KNOWLEDGE MOBILIZATION TO SUPPORT
ENVIRONMENTAL IMPACT ASSESSMENT
A Model and an Application
Juli
´
an Garrido
1
, Juan G
´
omez-Romero
2
, Miguel Delgado
1
and Ignacio Requena
1
1
Department of Computer Science and Artificial Intelligence, University of Granada, Granada, Spain
2
Applied Artificial Intelligence Group, University Carlos III of Madrid, Madrid, Spain
Keywords:
Knowledge mobilization, Environmental impact assessment, Ontologies, Context-aware systems.
Abstract:
EIA is a complex problem due to the wide range of different human impacts, the amount of different envi-
ronmental indicators to measure the effect of an impact, and the correlation among them. In this paper we
propose an application to support knowledge mobilization in Environmental Impact Assessment (EIA) based
on a formal model to represent relevance between context descriptions and domain-knowledge subsets. The
CDS (Context-Domain Significance) pattern allows building a tool to assist in the data collection phase to
establish the relevant indicators in a particular scenario.
1 INTRODUCTION
Knowledge Mobilization comprises all the efforts
aimed to take advantage of the features provided by
mobile networks and devices in order to improve
Knowledge Management procedures. The mobiliza-
tion of knowledge consists of making “knowledge
available for real-time use in a form which is adapted
to the context of use and to the needs and cognitive
profile of the user” (Keen and Mackintosh, 2001). In
other words, Knowledge Mobilization should furnish
users with suitable knowledge to support decision-
making wherever they are located.
From a pragmatical point of view, Knowledge
Mobilization addresses the challenge of developing
Knowledge Mobilization Systems, which are ubiqui-
tous, proactive, declarative, context-aware, integra-
tive, and concise (G
´
omez-Romero, 2008). Several
theories and technologies, most of them from Intel-
ligent Systems and Soft Computing areas, have been
proposed to accomplish mobilization. Among them,
Semantic Web and Ontologies play a crucial role in
building knowledge (Perttunen et al., 2009).
Knowledge management is especially relevant in
application domains affected by information over-
load. Information overload is described as a situation
in which a user is provided with more data than he can
digest, either because sifting through the information
received would take too much time or simply because
interesting facts cannot be separated from irrelevant
data (Eppler and Mengis, 2004). Knowledge Mobi-
lization systems must rely on suitable representations
that take into account what is significant or relevant to
the user, which depends on certain factors other than
the query to be solved: environment, preferences, pre-
vious actions, etc. All these pieces of information,
used to characterize the situation of the entities, can
be regarded as context (Dey and Abowd, 2000), and
the results of the query must be adapted to it.
Accordingly, a Knowledge Mobilization system
must include two kinds of knowledge in its support-
ing ontologies: (i) knowledge specific of the domain
of the application; (ii) knowledge describing contex-
tual situations. The significance of a piece of domain-
specific information in a given context is represented
by a relation between an ontological description of the
situation and an ontological definition of the domain
knowledge.
There are some approaches in the literature aimed
at the creation of ontologies representing this notion
of context-dependent significance. This is the case of
the Context-Domain Significance (CDS) pattern (Bo-
billo et al., 2008). This ontology design pattern de-
fines a set of rules to build a new ontology compliant
to the OWL standard (McGuiness and van Harme-
len, 2004) where context descriptions and domain
expressions are connected through constrained rela-
tions. The main reasoning task within a CDS ontol-
193
Garrido J., Gómez-Romero J., Delgado M. and Requena I..
KNOWLEDGE MOBILIZATION TO SUPPORT ENVIRONMENTAL IMPACT ASSESSMENT - A Model and an Application.
DOI: 10.5220/0003070101930199
In Proceedings of the International Conference on Knowledge Engineering and Ontology Development (KEOD-2010), pages 193-199
ISBN: 978-989-8425-29-4
Copyright
c
2010 SCITEPRESS (Science and Technology Publications, Lda.)
ogy is to retrieve the pieces of domain-specific knowl-
edge that are significant in a given context.
In this paper, we study how the CDS model can
be applied in an Environmental Impact Assessment
(EIA) application to overcome mobilization issues.
