AHP-based Evaluation of the Acceptance of Autonomous Driving
André Jacob
1
, Andreas Ahrens
1
, Jelena Zascerinska
2
and Cesar Benavente-Peces
3
1
Hochschule Wismar, University of Technology, Business and Design, Wismar, Germany
2
Centre for Education and Innovation Research, Riga, Latvia
3
Escuela Tecnica Superior de Ingenieria y Sistemas de Telecomunicacion,
Universidad Politecnica de Madrid, Crtra de Valenica, km 7, Madrid, Spain
Keywords: Autonomous Driving, AHP-based Evaluation, Utility Analysis, Extrinsic Factors, Intrinsic Factors, Other
Factors.
Abstract: In the world with seven billion people and around one billion cars, autonomous driving has the potential to
become a key factor of overcoming pollution and traffic jam when considering big cities. This work discusses
safety- and security related factors with simultaneous improving of the acceptance of autonomous driving.
The data were obtained from the survey carried out by Deloitte analytics institute located in Germany. The
data are analysed by means of the analytical hierarchy process (AHP). The theoretical finding allows
concluding that, due to the technology development, the conventional division of factors into external and
internal has to be extended with the third groups, namely other factors. A theoretical finding is three clusters
of influencing factors. The cluster with the most influential factors includes active driving systems, sensors,
car-to-car communications and algorithmic. The limitations of the study are outlined. Directions of further
work are proposed.
1 INTRODUCTION
Autonomous driving is one of the greatest goals in the
automotive industry. It can be considered as an
innovative component of the future of car driving as
the whole car industry. Autonomous driving has
become a key research in the last decade. There are
several manufacturers, which do investigations in the
field of autonomous driving in order to create an
innovative autonomous driving car for their
customers.
In the world with seven billion people and around
one billion cars, autonomous driving has the potential
to become a key factor of overcoming pollution and
traffic jam when considering big cities. Here,
autonomous cars using hydrogen fuel for motive
power or even electric cars can have the potential to
improve the living conditions in big cities
significantly.
It is assumed that autonomous cars can drive
much faster and at the same time more economically
in a convoy while avoiding annoying downtimes.
This should also drastically reduce fuel consumption.
On the other hand, it might also decrease the stress
level for the passengers as autonomous vehicles
"know" where the next traffic jam is and drive around
it independently or they know already in advance
where the next free parking space is available in
crowded city centres. An autonomous car would
search for a parking space on its own.
However, many people still have doubts
regarding the future of autonomous driving.
In previous work some authors examined
different aspects of acceptance of autonomous
driving. For example, Lee, Chang and Park (2018)
point out that
the most important influencing factors
for general autonomous vehicles South-Korean
costumers characterize as usefulness, reliability and
legality. The acceptance of full autonomous vehicles
is mostly affected by safety, user convenience, and
extra expenses. Safety also is important for the
acceptance of partial autonomous vehicles (Lee,
Chang, Park, 2018). In addition, Kettles and van Belle
(2019) show in their work, that Performance
Expectancy and Hedonic Motivation (as well known
as Enjoyment) are the most significant predictors of
Behaviour Intention.
The study of the acceptance of autonomous
driving is related to the examination of the supporting
trust of autonomous driving. Häuslschmid, von
Jacob, A., Ahrens, A., Zascerinska, J. and Benavente-Peces, C.
AHP-based Evaluation of the Acceptance of Autonomous Driving.
DOI: 10.5220/0010144100610065
In Proceedings of the 10th International Conference on Pervasive and Parallel Computing, Communication and Sensors (PECCS 2020), pages 61-65
ISBN: 978-989-758-477-0
Copyright
c
2020 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
61
Bülow, Pfleging and Butz (2017) carried out a
research on this topic. They argue, that trust in
autonomous driving could be increased by a
visualization, which represent the car’s interpretation
of the current situation and its corresponding actions
(Häuslschmid, von Bülow, Pfleging, Butz, 2017).
Moreover, customers have a conflicting attitude
about self-driving vehicles. The further development
of this technology is connected to some kind of
“posthuman ability” as well as it is connected to
hesitation to cede control to machines. Gambino and
Sundar (2019) examined exactly this topic. They
suggest, that “individuals are much more accepting of
technology that can clearly outclass human abilities”
(Gambino, Sundar, 2019).
