for catastrophic events
from large data streams. Through information collection, classification and semantic
enrichment, the operator of the system shall gain situational awareness. By employing
Linked Open Data, the expected usefulness of collected is calculated. Yet, geospatial
semantics are not part of the approach [8].


1 https://beaware-project.eu/
                                                                                         3


3       Geospatial Semantics in Crisis Situations

    In natural disasters, time is the enemy. Therefore, a decision maker has to gather all
    relevant information quickly to improve situational awareness and ensure a timely
    disaster response. Since the extent, urgency and need for action of a crisis is highly
    dependent on its geographic context, geospatial semantics offer a good filtering pos-
    sibility to sort out irrelevant data. Semantic Web Technologies and geospatial se-
    mantics offer the possibility to exactly describe the user’s needs and monitor differ-
    ent data stores for data of interest. Through geospatial semantics, a user can retrieve
    solely data close to a specific point or within a certain area.
    In the following, the pipeline to retrieve data with the correct geographic context
    from an external data store is described. The usage of this data is simplified depicted
    in Fig. 1. During a crisis, heterogeneous data is collected through various sensors.
    The raw data is analyzed and semantically enriched with geospatial information ac-
    cording to the ontology. This data is stored internally and, by convention, considered
    trustworthy. Whenever an analysis tool identifies a need for action, an incident re-
    port is created in the beAWARE Knowledge Base. This incident is presented to the
    decision maker in the DSS (blue path). On request, the user can query for local con-
    text from the external data store Wikidata, whereas the location of interest is defined
    through the geospatial metadata of the incident report. Now, information about rel-
    evant structures close by and corresponding pictures are presented within a map in
    the DSS (orange path) and can be taken into account by the authorities. Through the
    identification of possibly endangered, so far undetected infrastructure, the decision
    maker can now coordinate rescue actions with more complete situational awareness.




           Fig. 1. A high-level view on beAWARE’s semantic information retrieval


4       Querying and mapping information from different knowledge
        sources

   To retrieve the situational context of an incident report, a query as shown below is
used. The query is split in two sub-queries. Firstly, all incident reports in the internal
knowledge base and their latitude ?lat and longitude ?lon are retrieved (line 3-11). The
function STRDT in the SELECT function constructs a geo:wktLiteral, specified by the
4


geoSPARQL ontology, as ?incidentReportLocation (line 3-4). The second subquery is
send to wikidata’s SPARQL-endpoint and searches for all instances and instances of
subclasses of architectural structures, that are within 1kilometer range of ?inciden-
tReportLocation (line 12-21).
SELECT DISTINCT ?incidentReportLocation ?name ?location ?place
?picture WHERE {
       {SELECT DISTINCT (STRDT(CONCAT("Point(", STR(?lon), " ",
STR(?lat), ")"), geo:wktLiteral) AS ?incidentReportLocation)
?name ?picture WHERE {
         ?incidentReport a beaware:IncidentReport;
         beaware:instanceDisplayName ?name;
         beaware:hasReportLocation ?location.
         ?location beaware:latitude ?lat;
         beaware:longitude ?lon.
         }
       }{SERVICE  {
         SERVICE wikibase:around {
         ?place wdt:P625 ?location.
         bd:serviceParam wikibase:center
         ?incidentReportLocation;
         wikibase:radius "1".
         }
       OPTIONAL { ?place wdt:P18 ?picture. }
         FILTER EXISTS { ?place wdt:P31/wdt:P279* wd:Q811979 } .
         FILTER NOT EXISTS { ?place wdt:P31 wd:Q15893266 }.
       }}}

  The retrieved results are depicted on a map (see Fig. 2), as shown below. Internal
knowledge, integrated into the beAWARE KB is depicted in fully colored needle points.
External knowledge coming from wikidata is depicted with a transparent needle point.
The letter p indicates the availability of a picture showing the element at this position.




         Fig. 2. Mapping data retrieved with geo-semantic queries in Openstreetmap
                                                                                               5


5        Conclusion

   The proposed poster shows the experimental application of Semantic Web Technol-
ogies using federated SPARQL-queries with the geospatial functions of Wikidata in a
natural disaster scenario. By integrating external knowledge sources, situational aware-
ness can be improved and authorities can make better grounded decision, characterized
by better management of available first responders and resources.
   Still, the knowledge coming from an external source must be validated. Further, the
geospatial functions of Wikidata are not fully GeoSPARQL compliant and limited; still,
the expressiveness was sufficient within the presented application. In a next step, the
retrieved information from external knowledge bases must be refined. Not only archi-
tectural structures, but also cultural events might be of interest for a decision maker.


6        Acknowledgement

  This project has received funding from the European Union's Horizon 2020 research
and innovation programme under grant agreement H2020-700475 beAWARE.


Reference

    1. M. J. C. van den Homberg, R. Monné and M. R. Spruit: Bridging the Information Gap:
       Mapping Data Sets on Information Needs in the Preparedness and Response Phase. In:
       Technologies for Development, pp. 213-225 (2016).
    2. J. Moßgraber, Ein Rahmenwerk für die Architektur von Frühwarnsystemen. KIT Scientific
       Publishing, Karlsruhe (2016).
    3. E. Kontopoulos, P. Mitzias, J. Moßgraber, P. Hertweck, H. van der Schaaf, D. Hilbring, F.
       Lombardo, D. Norbiato, M. Ferri, A. Karakostas, S. Vrochidis and I. and Kompatsiaris:
       Ontology-based Representation of Crisis Management Procedures for Climate Events. In:
       1st International Workshop on Intelligent Crisis Management Technologies for Climate
       Events (ICMT 2018), Rochester NY, USA (2018).
    4. „Wikidata,“ wikimedia, [Online]. Available: https://www.wikidata.org/. [Last accessed
       2019/07/23].
    5. S. Heindorf, M. Potthast, B. Stein and G. Engles. Vandalism Detection in Wikidata. In:
       Proceedings of the 25th ACM International on Conference on Information and Knowledge
       Management , Indianapolis, IN, USA (2016).
    6. R. Battle and D. Kolas. GeoSPARQL: Enabling a Geospatial Semantic Web. In Semantic
       Web Journal, vol. 3, no. 4, pp. 355-370 (2011).
    7. Open                Geospatial                 Consortium                   Homepage,
       https://www.opengeospatial.org/standards/geosparql, last accessed 2019/06/13.
    8. A. Schulz, H. Paulheim und F. Probst, „Crisis Information Management in the Web 3.0
       Age,“ in Proceedings of the 9th International ISCRAM Conference, Vancouver, Canada,
       2012.