Product Reliability Management throughout the Life Cycle on
Transition to Industry 4.0
Irina Makarova
1a
, Eduard Mukhametdinov
1b
, Vadim Mavrin
1c
and Assema Duisenbayeva
2d
1
Kazan Federal University, Syuyumbike prosp., 10a, 423822, Naberezhnye Chelny, Russian Federation
2
Kazakh-British Technical University, Tole bi Street, Almaty, Kazakhstan
Keywords: Reliability Management, Digitalization, Test Planning.
Abstract: The article deals with the actual problem: ensuring the reliability of technical systems in the digital era and at
the transition to Industry 4.0. The authors reviewed the existing positive international experience and
opportunities for digitalization, as well as particular qualities of the factories of the future and production
during the transition to Industry 4.0. It is shown that focusing on customer needs can create problems in the
field of ensuring the technical systems reliability. In addition, in such conditions it is important to shorten the
duration of various processes. As a particular example, the authors consider the process of conducting strength
tests. To reduce the time of testing, the article authors developed a DSS for document management in a central
strength laboratory of an automotive company. Although the authors investigated a specific example, but this
technique is universal and can be used for similar processes and for other sectors of the economy.
1 INTRODUCTION
The main trend in the economy and society
development, with which reasonable and rational
management and development of all activity areas,
including the automotive industry, is currently
associated is intellectualization. Technologies that
experts consider the most promising provide a
transition to the digitalization era. In the rapid
development conditions of technique and technology,
processes digitalization and intellectualization, it is
necessary to apply new management methods.
The internet penetration in all activity areas, the
methods emergence for finding optimal sustainable
solutions, is associated with the fourth industrial
revolution, which is the main trend in the automotive
industry development.
The high motorization level and markets
globalization are forcing automakers to search for
new solutions, constantly improving both the vehicles
design and production technology, as well as new
ways to attract customers.
a
https://orcid.org/0000-0002-6184-9900
b
https://orcid.org/0000-0003-0824-0001
c
https://orcid.org/0000-0001-6681-5489
d
https://orcid.org/0000-0002-3596-4841
Internet development, sustainable communication
channels, cloud technologies and digital platforms, as
well as information “explosion” of data, provided a
transition from enterprises’ local automation to open
information systems and global industrial networks
which go beyond the individual enterprises'
boundaries for cooperate with each other.
Such systems and networks transfer industrial
automation to a new, fourth, industrialization stage.
Digital technologies will make factories more
efficient, intelligent, flexible and dynamic.
Breakthrough developments in areas such as artificial
intelligence, nanotechnology, and others lead not
only to the creation of new market segments, but also
to a fundamental change in existing business models.
The combination of increased Internet
penetration, mobile devices, data analysis, the
“Internet of things” and machine learning change the
expectations and demands of consumers.
Digitalization helps to focus on the customer, so mass
production of a new type allows industrial production
of an individual product.
Makarova, I., Mukhametdinov, E., Mavrin, V. and Duisenbayeva, A.
Product Reliability Management throughout the Life Cycle on Transition to Industry 4.0.
DOI: 10.5220/0007899706710678
In Proceedings of the 5th International Conference on Vehicle Technology and Intelligent Transport Systems (VEHITS 2019), pages 671-678
ISBN: 978-989-758-374-2
Copyright
c
2019 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
671
2 STATE OF THE PROBLEM:
INTELLECTUALIZATION OF
MANAGEMENT AT ALL
STAGES OF THE PRODUCT’S
LIFE CYCLE
2.1 Digitalization as One of the Fourth
Industrial Revolution Directions
Economy’s digitalization is a new, real and objective
world trend that is replacing the previous “society’s
informatization”, which is positioned as
“technonomy” - the result of an electro-calculation
coup and technological breakthroughs of the late
twentieth and early twenty-first centuries. People use
global digital platforms to train, search for work,
showcase their talent and create personal networks. In
the globalization digital era, large companies can
manage their international operations in a more
economical and efficient way, as digital platforms
contribute to the labor market globalization. Data
streams open up for economy the ideas, research,
technology, talent, and best practices from around the
world. Many countries have developed national
digitalization strategies that highlight the transition
challenges to a digital economy. Each country in the
such programs framework determines its priorities.
