Smart Communities: From Sensors to Internet of Things and to a
Marketplace of Services
Stephan Olariu
Department of Computer Science, Old Dominion University, Norfolk, VA, U.S.A.
Keywords:
Society 5.0, Marketplace of Services, Smart communities, Sensor Networks, IoT, Crowdsourcing,
Incentivization.
Abstract:
Our paper was inspired by the recent Society 5.0 initiative of the Japanese Government that seeks to create a
sustainable human-centric society by putting to work recent advances in technology: sensor networks, edge
computing, IoT ecosystems, AI, Big Data, robotics, to name just a few. The main contribution of this work is a
vision of how these technological advances can contribute, directly or indirectly, to making Society 5.0 reality.
For this purpose we build on a recently-proposed concept of Marketplace of Services that, in our view, will
turn out to be one of the cornerstones of Society 5.0. Instead of referring to Society 5.0 directly, throughout
the paper we shall define a generic Smart Community that implements a subset of the goals of Society 5.0. We
show how digital technology in conjunction with the Marketplace of services can contribute to enabling and
promoting sustainable Smart Communities. Very much like Society 5.0, our Smart Community can provide
a large number of diverse and evolving human-centric services offered as utilities and sold on a metered
basis. The services offered by the Smart Community can be synthesized, using the latest technology (e.g.
3D printing, robotics, Big Data analytics, AI, etc.), from a hierarchy of raw resources or other services. The
residents of the Smart Community can purchase as much or as little of these services as they find suitable to
their needs and are billed according to a pay-as-you-go business model.
1 INTRODUCTION
In 2016, the Japanese Government issued and publi-
cized a bold initiative and a call to action for the im-
plementation of a “Super Smart Society” announced
as Society 5.0. The vision and novelty of Society 5.0
is that it embodies a sustainable human-centric soci-
ety enabled by the latest digital technologies. Society
5.0 meets the various needs of the members of so-
ciety by providing goods and services to the people
who require them, when they are required, and in the
amount required, thus enabling its citizens to live an
active and comfortable life through the provisioning
of high-quality services (Shiroishi et al., 2018). So-
ciety 5.0 provides a common societal infrastructure
for prosperity based on an advanced service platform
which turns out to be its main workhorse. The in-
sight behind Society 5.0 is that continued progress
of ICT and digital technologies of all sorts will pro-
vide individuals and society tremendous opportunities
for innovation, growth, and unprecedented prosperity
and well-being through various forms of human-to-
human, human-to-machine, and machine-to-machine
cooperations and collaboration. Most of these forms
of cooperation and collaboration between humans and
machines or between autonomous machines systems
have yet to be defined and understood (Horwitz and
Mitchell, 2010).
Our paper was inspired and motivated by some of
the challenges that will have to be overcome in order
to implement Society 5.0. With this in mind, the main
contribution of this work is a vision of how sensor
networks, edge computing, and IoT ecosystems can
contribute, directly or indirectly, to making Society
5.0 reality. For this purpose, we build on the recently-
proposed concept of Marketplace of Services that, in
our view, will turn out to be one of the cornerstones
of Society 5.0.
Instead of referring to Society 5.0 directly,
throughout the paper we define a generic Smart Com-
munity that implements a subset of the goals of Soci-
ety 5.0. We show how digital technology, in conjunc-
tion with the Marketplace of Services can contribute
to enabling and promoting sustainable Smart Com-
munities.
This work is a continuation and extension of a re-
cent paper (Eltoweissy et al., 2019) where we have
defined the concept of Marketplace of Services. In
Olariu, S.
Smart Communities: From Sensors to Internet of Things and to a Marketplace of Services.
DOI: 10.5220/0009430700070018
In Proceedings of the 9th International Conference on Sensor Networks (SENSORNETS 2020), pages 7-18
ISBN: 978-989-758-403-9; ISSN: 2184-4380
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
7
(Eltoweissy et al., 2019) we have argued that the Mar-
ketplace of Services is, along with an IoT ecosystem,
an integral part of a Smart Community infrastructure.
Very much like Society 5.0, our Smart Community
can provide a large number of diverse and evolving
services offered as utilities and sold on a metered ba-
sis. We expect that most of the services offered by the
Smart Community can be synthesized within the com-
munity itself, using the latest ICT and digital tech-
nologies (e.g. 3D printing, robotics, Big Data, AI,
etc.), from a hierarchy of raw resources or other ser-
vices.
The remainder of the paper is organized as fol-
lows: Section 2 reviews recent digital technologies
that will be key ingredients in realizing Smart Com-
munities. Specifically, Subsection 2.1 reviews wire-
less sensor networks; Subsection 2.2 surveys the
recently-proposed edge computing paradigm, a mod-
ern incarnation of sensor networks; Subsection 2.3 re-
views IoTs, a common extension of both sensor net-
works and edge computing; Subsection 2.4 reviews
the Smart City concept proposed by visionaries two
decades ago; Subsection 2.5 reviews the basics of util-
ity computing; finally, Subsection 2.6 reviews he ba-
sics of crowdsourcing. Moving on, Section 3 reviews
the concept of a Smart Community as an extension
of the well-known Smart City concept. Section 4 il-
lustrates our vision in the context of reviving small
communities fallen onto hard times. Finally, Section
5 offers concluding remarks and highlights a number
of challenges that will have to be overcome in order
to implement the Smart Communities of the future.
