APLYING THE KoFI METHODOLOGY TO IMPROVE
KNOWLEDGE FLOWS IN A MANUFACTURING PROCESS
Oscar M. Rodríguez-Elias
1
, Alberto L. Morán
2
, Jaqueline I. Lavandera
3
Aurora Vizcaíno
4
and Juan Pablo Soto
4
1
Mathematics Department, Universidad de Sonora, Blvd. Luis Encinas y Rosales, Hermosillo, Son., Mexico
2
Facultad de Ciencias, Universidad Autónoma de Baja California, Ensenada, B. C., Mexico
3
FAMOSA-Ensenada, Ensenada, B.C., Mexico
4
Alarcos Research Group, University of Castilla-La Mancha, Paseo de la Universidad No. 4, Ciudad Real, Spain
Keywords: Knowledge Management, Manufacturing Process, Process Analysis, Knowledge Flow Analysis.
Abstract: Development of methods to integrate Knowledge Management (KM) in organizational processes is an open
issue. KM should facilitate the flow of knowledge from where it is created or stored, to where it is needed to
be applied. Therefore, an initial step towards the integration of KM in organizational processes should be
the analysis of the way in which knowledge is actually flowing in these processes, and then, to propose
alternatives to improve that flow. This paper presents the use of the Knowledge Flow Identification (KoFI)
methodology as a means to improve a manufacturing process knowledge flow. Since KoFI was initially
developed to analyze software processes, in this paper we illustrate how it can also be used in a
manufacturing domain. The results of the application of KoFI are also presented, which include the design
of a knowledge portal and an initial evaluation from its potential users.
1 INTRODUCTION
To assist organizations to manage their knowledge,
different strategies and systems (Knowledge
Management Systems, KMS) have been designed.
However, developing them is a difficult task; since
knowledge per se is intensively domain dependent
whereas KMS often are context specific
applications. The lack of appropriate methodologies
or theories for the extraction of reusable knowledge
and reusable knowledge patterns has proven to be
extremely costly, time consuming and error prone
(Gkotsis, Evangelou et al., 2006). Additionally, an
actual concern is that KM approaches should be well
integrated to the knowledge needs of knowledge
workers, and to the work processes of organizations
(Scholl et al., 2004). Before developing a KM
strategy it is advisable to understand how knowledge
transfer is carried out by people in the different
processes where the strategy will be applied.
This paper presents the use of the KoFI
methodology developed to identify and analyze
knowledge flows in work processes, to improve a
manufacturing process. The goal of this paper is to
illustrate how this methodology can help to detect
knowledge deficiencies in a process, and can also
help to design strategies to solve them; in this case a
knowledge portal was designed. Hence, in the next
section the manufacturing process where the
methodology was used is described, after that in
Section three we illustrate the different stages
followed to improve that process. Then, in Section
Four a knowledge portal, designed as a result from
the findings obtained after applying the
methodology, is described. Section Five depicts the
results of a preliminary evaluation of this portal;
finally conclusions are outlined in Section 6.
2 THE MANUFACTURING
PROCESS
To test the KoFI methodology it was used in an
industrial company dedicated to the manufacturing
of cans. We focused our work on a department
where eight processes are carried out. It was decided
to centre on one of the most important process: the
one in charge of transforming the aluminum rolls
into the first versions of the cans (known as
309
M. Rodríguez-Elias O., L. Morán A., I. Lavandera J., Vizcaíno A. and Pablo Soto J. (2008).
APLYING THE KoFI METHODOLOGY TO IMPROVE KNOWLEDGE FLOWS IN A MANUFACTURING PROCESS.
In Proceedings of the Third International Conference on Software and Data Technologies - PL/DPS/KE, pages 309-314
DOI: 10.5220/0001879603090314
Copyright
c
SciTePress
“Formation area”). In this test 41 people were
involved, including the department manager, the
responsible of each area of the department, and the
operating personnel, which were integrated by leader
mechanics, productive processes mechanics, and
machine operators.
Nineteen employees were interviewed by using
the long interview technique. The duration of the
interviews ranged from 30 minutes to 2 hours,
depending on the level of responsibility of those
interviewed. Additionally, a total of 119 documents
and systems were also analyzed.