Within the global economic system, Germany and
Europe are located between the dominant digital
models of China and the USA. In the American
model, digital platforms with global reach are
becoming a new competition to existing companies.
On the contrary, the Chinese model relies on the
domestic market, which enjoys greater protection
from the state. From a European point of view, it
makes sense to copy some successful aspects of
models from the USA and China.
The American neo-industrialization model - the
industrial Internet model - is rigidly embedded in the
things existing order in new technologies and is
looking for solutions to compatibility and security
problems in the future (Bledowski, 2019). The USA
economy is being digitized quickly, but unevenly.
Geographically, digitization is everywhere, but its
progress varies greatly. The digital economy is
driving an unprecedented expansion in the
increasingly smart cities number with closer ties.
Ultimately, when the Internet is actively developing,
the Internet sector gives great hope to cities to use
technology for build a more inclusive, innovative
economy. It is becoming increasingly clear that cities
are leading the national innovation agenda.
The “Made in China 2025” program envisages
numerous initiatives ranging from the advanced
technologies development in the robotics field and the
industrial Internet to programs to modernize labor-
intensive industries through automation (Butollo,
2017). Thanks to the impact on the emerging IoT, as
well as parallel efforts to dominate the electric
vehicles industry, China’s 5G efforts are a
particularly serious problem for German and
Japanese automotive and semiconductor companies.
At present, the Chinese model is particularly
competitive from an economic point of view. The
Fortune Global 500 companies are increasingly
diversifying, particularly in Asia, while their number
in the United States is declining. This may indicate
that the Chinese business model based on secure
domestic markets and government subsidies with
global reach and relevance is more successful than the
US business model based on creative destruction. In
the technological competence area, including
standards, a further eastward shift is also clearly
visible. In September 2017, the UAE government
presented the UAE Strategy for the Fourth Industrial
Revolution, which focuses on key areas; some of
them are innovative education, artificial intelligence,
intelligent genomic medicine and robotic healthcare.
The European approach is based on global reach
and on the digital business models expansion which
based on future technologies and on European skills.
From a technology perspective, it is necessary to
master two critical requirements aspects for the future
of digital business in Germany and Europe. First, the
future technologies understanding and the experience
development in them: AS (Autonomous Systems),
AIoT (Artificial Intelligence of Things) and AR
(Augmented Reality), what by orders of magnitude
will expand technical capabilities and, therefore,
underlie constant technological changes. Secondly,
the emphasis is on safety and reliability, since it
provides a rationale for the European differentiating
factor and competitive advantage. From the European
point of view, it makes sense to copy some successful
aspects of the California and Chinese models. In
particular, they include a domestic markets
reassessment or the national programs of excellence
implementation, such as the DARPA in the United
States or the Talpiot program in Israel. Many
countries have created national initiatives and
campaigns to digitalization their industries and
economies. The best-known campaign Industrie 4.0
from Germany (Pfeiffer, 2016), which aims to
promote the new technologies development, the
typical factories creation and reference solutions, as
well as the standards definition. Due to the high level
LogiTrans 4.0 2019 - Special Session on Logistics and Transport in the Industry 4.0
672
of public and private investment and a participant’s
large number, its was able to achieve a significant
effect. Similar projects exist in other countries: Smart
Factory in the Netherlands, Usine du Futur in France,
High Value Manufacturing Catapult in the UK,
Fabbrica del Futuro in Italy. Poland, so far, ranks 23rd
out of 28 on the digital economy and society index in
the EU, significantly lagging behind in all areas: from
using social networks by enterprises (only 9 percent)
to subscribing to fast broadband access throughout
the country. However, the priorities and indicators set
for the Digital Poland program are in line with the EU
2020 Strategy and, in particular, the European digital
agenda. The program focuses on the high-speed
broadband deployment and the electronic services
development for public administration, and also
supports initiatives to improve the citizen’s digital
competence.
