A Perspective on Industry 4.0: From Challenges to Opportunities in
Production Systems
Ateeq Khan and Klaus Turowski
Magdeburg Research and Competence Cluster, Faculty of Computer Science,
University of Magdeburg, Magdeburg, Germany
Keywords:
Industry 4.0, Digital Manufacturing, Industrie 4.0, Smart Systems, Smart Factory, Future Factory, Cyber
Physical Systems, IoT.
Abstract:
Industry 4.0 and smart factory are the terms frequently used for next generation production systems. Advance-
ment of Information technologies paved the way for evolution of production systems. To remain competitive
in the market, enterprises want to utilize these technological advancements in order to solve current challenges
and serve customers in new ways which were not imagined before. In order to provide new services quickly,
new methods and technologies have to be introduced at manufacturing level. The paper briefly discusses
industry 4.0 and settings (arrangements) for co-innovation. This paper also describes what are the current
challenges faced by companies with the help of a survey. The paper proposes an approach from strategical
to operational level for the implementation of industry 4.0. In this paper, we also provide new opportunities,
scenarios, and applications enabled by introducing new tools and technologies for industry 4.0. At the end,
the paper provides summary and glimpse of the future work.
1 INTRODUCTION
Advancement in Information Technology (IT) made
it possible to bring production systems at new levels.
These new developments enable organizations to im-
prove current environment and allow them to serve
the customers in new ways by using new business
models to create value for customers and revenue for
themselves.
Companies are eager to introduce new technolo-
gies to improve quality, efficiency and effectiveness
of resources, reduce risks, and to remain competi-
tive in the market (Falk et al., 2015; Tassey, 2014).
A company which fails to cope the technology chal-
lenges also face the challenge of introducing new
products/services, innovation, and business models.
This places the company in fierce competition where
costs have to be reduced each year.
New business models have been introduced by
various companies in order to provide more value and
services for customers (Kallenbach, 2015; Figalist,
2015). These new business models not only bonded
majority of the customers but also created new cus-
tomers (and their segments) to whom value-added ser-
vices can be provided. An innovative business model
coupled with the latest technical tools guarantees the
success of a company. There are many successful ex-
amples of big companies and start-ups. For example,
Amazon (originally, a book-selling company) under-
stood what are the demands of customers and poten-
tial markets, now become one of the major IT services
provider challenging the position of the IT companies
which are in business over many decades.
Technology has been advanced at the rapid pace
on enterprise level. However, these technological de-
velopments are not applied on industrial level and it
still stands as old as the start of the third revolution
with basic IT functionalities and monolithic structure.
There are solutions on enterprise level which can be
applied at production or shop-floor level. However,
organizations are hesitant to use them on the shop-
floor level. This is due to critical nature of the systems
and their potential economic impact on operations of
organization. If a manufacturing system stops, the
whole production line may have to be stopped which
costs the loss to company (items produced per hour).
Therefore, Technology used at production level is still
quite old and has not gained much attention in com-
parison to enterprise level.
In this paper, we discuss about industry 4.0 and
settings for co-innovation in future manufacturing.
We describe the current challenges faced by compa-
Khan, A. and Turowski, K.
A Perspective on Industry 4.0: From Challenges to Opportunities in Production Systems.
DOI: 10.5220/0005929704410448
In Proceedings of the International Conference on Internet of Things and Big Data (IoTBD 2016), pages 441-448
ISBN: 978-989-758-183-0
Copyright
c
2016 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
441
nies at production systems with the help of a question-
naire. These companies belong to diverse segments
of industry. We also provide promising future scenar-
ios that can improve the efficiency of production sys-
tems. We present an approach for industry 4.0 which
will guide us for the steps needed to be taken for in-
dustry 4.0. It will also describe how we can enable
future scenarios (discussed in this paper) and simulta-
neously help to solve current challenges in production
systems. At the end we provide a summary of the pa-
per and outlook.
2 INDUSTRY 4.0 AND
CO-INNOVATION IN FUTURE
The first industrial revolution started in the end of
the 18th century with the introduction of mechanical
machines. The second industrial revolution started
in the beginning of the 20th century with electricity
and mass production. The third industrial revolution
started in early 1970s with introduction of electron-
ics and Information Technology (IT). This was the
beginning of automation of manufacturing processes
and programmed machines to take the production re-
sponsibilities. In order to compete with other uprising
countries (like India, China) and offer more value to
the customers, developed countries started to apply
advance technologies on production level. In USA
and some other countries, such initiatives are termed
as fourth industrial revolution, Internet of Things
(IoT), or next generation systems. Whereas in Ger-
many, this initiative is driven by German government
(Bundesministerium f
¨
ur Bildung und Forschung), and
referred as Industry 4.0 (industrie 4.0) (MacDougall,
2014). The industrial revolutions are depicted in the
Figure 1.