3 APPLYING KoFI TO THE
PROCESS
The KoFI methodology is divided in three phases
(Rodriguez-Elias et al., 2007a): a) the process
modeling phase, consisting of the definition and
modeling of the process, using a process modeling
language which provides elements to represent the
knowledge involved in the process; b) the process
analysis phase, which involves the identification and
analysis of knowledge sources, topics, and flows, as
well as the problems affecting the flow of
knowledge; and c) the knowledge flow support tools
analysis phase, consisting of the analysis of the tools
that might be useful knowledge flow enablers.
In this paper we will focus on the process
analysis phase. Information about how to perform
the other two phases can be found in (Rodriguez-
Elias et al., 2007b) for the process analysis phase,
and in (Rodriguez-Elias et al., 2007c) for the
knowledge flow support tools analysis phase.
To identify
knowledge flow
problems
To identify
knowledge flows
To identify
knowledge topics
To identify
knowledge sources
Figure 1: The four steps of the process analysis phase of
the KoFI methodology.
The analysis phase of KoFI is composed of four
steps, as shown in Figure 1, which are performed in
an iterative way, since each step might provide
information useful for the others preceding it.
The first step is to identify the knowledge
sources involved in the process. This includes the
identification of all those sources of information or
knowledge that could be being used or could be
useful for performing the different activities
composing the processes. Those sources could
include the people consulted by the personnel in
charge of the process, the information systems
supporting the process, or documents.
The second step focuses on the identification of
the main knowledge topics or areas related to the
activities performed in the process. For instance,
knowledge required to perform the activities, or
created from them. The knowledge related to the
sources found in the preceding step should be
identified and classified. An important result of this
step might be the identification of important
knowledge topics not stored anywhere, or that might
be stored in sources not used or difficult to find.
These two initial steps also include the
classification of the sources and topics found, which
can be made through the definition of a taxonomy or
an ontology of knowledge sources; which are
considered an important initial activity towards the
development of KM systems (Rao, 2005). It should
be possible to relate the different sources to the
knowledge that can be obtained from them, and vice
versa, i.e. relate the knowledge to the sources from
where it can be obtained, or where it is stored.
The third step focuses on identifying the manner
in which knowledge is flowing through the process.
To accomplish this, it is required to analyze the
relationships between the knowledge sources and
topics, to the activities of the process. This includes
the identification of the activities where the topics
and sources of knowledge are being generated,
modified, or used. It is important to identify
knowledge dependencies, such as knowledge topics
generated in an activity and required in other; and
knowledge transfers mechanisms, such as
knowledge transferred from one activity to another
through a document, or through an interaction
between different roles or persons.
Finally, the fourth step of the analysis consists of
identifying and classifying the main types of
problems detected and which affect the knowledge
flow. KoFI proposes to do this by defining problem
scenarios (Rodriguez-Elias et al., 2007a), a
technique based on explaining a problem in the form
of a story describing a common situation. Once
described the problem, one or more alternative
scenarios are also proposed to illustrate the manner
in which such a problem could be addressed. Those
alternative scenarios are finally used to extract the
main requirements to propose the KM strategy to
follow, or the KM system to develop. The following
subsections describe how these steps were carried
out in the manufacturing company.
3.1 Identifying Knowledge Sources
In the first step of the analysis, the identified sources
were very diverse. To facilitate its management, and
ICSOFT 2008 - International Conference on Software and Data Technologies
310
following the recommendations of the KoFI
methodology, once the different sources were
identified, we proceeded to classify them. To do this
a taxonomy of knowledge sources was defined; it
included four categories of sources:
1) Documents, groups of all those sources which
consist of physical or electronic documents. It
includes three subcategories: a) process’s
documents, b) technical documents, and c)
organizational documents.
2) Information Systems, refers to the sources
consisting of information systems used in the
company. This category includes two
subcategories: a) query systems, and b)
transactional systems.
3) People, groups all the different types of people
involved in the process. It has been divided in
four subcategories: a) staff, b) specialists, c)
external clients, and 4) internal clients.
4) Others, groups those sources not included in
the preceding categories. Particularly it includes
two subcategories: a) problem analysis tools,
and b) simulation tools.
Each source was described by assigning it a unique
identifier, a name, a description, its type and
category, its location, its format, and the main
knowledge topics which could be obtained from it.
3.2 Identifying Knowledge Topics
The identified knowledge topics were also very
diverse, ranging from organizational behavior to
special machine maintenance. The topics identified
were classified in three categories, according to their
utility in the activities of the process.
