Integration of Remote Sensing Data to Facilitate Multi-Hazards Risk
Assessments in Coastal Regions
Eduardo R. Oliveira
1
, Leonardo Disperati
2
and Fátima L. Alves
1
1
COPING TEAM – Coastal and Ocean Planning Governance, CESAM - Centre for Environmental and Marine Studies,
Department of Environment and Planning, University of Aveiro, Aveiro, Portugal
2
Dipartimento di Scienze Fisiche, della Terra e dell’Ambiente, Università degli Studi di Siena, Siena, Italy
1 RESEARCH PROBLEM
Risk management is amongst the priorities of
Portugal’s national strategic policies, including
regional and national spatial planning programmes
(PROT and PNPOT). According to Europe 2020
Strategy, there is a global need to strengthen
economies towards climate risks, disaster prevention
and response.
Following the EU Internal Security Strategy target of
establish a risk management policy linking threat and
risk assessments to decision making in each member
state, the Sectorial Plan for Risk Prevention and
Reduction has been developed to include risk
assessment and cartography (ANPC, 2014).
However, several difficulties have been recognized
by the Portuguese Directorate-General for the
Territory (DGT) and the National Civil Protection
Authority (ANPC), regarding complexity and lack of
consensus from multiple scientific domains (DGT,
2013).
Multi-Hazard Risk Assessments (MHRA) deal with
the combination of multiple hazardous sources and
multiple variable elements overlapping in time and
space. Such approaches can go beyond the simple
aggregation of single-hazard assessments, by
considering several types of interactions, which may
amplify their consequences (Delmonaco, Margottini
and Spizzichino, 2007; Marzocchi et al., 2012).
MHRA are solutions capable of supporting spatial
planning decisions and emergency strategies. One of
the most important considerations concerns the
availability of ready and reliable data, which if often
expensive or unavailable to risk assessment experts.
Earth Observation (EO) using satellite Remote
Sensing (RS) have been widely used to provide data
for single hazard risk assessments, as complement to
ground-based data. However, the main research
question arises: ‘Can multi-hazard risk assessments
be based on freely available RS data?’
2 OUTLINE OF OBJECTIVES
This thesis aims at providing practical methodologies
and tools to improve and facilitate multi-hazard
assessments in populated and natural territories. The
main objective is to develop an innovative
methodology for multi-hazard risk assessments, using
satellite multi-spectral RS images and digital
elevation data as the main data source. The
methodology will be applied to the Aveiro region (in
the Norwest of Central Portugal), using alternative
data sources for validation purposes.
To achieve this objective, the following specific goals
should be accomplished:
- to systematize detailed geospatial information about
coastal and riverine floods, wave overtopping,
wildfires and soil erosion hazards in the Aveiro
region, based on the available literature and
databases;
- to study the effects and interactions between land
cover types, elevation, temperatures, humidity and
water levels with hazard events;
- to develop a methodological approach for multi-
harzard risk assessments, based on satellite RS data;
- to test, apply and validate the methodology in the
Aveiro Region;
- to discuss the potential uses of this new
methodology, including applications with different
hazard types, semi-automatic routines for primary
risk assessments, and application on large/remote
areas.
R. Oliveira, E., Disperati, L. and L. Alves, F.
Integration of Remote Sensing Data to Facilitate Multi-Hazards Risk Assessments in Coastal Regions.
In Doctoral Consortium (GISTAM 2018), pages 3-7
Copyright
c
2019 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
3
3 STATE OF THE ART
The coexistence of modern industrial societies
together with fragile natural territories increases the
vulnerabilities and exposure to both technological
and natural risks, placing new challenges for risk-
management at local and regional scales (de Souza
Porto and de Freitas, 2003). The effects of global
climate change are contributing to increase the
frequency and intensity of weather related hazards
(Adger et al, 2007; Deleu, Tambuyzer and Stephenne,
2011), requiring decision support information tools in
order to establish effective disaster mitigation
strategies (Grünthal et al., 2006).
Traditional Single-Hazard Risk Assessment (SHRA)
approaches include vulnerability and exposure
analysis of the affected elements by one hazard (e.g.
buildings, people, cars, land uses, infrastructures).