There are various definition exists for industry 4.0.
Various groups and companies define the term accord-
ing to their understanding and perspective of discus-
sion. There are also inter-relating terms like IoT, Cy-
ber Physical Systems (CPS), Smart Systems, Digital-
ization, and Digital Factory.
We define Industry 4.0 as a revolution enabled by
application of advanced technologies (like IT) at pro-
duction level to bring new values and services for cus-
tomers and organization itself. The will also bring
flexibility and quality in production systems to fulfill
demands of new innovative business models and ser-
vices quickly (service oriented architecture and net-
work communication at production level). The digi-
talization and virtualization are tools to bring end-to-
end services throughout a product life-cycle (design
till recycle) and in a cost effective way for customers.
A formal definition of industry 4.0 is defined
in (Kagermann et al., 2013) as follows:
”Industry 4.0 will involve the technical integration of
CPS into manufacturing and logistics and the use of
the Internet of Things and Services in industrial pro-
cesses”.
Various terms are used in above definition. Here
we briefly explain these terms. Powerful autonomous
physical systems connected with one another and
environment will perform operations intelligently
(smart systems). These interconnected systems re-
ferred as CPS (Lee et al., 2008; Tseng and Hu,
2014) communicates each other to fulfill the tasks.
Cyber-Physical Production Systems comprise smart
machines, warehousing systems and production facil-
ities that have been developed digitally and feature
end-to-end ICT-based integration, from inbound lo-
gistics to production, marketing, outbound logistics
and service. The IoT is a network of devices. These
devices can be small, e.g., sensor in a fridge or it can
be a robot working inside a car manufacturing fac-
tory. The No. of IoT devices till 2020 will be around
50 billion, an estimate by Cisco (Cisco, 2015). The
significant number of connected devices opens up the
door for new opportunities and new use cases in every
field. Industry and academics will find new use cases
and services which can be offered to various indus-
tries. Although currently IoT use cases at production
level are less and organizations does not know how
we can take advantage from it. Collaboration will get
more focus in future from industry 4.0 perspective as
reported in (Kagermann et al., 2013). In the follow-
ing, we present one of the future scenarios from in-
dustry 4.0 perspectives.
2.1 Co-innovation Opportunities
Recent developments in IT have paved the way for
the next industrial revolution. Next industrial revo-
lution is going to change our eco-system. As stated
in (Kagermann et al., 2013), in future manufacturing,
collaboration will be the focal point. Whether such
collaboration exists between CPS, industries or other
partners, the granularity of such collaboration can
vary from cases to cases. Services either from cloud
computing or fog computing (term initially coined by
Cisco (Bonomi et al., 2012)), will play a significant
role in this context, allowing systems and partners to
work, communicate and collaborate from anywhere
in real time.
There exists variety of collaboration possibilities
for development of future products, e.g. within com-
panies, research institutions, or combination of both.
Every collaboration requires adaptation of the strate-
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442
TIME
REVOLUTION
Fourth industrial revolution
21st century (20XX)
Evolution from existing
Cyber Physical Systems (Intelli – Smart)
First industrial revolution
18th century (1784)
Mechanical (Hydro - power)
Second industrial revolution
19th century (1870)
Electricity – conveyer belt
Mass production (Ford)
Third industrial revolution
20th century (1960)
Programmable units (Mechatronics)
ICT (PCs)
Figure 1: Industrial revolutions.
gies, as collaboration strategies between company-
to-academics will be different than company-to-
company collaboration strategy. For collaboration,
partners decide about the scope of the collaboration,
governance strategy, coordination, confidentiality, in-
tellectual property rights, deliverables, duration, mile-
stones, matters relating sharing of results, terms, and
termination of the collaboration.
