Location Aware Information System for Non-intrusive Control of
Remote Workforce with the Support of Business IT Consumerization
Sergio Ríos-Aguilar
1
and Francisco Javier Lloréns-Montes
2
1
Engineering and Technology School, Universidad Internacional de La Rioja (UNIR), Logroño, La Rioja, Spain
2
Management Department, University of Granada, Granada, Spain
Keywords: Location Awareness, Workforce Control, LBS, BYOD, Mobile Check-in.
Abstract: This work proposes a Mobile Information System that can serve HR departments in companies to conduct
remote workforce location-based control, by means of a non-intrusive use of employees’ own smartphones,
taking benefit from the IT Consumerization phenomenon. This proposal provides quantitative and
qualitative references that should be met with respect to the location information accuracy needed in
common control scenarios for the remote workforce. A fully working prototype of the proposed Mobile
Information System was developed to evaluate the validity of the strict accuracy and precision requirements
proposed for location data, using a standard check-in process at remote workplaces under real world
conditions. The results obtained in this study confirm that at present it is viable for companies to implement
an Information System for the control of remote workforce that allows the companies to gain
competitiveness, adopting a BYOD paradigm which allows their employees to use their own smartphone
mobile devices in the workplace.
1 INTRODUCTION AND
DEFINITION OF THE
PROBLEM
Today, the increasing competitiveness of the actual
market forces companies to try to have a deeper
understanding of the relationship of cause and effect
of their actions on profitability, being necessary to
have specific information that guides the process of
improvement of their competitive performance
(Bradley, 1998; Lahoz and Camarotto, 2012).
Early detection, evaluation and rapid intervention
are crucial when managing tardiness and absences in
the workplace, and help prevent them from
becoming a serious problem for the competitiveness
of companies. Usually, to achieve such detection,
Information Technologies investment is required,
among other things for the acquisition and
implementation of Control, Access and Presence
Systems, which are often expensive, not only
because of the initial costs (equipment for physical
identification using card reader technology or
biometric identification), but also the maintenance of
the equipment and software that form the system’s
back-end, not to mention the possible costs for the
integration with pre-existent Information Systems
(Sen et al., 2009; Kauffman et al., 2011).
On the other hand, this kind of systems is proven
to be ineffective when it comes to extend the control
to mobile workforce, which in numerous private
service sector enterprises it may represent a high
percentage of the staff due to the very nature of its
business. In this case what is needed is a “proof of
presence” in places and times established in advance
(Kumar and Pandya, 2012)
1.1 Opportunities
In the current economic context, it is of vital
importance for a business to improve their
competitiveness by rationalizing the necessary
investment to achieve it. Two unique situations have
been detected that can allow small and medium
enterprises (SMEs) to have a presence control
Information System for both local and remote
workforce with a very reduced cost and with
minimum need of infrastructure:
(A) The current maturity of mobile location
technologies, using different transparent
442
Ríos-Aguilar, S. and LLoréns-Montes, F.
Location Aware Information System for Non-intrusive Control of Remote Workforce with the Support of Business IT Consumerization.
DOI: 10.5220/0006336704420448
In Proceedings of the 19th International Conference on Enterprise Information Systems (ICEIS 2017) - Volume 2, pages 442-448
ISBN: 978-989-758-248-6
Copyright © 2017 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
positioning mechanisms (A-GPS, GPS, WiFi
and Cell-ID).
(B) The growing trend BYOD ("Bring Your Own
Device") allowing employees the use of their
own mobile communication devices
(smartphones, tablets…etc) in the business as a
complementary tool that takes a double role as
a personal device for private use and as an
access to the company’s Information Systems.
On this basis, this paper tries to ascertain if it is
feasible the implementation of an Information
System for the behaviour-based control of workforce
that makes a non-intrusive use of technology for
getting the employees locations from their own
smartphones, regardless of the make and model they
have.
Of course, our focus is on non-intrusive location
information gathering, allowing the employee to
retain full control on when is his location
information sent to the employer’s enterprise
servers. So, ethical considerations such as privacy,
accuracy, security and reputation are not affected
due to this non-intrusive operation.(G. Kaupins and
R.Minch. 2005)
This paper is structured as follows: first, it
analyzes the viability of the use of employees’
smartphones following the BYOD paradigm as a
valid tool for companies in order to conduct
presence control (primarily for remote workforce).