In Russia, the program “Digitization of the
economy” includes six federal projects (The
Digital…, 2019): (1) digital environment normative
regulation; (2) personnel for the digital economy; (3)
digital technologies and projects; (4) information
infrastructure; (5) information security; (6) digital
state. Similar programs were adopted by Belarus and
Kazakhstan (About…, 2019), which identified key
areas: (1) digitization of industries; (2) transition to a
digital state; (3) implementation of the digital Silk
Road; (4) human capital development; (5) an
innovation ecosystem creation.
2.2 Smart Factories: Problems and
Prospects
Enterprises based on the principle of Industry 4.0 are
needs-oriented production, i.e. must respond directly
to consumer demand. Thanks to the data collected, it
will be possible to predict user behaviour and
integrated this data into a production information
environment, including human resource planning
(Brettel, 2014). Artificial intelligence will allow you
to control the entire product life cycle - from the
demand marketing study, production and operation,
to utilization. Industry 4.0 implies the use of the
Internet of Things (IoT) (Zawra, 2018) and Big Data
(Santos, 2017) in production, when any components
of the system are interconnected with the help of the
World Wide Web, and also independently find ways
to reduce costs. At the same time, it is very important
that the production processes do not become more
expensive: by connecting all elements through the
network, it becomes possible to find the optimal, non-
costly way to realize orders. Industry 4.0 assumes the
rational use of natural and technical resources, the
most efficient energy saving, the all waste recycling
and the receipt of new goods, raw materials or energy
from them. It is assumed that intelligent materials and
devices will help reduce equipment downtime and the
need for maintenance personnel, increase level of
equipment use, which will lead to technological and
logistic processes optimization and increase
production efficiency. In addition, Industry 4.0.
suggests the concept of digital twins. For example,
the creation of a virtual process and its connection
with the actual physical process in the enterprise
(Żywicki, 2018) allows you to explore the processes
parameters by exchanging data between the virtual
and real processes, saving time and money on
assembly and commissioning. In addition, the
creation of a system of virtual simulators will allow
staff to work out the actions that need to be taken in
the system in virtual workplaces.
The concept of an intellectual factory is based on
a highly automated, and at the same time flexible,
cyber-physical manufacturing system, which is
characterized by quick response to customer
requirements. This requires innovative and intelligent
solutions not only in terms of objects (for example,
the Internet of Things), but also for processes (for
example, Knowledge Based Engineering) (Górski,
2016). That is why smart design and production
control must be necessary elements of an intelligent
factory of the future, capable of implementing a mass
customization strategy (Zawadzki, 2016; Mueller,
2012). Only then it will be possible to fully use the
production potential of the company, which owns
modern technical resources, in accordance with the
concept of Industry 4.0 (Gorecky, 2014).
The production stage of the life cycle is one of the
most important, because exactly at this stage ideas
and projects turn into finished products. Besides, the
quality of the product depends on the quality of
manufacturing. It means that at this stage it is
determined if the targeted audience is large enough,
if the product is competitive in the market, how
effective and safe are the stages of operation and
service. The main goals to Industry 4.0 transition are
process optimization by reducing losses and customer
focus. The need for production systems’ constant
adjustment to customer variable requirements ensures
the introduction of new methods within the
framework of process organization or production
control (Trojanowska, 2011). Transformation into
industry 4.0 requires highly efficient and flexible
production planning processes. Automated
production processes require complex computer
planning processes. These are the so-called CAx
systems (computer technologies), such as CAD
Product Reliability Management throughout the Life Cycle on Transition to Industry 4.0
673
(computer-aided design), CAM (computer automated
production), TLM (tool life cycle management),
DNC (distributed numerical control), CAPP
(computer automated process planning) and functions
- such like process modeling. The production strategy
implementation in accordance with the individual
customers’ needs is also a serious problem for the
production planning organization and control
processes. Therefore, it is necessary to apply optimal
solutions for each of the processes: production
planning, monitoring material flow or decision
support. This is necessary for the effective use of
available resources while meeting the individual
needs of clients (Kujawińska, 2016; Żywicki, 2017;
Trojanowska, 2017; Gangala, 2017;
Rewers, 2017).