2 THE NUTS AND BOLTS
The main goal of this section is to review known ICT
and digital technologies that, in our vision, will play
an important role in implementing sustainable Smart
Communities. These technologies will be surveyed
in chronological order since newer technologies of-
ten extend old ones, while avoiding their limitations
and shortcominings. As an illustration, edge com-
puting is a natural extension of wireless sensor net-
works, where individual edge devices are more pow-
erful and have fewer limitations than the traditional
sensor nodes. In turn, edge computing and sensor net-
works have suggested the rise of the IoT an eclectic
collection of networked devices. We consider sensor
networks, edge devices and IoT ecosystems as under-
lying the Smart Community concept.
To orient the reader, we begin by a table of acronyms
that will be used throughout the paper.
Table 1: A guide to acronyms.
Acronym Description
ICT Information and Communications Technology
OGS Open eGovernment Services
AI Artificial Intelligence
IoT Internet of Things
IoPaT Internet of People and Things
CC Cloud Computing
CPS Cyber Physical System
2.1 Sensor Networks
Over the last two decades, rapid advances in inex-
pensive sensor technology and wireless communi-
cations have enabled the design and cost-effective
deployment of large-scale wireless sensor networks.
Such networks appeal to a wide range of mission-
critical situations, including health and environmen-
tal monitoring, seismic monitoring, industrial pro-
cess automation as well as a host of military applica-
tions ranging from situation awareness to battlefields
surveillance, to tactical operations (Chen et al., 2011;
Mohrehkesh et al., 2014; Olariu et al., 2007; Oliveira
and Rodrigues, 2011). The common thread that uni-
fies these applications is that the sensors are affording
novel, and sometimes surprising, perspectives on phe-
nomena at a scale that was not possible before.
Sensor networks are viewed as time-varying sys-
tems composed of autonomous mobile sensing de-
vices (using mobile robots) that collaborate and use
distributed coordination to successfully accomplish
complex real-time missions under uncertainty. The
major challenge in the design of these networks is
attributable to their dynamic topology and architec-
ture, caused either by sensing devices mobility or else
by the limited energy budget that suggests turning off
individual sensors to save energy. This state of af-
fairs may have significant impact on the performance
of sensor networks in terms of their sensing coverage
and network connectivity. In such dynamic environ-
ments, sensing devices must self-organize and move
purposefully to accomplish any mission in their de-
ployment field, while extending the operational net-
work lifetime. In particular, the design of sensor net-
works should account for trade-offs between several
attributes, such energy consumption (due to mobil-
ity, sensing, and communication), reliability, fault-
tolerance, security, and delay (Jones et al., 2003;
Jones et al., 2005).
The designers of sensor networks face another
challenge, namely that of reaching consensus fast
in order not to delay action (Frederick et al., 2002;
Nakano and Olariu, 2000; Olariu et al., 1992; Olariu
et al., 2013). Indeed, it is well known that the value of
information collected by sensors decays (often quite
SENSORNETS 2020 - 9th International Conference on Sensor Networks
8
dramatically) over time and space and aggregation
of sensor data needs to take this into account (Ra-
jagopalan and Varshney, 2006; Sachidananda et al.,
2010). Yet another challenge facing the designers of
sensor networks is retasking sensors and re-purposing
entire sensor networks in the face of changing mission
parameters (Olariu et al., 2014; Ruffing et al., 2014;
Wang et al., 2018).
2.2 Edge Computing
The past decade has witnessed a fundamental
paradigm shift in computing as the number of smart
device users (e.g., smartphone and tablet users) has
exceeded 3 billion (i.e., 40% of the global popu-
lation) in 2017 and is expected to exceed 4 bil-
lion by 2020. In recent years, the realization that
Moore’s law no longer applies has motivated an em-
phasis shift in computer architecture towards energy-
efficient special-purpose architectures (Hennessy and
Patterson, 2019). In conjunction with recent advances
in nano-technology and smart materials, this has lead,
quite naturally, to the development of new types of
connected smart devices (e.g., smart watches, smart
glasses, smart meters, smart robots, connected vehi-
cles, among others). These pervasive and ubiquitous
smart mobile devices are referred to, collectively, as
edge devices, or the “edge” (Lopez et al., 2015).
It was reported that in 2017 the amount of data
generated each month at the edge by smart devices,
such as smartphones, vehicles, and wearables, has
reached 14 exabytes and is expected to exceed 24.3
exabytes by 2019 (Systems, 2015). As a result, we
are beginning to see more and more network traffic
originating at these “edge” devices.
