urban planning and decision making is further
discussed in the subsequent section.
2.2 Provenance for Tracking Planning
Processes in Smart Cities
Provenance is often employed to trace the audit trail
and usage of data, to estimate data quality and
reliability and accuracy, to verify the validity of
information, integrity, authenticity, replication and
repetition of data and processes, to validate the
attribution of data, and to establish transparency and
trust in the system (Carata et al., 2014; Simmhan et
al., 2005).
The significant dual challenges of gathering and
storing provenance data in complex Smart Cities has
motivated a number of research efforts in recent
years. d'Aquin et al., (2014) addresses the
management of diverse datasets produced by
different objects in Smart Cities. Provenance is
employed in (Lopez-de-Opina et al., 2013; Emaldi et
al., 2013) for addressing validation and trust issues
related to open data in Smart Cities. Provenance is
employed in (Packer et al., 2014) for transparency
and accountability of sharing services in smart cities.
The literature demonstrates the potential use of
provenance in Smart City environments. However,
utilising provenance information and data emerging
from IoT sensor nets to capture the processes needed
in the planning process in smart cities has not yet
been investigated. Nevertheless, the suitability of
provenance for urban planning has been discussed
by Edwards et al., (2009). Furthermore,
eSocialScience tools and techniques have been
proposed to support social scientists involved in
policy-related research. Evidence-based policy
simulation is a focus of the OCOPOMO project
(Lotzmann and Wimmer, 2012) which enables
policy formulation using a set of ICT tools. The
tools facilitate policy makers in modelling policies
and in communicating them to other stakeholders for
feedback. Scherer (2015) extends the OCOPOMO
project by using a model-driven approach in the
project.
What is required is a holistic approach to
managing the full lifecycle of policy making for
smart cities. This will necessitate the use of a
process oriented approach to identify socio-technical
activities and exchange of data among actors in a
policy cycle. This approach will deal with the
integration of heterogeneous data in a common
conceptual model (potentially description-driven, as
in the CRISTAL software) and the gathering,
curation and analysis of data emerging from smart
city sensing devices plus tracking the provenance
and processing of those data and how they may
influence decision making, policy implementation
and its evaluation in a city-wide environment.
The existing work (Edwards et al., 2009;
Lotzmann and Wimmer, 2012; Scherer et al., 2015)
shows the potential role of provenance in urban
planning. However, the current systems do not track
all activities of the policy cycle and are not in the
context of smart cities. Citizens’ participation is
important for smart cities planning ( BristolisOpen,
2015). Therefore, provenance gathering will also
need to capture how their suggestions were
accommodated in the policy process. Provenance
tracking of smart cities’ planning will provide a rich
source of information regarding the policy making
process. This information can be used to support
policy analytics in smart cities which is discussed in
section 2.3.
2.3 Using Provenance to Support
Policy Analytics in Smart Cities
Policy analytics in the past couple of years has
attracted the attention of many researchers (De
Marchi et al., 2012; Tsoukiàs et al., 2013; Daniell et
al., 2015). Opinion mining has been employed by
Kaschesky et al., (2011) to track and analyse the
citizens’ participation in policy making process.
Similarly, possible use of preference learning, text
mining, value-driven analysis, prospective analysis,
and data mining for policy analytics has been
specified by a number of researchers (Tsoukiàs et
al., 2013; Daniell et al., 2015).
The planning process requires both data and
value-driven decision making (Tsoukiàs et al.,
2013). Therefore, in order to enable policy analytics
and to aid in decision making, tracking of both data
and values is required. Provenance of the policy
making process will provide an integrated platform
and will provide rich information regarding the
process such as the evidence used (in the case of
smart cities, data from IoT sensors is pertinent),
public engagement, and decisions of policy makers.
Such information can be used for analysis and to
inform current and future decision making.
Provenance can be employed to find useful
information and can be used for the purpose of
learning and knowledge discovery (Liu et al., 2013).
Huynh et al., (2013) used provenance analytics to
assess the quality of the crowd-generated data.
Margo and Smogor (2010) employed machine
learning classification techniques in order to classify
files using their provenance. Huynh and Margo