Second,, a Mobile Information System is proposed
for Presence Control using exclusively terminal-
based reactive location technologies, meeting cost
minimization and universal access criteria. Third,
this paper proposes qualitative and quantitative
references, adequate to the location information
accuracy demanded in different business remote
workforce control scenarios. And Fourth, this paper
discuss the results of testing the accuracy and
precision of location data using real devices (iOS
and Android) under heterogeneous connectivity
conditions and workplace premises
1.2 Granularity in the Control of
Workforce
In order to quantify the level of demand of accuracy
suitable for the location of the workforce, reviewing
existing international regulations on the subject, it
was found that the United States Federal
Communications Commission (FCC) E-911
mandate, concerning the precision of the location of
calls from mobile devices to Emergency Service
E911, is the most specific and strict set of
regulations (Table 1). And it also provides a
methodological framework for verification processes
regarding compliance. At present, E-911 is the only
regulation set that clearly quantifies the required
location accuracy. So, for the proposed Information
System, the most restrictive location accuracy values
of the aforementioned regulations will be considered
as a valid working quantitative reference.
2 INFORMATION SYSTEM AND
PROTOTYPE
Taking into consideration all conditioning elements,
in this work we propose an Information System
specifically oriented towards business use for the
behaviour-based control of remote workforce, using
smartphones under the BYOD paradigm, and
putting the focus on universal access (device
independence).
Additionally, a fully operational prototype of
this Information System has been developed; It
consists in a mobile web application along with a
control panel serving as a balanced scorecard and
SaaS (Software as a Service, in the cloud).
This prototype fulfills a double purpose of (i)
serve as a proof of concept for an Information
System for the control based on behaviour of the
remote workforce using a mobile web application,
and (ii) to allow an empirical analysis on the current
feasibility of its use under real conditions, using the
most strict obtained geographical location accuracy
requirements from mobile devices to emergency
services established by the FCC to be complied in
2019. (FCC, 2011)
Table 1: Mobile devices location accuracy requirements
from which emergency service E-911 is requested.
Adapted from FCC (2010).
Location
Type
Required
Accuracy
Regulation
date of entry
into force
Mobile
terminal
based
50 meters for 67%
of the calls and 150
meters for 80% of
the calls
Already in force
(since
18/1/2013)
50 meters for 67%
of the calls and 150
meters for 90% of
the calls
Scheduled to
enter into force
on 1 January
2019
2.1 Description and Components of the
Information System
The proposed Information System for the behaviour-
based control of remote workforce consists of two
discrete functional components:
Location Aware Information System for Non-intrusive Control of Remote Workforce with the Support of Business IT Consumerization
443
First, a Mobile Web application that will be
accessed by the workforce using their smartphone
mobile devices in order to clock in when arriving at
the customer’s facilities or other installations
deemed appropriate. This application also allows to
send remarks concerning the clocking in that will be
registered in the system in that moment.
Technologies such as HTML5 and JQuery Mobile
have been chosen because they are the most cost-
effective for companies, and also involve less costs
in development as it require just one code base (only
one production line) and it can be deployed in
almost all mobile devices that have a browser and
access to the Internet (Heitkötter et al. 2013; Zhu et
al. 2013)
Figure 1: Information System Architecture for behaviour-
based control of the workforce.
Secondly, a Control Panel Web Application for
the control of the remote workforce, accessible from
any Web browser, it allows real-time queries
regarding the workforce clocking in processes,
including georeferenced information in maps, as
well as make individual historical analysis of such
processes for each employee. This individual
historical analysis is in line with behaviour analysis
in the context of ubiquitous monitoring (Moran and
Nakata, 2009)
All the components used in the Server and
Database layers in this Information System are open
source software (LAMP platform: Linux OS,
Apache Web Server, PHP, and MySQL database), in
order to minimize costs involved in the deployment
of the proposed Information System.
3 LOCATION DATA ANALYSIS
METHODOLOGY
An empirical analysis is to be made to determine the
location accuracy obtained with mobile devices
using the developed mobile web application. Even
though the accuracy of conventional GPS receivers
is well documented for various devices (such as
PNDs), the study on the accuracy of devices with
Assisted GPS (A-GPS), usually available in
smartphones like those intended to be used in the
proposed Information System, has not yet evolved as
much. Due to hardware limitations, it is to be
expected a worse performance concerning location
precision and accuracy using smartphones than
using a conventional GPS device (Zandbergen and
Barbeau 2011).