Nonetheless, most natural and anthropogenic risks are
likely to occur at one same location and, not rarely, at
the same time (Carpignano et al, 2009). Experiences
with decision makers show that a territorial
perspective is desirable for spatial planning decisions
and emergency strategies (Grünthal et al., 2006), in a
way that Multi-Hazard Risk Assessment (MHRA)
combines multiple hazardous sources and multiple
vulnerable elements overlapping in time and space,
which may be as close as possible to the reality of
spatial management for decision-makers (Carpignano
et al., 2009). Beyond the territorial perspective,
MHRA can be element oriented, concentrating on the
potential impacts from various events in the same
element at risk (Delmonaco, Margottini and
Spizzichino, 2007). Another highlighted aspect is the
interaction among different risks (Marzocchi et al.,
2009; Selva, 2013), and the so-called “cascade
effects”, which are often neglected in SHRAs
(Marzocchi et al., 2012).
Mapping is usually amongst the first steps to take
preventive measures, allowing decision makers to
identify the spatial distribution of hazard intensities,
exposed population and values, as well as expected
losses. Complete MHRAs enable significance
comparison of different hazard types, contributing to
raise awareness and develop tailor-made mitigation
strategies (Carpignano et al., 2009; EC, 2010).
Spatial and statistical data have different relevancies
for each hazard type. Nevertheless, data requirements
for natural hazard assessments include land use,
vegetation, slope, oceanographic and meteorological
factors (Van Westen, 2013). Remote Sensing (RS)
has provided a synoptic perspective for many of these
measurements, for variable spatial scales and
temporal resolutions, contributing for a wide range of
disciplines (Tralli et al., 2005). Satellite earth
observations have been used in many SHRAs,
enabling the possibility to reconstruct recent-history
catastrophic events and providing data for prediction
and mitigation planning actions (e.g., Lu et al., 2004;
Grünthal et al., 2006; Chuvieco et al., 2010; Leifer et
al., 2012).
4 METHODOLOGY
This thesis is being developed within a research group
which as participated in several projects concerning
the Aveiro region and its relation to hazards and
global change scenarios (e.g. ADAPTARia (FCT),
LAGOONS (FP7), SPRES (EU-INTERREG IV),
ClimAdaPT.Local (MFEEE/EEA-Grants)). This
experience is considered relevant to the thesis
development, providing insights and relevant inputs
from these projects databases.
Given the complex interactions between different
hazard types and the innovative character of this
study, the list of selected hazards was restricted to:
floods (river and coastal), wildfires and soil erosion.
Not only are they amongst the most significant and
studied hazards affecting this study area, but they are
also in terms of RS, directly related with two of the
most studied and easily-identifiable land cover
elements - water and vegetation.
To minimize the costs of this thesis (which will also
affect its potential applications), the methodological
development and application will be based on free
available data and freeware/open-source software. In
RS, this represents a significant constraint in terms of
available resolutions – temporal, spectral, but mostly
spatial. However, they should be suitable for regional
assessments, allowing the compliance with national
and European strategies.
This innovative methodology will provide solutions
to reduce efforts, costs and time of traditional field
monitoring and campaigns and surveys for MHRA.
By delivering a simplified methodology based on
freely available resources and easily accessible to risk
managers and the public, socioeconomic benefits
should be generated, promoting risk awareness and
contributing for increasing the resilience of
populations and ecosystems.
DCGISTAM 2018 - Doctoral Consortium on Geographical Information Systems Theory, Applications and Management
4
4.1 Literature Review
The initial steps of this PhD consist in the elaboration
of an exhaustive literature review about the main
topics relevant to this thesis. Several methods
regarding single and multi-hazard risk assessments
were classified in terms of the possibility of
integration of RS methods and applicability to the
study area. This work has been summarized and
submitted as a review paper in a relevant peer-review
scientific journal.
4.2 Single Hazard Risk Assessments
This sub-section includes the collection of hazard or
risk assessment studies comprising the study area, as
well as other literature with similar approaches to this
working programme.
Relevant geospatial data regarding floods, wildfires
and soil erosion, have been collected to support both
single and multi-hazard risk assessments.
Historical hazard-related events occurring in the
study area will be reconstructed and characterized,
including present conditions and global change
scenarios. The available databases of previous
research projects are important information sources
(e.g. geomorphologic variables; meteorological data;
hazard occurrences, consequences and responses;
socioeconomic variables), which can be
complemented with press-archives and other studies.