If constant adjustment of changes is necessary, then
production planning can be called Fast Dynamic
Scheduling (Kujawińska, 2009).
Options preparation for the material flow is one of
the elements that should be considered when
planning. This will determine the most efficient
product flow that meets the expected criteria, for
example, optimizing production resources or
reducing delivery time. In order to realize customer
requirements, accepted planning methods should take
into account the production resources availability,
allowing to organize the necessary goods production.
This allows you to respond quickly if there are new
orders or new factors that make it impossible to use
resources. This requires careful integration of
production planning and control with product design
(Makarova et al., 2018a; Szuszynski, 2015; Żywicki,
2017, Makarova et al., 2018b).
A completely new engineering approach - digital
enterprise models, the so-called “factories of the
future”, involve the integration of computing,
networks and physical processes. At the same time,
built-in computers and networks monitor and control
physical processes, with feedback, where physical
processes influence calculations and vice versa.
In Smart Factory, production processes will be
organized differently: whole production chains - from
suppliers to logistics to product lifecycle management
- are closely linked between corporate boundaries.
Separate production steps will be easily connected.
Impact processes will include: (1) factory and
production planning; (2) product development; (3)
logistics; (4) Enterprise Resource Planning (ERP); (5)
Management of Production System (MES); (6)
Management Technologies; (7) separate sensors and
actuators in the field. Despite the fact that there are
numerous software platforms for processes’
intellectualization throughout the product life cycle,
however, there are a number of difficultly formalized
processes associated with the information search and
processing. The duration of such processes depends
on the “human factor”, therefore the task of their
intellectualization remains relevant. These tasks are
specific to each company, so the software is designed
individually for a particular case.
Despite the presence of a large number of
enterprise management systems, there are still the
processes that, for various reasons, are difficult to
formalize within the existing management systems.
Therefore, it is necessary to develop special software
modules that are “embedded” in the management
system that exists in the enterprise. This may be a
DSS for any enterprise’s department, receiving
information from both the external circuit and other
enterprise’s departments itself.
3 RESULTS AND DISCUSSION
Competitiveness issues are solved at all product’s life
cycle stages. To a large extent, competitiveness
depends on the speed of updating the model range and
the products reliability during operation. Since the
vehicle is a complex technical system consisting of
many parts, its reliability depends on how reliable
these parts are. Although there are not so many details
limiting reliability, however, the issues of increasing
their reliability and predicting possible replacement
periods are relevant. Therefore, there is a need to test
both at the new product design stage, and in the case
of finding out the reasons for repeated failures. The
requests' execution speed to testing depends on many
reasons, among which the human factor plays a
significant role. Therefore, the best solution to the
problem could be the DSS.
The product reliability is the competitiveness
basis, since it involves trouble-free and safe
operation. In the transition to Industry 4.0, this
direction becomes more actual, since in product
uniqueness case, made for a specific customer,
problems may arise with reliable statistical
information about failures of units and parts of a
complex product during operation. The situation is
aggravated by the presence of a large number of
suppliers of components and spare parts, which in
varying degrees provide durability and product
maintainability. In such conditions, the product
manufacturer should be able to plan and conduct
additional tests more quickly. These processes are
accompanied by a large number of heterogeneous
documentation, which differs both in its source and in
its purpose. This determines the type of information.
The processing of such data, the search for documents
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and their design is performed manually. To speed up
the workflow processes in such cases is possible with
the help of a special intelligent system.
To identify the time reserves, the data flows’
processes diagrams (Figure 1, 2) of new vehicles
models’ designing, testing, starting mass production
and operation beginning were constructed.
In the activities of the scientific and technical
center of PC KAMAZ, an important place is occupied
by the Central Strength Laboratory (CSL). Here, all
the tests of vehicles detail and aggregates,
applications for which are received from other
departments, are performed.
The problem with the requisitions processing and
tests planning is that a large part of the information
necessary for work is on different information media.
