This
paper aims to address different issues connected
to the integration of multisource data sets
in order to better serve different communities
through their SDI initiatives and also a
better management and sharing of their spatial
data
With
applying modern technologies to generating spatial
data, the amount of spatial data is increasing
dramatically and huge amounts of data sets are
being created and stored by different agencies.
Despite the growth of spatial datasets and the
expansion of their use in different applications
and new emerging services, they are being acquired
and maintained by different organizations under
different policies and even by organizations from
different political and administrative levels.
In such organizational arrangement, the spatial
data providers produce and manage their own datasets
without considering the reuse and integration
of the datasets by other users, so most of the
datasets have been produced and managed for a
single purpose.
In this regard, there is a great deal of reports,
stating different aspects of multi-source built
and natural datasets integration. They have highlighted
the heterogeneity and inconsistency of the initiatives
and activities in different dimensions and most
of them have attempted to address these impediments
by documenting the technical inconsistencies (Fonseca,
2005; Young, 2005; Taylor, 2004; Hakimpour, 2003).
Nevertheless, in many cases the technical inconsistency
arises from non-technical problems and occurs
as result of other marginal issues; belong to
social, institutional, legal and political inconsistencies
of different custodians and relevant organizations.
Over the last decade these needs are being addressed
and overcome by establishing spatial data infrastructures
(SDI) where one ofits key objectives is to facilitate
the integration of multi-source datasets, and
specifi cally cadastral (built) and topographic
(natural) spatial data (Rajabifard and Williamson,
2004).
With this in mind, this paper aims to discuss
the key elements of integration in order to better
understand and describe the technical, jurisdictional,
institutional, legal and land policy perspective
surrounding the foundation datasets (cadastral
and topographic) in a National SDI initiative.
The paper is based on a research which will investigate
the justifi cation for integrating these two forms
of spatial data in support of sustainable environment
and develop a model and framework capable of being
used in diverse jurisdictions.
Spatial Data Integration
Spatial
services commonly rely on more than one data source
and it springs from their multi-criteria nature.
As a consequence, integration of datasets is the
primary and most common task in most, if not all,
of the spatial data services. In this regard the
technical integration of spatial data has received
more attention; nevertheless, non-technical issues
seem to be more problematic. This includes the
legal, policy, social, and
institutional issues (Figure 1) which cause inconsistency
in integration.
The approach
of the current research is to better understand
and describe all aspects of issues surrounding
the foundation datasets within National SDI initiatives
in order to provide an efficient framework for
integration by taking both technical and nontechnical
issues into account.
The importance of the research on integration
of multi-source spatial datasets has been highlighted
in numerous publications, declarations and resolutions
and in particular UN resolutions. Rajabifard and
Williamson (2004) have promulgated the integration
of built and natural datasets within National
SDI initiatives as a major concern in the success
of National SDI. Resolution 15 of the 14th UN
Regional Cartographic Conference for Asia-Pacific
(UNRCC-AP), calls for issues in the integration
of cadastral and topographic datasets to be investigated
(UNRCC-AP, 1997). The UN Bogor Declaration (1999)
urges the creation of National Spatial Data Infrastructure
to ensure integration and highlights the homogeneity
of the topographical and cadastral datasets (as
two core spatial datasets) to achieve the integration
to their maximum potential. These declarations
also highlight the need for sharing of integrated
data among nations, particularly to address common
ecological problems in alignment with sustainability
objectives.
Data integration to
meet sustainable development objectives
A perception
is growing among government and businesses that
the community is demanding they help build a better
society for all. There is increased pressure for
organisations to become more sustainable (Vandenberg,
2002). A society which is not geographically aware,
or “spatially enabled”, is deprived
of the ability to develop comprehensive socioeconomic
concepts and plans, and effective implementation
(Williamson et al 2005). The quality of decision
making and policy development relies greatly on
having all the necessary spatial information about
the natural and built environments. Meeting sustainable
development objectives (social, economical and
environmental) is possible through a comprehensive
understanding of all aspects of the developing
and changing environment and it entails merging
all built and natural components of the environment
to simulate and control the changes.
Good governance of spatial data depends heavily
on an enabling platform to manage datasets, facilitate
collaborations between data stakeholders (provider,
user,value added reseller), and develop the policies,
standards and data access facilities through addressing
policy, legal, institutional and technical considerations.
A Spatial Data Infrastructure aids sustainable
development to achieve a better perception of
the changing environment and control and manage
the impacts of the different environmental elements
(Figure 2). This aim is done by understanding
the environments and built and natural components,
their changes and by controlling these elements
through monitoring changes and their impacts.
Some major international concerns connected to
sustainable development are equal access to resources,
land management, environmental protection, water
rights, indigenous and minorities land rights,
and emergency management which can only be addressed
by accessing integrated spatial datasets within
any regional content.
By investigating the approaches of different jurisdictions,
at a national and state level in addressing integration
issues, governments will achieve a better understanding
of the needs and the benefi ts of integration
and will lead the data access and SDI policies
towards considering the facilitation of multi-source
dataset integration as a priority. Studying different
jurisdictions with different characteristics such
as size, population, political structure, and
spatial data policy will assist in determining
“best practice” and gives a framework
to evaluate the performance of the systems.
Multi-disciplinary
approach versus singledisciplinary approach
Built and
natural datasets, originally, have been produced
to serve different specific purposes and as a
consequence they have been managed under different
organizational structures with different policies,
divergent technical consideration, and diverse
priorities. As a result of that, they have been
managed to serve their designated discipline which
cause inconsistency and heterogeneity when being
used by different disciplines. At the same time,
nowadays, multi-disciplinary use and application
of spatial datasets forces the datasets to go
far beyond serving just a single discipline.
To move from data management with a single-discipline
interest towards
multi-disciplinary approach, a holistic framework
for data integration within any SDI is required
to facilitate the provision the datasets to multidisciplinary
users (Figure 3).