!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!
!
Cloud!!
Wired!
Network
!
Smart!
Devices!
at!the!
Network!
Edge!
Wireless!
Access!
Network
!
Cellular
Network
!
Internet!
Local Area Network
!
Hotspot!
Network
Figure 1: Illustrating the offloading path from the network
edge to the cloud.
It was soon realized that the data generated at the
edge is incredibly rich in contextual information and,
hence, extremely valuable and should be harvested to
capture and understand context (Haig, 2015). Unfor-
tunately, because of the widening gap between band-
width capacity and data volumes, the data generated
at the edge will increasingly stay at the edge and
will be thrown away for lack of adequate process-
ing power. A good example of such contextually-
rich data is the sensor data collected by the cars that
criss-cross our roadways and city streets. This data
is highly ephemeral as it reflects instantaneous traf-
fic conditions that are apt to change fast. Due to la-
tency, costs, and the risks involved in moving data to
and from a cloud, cloud-based real-time processing of
edge data is neither technologically feasible nor eco-
nomically viable. Refer to Figure 1 for an illustration
of the time delay incurred in offloading the process-
ing of the data generated at the edge to some remote
cloud for processing simply takes too long.
Given the transient nature of context and context-
sensitive needs of individuals and enterprises, the
highest value from edge data can be extracted only
by processing it near real-time.
In the light of our previous discussion, there is a
critical need for an alternative computing platform,
one that allows harvesting and aggregating the huge
amounts of data generated by edge devices right there
at the edge (Mach and Becvar, 2017). It is an in-
teresting observation that the same edge devices that
generate huge amounts of data, also offer, potentially,
a huge compute and storage resource that at the mo-
ment is untapped (Shi et al., 2016). Indeed, it is ex-
pected that the collective computing and storage ca-
pacity of smartphones will exceed that of worldwide
servers by the end of 2018 (Haig, 2015).
2.3 The Internet of Things
The Internet of Things (IoT) has been defined in myr-
iad ways (Atzori et al., 2010). At the most basic level,
an IoT is a network consisting of smart objects, com-
monly referred to as things. The things in the IoT can
be sensor nodes, actuators, everyday objects endowed
with some computation and communication capabili-
ties, edge devices, such as RFID tags, smart phones,
smart watches, tablets, smart meters and other sim-
ilar devices. The IoT things typically communicate
with each other wirelessly. However, more sophisti-
cated devices such as, for example, various types of
process controllers, may be part of an industrial IoT
system and, as such, have wired Internet connection
(Lade et al., 2017). The IoT devices can sense, col-
lect, and aggregate data from the physical environ-
ment. At the same time, through the use of actuators
and controllers, the IoTs have the ability to “close the
Smart Communities: From Sensors to Internet of Things and to a Marketplace of Services
9
loop” acting on the environment in response to the
aggregated data. In this sense, IoTs can be viewed as
Cyber Physical Systems (CPS).
IoT systems are expected to see a wide adop-
tion in industrial applications (Lade et al., 2017) and
(Wollschlaeger et al., 2017), healthcare (Mahmood
et al., 2017), (Sinclair, 2017), (Wang et al., 2017) and
(Yang et al., 2019) and, more broadly, to be incorpo-
rated in the fabric of society (Qiu et al., 2018) and
(Montori et al., 2018). See (Sollins, 2019) and (Whit-
more et al., 2015) for surveys of possible IoT applica-
tions.
Cisco predicted that the number of connected IoT
devices will reach 50 billion by 2020 (Chase, 2018).
However, the wide diversity and heterogeneity of de-
vices that participate in IoT, often by joining and leav-
ing dynamically, have direct consequences on work-
load assignment, networking interfaces, privacy and
security, among many others (Hussain et al., 2018;
Sfar et al., 2019; Sollins, 2019). These, and other sim-
ilar challenges will have to be overcome if IoTs are
to see the predicted phenomenal adoption rate. The
problem of providing security and privacy of IoT sys-
tem is already getting attention in the literature (Kim
et al., 2019). For example, (Al-Ameedee and Lee,
2018) proposes to use deep learning strategies, (Sfar
et al., 2019) proposes a game-theoretic solution, while
(Zhang and Wen, 2016) and (Hui et al., 2019) advo-
cate the use of Blockchain technology.
It has long been recognized the value of smart de-
vices in synthesizing sophisticated services (Medina-
Borja, 2015). We believe that one of the important di-
mensions of IoT is, indeed, that of providing services
that are important to the community in which they op-
erate. For example, (Krishnamachari et al., 2018) and
(Ramachandran et al., 2018), have suggested that sen-
sor data and other information produced by various
IoTs is of fundamental importance in Smart Cities.