EIA is a systematic process to assess the actual or
potential effects of human policies, objectives, pro-
grams, plans, or activities on the local or global en-
vironment. Thus, an EIA study analyzes a complex
system with several factors difficult to understand
due to its large volume and the relationships among
themselves. For example, determining how a road
route can affect an ecosystem, or an industrial activ-
ity might affect the birds or an indigenous specie of
worm. The CDS model allows the summarization of
the number of factors that should be considered by
the auditor, according to the available extra informa-
tion about the environment analyzed and the purpose
of the study. We present a Knowledge Mobilization
system prototype for EIA based on the CDS that facil-
itates the labour of environmental experts by simpli-
fying data collection procedures and adding detailed
annotations to this information.
The paper is structured as follows. In Sect. 2,
we discuss some research works on the development
of knowledge-based solutions to EIA. In Sect. 3, we
describe the use of the CDS ontology-design pattern
to develop the knowledge base of our application, as
well as the functioning of the algorithm to retrieve
significant knowledge from context descriptions. Sec-
tion 4 describes the implementation and a use case of
the Knowledge Mobilization system. The paper ends
with some conclusions and plans for future work.
2 RELATED WORK
Environmental applications require the participation
of a large amount of information sources, which
makes convenient the use of proper representation
formalisms. Different approaches to knowledge-
based environmental tools and models have been de-
veloped in the last years. These contributions incor-
porate formal knowledge representations in their data
model, and, specifically, ontologies.
OntoWEDSS is a decision-support system for
wastewater management. OntoWEDSS extends clas-
sic rule-based reasoning and case-based reasoning
with a domain ontology, which results in more flex-
ible management capabilities. The ontology models
the treatment process, provides a shared and common
vocabulary, and improves the communication among
different elements and agents of the system (Cecca-
roni et al., 2004).
The SEEK project
1
aims at the development of
an infrastructure to support the whole process of
ecological and biodiversity data management, from
the acquisition stage to the synthesis and integration
stage. SEEK implements a semantic mediation mod-
ule, which is an advanced reasoning system that can
determine whether relevant data should be automat-
ically transformed for use with a selected workflow.
The Extensive Observation Ontology (OBOE) frame-
work has been developed in the context of the SEEK
project (Madin et al., 2007). OBOE includes an on-
tology for describing and synthesizing ecological ob-
servational data. The framework allows capturing the
process of ecological field observation and measure-
ment, facilitating logic-based reasoning and making it
possible data discovery, summarization, and integra-
tion processes. A previous environmental ontology
is Ecolingua, which aims at representing ecological
quantitative data (Brilhante, 2004).
In (Oprea, 2005), the authors present a
knowledge-based system that addresses the problem
of air pollution control decision support. In (Batzias
and Siontorou, 2006), a decission support system
for bio-monitoring is described. This system uses
a bio-indicator ontology of environmental exposure
that links pollution to morphological response and
biochemical alterations. In (Chau, 2007), the authors
develop an ontology-based system for assisting
engineers in the management of knowledge about
flow and water quality. The system aims at simulating
the behavior of human experts in problem solving
by using descriptive, procedural, and reasoning
knowledge. The problem of model-based water
management is also faced in (Scholten et al., 2007).
These authors have implemented an ontology-based
tool that supports the simultaneous treatment of
two or more domains as an integrated domain
(multidomain approach). The SOLERES project is
a spatial-temporal information system for environ-
mental management and automatic generation of
ecological maps from satellite images. SOLERES is
based on a knowledge representation module used to
model the environmental information (Padilla et al.,
2008).
3 DEVELOPMENT OF THE
CONTEXT-DEPENDENT
ONTOLOGY FOR EIA
In this section, we will explain how the CDS pat-
tern is applied to build the supporting ontology of the
1
http://seek.ecoinformatics.org
KEOD 2010 - International Conference on Knowledge Engineering and Ontology Development
194
knowledge mobilization system for EIA-assistance.
Essentially, the CDS pattern defines how to build a
new OWL ontology where concepts representing con-
textual situations and concepts representing domain
knowledge are connected through relations. We will
exemplify how to create context descriptions, domain
expressions, and relations in the EIA domain.