The characterization will continue with data
acquisition from satellite imagery databases, for those
periods around hazard occurrences (prior, after and if
possible during), to determine possible correlations
RS data and the occurrence of hazard events, which
will be crossed with
Land cover changes will be analysed using freely
available RS multispectral images, from medium
spatial resolution satellites (e.g. Landsat, Sentinel,
ASTER). MODIS (TERRA and AQUA) will be used
whenever higher temporal resolutions are required,
providing information about temperatures, humidity
and water levels.
SRTM, ASTER DEM and ALOS data will be used to
obtain elevation data.
By the end of this step, single risk assessments will
be established for each of the selected hazards, using
either data-driven or physically based methods.
Each historical event occurring since the late
seventies (which corresponds to the oldest records of
Landsar series will be carefully analysed in order to
identify usable satellite images. Potential interactions
between multiple hazards will be analysed, focusing
on simultaneous or cumulative occurrences. These
results will be published in relevant peer-review
scientific journals, together with further
methodological developments.
4.3 Development of an Innovative
Methodology for MHRA based on
Satellite RS Data
The methodology to be developed in the context of
this PhD is based on the co-relation of changes
detected in previous hazard-related events,
privileging RS data to provide fast and reliable risk
assessment solutions.
4.3.1 Exposure Assessment
The first step will be dedicated to identify methods
for determining levels of multi-hazard exposures.
Each event will be analysed to identify predisposing
conditions for single hazards’ direct effects, and in
terms of triggering effects which may generate
secondary hazards (e.g. floods occurring in recently
burned areas, or floods following wave overtopping
events) (Van Westen, 2013).
4.3.2 Vulnerability Assessment
Subsequently, a global vulnerability index will be
developed for covering individual aspects for each
specific hazard, including expected effects on
physical, biological and socioeconomic dimensions.
Source data will be directly (or indirectly) obtained
through RS methods (e.g. geomorpholical features,
land covers, buildings).
4.3.3 Multi-Hazard Risk Assessment
By the end of this step, an innovative risk index will
be proposed to relate multi-hazard exposures and
vulnerabilities, using qualitative relations (matrixes)
or algebraic operations between different indexes.
Another scientific publication will resume these
developments.
4.4 Methodological Application to the
Case Study Area and Validation
The Aveiro region will be used to test and validate
single and multi-hazard risk assessments. The
application of RS based methods will be compared to
others obtained from alternative data sources in order
to validate results. These can be found in several
projects related with risk assessments in the Aveiro
Integration of Remote Sensing Data to Facilitate Multi-Hazards Risk Assessments in Coastal Regions
5
Region (e.g. ADAPTARia, Lagoons, MISRaR, Plano
de Ordenamento da Orla Costeira de Ovar-Marinha-
Grande, Secur-Ria, PESERA).
4.5 Exploring the Relationship between
Semi-Automatic Remote Sensing
Data and Multi-Risk Analysis
All results and conclusions obtained in the previous
stages of the doctorate will be compiled in the
dissertation and a final scientific publication. The real
uses of the developed methodologies will be
discussed, allowing the compliance with national and
European sectorial plans and strategic goals.
The topics for discussion include the application in
large or remote areas, accuracy levels, and
incorporation of semi-automatic routines.
5 EXPECTED OUTCOME
The main deliverable of this thesis will be an
innovative methodology for multi-hazard risk
assessments based on RS methods, which remain
underexploited. Its highest potential concerns
regional scale applications, in line with the
requirements of national and European strategies and
sectorial plans for risk prevention and management.
The outputs of this work will provide spatial
managers and decision-makers with an integrated
reliable and facilitative approach to support private
and public sectors in increasing territorial resilience
to risk, and to generate socioeconomic benefits from
sustainable use of resources.
6 STAGE OF THE RESEARCH
At the time of this writing, the thesis is at is half-way
point. A paper containing the literature review has
already been submitted to a scientific journal.
The PhD candidate has collaborated in a publication
about a RS based method for modelling shoreline
evolution to support coastal risk management,
including an application to the study area (Cenci et
al., 2015, 2017).
Another paper is being concluded, consisting in a RS
method for river flood detection (again with
application to the study area).
The following step should address the remaining
single hazard assessments (wildfires and soil erosion)
and the application of an overall vulnerability index.
The final task will consist in the definition and
application of a multi-hazard risk assessment, which
will consider all the previous steps of this thesis,
including every single-hazard risk assessment. The
validation of results is being made together with each
individual hazard assessment.
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