2.4 Smart Cities
As it turns out, the term Smart City was coined in the
early 1990s to illustrate how urban development was
turning towards technology, innovation, and global-
ization (Gibson et al., 1992). The early visionaries
depicted the Smart Cities of the future as fully con-
nected entities supported by various forms of pre-
deployed infrastructure, including sensor networks,
ubiquitous and pervasive wireless communication in-
frastructure, supplemented by advanced in-vehicle re-
sources such as embedded powerful computing and
storage devices, cognitive radios and multi-modal
programmable sensor nodes. The visionaries an-
ticipated that, in the near future, vehicles equipped
with computing, communication and sensing capabil-
ities will be organized into ubiquitous and pervasive
networks with a significant Internet presence while
parked or on the move. They predicted that this would
revolutionize the driving experience making it safer,
more enjoyable and more environmentally friendly.
In our view, the Smart Cities envisioned by the
early visionaries differ from present-day cities in
three major respects. First, the Smart Cities will be
instrumented with the latest ICT, and will actively
rely on, intelligent infrastructure these are smart
devices that can sense the environment, send and re-
ceive data and are networked together and with other
networked elements in the Smart Cities. The intelli-
gent infrastructure is apt to provide real-time traffic
data on which timely management decisions can be
based. Second, Smart Cities will make extensive use
of strategies and techniques to incentivize and to en-
gage its connected citizens.
While Smart Cities have been defined in myr-
iad ways (Harrison and Donnelly, 2011; Hatch,
2013; Lakakis and Kyriakou, 2015; Litman, 2015;
Townsend, 2013), it is telling that all these defini-
tions have two explicit or implicit characteristics in
common: first, the Smart Cities assume an transpar-
ent governance and management style that anticipates
the read needs of the citizens; and, second, they as-
sume a broad and continued engagement and active
participation of the citizens. These two characteris-
tics of Smart Cities can be viewed as “putting the cit-
izen first”, or being human-centric.
It is worth noting that the human-centric charac-
teristic of Smart Cities is consistent with, and was
echoed by, OGS the open e-government services
proposed, in a slightly different context in the past
decade or so by Johansson and his coworkers (Jo-
hansson et al., 2015a; Johansson et al., 2015b) as well
as by various documents originating with (European
Commission, 2016).
In fact, empowering their citizens with increased
access to high-quality information is one of the defin-
ing dimensions of a Smart City. And, the role
played by the citizens is poised to increase since, ac-
cording to recent statistics, as of the end of 2015,
over 70% of the US population resided in big cities
(United States Environmental Protection Agency,
2016; United States Census Bureau, 2015). In fact,
(National Academies of Sciences, Engineering, and
Medicine, 2017) predicts that, by 2050, more than
70% of the world population will reside in metropoli-
tan areas. It is not surprising, therefore, that many
countries are planning and deploying Smart Cities.
They are “urban centers that use intelligent, con-
nected devices and automated systems that maximize
SENSORNETS 2020 - 9th International Conference on Sensor Networks
10
the allocation of resources and the efficiency of ser-
vices” (National Academies of Sciences, Engineer-
ing, and Medicine, 2017)
The rise of IoT and adoption of Smart Cities create
opportunities for creative and efficient management
and utilization of the available resources. One of the
characteristics of Smart Cities is the interconnectivity
of the city’s infrastructure, which allows data to be
collected from various human-generated or machine-
generated sources.
2.5 Utility Computing
Cloud Computing (CC) is a modern metaphor for util-
ity computing, implemented through the provisioning
of various types of hosted services over the Internet.
The underlying business model of CC is the famil-
iar pay-as-you-go model of metered services, where
a user pays for whatever she uses and no more, and
where additional demand for service can be met in
real time. This powerful idea was suggested, at least
in part, by pervasive low-cost high-speed Internet, a
good handle on virtualization, and advances in par-
allel and distributed computing (Barroso et al., 2019;
Hennessy and Patterson, 2019; Marinescu, 2017).
Three aspects are novel in CC: First, it gives users
the illusion of infinite compute resources available to
them on demand. Second, it eliminates the up-front
financial commitment by cloud users, allowing them
to increase hardware/software resources as needed.
Third, it gives users the ability to pay for resources
on a short-term basis and release them when they are
no longer needed (Marinescu, 2017)
2.6 Crowdsourcing
Crowdsourcing, a term coined in 2006 by Jeff Howe
(Howe, 2006), involves outsourcing tasks to an unde-
fined group of people. The main difference between
ordinary outsourcing and crowdsourcing is that in the
former the problem to solve is outsourced by a re-
quester to a specific body of people, such as paid em-
ployees, while in the latter the task is outsourced to
an unstructured group of folks with no permanent re-
lationship to the requester.