This method of storing information increases the
access time to it and complicates its analysis, since
the search for the necessary document, as a rule, is
carried out in manual mode. In addition, the risks
associated with information corruption and loss of its
integrity is increasing. Creating a DSS, which allows
structuring this information and creating a common
information space, is an important task to speed up
and optimize the testing process. The DSS structure
provides a consolidated documents database will be
filled in by the staff of the CSL department. DSS will
display information from the database in
predetermined forms that are convenient for work and
analysis. This will allow analyzing the test results in
the event of problems at the stages of the product life
cycle, as well as with the appearance of new vehicles
models and modifications of its components and
aggregates. In addition, the acceleration of the testing
process and access to information through the
creation of a common information space will provide
an opportunity for a deeper analysis of the reliability
of vehicle parts and assemblies, for example,
choosing a better vehicle parts supplier.
The following information should be stored in the
database: (1) Grounds for work (requests for tests and
schedules); (2) Data on parts and components
entering the tests; (3) Data on requests in the invoices
form required to obtain parts from the warehouse and
their further write-off after testing; (4) Test reports
(summary of test results); (5) Acts of write-offs
(contain information about the details written off).
The conceptual DSS scheme is depicted in Figure
3. Working documents contain information coming
from external sources, as well as emerging from the
various technological processes implementation.
Document types are listed above. With the help of an
Interpreter, requests that are formulated by the staff
of the CSL find the information necessary for the
tests. The speed of query execution depends on the
adequacy of the interpreter of documents. To store
information about documents, a relational data
structure is used, for implementation of which
Microsoft SQL Server is chosen. The interpreter is
implemented as a software module in Delphi 7. The
user interface of the module contains several tabs and
buttons for switching to data entry forms in the
database. There are different program windows for
data entry, as data in related documents can be
entered at different times (Figure 4). Convenient
search and filtering of data in the database provides a
simple and intuitive interaction with DSS, which
allows its use even to unprepared users.
Test examples were created for DSS verification.
To verify the DSS work correctness, information was
searched for the parts obtained for testing in
accordance with the request entered in the Database.
The necessary request and the invoice for receiving
the details found by the request results confirmed the
correctness of the program’s work. Further, it was
necessary to check the DSS use effectiveness for
speeding up the processes in the CSL. This can be
done using a virtual experiment on a simulation
model. To do this, we determine the time spent on
conducting similar test before and after the
implementation of the DSS using the developed
simulation models.
Figure 1: Data flows’ processes diagrams of new vehicles models’ designing, testing, starting mass production.
Product Reliability Management throughout the Life Cycle on Transition to Industry 4.0
675
Figure 2: Diagram of data flows of the process “Testing of units and vehicle parts”.
Figure 3: Conceptual scheme of DSS.
Figure 4: User interface for data entry and search.
4 CONCLUSIONS
The article shows that the use of DSS for document
management in the central strength’s laboratory of an
automotive company reduces the total time spent on
testing. The processes model after DSS introduction
is shown in Figure 5. Figure 6 shows a graph of the
performance assessment of the DSS. As a result of the
conducted simulation experiments, it was obtained
that the testing process duration before DSS using is
from 20 to 36 days, and after - from 18 to 34 days.
The schedule of time spent on testing is shown in
Figure 7. Thus, the DSS usage allows to speed up the
testing processes, by accelerating the work with the
documents during the preparation of the tests and after
their completion. This method is universal and can be
used for similar processes and for other sectors of the
economy.
LogiTrans 4.0 2019 - Special Session on Logistics and Transport in the Industry 4.0
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Figure 5: Process model a) before b) after DSS introduction (the record in the DB is distinguish with thick lines).
Figure 6: Graphs working time.
Product Reliability Management throughout the Life Cycle on Transition to Industry 4.0
677
Figure 7: Performance evaluation of the DSS.