The new ontology is used to retrieve all the con-
cepts in the domain ontology which ought to be con-
sidered in a given context. The CDS pattern provides
a suitable algorithm to perform this operation based
on the execution of various basic DL inference tasks.
We will show the functioning of the algorithm with an
example in the EIA application.
For a comprehensive description of using and rea-
soning with the CDS pattern, we refer the reader to
(Bobillo et al., 2008). We refer the reader unfamil-
iar with Description Logics formalisms and the OWL
language to the book edited by (Baader et al., 2003).
3.1 Knowledge Base Development
A CDS ontology
2
is built from two basic sub-
ontologies, one representing domain-specific knowl-
edge and another defining a vocabulary to describe
context situations. The domain-specific ontology
(K
D
) contains the knowledge required to solve the
concrete problem that the system is facing. The con-
text ontology (K
C
) contains the knowledge required
to describe situations that determine which informa-
tion of the domain is relevant. The significance on-
tology (K
S
) is a new ontology where complex con-
texts, complex domains, and links between them are
defined.
Domain Ontology. In EIA, the domain ontology
abstractly represents the information that the audi-
tor has to collect, i.e., the indicators required by an
2
We note an ontology as a triple K = hT , R , Ai, where
T (the TBox) and R (the RBox) contain, respectively,
axioms about concepts and roles (terminological axioms),
and A (the ABox) contains axioms about individuals (as-
serts). The symbols used in K are its signature or vo-
cabulary. Formally, the signature is the disjoint union
S = C ] R ] I, where C =
{
A
}
is the set of atomic con-
cepts (or classes); R =
{
R
A
}
the set of atomic roles (or
properties); and I =
{
a, b, . . .
}
the set of individuals (or in-
stances). From the atomic elements in S, new complex con-
cepts Con(S) = {C
(i)
, D
(i)
, . . .}, roles Rol(S) = {R
(i)
}, and
axioms Ax(S) = {O
(i)
} can be composed (subscripts are not
used when disambiguation is not needed). By extension, the
signature S(O) of an axiom (respectively for roles and con-
cepts) is the set of atomic elements of S which are included
in O (respectively R and C). The signature of an ontology
S(K ) is the union of all the signatures S(O) of the axioms
in K .
environmental assessment methodology. An indica-
tor is a simple measurement of environmental fac-
tors or biological species that are representative of the
characteristics of a biophysical system. That is, in-
dicators provide interesting measures about the state
of the whole ecosystem or a specific part. Indica-
tors, represented as instances of the subclasses of the
concept Indicator, have been collected from spe-
cialized literature (Garmendia et al., 2005; Barettino
et al., 2005). A comprehensive description of the in-
dicators used is out of the scope of this paper –the on-
tology domain contains currently seventy six different
indicators.
Companies, represented as instances of the con-
cept Company, may have related several environmen-
tal assessments developed as a result of their ac-
tivities. Environmental assessments are stored as
instances of the concept EIA. The object prop-
erty hasEIA relates companies and EIAs. An
EIA instance represents a set of indicator measures
in a given period of time. EIA instances and
Indicator instances are related with the object prop-
erty hasMeasurement.
From the indicators ontology, complex domain ex-
pressions can be built. These new concept defini-
tions built from elements of the domain-specific on-
tology and ontology concept constructors are called
complex domains (noted as D
j
). For example,
the complex domain D
1
GroundwaterQuality t
BiodiversityIndex represents a set including indi-
cators about water quality and biodiversity.
Context Ontology. The context knowledge, in turn,
correspond to the possible activities that cause the de-
velopment of the EIA process. Depending on the type
of activity, the auditor focuses on different indicators.
Thus, the context ontology establishes a vocabulary
to describe activities from human actions, places, and
installations. For example, concepts of the context
ontology are Agriculture and WaterExtraction,
which are hazardous activities.