Against this background, there are some aspects
such as safety- and security related questions that
have not received a proper attention in the
implemented research. This work discusses safety-
and security related questions with simultaneous
improving the acceptance of autonomous driving.
The data obtained from surveys are analysed by
means of the analytical hierarchy process (AHP).
This procedure was introduced by Saaty in the 70’s to
analyse complex decisions (Saaty, 2008).
The paper is structured as follows: Section 2
introduces the most important factors of autonomous
driving classified into intrinsic and extrinsic factors
as well as the other factors. Within these factors it will
be examined, how the influencing factors affect
security- and safety related questions in the
acceptance of autonomous driving. In Section 3 AHP
will be shortly introduced followed by a subsequent
weighting of the defined intrinsic and extrinsic factors
with respect to safety and security of autonomous
driving. Section 4 is dedicated to the analysis of the
acceptance of autonomous driving in our world today
using AHP. Finally, some concluding remarks are
given.
2 FACTORS INFLUENCING
AUTONOMOUS DRIVING
In this section, factors improving the acceptance of
autonomous driving are specified. By factor, a reason
of phenomenon change is meant. In the present work,
it is assumed that factors such as energy consumption,
the possibility to use active driving systems and Car-
to-Car as well as Car-to-infrastructure play an
important role when improving the acceptance of
autonomous driving.
Factors are traditionally differentiated into
external and internal (Ahrens, Zaščerinska, 2014). In
the present research, the factors’ influence is
classified in intrinsic, extrinsic and the other factors
as shown in Figure 1.
It should be pointed that in the present work the
“external” and “extrinsic” as well as “internal” and
“intrinsic” factors are used synonymously. Whereas
intrinsic factors are assigned to the inner area of the
vehicle such as the possibility of using active driving
systems, extrinsic parameters are assigned with the
outer area of the vehicle such as the energy
consumption.
Figure1: Factor classification.
Factors which cannot be assigned to intrinsic and
extrinsic are put into the class “the other factors”. In
this category will put factors influencing the Car-to-
Car as well as Car-to-infrastructure communication.
2.1 Intrinsic Factors
Intrinsic factors are assigned to the inner area of the
vehicle. The intrinsic factors include
the behaviour of the vehicles (algorithmic
factors),
physical components of driving, for example
breaks and the engine,
the communication between the vehicle and a
mobile device like smartphone or tablet.
These factors are in particular physically located,
or work to a large extent in the inner area of the
vehicle.
It is not possible to create a safe autonomous
driving system by ignoring this kind of influencing
factors.
2.2 Extrinsic Factors
Extrinsic factors are assigned to the outer area of the
vehicle.
In this regard the extrinsic factors are
cheap energy consumption (i.e. prices for gas,
electricity or hydrogen),
PECCS 2020 - 10th International Conference on Pervasive and Parallel Computing, Communication and Sensors
62
sensors (possibility to perceive the vehicle’s
surroundings, for example light detection and
ranging (LIDAR, Sonar or radar),
locating possibilities (techniques to define the
position of the vehicle exactly, for example
with the help of GPS and/or Galileo) and
service infrastructure (the availability of gas
stations and car wash stations etc.).
These influencing factors are in particular located
in the outer area of the vehicle. As highlighted in
section 2.1 when analysing intrinsic factors, it is not
possible to create a safe autonomous driving system
by ignoring the extrinsic influencing factors.
2.3 The Other Factors
Other factors cannot be assigned to the classes of
intrinsic and extrinsic factors. This category includes
Car-to-Car communication (standardized
communication between vehicles),
Car-to-Infrastructure communication
(standardized communication between
vehicles and infrastructure like traffic lights)
and
Car-to-Remote site (possibility to
communicate with the workplace or home)
3 UTILITY ANALYIS AND
ANALYTIC HIERARCHY
PROCESS
After considering the factors of security- and safety
issues related to autonomous driving it is essential to
analyse today’s acceptance of autonomous driving
and the potential of the influencing factors to improve
the acceptance of autonomous driving. There are
several ways to examine the aspect of autonomous
driving, especially the acceptance of autonomous
driving vehicles. A suitable tool to identify this
potential is a survey-based utility analysis.