As is typical of all emerging research areas,
crowdsourcing has appeared in the literature under
various other names including, peer production, com-
munity systems or collaborative systems. Indeed, it
has been argued by several authors that crowdsourc-
ing can be legitimately looked at as a collaborative
way of problem solving (Brabham, 2008). In the past
few years crowdsourcing applications have mush-
roomed (Franklin et al., 2011; Li et al., 2017; Ra et al.,
2012; Xu et al., 2017; Yang et al., 2012).. For exam-
ple, MicroBlog (Gaonkar et al., 2008) is used to build
a location-based map of videos by allowing partici-
pants to share videos to a cloud server through their
cellular connectivity. Similarly, CrowdDB (Franklin
et al., 2011) utilizes end user’s knowledge to con-
duct in a distributed fashion SQL queries in a crowd-
sourcing approach. Medusa (Ra et al., 2012), a pro-
grammable framework to facilitate crowdsensing by
allowing users to request sensing tasks (e.g. take a
video), recruit volunteers, upload preliminary task re-
sults, validate them, and choose a subset of the vol-
unteers to carry out the task. All of these approaches
and others considered collecting edge-generated data
and sending them to a cloud server, usually for com-
putational convenience. Recently, Wang et al. (Wang
et al., 2016) offered a literature review of crowdsourc-
ing in support of ITS.
There are two important issues that have attracted
attention in crowdsourcing: the use of incentives to
attract a competent and motivated workforce, and the
related topic of preserving the privacy and security of
all parties involved. Several strategies for incentiviz-
ing participation in crowdsourcing have been reported
in the literature (Hussain et al., 2018; Li et al., 2017;
Yang et al., 2012). As pointed out by (Doan et al.,
2011), the race is on to build general crowdsourc-
ing platforms in various application domains. For ex-
ample, vehicular crowdsourcing is an instance of a
crowdsourcing application domain where a group of
vehicles lend their on-board processing resources to
an authorized user (Florin and Olariu, 2015).
A related, but quite distinct, area is that of crowd
computing which combines mobile devices and social
interactions to achieve large-scale distributed compu-
tation (Murray et al., 2010). Here, an opportunistic
networks of mobile devices, including smart phones,
tablets, laptops and the like, offers an aggregate com-
pute power and communication bandwidth. Murray’s
seminal paper (Murray et al., 2010) points out a num-
ber of reasons crowd computing is attractive: key
among them is the willingness of people to contribute
to a common cause, even if no reward is offered. Typ-
ically crowd computing involves one or a series of
tasks that are farmed out to a number of mobile de-
vices. As these devices socially meet other such de-
vices, the tasks are shared with the new devices and
this process continues until the tasks are completed.
Smart Communities: From Sensors to Internet of Things and to a Marketplace of Services
11
3 WHAT ARE SMART
COMMUNITIES?
Recently, the U.S. National Science Foundation’s
Smart and Connected Communities” solicitation
(Smart and Communities, 2019) described Smart
Communities as communities “that synergistically in-
tegrates intelligent technologies with the natural and
built environments, including infrastructure, to im-
prove the social, economic, and environmental well-
being of those who live, work, or travel within it.
Even though the NSF definition does not state ex-
plicitly that Smart Communities are human-centric,
their definition is not inconsistent with the vision and
stated goals of Society 5.0. Extending the NSF defini-
tion, we define a Smart Community as a community
governed by the lofty goal of satisfying, through the
provisioning of high quality services, most of the rea-
sonable needs of the people, irrespective of whether
these needs arise from the stomach or the mind. In our
vision, one of the defining characteristics of the Smart
Community is that the resources and services are val-
uated through a Marketplace of Services that acts as
an (impartial) arbiter between producers of services
and consumer of services.
Unlike a Smart City that assumes geographical co-
location inside a metropolitan area, we view Smart
Communities as only logically co-located and not
necessarily geographically co-located.
Evidently, Society 5.0 is a superset of the Smart
Community we just defined. At the same time, a
Smart Community need not fit the description of So-
ciety 5.0. This is because a Smart Community, while
human-centric, does not necessarily strive to become
a welfare society. Instead, the main goal and objec-
tive of a Smart Community is to equip the members
of the community with information and services that
they can use to make intelligent decisions. As we dis-
cuss later, some of the information and services pro-
vided by the Smart Community come in the form of
training the workforce in skills that are highly mar-
ketable and that correspond to their abilities.
As already mentioned, this paper builds on the
work of (Eltoweissy et al., 2019). The main contribu-
tion of (Eltoweissy et al., 2019) was to take the idea of
cloud computing to the next level. Specifically, they
envisioned the Smart Communities of the future as
offering services of all sorts bundled as utilities: the
citizenry consumes these services of a metered basis,
according to the well-known pay-as-you-go business
model. According to (Eltoweissy et al., 2019), the
Smart Community is synthesizing these services from
urban resources produced by various sensor networks,
edge devices, and IoTs. Suitably aggregated, the re-
sources are sold as services.
The main contribution of this work is to extend the
results of (Eltoweissy et al., 2019). Specifically,
a. we remove the assumption that Smart Communi-
ties are either urban areas or else are geographi-
cally collocated;
b. unlike (Eltoweissy et al., 2019) where the pil-
lars of a Smart Community are the various IoTs
deployed within the community and a central-
ized marketplace of services, in our vision, Smart
Communities are built around IoPaTs (to be de-
fined in Subsection 3.1) and a distributed Mar-
ketplace of Services (to be defined in Subsection
3.2).