New concept definitions built from elements
of the context ontology and ontology concept
constructors are called complex contexts (noted
as C
i
). For example, an agrarian cultivation
which uses irrigation, fertilizers, and treatments
for insects is represented with the complex con-
text C
1
Agriculture uFertiliserTreatment u
Irrigation u PesticideTreatment.
It is important to notice that D
j
and C
i
are not part
of the domain and the context ontology, respectively.
As mentioned, these ontologies provide a vocabulary
to build more complex concepts, which may not be
defined in these ontologies.
KNOWLEDGE MOBILIZATION TO SUPPORT ENVIRONMENTAL IMPACT ASSESSMENT - A Model and an
Application
195
Table 1: Example of CDS knowledge model.
When agricultural activities involving pruning processes are going to be developed, it is neces-
sary to check the index of biodiversity, soil humidity and vegetal coverage.
C
1
Agriculture u Pruning
D
1
BiodiversityIndex t SoilHumidity t VegetalCoverage
P
1,1
hasAction.C
1
u hasIndicator.D
1
When agricultural activities involving pruning processes and burning of its remainders are going
to be developed, it is necessary to check the index of biodiversity, soil humidity and vegetal
coverage, and the affected area by smells.
C
2
Agriculture u Pruning u Burning
D
2
BiodiversityIndextSoilHumidity tVegetalCoveragetAffectedAreaBySmells
P
2,2
hasAction.C
2
u hasIndicator.D
2
When agricultural activities involving groundwater extraction and sloped land divisions into ter-
races are going to be developed, it is necessary to check the index of biodiversity, soil humidity,
vegetal coverage, soil loss and the alteration of the phreatic level.
C
3
Agriculture u WaterExtration u TerraceControl
D
3
BiodiversityIndex t SoilHumidity t VegetalCoverage t SoilLossRates t
PhreaticLevelAlteration
P
3,3
hasAction.C
3
u hasIndicator.D
3
When agricultural activities involving groundwater extraction, fertilizer use, insects and weeds
control are going to be developed, it is necessary to check the affectation of groundwater quality,
biodiversity, soil humidity, vegetal coverage, alteration of the phreatic level, and soil contents in
metals and salts.
C
4
Agriculture u WaterExtration u Fertilizer uInsectsControl u WeedsControl
D
4
BiodiversityIndex t SoilHumidity t VegetalCoverage t
PhreaticLevelAlteration t GroundwaterQuality t ContentInMetal t
ContentInSalts
P
4,4
hasAction.C
4
u hasIndicator.D
4
Significance Ontology. The significance ontology
is the model where complex contexts C
i
, complex do-
mains D
i
, and links between them are defined. These
links, called σ-connections (connections representing
significance), state that the domain-specific knowl-
edge D
j
should be considered in situation C
i
. In our
case, a σ-connection establishes that a set of environ-
ment indicators must be measured or calculated when
the impact of a set of human actions is evaluated.
A σ-connection concept is a new concept repre-
senting a σ-connection. It is defined with existential
restrictions on the complex context and the complex
domain that it links (via properties R
c
and R
d
). When
there is no possibility of confusion, we use the term
σ-connection instead of σ-connection concept.
K
S
ontology is developed as follows:
Definition 1 . Let K
D
and K
C
be, respectively, the
domain and context ontologies, C
i
a complex con-
text, and D
j
a complex domain. The significance or
CDS ontology that relates the set of pairs (C
i
, D
j
) is a
consistent ontology K
S
= hT
S
, R
S
, A
S
i such that T
S
(non-exclusively) includes definitions for the concepts
P
>
, C
>
, D
>
, C
i
, D
j
, P
i, j
, which satisfy:
1. P
>
, C
>
, D
>
are the superclasses σ-connection
concePt’, “complex Context” and “complex Do-
main”:
P
i, j
v P
>
, C
i
v C
>
, D
j
v D
>
2. R
c
is the bridge property linking σ-connections
and complex contexts:
P
>
v R
c
.C
>
3. R
d
is the bridge property linking σ-connections
and complex domains:
P
>
v R
d
.D
>
4. P
i, j
is the σ-connection linking the complex con-
text C
i
and the complex domain D
j
:
P
i, j
R
c
.C
i
u R
d
.D
j
KEOD 2010 - International Conference on Knowledge Engineering and Ontology Development
196
In its definition, the CDS pattern assumes that the
domain and the context ontologies are disjoint, since
context usually encompasses external to the interest
area. This is not our case and, without loss of gen-
erality, (non-complex) context and domain terms are
included in the same ontology.