For collaboration between companies, companies
can collaborate for a common shared goal to gain mu-
tual benefit. Such collaboration can exists between
companies to design a new product, using other com-
pany infrastructures based on new business models,
or between partners to optimize logistics in manufac-
turing. There are also challenges involved, e.g., find-
ing and sparing suitable resources for such collabora-
tion from their routine operations. Although it is quite
possible that companies fear to participate in such col-
laboration project because of the fear that they may
disclose their business knowledge or companies com-
petitive advantage will be compromised.
Industries want to collaborate with academic in-
stitution to increase the research and development in
the companies. By collaborating with research insti-
tution, companies gain access to current innovative re-
search areas from academics and can use the knowl-
edge to co-innovate products for future or introduce
new flexible processes in their organizations.
Research institutions gain access to sources of
business relevant innovations and work on real world
problems and case studies. Academic institution stu-
dents will find placement opportunities for internships
and potential employers afterwards. Industrial part-
ners can help the academic partners to get the propri-
etary state of the art technology in terms of hardware
and software licenses. Industries can transfer the in-
novation from research prototype or proof of concept
to commercial realization of a product or deployment
in a real environment. Companies will attract new po-
tential employees in form of students by hiring them
as internees or research students who already know
about the processes of the company.
Such a collaboration exists between our institu-
tion and our partners. We perceive the challenges
of our partners facing and better guide what services
they can offer in future in diverse topics. An exam-
ple of such collaboration in the context of industry
4.0 is to find-out what are the requirements of next
generation manufacturing systems and services (like
seamless integration, secure services, and smart sys-
tems) and conduct the research on industry 4.0 with
the help of industrial partners. We investigate solu-
tions for current problems and how new and innova-
tive services/systems can be created and evaluated for
next industrial revolution.
3 APPROACH
As in real industrial context, all issues can not be ad-
dressed at once, therefore, an approach is needed to
accomplish the goals. This approach should address
the current problems, and pave the way for industry
4.0.
In this section, we propose a high-level approach
which consists of nine phases. This approach can be
used for any pilot project. The approach is iterative
in nature. The overall approach is depicted in the Fig-
ure 2. For the detailed understanding of our approach,
we describe its phases as follows:
In Goals and objective phase, organization set the
goals and objectives what an organization want to
achieve in a project. All steps made in a project
should help to achieve the objectives of the project
A Perspective on Industry 4.0: From Challenges to Opportunities in Production Systems
443
Goals &
Objectives
Identification
Landscape
investigation
Design &
analyze
Solution
proposals
Proof of
Concept
Evaluation and
comparison
Feedback loop
lesson learned
Strategy
selection
Figure 2: An approach for Industry 4.0
and therefore the goals of company.
In strategy selection phase, organizations decide how
they want to proceed and select which strategy they
want to apply. What are concrete steps needed to
be taken in order to achieve goals and objectives
described in previous phase. New business models
can be introduced or developed in this phase (Madu,
2013).
In identification phase, high-level requirements
will be collected. Partners and stakeholders will be
identified for the project. Collaborative workshops
will be conducted to identify pain points and oppor-
tunities. From stakeholders perspective, the purpose
is to identify roles, responsibilities, and tasks in the
project.
In landscape investigation phase, detailed infor-
mation about the current landscape will be collected.
In design and analyze phase, gathered information
will be analyzed. This step will also bring better un-
derstanding of landscape and helps to design the so-
lution.
In solution proposal phase, solution will be pro-
posed. Various solutions are possible for a project
which will be compared and finalized in this phase.
For the selected solution specific guidelines will be
prepared. Here sanity check is also performed to re-
alize the project, whether the organization have re-
quired capabilities or not.
In this phase, proof of concept of the selected so-
lution will be executed.
The evaluation phase is to review the outcomes of
the project. Here post implementation situation will
be evaluated whether the defined objective and goals
are achieved or not.
Feedback loop phase is for the continuous im-
provement purpose. Experience gained will be doc-
umented and suggestion will be prepared in case of
rolling out project on larger scale. It also includes
suggestions or guidelines to improve overall process
for other projects.
In this part, we will describe strategy selection
phase in detail. There are various perspectives and
methods available and organizations can choose from
them depending on the nature of problem. As for in-
dustry 4.0 changes are required at various levels, so it
is important for an organization to decide where they
want to focus first in a project. One of the strategies is
to address the areas where company is currently fac-
ing challenges or having problems. There are vari-
ous perspectives, namely outside-in or inside-out per-
spective (Day and Moorman, 2010). In outside-in
perspective, customers are focal point. Organiza-
tions look for what are customer trends and require-
ment, which innovative services or value added bene-
fit they can provide to customers and on basis of such
questions and requirements they design their strat-
egy and build business models. Typical examples of
outside-in perspective are offering new business mod-
els, products, and services e.g. which data companies
or external customers required from production useful
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444
for mutual benefit (without losing competitive advan-
tage).