In the remainder of this section we discuss IoPaTs,
the Marketplace of Services and show the symbiotic
relationship between them.
3.1 From IoTs to IoPaTs
For our purposes, the IoT concept discussed in Sub-
section 2.3 will be augmented as we are about to
describe. Instead of IoTs, we look at IoPaTs as
underlying the Smart Community concept. We as-
sume that within the Smart Community, resources and
services are produced by independently-owned, de-
ployed, and operated entities that we refer to, gener-
ically, as IoPaTs (short for Internet of People and
Things). At the highest level of abstraction, an IoPaT
is a CPS where the various sensing devices (e.g. sen-
sor networks and various edge devices) make up the
physical component, while the people in the IoPaT,
acting as the cyber component, “close the loop” by
enabling actuation and iteration.
To the first approximation, the IoPaTs can be
thought of as startup companies that produce and
bring to the marketplace innovative goods and ser-
vices. In our view, the IoPaTs are the main pillars
of innovation in a Smart Community. The IoPaTs
generate value added in the form of services that they
expose to the community though the Marketplace of
Services. These services may be purchased and con-
sumed, in some form, by the general public or else
may be further aggregated by other IoPaTs to synthe-
size higher-level services.
Where does this process stop? To answer this
question, we need to remember that the marketplace
acts as an (impartial) arbiter that will indicate what
services are aligned with the needs (and wants) of the
society and which others are not. Occasionally, new
services will be produced that may or may not be suc-
cessful in the marketplace. The new services that turn
out to be successful will continue to be produced, and
SENSORNETS 2020 - 9th International Conference on Sensor Networks
12
may spawn other related services, while those that are
not will be discontinued.
The nature of the resources produced by the IoPaT
and of the locally-aggregated services is largely im-
material for this discussion. However, for the sake of
illustration, these services may include hiring mem-
bers of the community to work within the IoPaT itself,
training members of the community in skills that are
in high demand, providing (on a subscription basis)
personalized route guidance, etc.
While some of the services offered by IoPaTs are
sold in the Marketplace of Services, some others may
be offered free of charge or at discounted prices. For
example, such might be the case when some IoPaTs
within the community decide to offer job training
services to the unemployed. The service, here, is
to equip the unemployed with new, marketable job
skills. His human-centric service is expected to have
a very high societal value.
3.2 The Marketplace of Services
Traditionally, a marketplace serves the dual purpose
of bringing together producers and consumers, and of
providing valuation for the various goods and services
(Bass, 1969; Gates, 1995; Hill et al., 2006). However,
one can also look at the marketplace as enabling the
diffusion of innovation among consumers. As pointed
out by (Bass, 1969), once brought to the market in
some form or another, innovation is likely to create
new needs among consumers. In turn, through social
interactions, these needs encourage and foster more
innovation. Ideally, the marketplace plays the role of
an (impartial) arbiter since it provides a valuation of
services that reflects their usefulness to the commu-
nity and society.
It is now widely accepted that information has
value and therefore can be traded or sold (Mahajan
et al., 1990; Olariu and Nickerson, 2008). There are
many aspects of information that may increase or de-
crease its value: timeliness is an important one; accu-
racy is another. Assessing the value of information
and understanding the dynamics of its change over
time has been a topic of research in economics (Allen
and March, 2003; Frederick et al., 2002). Two re-
cent papers, (Krishnamachari et al., 2018) and (Ra-
machandran et al., 2018), have proposed that the sen-
sor data and other information produced by various
IoTs in a Smart City be sold and purchased in a mar-
ketplace. However, these authors were more inter-
ested in making the exchange fair, which is not our
purpose. Services and their effects have been stud-
ies intensely in the past decade and most of their dy-
namics are now well understood (Maglio and Spohrer,
2008; Maglio et al., 2009). The Marketplace of Ser-
vices can build with confidence of this basis. The
Marketplace of Services plays a regulatory role in
three fundamental ways: first, it will keep the price
of the services offered competitive; second, it will re-
ward quality services; and, third, it will promote in-
novation by rewarding new services aligned with the
needs of the Smart Community. Needless to say, the
Marketplace of Services will act as an indication that
some existing services do not sell well and should be
discontinued while new services are needed and may
be synthesized by innovative IoPaTs to fill the gaps.
By using data analytics (and machine learning) the
Marketplace of Services acquires the ability to pre-
dict services needed by community members. The
Smart Community is synthesizing these services from
IoPaT-produced resources that, suitably aggregated
and synthesized, are packaged and sold as services.
In our vision, most if not all the resources exist within
the corresponding metropolitan community and are
being acquired within a resource marketplace whose
producers are various IoT systems within the confines
of the community. It is to be noted while initially we
expect Smart Community boundaries to be physical,
we envision that the future Smart Communities will
operate beyond the physical confines.