1) Product Line Activities which includes
knowledge about the operation of machines,
about processes, and about quality of the
processes and products. It is divided in four
subcategories: a) product quality, b) machine
maintenance, c) operation, and d) information
technology (IT) application.
2) Organizational Culture, is all that knowledge
that employees must have about the company,
its internal organization and norms, etc. It
includes only one subcategory which is
knowledge of the company.
3) General Knowledge groups all those topics and
areas of knowledge that the employees might
have, and which is not directly related to the
process operation. It is subdivided in four
subcategories: a) resource management, b) IT
management, c) personnel management, and d)
other individual knowledge.
Once identified, the main knowledge topics were
described assigning them a unique identifier, a
name, a description, its classification, and
information to know where such topic could be
useful, and why and how knowing it could benefit
the organization or the person who knows about it.
With the knowledge topics descriptions, a
knowledge dictionary was developed for the process.
3.3 Identifying Knowledge Flows
In this step we modeled the knowledge required in
each activity of the process, the knowledge that each
role needs to perform these activities, and the
knowledge sources consulted or generated in each
activity, following an adaptation of the Rich Picture
technique (Monk and Howard, 1998). Figure 2
presents an example of this type of diagrams, in
which there are represented the knowledge required
in the “Lift trucks operation and management”
process carried out in the company studied. The
figure shows the role in charge of such activity, the
experience, skills and knowledge it provides to the
activity, and the main source of knowledge used in
the activity, which is an application for managing
security rules and regulation of the company.
Mechanics/
Operator
Secure System
Lift trucks operation
and management
•Operation procedures
•Security norms
•Transported material
•Security rules and
regulation
•Process work's experience
•Tools management
experience
•IT management experience
Knowledge required
for the activity
Activity
Knowledge
source
Knowledge obtained
from a source
Role / Actor
Knowledge provided
by Role / Actor
Mechanics/
Operator
Mechanics/
Operator
Secure System
Lift trucks operation
and management
•Operation procedures
•Security norms
•Transported material
•Security rules and
regulation
•Process work's experience
•Tools management
experience
•IT management experience
Knowledge required
for the activity
Activity
Knowledge
source
Knowledge obtained
from a source
Role / Actor
Knowledge provided
by Role / Actor
Figure 2: Example of an adapted rich picture to analyze
knowledge flows.
This type of models helped us to identify the
relationships between the knowledge sources and
topics, and the activities of the process. The above
allowed us to create a knowledge meta-model
(described in Section 4), which was used as the
structure for developing a Knowledge Map useful to
identify the knowledge that might be obtained from
each source, and the activities in which the sources
or the knowledge were being used or generated. This
map was used in the construction of a Knowledge
Portal (described also in Section 4) proposed to
solve some of the main knowledge flow problems
observed, as it is described next.
APLYING THE KoFI METHODOLOGY TO IMPROVE KNOWLEDGE FLOWS IN A MANUFACTURING PROCESS
311
3.4 Identifying Knowledge Flows
Problems
The final step of KoFI proposes to identify and
classify the main problems affecting the knowledge
flow in order to propose alternatives to minimize or
avoid them. In our study, it was observed that some
areas of the process were not well supported with
documentation. An additional problem was the
identification of important knowledge sources that
were not being used. Some reasons for the last were
the difficulty for consulting some of those sources,
either because they were unknown, or because they
were difficult to find by employees.
To address this problem, it was decided to
develop a Knowledge Portal to facilitate the access
to all the available sources, according to the areas,
processes, or activities for which they are useful.
Additionally, the portal would provide ways for
pointing out to all those knowledge areas for which
no sources exist. The last should be useful to
identify all those areas for which knowledge sources
should be created. Additionally, it was also decided
that the portal should provide access not only to
documents, but also to other types of sources, such
as information systems, or support tools, in order to
promote the use of all the available types of
knowledge sources of the company.
4 DESIGN OF THE KNOWLEDGE
PORTAL
In this section we describe a meta-model developed
for structuring the knowledge map used into the
portal, the structure of such portal, and the design of
its user interface.
4.1 Meta-Model
The meta-model comprises the knowledge types and
sources involved in the knowledge generation and
acquisition process (Figure 3). In it, the knowledge
concepts are integrated with the knowledge topics
and sources. The knowledge concepts are required,
generated or modified by the activities, which are
described as work definitions. The work definitions
can be processes, activities or decisions. Each
knowledge concept/source association contains
information about the knowledge level it requires.