REFERENCES
About the Program. URL: https://digitalkz.kz/en/about-the-
program/ last accessed 2019/01/21
Bledowski, K., 2015. IoT in Germany and America. URL:
https://www.mapi.net/blog/2015/08/iot-germany-and-
america, last accessed 2019/01/21
Brettel, M. et al., 2014. How virtualization decentralization
and network building change the manufacturing
landscape: An Industry 4.0 Perspective. Int. J. of Science
Engineering and Technology 8(1), 37-44.
Butollo, F., Lüthje, B., 2017. Made in China 2025: Intelligent
Manufacturing and Work, In book: The New Digital
Workplace, 42-61.
Gangala, C. et al., 2017. Cycle Time reduction in deck roller
assembly production unit with value stream mapping
analysis. Rec. Adv. in Inf. Sys. and Tech. 571, 509–518.
Gorecky, D. et al., 2014. Human-machine-interaction in the
industry 4.0 era. In: Int. Conf. on Indust. Inf., 289–294.
Górski, F. et al., 2016. Knowledge based engineering as a
condition of effective mass production of configurable
products by design automation. J. Mach. Eng. 16, 5–30.
Kujawińska, A., 2009. The data model of production flow
and quality control system. Studia Inf. 30, 109–126.
Kujawińska, A., Rogalewicz, M., Diering, M., 2016.
Application of expectation maximization method for
purchase decision-making support in welding branch.
Manag. Prod. Eng. Rev. 7 (2), 29–33.
Makarova, I. et al., 2018. Automotive Enterprises Flow
Production Improvement Based on the Management
Process Intellectualization. In: World Symp. on Digital
Intelligence for Systems and Machines, 115-118.
Makarova, I., Shubenkova, K., Pashkevich A., 2018.
Improving Reliability Through the Product’s Life Cycle
Management. In: 23rd Int. Conf. on Methods & Models
in Automation & Robotics, 154-159.
Mueller, W. et al., 2012. Virtual prototyping of cyber-
physical systems. In: 17th Asia and South Pacific Design
Automation Conference, 219–226.
Pfeiffer, S., 2016. Robots, Industry 4.0 and Humans, or Why
Assembly Work is More than Routine Work. Societies
6(2), 16–42.
Rewers, P. et al., 2017. Production leveling as an effective
method for production flow control—experience of
polish enterprises. In: Proc. Eng. 182, 619–626.
Santos, M.Y. et al., 2017. A Big Data system supporting
Bosch Braga Industry 4.0 strategy. Int. J. Inform.
Manage. 37, 6, 750-760.
Szuszynski, M., Żurek, J., 2015. Computer aided assembly
sequence generation. Manag. Prod. Eng. Rev. 6, 83–87.
The Digital Economy national program was officially
presented at the Open Innovations forum. URL:
http://ac.gov.ru/en/events/018558.html.
Trojanowska, J. et al., 2017. The tool supporting decision
making process in area of job-shop scheduling. In: Adv.
in Int. Sys. and Comp. 571, 490–498.
Trojanowska, J., Żywicki, K., Pająk, E., 2011. Influence of
selected methods of production flow control on
environment. In: Golinska, P., Fertsch, M., MarxGomez,
J. (eds.) Inf. Tech. in Env. Eng., 695–705.
Zawadzki, P., Żywicki, K., 2016. Smart product design and
production control for effective mass customization in
the Industry 4.0 concept. Manag. Prod. Eng. Rev. 7(3),
105–112.
Zawra, L.M. et al., 2018. Utilizing the internet of things (IoT)
technologies in the implementation of industry 4.0. Adv.
Intel. Sys. Compu. 639, 798-808.
Żywicki, K. et al., 2018. Virtual reality production training
system in the scope of intelligent factory. Adv. Intel. Sys.
Compu. 637, 450-458.
Żywicki, K., Rewers, P., Bożek, M., 2017. Data Analysis in
Production Levelling Methodology. In: Rec. Adv. in Inf.
Sys. and Tech. 3, 460-468.
Żywicki, K., Zawadzki, P., Hamrol, A., 2017. Preparation
and production control in smart factory model. In: Adv.
in Inf. Sys. and Tech., 519–527.
LogiTrans 4.0 2019 - Special Session on Logistics and Transport in the Industry 4.0
678