Table 1 shows a brief example of the CDS ontol-
ogy for the EIA application. The bridge properties are
R
c
hasAction and R
d
hasIndicator. It can be
observed that C
2
v C
1
, D
2
v D
1
and, for the concept
C
5
Agriculture t WaterExtraction, C
3
v C
5
and C
4
v C
5
.
3.2 Reasoning
The main reasoning task involving a significance on-
tology consists in finding all the concepts in the do-
main ontology which ought to be considered in a
given context. This is the significant domain for a
context, and is formally defined as follows:
Definition 2 . Let K
D
be a domain-specific ontol-
ogy, K
C
a context ontology, and K
S
a CDS ontology,
with their respective signatures S(K
D
), S(K
C
), and
S(K
S
). Let Con(K
D
) be the set of composite con-
cepts that can be built from the primitive concepts of
K
D
. Let scenario E be a concept E S(K
C
).
The domain knowledge in K
D
that is signif-
icant in the scenario E w.r.t. K
S
, denoted as
D(E, K
S
), is a set which includes the concepts I such
that D(E, K
S
) = {I | I Con(K
D
) K
S
|= {E v
C
n
, P
n,m
v P
>
, I v D
m
}}
Concepts in I can be retrieved by performing sev-
eral subsumption tasks. Formally:
Algorithm 1: D(E, K
S
) can be computed in practice
as follows.
1. {C
n
} = {C
n
v C
>
| E v C
n
}
2. {P
k,l
} = {P
k,l
v P
>
| (P
k,l
v R
c
.C
k
) (C
k
C
n
)}
3. {D
m
} = {D
m
v D
>
| (P
k,l
v R
d
.D
l
) (D
m
D
l
)}
4. D(E, K
S
) = {I Con(K
D
) | I v D
m
}
As a matter of example, assuming the CDS model
depicted in Table 1, let us suppose that we want
to retrieve the indicators that are relevant in a sce-
nario where the following actions are to be per-
formed: Agriculture, Pruning, Burning, and
WaterExtraction. This is accomplished by us-
ing Algorithm 1 to calculate the restricted domain
of the complex context concept E Agriculture u
Prunning u Burning u WaterExtraction.
1. C
n
= {C
1
, C
2
}
2. P
k,l
= {P
1,1
, P
2,2
}
3. D
m
= {D
1
, D
2
}
4. I = {BiodiversityIndex,
SoilHumidity,
VegetalCoverage,
AffectedAreaBySmells}
Accordingly, the significant indicators in this case
would be those corresponding to the concepts in-
cluded in I.
4 EIA-ASSISTANCE
APPLICATION
The IASEIA application (Intelligent ASsistant for En-
vironmental Impact Assessment) is a prototype of a
Knowledge Mobilization system to support auditors
to carry out EIA process. This application uses a CDS
model developed according to the specifications and
the examples presented in the previous section.
To create the model, we have used the CDS plugin
for Prot
´
eg
´
e and the CDS API (Bobillo et al., 2008).
The CDS plugin is a tool that allows knowledge engi-
neers to create, edit, test and reason with a CDS ontol-
ogy. The plugin adds a new tab to the Prot
´
eg
´
e-OWL
environment where a user-friendly view of the CDS
ontology is displayed and queries can be introduced.
The CDS API is a Java library to programmatically
manage models created with the CDS pattern. It in-
cludes methods to carry out the most common pro-
cesses involving a CDS model: definition of complex
contexts and domains, creation of profiles, retrieval of
significant domain knowledge, etc. A beta version of
these tools can be found in the web
3
.
The architecture of IASEIA is depicted in Fig-
ure 1. It is divided into three parts: the client agent,
the server agent, and the knowledge-data layer. The
client agent allows the user to access to the applica-
tion by using a standard web browser with an internet
connection. Since reasoning and complex operations
are accomplished in the server side, the device con-
sumes little resources and the application works suc-
cessfully with any common browser.