3.3 IoPaTs and Marketplace of Services
A Symbiotic Relationship
To understand the symbiotic relationship between
IoPaTs and the Marketplace of Services, we note that
the IoPaTs are connected by, and contribute to, a
Marketplace of Services. Moreover, by sharing in-
formation, the IoPaTs create value (Chesbrough and
Spohrer, 2006; Spohrer et al., 2007). One of the fun-
damental role played by the Marketplace of Services
is to incentivize the IoPaTs to share information by
contributing their services in return for payment of
some form or another.
Even though independently-owned and operated,
the IoPaTs find it beneficial to become integrated with
other IoPaTs. The general arbiter of this integration is
the above-mentioned Marketplace of Services. The
marketplace will provide, based on supply and de-
mand, a valuation of the resources and services pro-
duced by individual IoPaTs. It follows immediately
that when several IoPaTs are producing the same ser-
vice (say, sensor readings at a certain resolution),
it becomes inefficient for both of them to continue
flooding the market with resources/services for which
demand may be limited.
We envision the various IoPaT subsystems to
be integrated into a city-wide IoPaT ecosystem that
Smart Communities: From Sensors to Internet of Things and to a Marketplace of Services
13
will revolutionize the citizens’ experience making liv-
ing safer, more enjoyable and more environmentally
friendly. An important challenge that needs to be
overcome is the thorny issue of integrating IoTs into a
harmonious ecosystem. While, to date, “silo” integra-
tion strategies for IoTs have been proposed (Larson,
2016), we believe that a more efficient and effective
solution for both IoT and IoPaT integration into an
ecosystems is a marketplace-driven, open integration
based on a valuation of the services they provide.
4 A CASE STUDY: REVIVING
STRUGGLING COMMUNITIES
It is a sad but well-known fact of life that in the
US many small communities around the country are
struggling: they are trying to come to grips with
poverty, neglect, decaying infrastructure, drug addi-
tion and increasing crime rate. This predicament is
encountered frequently in small communities built
around a single employer or a single industry. Once
that employer leaves, the community enters a slow
process of stagnation and decay. All these factors
have a negative effect on the perceived quality of life
in the community. In turn, the perceived quality of life
that keeps deteriorating induces some of the inhabi-
tants of the small community to move away – to other
communities that provide better long-term prospects.
In reality, an increased out-flow de-population that is
not offset by an equivalent in-flow contributes to a
feeling of helplessness and motivates more folks to
seek a better life elsewhere.
We believe it is time to stop this process and to en-
list technological advances in an effort to revive strug-
gling communities. The process of reviving small
communities is multifaceted and involves, among oth-
ers:
1. Better managing local resources. This entails op-
timizing the use of existing resources and iden-
tifying potential new resources that can be ex-
ploited/aggregated;
2. Providing high quality services that the pop-
ulation needs and is ready to pay for, either
through taxes or by purchasing them from a ser-
vice provider;
3. Setting up a marketplace of resources and services
that provides valuation for the goods and services
produced and consumed by the community
4. Policies that support and promote the better man-
aging of resources and high quality services
aligned with the needs of the local population.
The process of reviving a struggling small com-
munity is often hard to jump-start mainly because of
the lack of technical expertise at the community level
and reluctance to rely on external help. Besides, we
are aware that the process of better managing local re-
sources, both existing and yet to be discovered, takes
time and technical skill that may not be available in-
side the community. The same holds true of the mar-
ketplace of goods and services. For example, provid-
ing training for the purpose of acquiring the required
skills by the local population is a service that many
of the folks in the community will be interested and
willing to pay for.
It is evident, therefore, that a single struggling
small community is very unlikely to boot-strap itself
out of poverty and decay. With this in mind, we pro-
pose REASON: a REgional Alliance of Small cOm-
muNities, a paradigm for reviving a group of like-
minded small communities in a geographic region.
These communities are very likely to share the same
predicament and to benefit from the same approach
to revitalize themselves. The idea is that the partic-
ipating communities will set up a body in charge of
producing a registry of their resources and that will
monitor the production of goods and services within
the participating communities. In our view, our pro-
posed Internet of People and Things (IoPaT) is a pos-
sible platform for enabling the registry of resources
and services. The valuation of the resources and ser-
vices will be implemented by a Goods-and-Service
Marketplace (GSM, for short).
In the US, the funds necessary to jump-start REA-
SON could be obtained through various channels,
ranging from federal appropriations, to state funds,
to local lotteries, or to venture capital, among many
similar ones. We surmise that it is in the best interest
of the federal and state governments to ensure that the
folks in those communities are back to work leading,
again, normal lives.
As already mentioned, (Eltoweissy et al., 2019)
have put forth the vision of a Smart Community that
is largely self-sufficient in terms of producing its own
resources and of aggregating sophisticated services
whose valuation is regulated by a marketplace.
