In order to assess the challenges and needs of Austrian companies with respect to current
business and technological developments, a regular well-researched compilation of empirical
data of the Austrian manufacturing industry is necessary. Hence, a panel of 104 decisionmakers
(owners, CEOs, managing directors and plant managers) from leading Austrian
industrial companies was assembled in form of an “industry panel” to investigate current
issues of production work in Austria by means of a survey.
In order to allow for a longitudinal study, it is planned to survey the same group of people
every year; hence the instrument of an annual panel-survey was chosen. To date the panel
consists of 104 leaders from different Austrian or international companies with at least one
factory location in Austria. The panel was assembled first in 2018/2019 and the administered
survey contained 23 questions. The actual questions comprise topics that concern the current
economic situation and future expectations, operational issues with respect to delivery
time, product variability and demand fluctuations, as well as questions relating to innovation,
automation and the application of current technological developments (i.e. assistance
systems, machine learning, etc.) in manufacturing. This paper presents the survey results
and conclusions of the 2019 panel on production work in Austria.
The realization of digitalization in production companies – currently also referred to as Industry
4.0 – aims for reduction of internal value creation costs as well as costs for intercompany
collaboration and plays a key role in their current strategy development. However, related
strategy research still lacks to provide operationalized digitalization methods and tools to
practitioners with scientific rigor as well as real-world relevance. To challenge this status
quo, we present a scientifically grounded 14-step procedure model including 11 practically
tested tools, developed specifically for real-world application. The model leads practitioners
from their first contact with industrial digitalization, through the maturity assessment of
143 digitalization items, until the implementation of a KPI-monitoring system and a continuous
improvement process. We applied and re-worked the procedure model during three
years of application. Validation and Feedback from practitioners and scholars indicate, that
the model drives strategy development towards objective and data-based decision making
and increases stakeholder engagement in organizations considerably.
The spread of digital technologies dramatically changes production processes. The fourth
industrial revolution opens up new opportunities for the introduction of technologies, having
a significant impact on the production cycle, starting with highly automated production lines
and ending with the large-scale implementation of technological solutions designed to improve
productivity, optimize costs, quality and reliability. Defining digital transformations,
primarily in the manufacturing industry, as a strategic imperative for the entire economy
based on opinions and intentions of entrepreneurs (short and medium-term), key aspects of
the digitalization process in Russian medium, high-tech and low-tech manufacturing industries
are revealed. A set of tendencies in the development of digital technologies by their main
types is presented, the level of industry participation in digital transformation is shown, as
well as many other important digital transformation processes in enterprises that are not
measured by quantitative statistics.
The application of churn prevention represents an important step for mobile communication
companies aiming at increasing customer loyalty. In a machine learning perspective,
Customer Value Management departments require automated methods and processes to
create marketing campaigns able to identify the most appropriate churn prevention approach.
Moving towards a big data-driven environment, a deeper understanding of data
provided by churn processes and client operations is needed. In this context, a procedure
aiming at reducing the number of churners by planning a customized marketing campaign
is deployed through a data-driven approach. Decision Tree methodology is applied to drow
up a list of clients with churn propensity: in this way, customer analysis is detailed, as well
as the development of a marketing campaign, integrating the individual churn model with
viral churn perspective. The first step of the proposed procedure requires the evaluation of
churn probability for each customer, based on the influence of his social links. Then, the
customer profiling is performed considering (a) individual variables, (b) variables describing
customer-company interactions, (c) external variables. The main contribution of this work
is the development of a versatile procedure for viral churn prevention, applying Decision
Tree techniques in the telecommunication sector, and integrating a direct campaign from
the Customer Value Management marketing department to each customer with significant
churn risk. A case study of a mobile communication company is also presented to explain
the proposed procedure, as well as to analyze its real performance and results.
Due to fast-paced technical development, companies are forced to modernise and update
their equipment, as well as production planning methods. In the ordering process, the customer
is interested not only in product specifications, but also in the manufacturing lead
time by which the product will be completed. Therefore, companies strive towards setting
an appealing but attainable manufacturing lead date.
Manufacturing lead time depends on many different factors; therefore, it is difficult to predict.
Estimation of manufacturing lead time is usually based on previous experience. In the
following research, manufacturing lead time for tools for aluminium extrusion was estimated
with Artificial Intelligence, more precisely, with Neural Networks.
The research is based on the following input data; number of cavities, tool type, tool category,
order type, number of orders in the last 3 days and tool diameter; while the only output
data are the number of working days that are needed to manufacture the tool. An Artificial
Neural Network (feed-forward neural network) was noted as a sufficiently accurate method
and, therefore, appropriate for implementation in the company.
The study on cognitive workload is a field of research of high interest in the digital society.
The implementation of ‘Industry 4.0’ paradigm asks the smart operators in the digital factory
to accomplish more ‘cognitive-oriented’ than ‘physical-oriented’ tasks. The Authors propose
an analytical model in the information theory framework to estimate the cognitive workload
of operators. In the model, subjective and physiological measures are adopted to measure
the work load. The former refers to NASA-TLX test expressing subjective perceived work
load. The latter adopts Heart Rate Variability (HRV) of individuals as an objective indirect
measure of the work load. Subjective and physiological measures have been obtained by
experiments on a sample subjects. Subjects were asked to accomplish standardized tasks
with different cognitive loads according to the ‘n-back’ test procedure defined in literature.
Results obtained showed potentialities and limits of the analytical model proposed as well as
of the experimental subjective and physiological measures adopted. Research findings pave
the way for future developments.
Additive manufacturing in recent years has become one of the fastest growing technologies.