4.1 Architecture and Development
The server agent is responsible for the communica-
tion with the client side by providing forms based on
HTML, JSP (Java Server Pages) and AJAX (Asyn-
chronous JavaScript And XML) technologies to show
3
http://decsai.ugr.es/ jgomez/thesis/
KNOWLEDGE MOBILIZATION TO SUPPORT ENVIRONMENTAL IMPACT ASSESSMENT - A Model and an
Application
197
IASEIA
Server Agent
HTTP
OWL
IASEIA
Client Agent
Hazardous
Activities
CDS
Ontology
CDS API
Query resolution
JSP
AJAX
EIA
Indicators
Pellet
MySQL
Database
Web
Interface
Web
Browser
Figure 1: Architecture of the EIA support application.
and retrieve information. This module has also con-
trol over the query resolution and the CDS API mod-
ules (the knowledge-data layer), whose main task is
the extraction of the relevant knowledge for the sce-
nario considered by a specific context.
The knowledge-data layer consists of the con-
text ontology model, the domain ontology model, the
CDS ontology model, and a MySQL database. As it
is explained in Sect. 3, the three models are needed
for the query resolution and extraction of the relevant
domain and they are allocated into an ontology server.
The database is used to store the collected information
during the environmental assessment.
4.2 Use
The functioning of the IASEIA system is the follow-
ing. Let us suppose an auditor that needs to perform
an environmental assessment for a company, installa-
tion, or activity. The auditor can move to the place
to be evaluated bringing a smartphone or a similar
device with navigation capabilities. The auditor in-
spects the place and accesses to the query form in the
web application (see figure 2). At this point, the au-
ditor can choose the set of actions best suited to the
real scenario from the structured list retrieved of the
context knowledge base. Once the current scenario is
selected, the auditor sends back the form to the IA-
SEIA application.
Figure 2: Query form for IASEIA.
The server agent receives the description of the
impacting actions that will be performed and uses
them as the input for the CDS API implementation
of the CDS reasoning algorithm. The algorithm finds
out the significant domain for the context description
–i.e., the relevant indicators–, which is used to fill the
form that is sent to the auditor (see figure 3).
Figure 3: Data form for IASEIA.
The indicators form offers a list of indicators and a
corresponding text field for each of them. The auditor
must fill the form with the measured values, besides
some additional data: the date of the assessment, the
company, etc. Finally, the collected data are sent to
the server, which acknowledges the values by display-
ing them after checking that the transaction is right.
5 CONCLUSIONS
This paper presents an ontology-based system to as-
sist environment data acquisition for environmental
impact assessment, a problem affected by informa-
tion overload. The IASEIA application facilitates the
selection of the most appropriate environmental in-
KEOD 2010 - International Conference on Knowledge Engineering and Ontology Development
198
dicators to be evaluated for a given set of impacting
actions.
The knowledge base of IASEIA has been devel-
oped by relying on the CDS pattern, an ontology de-
sign pattern to create ontologies that allows the char-
acterization of the significant domain information of
a given context. The CDS pattern promotes modu-
larity and reusing of the knowledge models. Thus, it
is possible to enhance the models by adding or cre-
ating more specific ontologies covering more detailed
aspects of the EIA process. The context and the do-
main ontologies can be easily extended with addi-
tional knowledge to describe additional actions and
indicators. Building a comprehensive actions ontol-
ogy is a difficult task, and therefore it may be neces-
sary to incorporate new terms to describe actions that
were not predicted in the development of the context
ontology. Similarly, indicators may change if differ-
ent assessment methodologies are used.
Actually, our ongoing and future work is focused
on the enhancement of the knowledge models under
the supervision of environmental experts. The devel-
opment of more accurate models will serve as a basis
for the future real use of the system, both in indoors
and outdoors scenarios.
ACKNOWLEDGEMENTS
This work has been supported by the projects P07-
TIC-02913, P08-RNM-03584, TIN06-15041-C04-
01, and CAM CONTEXTS (S2009/TIC-1485).
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