There are a number of implicit assumptions in (El-
toweissy et al., 2019). First, that the community has
exceeded a critical mass, in terms of both population
size, technical skills and buying power of its inhabi-
tants, so that the marketplace forces can work unim-
peded. The second implicit assumption is that being
geographic proximity the resources and services can
reach all those who are ready to pay for them without
delay and that, moreover, the shipment costs of these
goods are negligeable and will not adversely affect
SENSORNETS 2020 - 9th International Conference on Sensor Networks
14
their marketability. Finally, (Eltoweissy et al., 2019)
make the implicit assumption of a centralized market-
place.
These assumptions do not hold true for individual
small communities and, in fact, may not hold for the
conglomerate of communities in the regional alliance
that we have defined. The vision and main contribu-
tion of this case study is to show how that the implicit
assumptions of (Eltoweissy et al., 2019) are not es-
sential and that, perceived as a community of com-
munities, the regional alliance of small communities,
can satisfy all these conditions.
First, concerning critical mass, we argue that the
regional alliance should count a number of inhabitants
that is comparable with a community that is large self-
sufficient in terms of producing the basic resources it
is consuming. This follows from the fact that, orig-
inally, each of the small communities in the alliance
must have specialized in producing a certain resource.
This “division” of work is a fundamental law of eco-
nomics and applies intra- and inter-communities. The
alliance can use this division of work to advantage
in the process of diversifying its resource and service
base. Second, for the delivery of material goods that
are subject to stringent deadlines, the regional alliance
can employ drones. Companies like Amazon, UPS
and others are already finding drones to be a cost-
effective alternative to the traditional truck delivery.
We expect that, in volume, the additional expense will
be amortized and will not adversely impact the mar-
ketability of goods and services.
Finally, our vision is to replace a centrally-
controlled Marketplace of Services by a distributed
one. A distributed marketplace can be viewed, es-
sentially, as a distributed database of key-value pairs
where the first component is a service, the second its
market value. Distributed database technology is suf-
ficiently mature and well understood and the range of
its applications is tremendous. While this way of im-
plementing (modeling) a Marketplace of Services is
possible, there are numerous challenges to overcome
to make it reality.
The goal of the REASON is to revive its mem-
ber communities. This process involves a number of
human-centric goals that we now state:
1. Improve the quality of life in each of the mem-
ber communities. One significant component is to
fight crime. We expect that, in a small community,
the vast majority of crimes are petty crimes rang-
ing from burglary to larceny, etc. To combat this
type of crime we can rely, effectively, on drone
technology to discourage would-be criminals;
2. Enhance the outside image projected by the com-
munities. The idea here is to make the commu-
nity attractive to folks who would be interested in
joining the community. Of a special interest is at-
tracting industrial partners (new IoPaTs). In this
regard, inspired policies, including free land, tax
rebates and other similar incentives, supported by
the local governments are of a fundamental im-
portance;
3. Enhancing the technical skills of the population.
One way of implementing this idea is by using
assistance from federal programs;
4. Promoting tourism and organizing fairs and open
houses showcasing the natural beauty of the re-
gion,
5 CONCLUDING REMARKS AND
CHALLENGES AHEAD
Motivated by the recently-proposed Society 5.0, our
main contribution was to offer our vision of a sustain-
able human-centric Smart Community built around a
Marketplace of Services. The services offered by the
Smart Community can be synthesized, using the lat-
est ICT and digital technology including 3D printing,
robotics, Big Data analytics, AI, etc., from a hierarchy
of raw resources or other services. The residents of
the Smart Community can purchase as much or as lit-
tle of these services as they find suitable to their needs
and are billed according to a pay-as-you-go business
model.
In our vision, the basic pillars of service provi-
sioning and innovation in a Smart Community are
the IoPaTs, cyber-physical systems, that behave very
much like startup companies. Some of the IoPaTs
thrive because the services they offer are aligned with
the real needs of the community; other IoPaTs, whose
services are less well aligned, will have to adjust or
else discontinue their services. This is very similar to
the survival of the fittest service providers. The ar-
biter, in the Smart Community is the Marketplace of
Services that reflects the need and the willingness to
consume services expressed by the population.
To make our vision reality, a large number of
open problems and technical challenges need to be
addressed. Here is a sample of challenging problems
that await resolution:
One of fundamental attributes of a Smart Com-
munity is sustainability. What safeguards, if any,
need to be added to guaranteed that the civil soci-
ety is sustainable?
What is a minimal set of incentives that triggers
the formation of the ecosystem of IoPaTs?
Smart Communities: From Sensors to Internet of Things and to a Marketplace of Services
15
Can the Marketplace of Services provide those in-
centives?
Can the Marketplace of Service guarantee sustain-
able innovation in a Smart Community? What
other actors are at play here?
In the process described above, some IoPaTs may
become more and more successful and powerful
while others will become weaker. Can the Mar-
ketplace of Services, by itself, prevent this imbal-
ance from having a negative effect on the commu-
nity?
What is the role of community-wide administra-
tive policies?
Can powerful IoPaTs manipulate the marketplace
and influence the needs and wants of the commu-
nity?
What are the factors that can stifle innovation?
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