In inside-out perspective, organizations look in-
side the organization for opportunities how can they
better utilize resources and processes to provide new
services and products to meet customer’s require-
ments. In inside-out perspective, organizations focus
on organization itself and to solve internal challenges
first, e.g., solving data silos issues, providing real-
time data access, standardization, and process opti-
mization, which afterwards, will help to enable in-
dustry 4.0 scenarios and benefits. Organizations also
have to decide which strategy they want to employ in
projects top-down, bottom-up or hybrid one. In fu-
ture, we plan to describe activities (conducting work-
shops, interviews) in each phases in detail with the
help of a case study.
4 CURRENT CHALLENGES AND
METHODOLOGY
For our research in this paper, we use one of the qual-
itative techniques called case research strategy. As in-
dustry 4.0 and smart manufacturing is relatively new
research area, practice based problems, and poses new
challenges, case research strategy is a best candidate
for it as discussed in (Benbasat et al., 1987; Eisen-
hardt, 1989; Eisenhardt and Graebner, 2007). In this
paper, we want to know and understand the stake-
holder’s expectations, requirements and the potential
challenges industry 4.0 poses in the natural settings.
Since current challenges, future expectations from in-
dustry 4.0 have been limited investigated and lack of
case data in production environment from companies.
To find-out, what the top challenges manufacturing
industry is facing, we prepare a short questionnaire
and distributed it in an information technology exhi-
bition. We also get insights by informal interviews,
various company’s documents, and talks with indus-
trial experts and consultants regarding current prob-
lems and challenges in production environment. Al-
though due to different industry segments and com-
plex nature of their business, challenges are also di-
verse but there are also some common challenges.
We describe top five current challenges faced by
companies at production level in this paper. These
challenges are also relevant to the evolution of indus-
trial automation and manufacturing.
4.1 Data Challenge
In our data-driven world, we generate data in various
ways. In production environment, data is generated
and collected from different machines sensors, pro-
cess data, product data, quality data, plant data, logis-
tics data, data from partners, and infrastructure data;
all contribute into explosion in data size.
Such data poses various challenges and demands
new methodologies for storing, processing, and man-
agement of such data. New algorithms, models, prod-
ucts, and visualizations techniques are required to use
and gain the actual benefits from the data. Data engi-
neers are required to analyse such data and to find cor-
relation between data streams and to gain new insights
from the data which were not thought earlier. Specif-
ically, there is a problem in which plethora of inter-
mediate solution exists for data management within
a company; it ranges from storing and exchanging
data in form of printouts, emails, excel sheets, propri-
etary applications, and using heterogeneous database
solutions between various departments or production
halls. Lack of standardized approach for data man-
agement is still one of the concerns in big compa-
nies. For example, redundant data is stored in var-
ious departments of the company, in different data
formats with minor extensions or enrichments. Such
data silos raise the amount of data redundancy, in-
consistency, and different interpretation of data. Soft-
ware licenses, updates, hardware, and skilled person-
nel costs to manage such data landscape heterogeneity
are a burden in a competitive production environment.
Decision made on inconsistent data leads to incorrect
decision.
4.2 Data Exchange with Partners
Companies have to exchange data within their fac-
tories or departments and make sure the availability
of data for other processes in time. External part-
ners also share their data with companies to keep pro-
cesses optimized, e.g. material logistics data to keep
the stock level as minimum as possible. There is also
trend that instead of selling manufactured products,
companies share their infrastructure or production fa-
cilities with other companies for revenue gain. Data
transparency is also required in this case where other
companies uses infrastructure as a service. Compa-
nies have to share the progress status of such prod-
ucts manufactured at their production facilities with
other companies and for further processes carried out
on products if needed. There is a gap between pro-
duction level and ERP level. A close integration be-
tween shop floor and ERP level is often missing. Tra-
ditionally, data is not exchanged between shop floor
and ERP level in real time and independently. Trans-
ferring of data between various systems at production
level causes delay. In some scenarios, physical prod-
A Perspective on Industry 4.0: From Challenges to Opportunities in Production Systems
445
uct is transferred on the conveyer belt but updated in-
formation was not loaded to carry out operations on
the product which results in higher costs. Production
status of a product is missing and often not in real
time; hence status transparency lacked. Normally,
even in state of the art factories, they have only three
states to update the status of the product, namely pro-
duction started, in progress, and finished, and are not
well integrated with ERP systems. So, a monitoring
solution from factory is needed considering which in-
formation to provide, in which granularity, user roles,
as same information or process may be applied on the
other products. There are also issues due to data ex-
change with partners in a collaborative environment,
e.g. sharing the process status of products and cur-
rent state of the processes applied on products. Com-
panies also have to consider that sharing information
with partners does not result to lose competitive ad-
vantage or sharing critical insights. Similarly, in case
of machine faults at production level are not reported
at ERP level and current state of the production does
not reflected. Necessary measures for machine repairs
cannot be initiated because of delay in reporting.