The available format and location for consulting
each source are specified.
Knowledge
source
Location
Source
types
Location
types
Source
categories
Format
Knowledge
concept
Required level
Knowledge
topics
Categories Areas
Work
definitions
Goal
Processes Activities
Decisions
Located in Of type
Knows about
R
e
q
u
i
r
e
s
G
e
n
e
r
a
t
e
s
/
M
o
d
i
f
i
e
s
Has
launches…
Implies
1..*
Has
1..*
Has
1
Has
1
Knowledge
source
Location
Source
types
Location
types
Source
categories
Format
Knowledge
concept
Required level
Knowledge
topics
Categories Areas
Work
definitions
Goal
Processes Activities
Decisions
Located in Of type
Knows about
R
e
q
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r
e
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e
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r
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launches…
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1
Has
1
Figure 3: Meta-model of knowledge types and sources.
4.2 Knowledge Portal Structure
The meta-model was used as a base to design the
structure of the knowledge portal. Figure 4 shows
the resulting general structure of the portal. This
structure comprises a first level in which initial
interfaces (pages) are accessible (e.g. home and
registration pages). The second and third levels are
pages which correspond to the manufacturing areas
and sub-areas of the organization, respectively. The
fourth level corresponds to pages on the processes
that integrate each of the sub-areas identified from
the involved knowledge flows. Finally, the fifth
level presents all the identified knowledge sources
for the specific process of the sub-area.
Homepage
Area Area Area
Sub-area Sub-area Sub-area
Sub-process Sub-process Sub-process
Knowledge source Knowledge source Knowledge source
Homepage
Area Area Area
Sub-area Sub-area Sub-area
Sub-process Sub-process Sub-process
Knowledge source Knowledge source Knowledge source
Figure 4: General structure of the Knowledge Portal.
4.3 Knowledge Portal UI Design
The design of presentation and navigational features
of the user interfaces (pages) also emerged from
insights identified in the analysis and initial phases
of design. These include information about the
identified knowledge flows, the main sub-areas of
the organization, and the structure of the portal
previously identified, which resulted in the options
included in the menus and main layout sections of
the pages. These allow users to find the required
information by simply identifying the specific area
in which information is generated or required, and
following the resulting navigational structure (area
sub-area process) to locate the specific
knowledge source, instead of just alphabetically (or
randomly) browsing through the information.
ICSOFT 2008 - International Conference on Software and Data Technologies
312
a) Area
b) Sub-areac) Process
d) Knowledge
sources
e) Contextual
menu
f) Search
engine
a) Area
b) Sub-areac) Process
d) Knowledge
sources
e) Contextual
menu
f) Search
engine
Figure 5: Example of the page contents and layout of the
Knowledge Portal.
Figure 5 depicts an example of the layout and
content of a page from the current prototype for the
“Formation” area.
The information provided includes the name of
the manufacturing area being consulted (5.a), the
name of the specific sub-area (5.b), the name of the
selected process within the sub-area (5.c), and most
importantly, links to knowledge sources (and types)
available for that process (5.d).
Additionally, the page includes a “contextual”
sub-area menu to facilitate navigation through the
information (5.e), which is always available while
the user stays in that particular sub-area of the
portal. Also, it includes a search engine (5.f) which
allows a search to be performed by simply
specifying a keyword on the required topic, and
optionally, the “places” in which the information
should be searched for.
The interface in Figure 5 represents the final
destination for users looking for a particular
knowledge source who, by following only three
links (area sub-area process), arrive at the
knowledge sources (either documents, systems or
people) required to perform their intended activities.
Finally, this design adheres to the organization’s
established standard guidelines for this kind of
applications.
5 EVALUATION OF THE
KNOWLEDGE PORTAL
We conducted a preliminary evaluation in one of the
production areas to determine the impact and
acceptance level of the users on the system, and to
provide support for the decision-making process
concerned with the continuation of the system’s
implementation in other areas of the organization.
The evaluation considered aspects concerning
perception of usefulness and ease of use (Davis,
1989). The evaluation consisted of 1) an induction
session, in which the system was presented to the
users, and its functionality demonstrated to them.
This included examples on how to search for and
retrieve knowledge sources by means of navigating
through areas, sub-areas and processes, as well as
through the search engine; and 2) the application of
a questionnaire containing 12 questions referring to
perception of usefulness (6) and ease of use (6).