The increasing availability of 3D printing devices means that every year more and more
devices of this type are found in the homes of ordinary people. Unfortunately, air pollution is
formed during the process. Their main types include Ultra Fine Particles (UFP) and Volatile
Compounds (VOC). In the event of air flow restriction, these substances can accumulate in
the room and then enter the organisms of people staying there. The article presents the
main substances that have been identified in various studies available in literature. Health
aspects and potential threats related to inhalation of substances contained in dusts and gases
generated during the process are shown, taking into account the division into individual types
of printing materials. The article also presents the differences between the research results
for 3d printing from individual plastics among different authors and describes possible causes
of discrepancies.
The main aim of the article is to develop a simulation model of flexible manufacturing
system with applying the ontology on flexibility. Designing manufacturing systems matching
both production and market requirements becomes more and more challenging due to the
variability of demand for a large number of products made in many variants and short
lead times. Manufacturing flexibility is widely recognised as a proven solution to achieve
and maintain both the strategical and operational goals of the companies exposed to global
competition. Generic simulation model of flexible manufacturing system was developed using
FlexSimr 3D software, then the example data were used to demonstrate the developed model
applicability. “The Ontology on Flexibility” was applied for evaluation of achieved flexibility
of manufacturing system.
This paper addresses supply chain transparency improvement in a triadic manufacturersupplier-
supplier relationship. It investigates the problem of improving transparency using
a set of interviews; then, a detailed problematization and a simulation model is formulated
based on the results. The interview results show that there are two key issues to be considered:
information systems issues related directly to transparency and capability issues related
to utilizing transparency. The simulation results support developing capabilities by illustrating
the effects of different options for coordinating material flow. The results of the study
also indicate that while solutions to improve transparency can be relatively straightforward
to implement, developing the capability to benefit from it can be more challenging, even in
a well-established close partnership. In addition, suppliers may be hesitant to collaborate
without active manufacturer involvement.
The Decision Makers in the production organizations, which produce multiple different products
at the same time, set the priorities for what the organization desires to produce. This
priority is sorting the products in order to schedule the production based on these priorities.
The production organizations receive a huge number of orders from different customers, each
order contains many products with close delivery dates. The organization aims to produce
multiple different products at the same time, in order to satisfy all customers by delivering
all orders at the right time. This study will propose a method to prioritize the production
to produce a multiple different products at the same time, the production lines will produce
multiple different products. This method will prioritize the products using Multi Criteria
Decision Making technique, and prioritize the production operations using a new algorithm
called Algorithm for Prioritization of Production Operations. In addition, the study will provide
an algorithm for production scheduling using the production priority calculated based
on the proposed method. The study will also compare the scheduling based on the priority
rules and based on the proposed method through total production time and the variety of
products produced.
A concern about the current state of relations between industry and the environment is
often neglected. However, it is important to underline that industry and sustainability are
not mutually exclusive. There are many industrial processes to blame when analyzing the
negative impact on current socio-ecological environment. The emerging question is whether
companies nowadays are ready to face challenges in the name of sustainability, the future
of the planet and generations to come. In addition, an assessment of industrial processes
may be very time-consuming and costly in financial terms. This fact allows developing sustainability
assessment approach and its measures for keeping track on to evaluate scale of
environmental, social and economic changes. The goal of the paper is to develop a multicriteria
decision-making approach for sustainability assessment of renewable energy technology.
A sustainability assessment approach combines life cycle-based methods integrated with
multi-criteria decision-making method based on analytical hierarchy process. The resulting
assessment method allows finding a compromise between industry and the environment and
identify potential intervention points for further research. As a result of decision-making
process, string ribbon technology was considered as the most sustainable. The applicability
of the proposed method is assessed based on photovoltaic panels.
Higher education institutions (HEIs) typically generate income from two main sources; student
fees and research income. In contrast, the predominant waste streams in HEIs tend
to include; (1) assignment/examination mark submission process, (2) photocopying process
and (3) the funding application process. Unintended internal process complexities and barriers
typically aggravate the challenges already inherent in the research grant application
process. Although Lean Six Sigma (LSS) has been adopted by a number of HEIs in Ireland,
very few have adopted an integrated LSS approach for waste reduction in the research grant
application process. To identify barriers and waste in the research grant application process
within an Irish HEI in an EU environment, the authors used an online survey deployed to
240 academics and researchers. The survey response rate was 13%. The participating HEI
in this pilot study generated an annual income (including student fees and research income)
exceeding e240 million for the academic year 2017/2018. Using an LSS lens, this paper identified
the primary waste in the research grant application process from an academic and
researcher perspective to be; editing and revising applications, liaising and communicating
with collaborators and waiting for information. Organised thematically, the main barriers
were strategic thinking, collaborator identification and co-ordination, eligibility, process,
time and support & mentoring. The results from this study can be used to inform the next
stage of the research where empirical studies will be carried out in other HEIs to develop a
practical roadmap for the implementation of LSS as an operational excellence improvement
methodology in the research grant application process.
The aim of this paper is to identify lean management instruments used to implement strategic
objectives related to the creation and retention of value in the area of value networks while
redefining the business model of service enterprises on the example of hotels. In relation
to the objective, a survey was conducted using the questionnaire method with the use
of Computer Assisted Web Interview technique, using a self-developed questionnaire. The
survey was carried out between February and May 2020 among 421 representatives of hotel
service companies operating in the three, four and five-star standard. In order to verify
the assumptions between the surveyed features, statistical inferences were used using the
Statistica programme. The research results may provide inspiration for the implementation
of lean management concept in the area of redefining business models conducive to value
creation. The issues presented in the paper are an attempt to fill the gap indicating practical
experience related to the use of lean management instruments in the hotel services sector
and their effectiveness in the process of redefining business models and value creation.
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