4.3 Training and Skill Development
Normally, especially in Germany, companies are fac-
ing shortage of skilled staff due to various factors.
One of the major factors is aging population. People
used to work in production are retiring and also tak-
ing production knowledge and experience they gained
during their jobs. Other issue is to keep the hired per-
sons within organization, as younger ones wants to
have incentives, promotion or prefer to change jobs
frequently. As majority of the workforce consists of
old people who do not want to learn technologies or
hinder to have change in their routines work. Intro-
ducing new techniques, gadgets, or changing their
way is quite challenging as they resistant to such
changes. This challenge becomes manifold in case
of industry 4.0 scenarios where changes are eminent
factor.
4.4 Process Flexibility
As product life cycle in this decade is shorter than
before (Hofreiter and Huemer, 2010; Hofmann and
Bick, 2015). Individualized and customized products
also become reality. Such individualization and cus-
tomization requires flexibility at production level in a
cost effective manner. In order to provide such flex-
ibility, production environment should be adaptable
at the process level. Technology, currently used at
shop floor level is inadequate and does not support the
process flexibility (Zhang et al., 2013). Traditionally,
processes and systems at production level are devel-
oped and managed isolated over the time in various
departments. Change management at production level
is quite challenging. As processes span in various de-
partments, a clear process ownership is also missing
in case of adaptation or changes. Change structure is
also needed because sometimes it is not possible to
keep the required change in the specific area and will
impact the whole landscape due to dependencies. In
case of changes, required changes are transferred in
form of printouts or using email communication. Of-
ten these changes are handled individually in each de-
partment without any specific standards which raises
the complexity and costs of managing such changes.
There is a need to bring process standardization and
synchronizations between various company depart-
ments to provide flexibility in an effective manner.
4.5 Security
Security is also a top concern now and it will be the
major concern in future for industries. Industries want
to keep their people, products, and production fa-
cilities environment secure from security risks. The
trend of using smart devices in production is increas-
ing. On one hand connectivity of these devices pro-
vides great advantages to ease our lives. On the other
hand it poses greater risk from security perspective.
Monitoring of such devices, used in production, is
also a challenge from software and hardware perspec-
tive, which is often ignored. All devices whether in-
dustrial machines, computer, tablets, or smart phones
needs to be updated on regular basis whether to avoid
threats or due to configuration changes installed in
these devices spread across the geographical location
or inside factory. Keeping track of updates and man-
agement of such devices is a tedious task too. As
some of IoT devices used at production level have
very limited processing capabilities which requires
new tools or methods, and measurements, to keep the
devices secure instead of tradition methods. Serious
measures are needed to restrict the threats posed by
the malfunctioning or hacked devices. There are al-
ready various examples already happened where pro-
duction facilities are targeted, e.g., security holes ex-
ploited in programmable logical controllers deployed
in factories (Zetter, 2011). It is also possible that
manufactured electronic products may contain viruses
from production facility when delivered in the market,
which may result heavy fines for company or product
returns.
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5 FUTURE SCENARIOS FOR
INDUSTRY 4.0
Manufacturing industry has to cope with various chal-
lenges as mentioned in previous section. Despite of
those challenges, in the following, we present some
of the future scenarios from industry 4.0 perspectives.
The scenarios also reflect the challenges mentioned
in previous section. In first scenario, we discuss that
more integration of processes are required within en-
terprise between ERP and shop-floor level and also
across enterprise boundaries for optimal and collab-
orative environment. Second scenario highlights the
importance of real time information access to make
decision. Lastly, last scenario shows the importance
of predictive maintenance in a production environ-
ment.