Each evaluation session (induction and application
of the questionnaire) was done in about one hour.
The subjects of the study were 41 employees of
the “Formation” area for which the prototype was
developed, whose participation was voluntary. The
sample was divided into 4 groups according to the
natural operative processes (3 groups of ten people
and 1 of eleven). The application process of the
evaluation was completed in three days.
5.1 Analysis and Discussion of
Evaluation Results
The subjects had positive appreciations with regard
to the knowledge portal, as is reflected in their
answers in the questionnaire. Figure 6 shows the
answers to the questions about the perception of
usefulness of the tool. The users perceived that the
portal would allow them to increase their
productivity and to perform their tasks more easily
(82.93% “Agree” in both cases), although some of
them had doubts regarding the fact that this would
increase their productivity (24.39% “Have Doubts”).
Only one person (2.44%) “Disagreed” that the tool
would help him/her to complete his/her tasks faster.
Perception of Usefulness
78.05
82.93
75.61
80.49
82.93
87.8
19.51
17.07
24.39
19.51
17.07
12.2
0
0
0
0
0
2.44
0% 20% 40% 60% 80% 100%
Complete the task
faster
Increase task
performance
Inc rease
productivity
Improve efficiency
Ease the task
Is useful
Agree (%)
Have Doubts (%)
Disagree (%)
Figure 6: Perception of Usefulness.
Figure 7 shows the answers to the questions
about the perception of ease of use. As can be seen,
although most of the users perceived that it was easy
to learn to browse through the information (85.37%
“Agree”), some had doubts concerning the ease of
finding information (39.02% “Have Doubts”), and
APLYING THE KoFI METHODOLOGY TO IMPROVE KNOWLEDGE FLOWS IN A MANUFACTURING PROCESS
313
even more users had doubts concerning becoming
experts on the use of the tool (46.34% “Have
Doubts”). A possible explanation could be that a
little more than a third of the users had doubts
concerning the clarity of the presented interfaces, as
well as about the interaction flexibility that these
provide (34.15% in both cases).
Perception of Easy of USe
85.37
60.98
65.85
65.85
53.66
68.29
14.63
39.02
34.15
34.15
46.34
31.71
0
0
0
0
0
0
0% 20% 40% 60% 80% 100%
Learning to browse
Finding information
Clear user
interfaces
Flexible interaction
Becoming an
expert
Is easy to use
Agree (%)
Have Doubts (%)
Disagree (%)
Figure 7: Perception of Easy of Use.
In general, most of the users considered the
knowledge portal as a useful (87.80% “Agree” –
Figure 6) and easy to use tool (68.29% “Agree” –
Figure 7) for the accomplishment of their work.
6 CONCLUSIONS
In this paper we have illustrated the use of the KoFI
methodology to analyze a manufacturing process in
order to improve the flow of knowledge in it. The
KoFI methodology was initially developed to aid in
the design of KM approaches to improve software
processes. In this initial application domain, the
methodology was also useful to propose the design
of KM tools, and to structure and create knowledge
maps of the studied processes (Rodriguez-Elias et
al., 2007a, 2007b, 2007c).
In the present study the processes were much
more formally defined and documented than those of
the previous studies we made. Also, these processes
were already modeled with a common business
process modeling language, which has not explicit
representation of knowledge related issues. From the
models we made in the study, we were able to
identify knowledge requirements and sources, which
were not identified from the existent process models
of the company. This observation has gave us
insights to argue that independently of how well
defined and documented the process could be, if
there is not an explicit representation of the
knowledge and sources involved in the activities of
the process, important sources and knowledge
requirements could be lost or ignored during the
analysis.
Finally this study has provided us with the initial
evidence to argue that KoFI is open enough to aid in
the design and construction of different types of KM
approaches, and in different domains. However,
more case studies are required to continue evaluating
the benefits and limitations of KoFI in different
settings. This constitutes part of our ongoing and
future work.
ACKNOWLEDGEMENTS
This work is partially supported by UABC, project
0191 of the XI Convocatoria Interna de Proyectos,
and the MELISA project (grant PAC08-0142-3315)
financed by the Consejería de Educación y Ciencias
de la Junta de Comunidades de Castilla-La Mancha,
Spain. The authors also acknowledge the support
provided by FAMOSA-Ensenada.
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