To study the feasibility of the use of location
data obtained from smartphones by means of a web
app in the proposed Information System, sets of GPS
location data under real conditions have been
collected. Location data obtained is compared with a
real known location (“truth point”), and with this an
absolute accuracy measurement will be obtained.
3.1 Instrumentation and Data
Collection
The GPS location data quality tests were done using
two of the most widespread smartphone mobile
terminals actually in the European market: Samsung
Galaxy S6 and Apple iPhone 6S. These devices are
also highly representative since they belong to two
of the most prevalent smartphone groups
(corresponding to the Galaxy and iPhone
trademarks) with the biggest market growth, and
evolving with constant improvements in their
hardware specifications.
Samsung Galaxy S6 uses a Broadcom BCM4773
GNSS Location Hub as GPS receiver chip with
active suppression of sources of interference. The
device used in the tests has Android v6
(Marshmallow) Operating System. Apple iPhone 6S
uses a Qualcomm WTR3925GPS receiver chip and
the operating system used was iOS 9. In both cases
the tests were made with the GPS circuits activated
and using network assisted mode (A-GPS),
additionally WiFi based location mechanisms were
active to help increase the accuracy.
The tests were carried out strictly during
standard business hours, at random times between
8h and 17h, representative of workforce daily
activities times in working days. The geographical
coordinates of this point (446737m, 4114616m
UTM zone 30S, European Datum 50) were obtained
using a topographic grade sub-meter accuracy
professional GPS receiver Topcon Hiper+ with a
10mm + 1.0ppm horizontal accuracy, properly
calibrated and using Differential Global Positioning
System (DGPS)
The mobile devices registered location data in
WGS-84 format, in intervals of 3 minutes,
ICEIS 2017 - 19th International Conference on Enterprise Information Systems
444
yi
n
i
Y
e
n
RMSE
1
2
1
generating data sets of 25 samples each. Data was
gathered, in different days, 10 sets of samples,
totaling 250 measurements for each study group.
3.2 Data Analysis
To assess the accuracy of both devices used in the
gathering of the data, the variability in the data will
be contrasted against a previously determined real
value, corresponding to the observation point (truth
point).
To determine the possible normal distributions of
the data sets (variable: accuracy- planimetric or
horizontal error) several tests were conducted:
Kolmogorov-Smirnov, de Ryan-Joiner (similar to
Shapiro-Wilk) and Anderson-Darling (See Table 2).
Table 2: Results of the normality tests of samples of
accuracy from both data origins.
Data origin device
Samsung Galaxy S6
(Android)
Normality test
Statistical
p-value
Kolmogorov-
Smirnov
0,059
<0,010
Ryan-Joiner
0,859
<0,010
Anderson-Darling
3,984
<0,005
Data origin device
Apple iPhone 6S (iOS)
Normality test
Statistical
p-value
Kolmogorov-
Smirnov
0,178
<0,010
Ryan-Joiner
0,902
<0,010
Anderson-Darling
7,155
<0,005
Once again it is proved that the result is similar
for the three conducted tests, which provide p-values
of less than 0,05 which confirms with a 95% of
reliability that for both data origins, Galaxy S6 and
iPhone, the hypothesis of normality for horizontal or
planimetric accuracy is rejected.
Having verified that horizontal error distributions
(for accuracy) are not normal, the non-parametric
Mann-Whitney U test was used in order to contrast
if both data origins have the same distribution, the
obtained result is a statistical value W=59745.6, this
test is also statistically significant in 0,0000 (p<0,05)
therefore the hypothesis of equal distributions of
horizontal error (planimetric accuracy) for both
populations is also rejected with a 95% reliability.
In the data analysis it has been shown that the
average values of the precision variable and the
accuracy variable differ significantly for both mobile
devices.
Also it has been shown that deviations are
significantly different for both data origins.