5.1 Integrated Processes
Product life-cycle involves series of processes, from
design to production, service and feedback from cus-
tomers. These processes can belong within the same
enterprise or distributed across enterprise boundaries.
Process integration is quite challenging in this
case due to various technologies, interfaces, stan-
dards, methods and unique characteristics in each en-
terprise involved. Involving customer’s feedback or
customization direct in manufacturing process will
lead to improvement in the product and higher cus-
tomer satisfaction.
Integrated processes across the enterprise will en-
able to optimize and make decisions in real time. Lo-
gistics can be well optimized and out of stock or over
production cases, both results in revenue losses can be
eliminated. Suppliers can access to live data at shop-
floor level and know when to provide the required ma-
terial for better resource planning and will reduce un-
planned outage or overstock situations. Existing pro-
cesses can be optimized and will be executed faster.
In case of companies having more than one manu-
facturing facilities, whether in same geographical lo-
cation or scattered around the globe, cross plant man-
ufacturing and planning makes more sense if data
from facilities is available and integrated. Production
load can be distributed from one plant to the other
plants for optimal resource usage. Business processes
can be analyzed across plants (Lodhi et al., 2014) to
find out which plant is performing better and what
we can learn from one plant or how we can develop
best practices for specific industry or products for the
whole organization. There is also a trend in which
instead of selling end products, companies sell their
know-how or other services.
A company can allow other companies or partners
to use state of the art manufacturing facility, compe-
tency and knowledge know-how as a service to de-
velop their own product. In this case integrated pro-
cess across enterprise boundaries is a real challenge
where companies have to exchange information and
applying processes at hired facility in a secure and
confidential way.
5.2 Real-time Data Access to/from
Shop-floor Level
Real-time data access in a production is very vital
whether it is related to products, processes, or ma-
chines operating in the factory. Traditionally, real
time information access for processes was not avail-
able at shop floor level. In case of change in processes
or actions, workers or machines have to wait until in-
structions are manually transferred or data is loaded
in the production system. Future factories demand
a close integration between ERP and shop-floor and
real time access of data at production level for real
time execution and vice versa. Data collected from
machines and business processes is filtered, analyzed,
and then delivered in required format to provide in-
sights which in return will help to give better process
control, optimize, and reduce overhead costs.
5.3 Predictive Maintenance
Maintenance of machines is an important area which
every manufacturing company has to address. Manu-
facturing companies try to carry out planned main-
tenance based on different strategies like operating
hours, number of products processed, or after a cer-
tain time. A machine condition monitoring sys-
tem can be introduced to avoid unplanned mainte-
nance. Machines equipped with sensors generates
huge amount of data and records the operating con-
dition in which machine operates. Historical data col-
lected regarding machines operating conditions can
play a vital role. Current state of the machine is com-
pared with historical data and with other data in dif-
ferent dimensions (product quality, and wastage data).
Models can be developed to predict which part of ma-
chine or machine is going to fail or vulnerable (Lee
et al., 2015; Wang et al., 2008).
Machines manufacturers can collect data from
machines to provide remote diagnostics and offer
maintenance services from their locations. Such data
can also be useful for them to know in which condi-
tions their machines are operating and what they can
learn from such data. For example, machine manu-
facturers can develop next generation of machines for
A Perspective on Industry 4.0: From Challenges to Opportunities in Production Systems
447
specific industry or buyers segments by understand-
ing their operating needs based on history. Remote
setting of parameter or operating conditions or pro-
viding early warning in case of machine is over used
or wrongly used as compared to what it is made for.
They can also send their maintenance staff to repair
or diagnose the problem. Such data can be collected
by the machines and transmitted to the machine man-
ufacturer. Other option is such data is collected by
the production facility and then those enterprises can
collaborate to produce or offer better services.
6 SUMMARY AND OUTLOOK
Industry 4.0 and smart manufacturing started to show
their importance in manufacturing industry. In our pa-
per, we provide an iterative approach for industry 4.0
projects. In our study, we investigate what are the
current challenges. We also discuss the new scenarios
which are possible in manufacturing industry to gain
the benefit from industry 4.0. Although, we listed
only current challenges but in future these new sce-
narios may also pose some challenges. In future, we
want to explain our approach in detail and to develop
a industry 4.0 project prototype (proof of concept) to
demonstrate the utility of our approach.
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