Additionally, an analytic hierarchy process is used to
prioritize the influencing factors.
The utility analysis is divided into the phases:
firstly, to identify the main criteria of autonomous
driving, then, to prioritize these criteria and, finally,
to link them to the influencing factors.
The main criteria of autonomous driving are
identified as Conformity gain, Safety, Security,
Degree of automation increase and Costs. In order to
determine the importance of these criteria the
probands had to prioritize them against each other.
Percentage describes the importance of these criteria.
The results are:
Conformity gain – 15%,
Safety – 35%,
Security – 35%,
Degree of automation increase – 5%,
Costs – 10%.
In addition to that, the probands judged the impact
of the influencing factors to these criteria. The results
of the utility analysis are shown in Table 1.
The average potential percentage is 64,25%. The
influencing factors which reach a higher percentage
are algorithmic, active driving systems, sensors,
locating, communication with mobile devices, car-to-
car communication and system integration in the
vehicle. The highest utility reach active driving
systems and sensors with 78% each.
Table 1: Potential of the influencing factors to improve the
acceptance of autonomous driving.
Influencing factor Potential [%]
Algorithmic 73
Car-in-the-Cloud 64
Cheap Energy 39
Active driving systems 78
Sensors 78
Locating 67
Communication with mobile
devices
68
Car-to-Car communication 68
Car-to-Infrastructure
communication
54
Car-to-Remote site 61
System integration in the vehicle 67
Service infrastructure 54
Table 2: Priority percentage of the influencing factors.
Influencing factor Potential [%]
Algorithmic 16,03
Car-in-the-Cloud 2,26
Cheap Energy 1,65
Active driving systems 21,05
Sensors 9,87
Locating 6,01
Communication with mobile
devices
2,87
Car-to-Car communication 12,92
Car-to-Infrastructure
communication
13,51
Car-to-Remote site 3,00
System integration in the vehicle 9,07
Service infrastructure 1,75
Analytic hierarchy process is a tool for a
reasonable decision making. The working method is
aimed at creating a matrix in which the rows and
AHP-based Evaluation of the Acceptance of Autonomous Driving
63
columns are the influencing factors. After that it is
necessary to compare every pair of influencing
factors. Determining an (to one standardized)
eigenvector is the step to generate the factors priority
percentage (Saaty, 2008). The results of the analytic
hierarchy process are shown in the Table 2.
4 IMPROVEMENT OF
ACCEPTANCE OF
AUTONOMOUS DRIVING
The survey shows that the survey participants are
interested in autonomous driving as 85% of the
respondents state that autonomous driving (full
automation) is going to be pushed through in the
future (Deloitte analytics institute, 2016).
In addition, three out of four groups of the
participants point that they are interested in testing
new innovations in the field of autonomous driving.
(Deloitte analytics institute, 2016). Approximately
50% of the passengers would like to do other things
while driving, for example checking mails, talk to
other passengers or sleep (Deloitte analytics institute,
2016).
The influencing factors of the high percentage are
active driving systems and algorithmic. Also, Car-to-
Car communication and Car-to-Infrastructure
communication are above 10% (see Table 2). The
highest potential reaches active driving systems with
21,05% (see Table 2). The consistency ratio of the
analytic hierarchy process is 0,074. Therefore, the
analytic hierarchy process can be seen as consistent,
and its results can be considered as usable.
However, all the described groups of respondents
would not be fine with a completely autonomous
driving vehicle (Deloitte analytics institute, 2016).
Therefore, the acceptance of autonomous driving
could be improved. A number of actions for the
improvement of the acceptance of autonomous
driving in combination with security and safety-
related questions could be elaborated. For the
determination of actions to improve the acceptance of
autonomous driving, the influencing factors are
clustered into three groups. These groups represent
the prioritization of the influencing factors possibility
to improve the acceptance of autonomous driving.
First of all, a rating system has to be implemented.