Distributions are different not only in precision but
also in accuracy for both populations (Android and
iOS data). Both mobile devices provide data of
enough quality, and the mean of their values is close
to the real value, but a greater data dispersion in
found for iOS devices
4 RESULTS
The horizontal error (in meters) of all the gathered
samples confirm, as evidenced earlier, the variability
of location data collected by the iPhone device
around the well known spot (truth point) is greater
than the data set collected with the Android device.
For this reason, the collected data will be
analyzed quantitatively, performing the calculation
of the horizontal accuracy taking the root mean
square of the errors (RMSE) of each data origin, first
for each component and afterwards calculating the
planimetric or horizonal.value
(1)
22
YX
RMSERMSERMSE
(2)
In the case of the Galaxy device, the planimetric
RMSE error value obtained is 13,12m for the
horizontal component (XY). This value means that
for a 67% of the observations made with the
Android device, the accuracy will be less at 13,12m.
In this case, the value for the Samsung Galaxy S6
device is 2DRMS = 26.24m
It might be concluded that at a 95% confidence
level the accuracy obtained with the mobile web
application using the GPS of the Samsung Galaxy
S6 device is within a 26.24 meter radius from the
real location value in an urban environment with
demanding conditions for GPS signal propagation
and shifting HDOP values, non planned in the tests
conducted.
Also, in the case of the iPhone device, the
planimetric RMSE value obtained is 27,11m for the
horizontal component (XY). This value means that
for a 67% of the observations made with the iOS
device, the accuracy will be less at 27,11m. In this
case, the value for the iPhone 6S device using the
mobile web application is 2DRMS = 54.22m
It might be concluded, that with the samples
taken in this test, that at a 95% confidence level the
accuracy obtained with the mobile web application
using the GPS of the iPhone 6S device is within a
54.22 meter radius from the real location value in an
urban environment with demanding conditions for
GPS signal propagation, and shifting HDOP values,
non planned in the tests conducted.
xi
n
i
X
e
n
RMSE
1
2
1
Location Aware Information System for Non-intrusive Control of Remote Workforce with the Support of Business IT Consumerization
445
5 VERIFICATION OF
COMPLIANCE WITH FCC
RULES
The FCC proposes a method for determining if a set
of location errors demonstrates compliance with
accuracy requirements of location data, using order
statistics. The FCC’s confidence intervals for
accuracy standards can be selected with a 90%
confidence based on the number of samples. (FCC
2000).Generally, when
The number of measurements is n,
The r-th and s-th largest measurements are x
r
and
y
s
, respectively
x and y are the percentile points associated with
probabilities p
1
y p
2
, respectively, then
the probability that x is less than x
r
, while
simultaneously y is less than y
s
, is given by the
formula







(3)
being in this particular case p
1
=0.67 y p
2
=0.95
From this expression, upper bounds on the
percentile points can be determined, searching pairs
of values (r, s) for which the level of confidence
desired of 90% is achieved (Table 3).
As stated in Table 1, the most strict accuracy
requirements established by FCC to be met in 2019
are 50 meters for 67% of the samples and 150
meters for 90% of terminal based samples. If not, the
data set is rejected for not meeting the proper
standards. In this case, a data set of location errors
obtained using the mobile web application
(developed as part of the proposed Information
System) under real conditions, will be tested using
the methodology proposed by the FCC for the
assessment of compliance of accuracy requirements.
(FCC 2000)
To that end, data tables are sorted in ascending
order of accuracy for each observed location error,
and for each 100 samples obtained, according to
Table 3 it must satisfy the following expression
[(accuracy
74
< 50m) and (accuracy
100
< 150m)] or
[ (accuracy
75
< 50m) and (accuracy
99
< 150m)]
First, for the Android Device, the verification
process will be performed with those samples
obtained using the mobile web application in an
Android device. The results show that:
Accuracy
74-android
=17.3 m < 50m and
Accuracy
100-android
=38.3 m < 150m
Accuracy
75-android
=17.7 m < 50m and
Accuracy
99-android
=35.4 m < 150m
Therefore, it can be stated that following FCC’s
proposed methodology, with samples obtained with
the Android device, using the mobile web
application of the proposed Information System
under real world conditions, with a 90% confidence
level, the compliance of the strictest requisites set by
this organization is verified.
Equally, a verification process will be performed
with the samples obtained using the mobile web
application in an iOS device. The results show that:
Accuracy
74-iOS
=32.6 m < 50m and
Accuracy
100-iOS
=57.3 m < 150m
Accuracy
75-iOS
=32.8 m < 50m and
accuracy
99-iOS
=56.2 m < 150m
Table 3. Horizontal error value sample identification for
its comparison with thresholds of 67% and 95% as
required by the FCC for a 90% confidence level.
Sample size
Test sample pairs
50
(x
40
, y
45
)
60
(x
47
, y
60
)
70
(x
53
, y
70
)
75
(x
57
, y
75
)
80
(x
60
, y
80
) o (x
63
, y
79
)
85
(x
64
, y
85
) o (x
66
, y
84
)
90
(x
67
, y
90
) o (x
68
, y
89
)
95
(x
71
, y
95
) o (x
72
, y
94
)
100
(x
74
, y
100
) o (x
75
, y
99
)
Source: Adapted from (FCC 2000)
Therefore, it can be stated that following FCC’s
proposed methodology, with samples obtained with
the iOS device, using the mobile web application of
the proposed Information System under real world
conditions, with a 90% confidence level, the
compliance of the strictest requisites set by this
organization is verified.
6 RESULTS DISCUSSION
The most important conclusion of these results is
that an Information System for the behaviour-based
ICEIS 2017 - 19th International Conference on Enterprise Information Systems
446
control of workforce can always identify the
employee’s location with an accuracy level that
comfortably fulfills actual and future people location
requirements of the most strict Emergency Systems,
which nowadays provide the only valid quantitative
reference to validate the quality of people
geographical location data in this context.
This also entails the protection of the investment
made by the company in the implementation of the
proposed mobile based GPS Information System.
Due to the evolving nature of technological
innovation, mobile GPS receivers sensitivity will
increase still further, thus, obtaining more precise
and accurate results than those here obtained
(Schiller and Voisard, 2004) Also, both iOS and
Android devices used in the verification process
performed quite well in terms of power consumption
throughout the working hours without battery
recharges, and this is specially important taking into
consideration the typical battery drain usually
associated to the GPS receiver circuit. Specifically,
the mean battery drain using the proposed system
with both smartphones, has been estimated to be
4.1% of full load, using Powerbooter, an automated
power model construction technique that uses built-
in battery voltage sensors and knowledge of battery
discharge behavior (Zang et al, 2010).
7 CONCLUSIONS
This paper proposes an Information System for the
behaviour-based control of workforce. It defines the
architecture and functionality, always in line with
business needs relative to control and taking into
consideration the implementation costs. The latter is
achieved by using open software technologies and
adapting those technologies to give adequate support
to the BYOD paradigm.
A prototype was developed and tested under real
world conditions, not evaluating strictly controlled
parameters of a device’s accuracy -like in empirical
tests-, but testing the Information System as a whole
in real conditions that reflect normal business
activity. Under these conditions, it has also been
verified the compliance with the strict accuracy
demands proposed here as a reference.
In the proposed Information System three
concepts, which until now have been evaluated
separately by previous studies, have been brought
together: (i) IT consumerization, (ii) actual
capabilities of personal mobile devices which
employees can use in the workplace, and (iii) the
opportunity represented by the new Mobile Web
technology which provides information on the move
-no matter the device being used and without any
app installation hassles-, and significantly reduces
costs in comparison to other technological options.
Lastly, the study establishes a new reference
framework regarding qualitative and quantitative
requirement levels which must be set in relation to
the accuracy of mobile location systems used in
business Information Systems, particularly those
related to the control of the remote workforce.
The results obtained in this study confirm that at
present it is viable for companies to implement an
Information System for the control of remote
workforce that allows the companies to gain
competitiveness, at the same time reducing costs and
increasing the ROI, adopting a BYOD paradigm
which allows their employees to use their own
smartphone mobile devices in the workplace.
As for future work, the ongoing research focuses
on evolving this Information System so that (i) it can
be integrated seamlessly with the different emerging
indoor positioning technologies, allowing the
companies to get more accurate position data of
remote workforce under very adverse indoor
conditions, and (ii) it can take advantage of
contactless technologies, like NFC, in order to
speed up the check-in process when the workforce is
at local premises, and to provide location proof
using the NFC tag as an extra authentication factor.
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