For each study (security-safety study, utility analysis
and analytic hierarchy process) every influencing
factor got a rating between 12 and one, describing
how important it is in this specific study. After that,
the sum of these three ratings is formed, and the
clusters are created. One cluster is created for each of
the four high-rated, middle-rated and low-rated
influencing factors. Table 3 shows the results of
clustering. Cluster 1 receives 121 rating-points,
which describes exactly 50% of the possible influence
on autonomous driving.
Table 3: Cluster of influencing factors.
Influencing factor Cluster
Algorithmic
1
(121 rating-
points)
Car-to-Car communication
Sensors
Active driving systems
Car-to-Infrastructure
communication
2
(80 rating-points)
Locating
Communication with mobile
devices
System integration in the
vehicle
Cheap Energy
3
(41 rating-points)
Car-to-Remote site
Car-in-the-Cloud
Service infrastructure
In addition, there are some synergies between
Cluster 1 and Cluster 2. For example, car-to-car
communication and car-to-infrastructure
communication using the same technical standards.
This shows, that it is possible to influence even more
than 50% by improving the factors of Cluster 1.
Actions, whose goal is to improve the acceptance
of autonomous driving in combination with security
and safety-related issues, should work in Cluster 1.
Specifically, they should affect one or more of the
influencing factors such as algorithmic, car-to-car
communication, sensors or active driving systems.
5 CONCLUSIONS
The theoretical finding of the research allows
concluding that, due to technology development, the
conventional division of factors into external and
internal has to be extended with the third groups,
namely the other factors. Another theoretical finding
is the clusters of influencing factors.
The empirical finding is the cluster with four most
influencing factors or, in other words, Cluster 1. This
cluster includes active driving systems, sensors, car-
to-car communications and algorithmic. These four
influencing factors combine 121 rating-points (50%
of all rating-points). These four factors obtain the
higher impact. Another finding reveals synergies
between the clusters. The empirical finding is that the
PECCS 2020 - 10th International Conference on Pervasive and Parallel Computing, Communication and Sensors
64
group of the other factors has the highest impact on
security- and safety related issues. This finding
proposes that the most important security- and safety
related problems will appear in one of the influencing
factors of this group. Another conclusion could be
drawn about influencing factors with a higher impact:
the influencing factors with a higher impact should be
firstly considered for the improvement of the
acceptance of autonomous driving.
The present work has some limitations. The
limitation is the use of the data of only one survey.
Another limitation is that the survey was carried out
only in one country, namely Germany.
Research on autonomous driving is attracting a
lot of interest in the scientific community. However,
autonomous driving is definitely under-investigated
and not sufficiently presented. There is still a lot to
investigate and discuss in the field of the acceptance
of autonomous driving and autonomous driving itself.
Consequently, the acceptance of autonomous driving
and autonomous driving are inter-related. The authors
draw the conclusion that the increase in the
acceptance of autonomous driving will promote the
development of autonomous driving on the whole.
Increased research efforts in the field of research on
the acceptance of autonomous driving will assist in
developing autonomous driving from a number of
aspects and perspectives.
Future work will investigate and compare the
relation between the present research and similar
works in the scientific literature. Adoption of
different technologies for autonomous driving will be
analyzed in further work.
Other typical analytical approaches will be
compared to the AHP algorithm. Further work will
also be devoted to the description of the calculation
process of the AHP algorithm. The search for other
approaches and methods to investigate the acceptance
of autonomous driving is proposed.
The further research tends to re-examine factors
that influence the acceptance of autonomous driving
as along with the technology development, new
factors could emerge.
Future research will also focus on the description
and analysis of case studies that can help further
elaborate the analytic process detail.
Future work also implies the utilization of proper
techniques for data collection in order to obtain a
relevant description of the contemporary situation of
the acceptance of autonomous driving. In these terms,
the focus could be more put on the application of
qualitative methods for a deeper analysis of
influencing factors.
Another research direction is to involve more
respondents into the study of the acceptance of
autonomous driving.
Insights about how the acceptance is speeding or
not in comparison with other technologies, in light of
current progress and events will be formulated in
future work.
A comparative study on the acceptance of
autonomous driving of different countries could be
interesting for the research community as well.
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