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Summary Engineering and design science methodologies (2016TEWMHB)

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This summary includes the slides, lecture notes, video notes, and papers, supplemented with the book. This summary is based on the courses taught in the first semester of the academic year.

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Summarized whole book?
No
Which chapters are summarized?
Chapters 8-15
Uploaded on
December 20, 2025
Number of pages
69
Written in
2025/2026
Type
Summary

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ENGINEERING AND DESIGN SCIENCE
METHODOLOGIES
INHOUD

Introduction..................................................................................................................................................................... 2
A1 – On Science and Paradigms ....................................................................................................................................... 3
A2 – The Science of Engineering ....................................................................................................................................... 8
B1 – The Design of Artifacts ............................................................................................................................................ 14
Technique 1: Abstraction: Modeling ........................................................................................................................... 15
Technique 2: Logic: Optimization ............................................................................................................................... 17
Technique 3: Realization: Mapping............................................................................................................................. 18
Technique 4: Validation: Statistics ............................................................................................................................. 21
B2 – Architecting the Artificial ......................................................................................................................................... 23
C1 – Systems and Control Theory ................................................................................................................................... 27
C2 – Combinatorics and Entropy .................................................................................................................................... 37
D1 – Hevner: Design Science in Information Systems Research ...................................................................................... 40
D2 – Van Aken: Mgt Research based on Paradigm Design Sciences ................................................................................. 41
E1 – Guest lecture: Biometics as a Design Science Paradigm to build complex adaptive systems .................................... 42
E2.1 – NST on Modular Architectures: Artifact Production as Part of Modular Design ....................................................... 47
E2.2 – NST on Modular Architectures: Design Directives Grouneded in Combinatorics .................................................... 53
E2.3 – NST on Modular Architecture: Cross-Cutting Concern Integration ARchtectures ................................................... 59
E2.4 – NST on Modular Architectures: Integrated Elements and the Integration Design Matrix.......................................... 64




1

,INTRODUCTION
ON PARTICIPANTS, CONTENTS AND EXPECTATIONS
• About me (Prof. dr. ir. Herwig Mannaert)
o Electronics engineer, PhD in computer vision
o Teaching on engineering and software architectures, Normalized Systems Theory
o Entrepreneurial innovator
• On the Course Settings
o Course/Lecturer biases
▪ Lecturer is an engineer
• Believes in importance of engineering sciences
▪ Lecturer feels uneasy about some trends
• Overemphasis on statistics in science
• Trusting “experts” without questioning
o Master course, i.e., opinions and discussions allowed / desired
• On the Course Outcomes
o To obtain a broader perspective on science and its methodologies, enabling you to consider and apply
design science techniques
▪ in traditional technological environments
▪ in other settings where it might be appropriate
o This outcome requires some knowledge of
▪ scientific methodologies
▪ design science techniques
▪ various perspectives and approaches
• On the Course Contents
A – Some Key Essentials A1 – On Science and Paradigms
A2 – The Science of Engineering
B – Basic Design Techniques B1 – Designing the Artificial
B2 – Architecting the Artificial
C – Engineering Foundations C1 – Systems and Control Theory
C2 – Thermodynamics and Entropy
D – Some More Perspectives D1 – Design Science in Information Systems – Alan Hevner
D2 – Management and Design Sciences – Joan Van Aken
E – Some Interesting Approaches E1 – Biomimetics as a Design Strategy – Herbert Peremans
E2 – NST on Modular Architectures – Herwig Mannaert
• On the Course Materials
o Blackboard: PowerPoints
o Blackboard: Blog/Video Hyperlinks
o Parts of book: Mannaert, H., Verelst, J., De Bruyn, P., Normalized Systems Theory, Koppa, 2020.
▪ Chapters 8-12, 12-15 (, 16-19)
• On the Course Exams
o Written
o Some predictable open questions
o Well-structured answers



2

,A1 – ON SCIENCE AND PARADIGMS
ON THE BASICS OF SCIENCE AND THE SCIENTIFIC METHOD, AND THE PITFALLS OF SELF -FULFILLING
MODELS AND RUSTED PARADIGMS
“Trust is the antithesis of the scientific method” - Tyler S. Farley

 You should critically validate things // questioning the existence of science, experts, …
The Scientific Method (= the method how you do science, the empirical method)
1. Observe a phenomenon
2. Find patterns in observations
3. Develop fitting descriptions and/or equations: these will be called models or hypotheses
o Models or hypotheses that needs to be validated
4. Conduct experiments to verify to what extent the models are able to predict future observations
o Crucial! Not only explain the past, also predict the future
o You can create a polynomial curve that goes perfectly through 5-10-20-… points → you can always fit a
model perfectly to existing data
o A model becomes valid when it starts to predict future observations
5. If the model/hypothesis predicts multiple observations successfully, it will become a law or scientific theory
 Characteristics of Models
o Are a description, a simplification of reality
▪ Do not detail every aspect
o Fundamental laws (of physics) describe, do not explain reality
▪ For example gravitation, some things are so ‘normal’ you don’t need an explanation
▪ Does not explain how
o Appeal preferably to intuition
o As simple as possible, i.e., Ockham’s razor
▪ The lowest possible set of elements
o Need to remain stable with respect to new data
▪ You can always make the model more complex to explain previous data, but in order to be a valid
hypothetical model, you need to be able to predict future data
o Are in general valid within certain boundaries
o Should be able to predict future observations, both through extrapolation and interpolation
 Observation and Modeling
o Fit model to data, but not overfitting




o Overfitting: if you make your model complex enough, you can always explain the past, fit the model to
past data, but you need to make it as simple as possible → higher chances of predicting future points




3

,  Modeling
o Models are a simplified representation of reality, E.g., price car ~ weight car
o Models are never a perfect representation of reality
▪ Having exceptions and deviations
▪ Valid within certain boundaries
• E.g. truck curve: different curve (more expensive & steeper)
 Laws of Nature
o Are fundamental models
▪ They describe and do not explain
▪ Fundamental: they cannot be derived from other models
▪ They do not explain how the earth is attracting you through gravitation
o Very thoroughly tested
▪ Can be (partially) falsified, never fully verified
▪ They should be tested as much as possible, people need to try to falsify it as much as possible
▪ Not falsified, it can remain a law of nature
o Are only valid within certain boundaries
▪ Newton’s Gravitation Law  → General Relativity Theory
o Can be superseded by ‘better’ models that
▪ provide more accurate predictions
▪ remain valid in a broader range or scope
o Are essentially differential equations
▪ Relationships between various parameters of natures are always valid at a certain point of time
o Some Examples
▪ Newton’s Law → F = m.a
• Gravitation Law: two objects attract each other proportional with the masses of both
objects, inversional proportional to the square of the distance
▪ Electricity
• Ohm’s Law
• Coulomb’s Law
▪ Chemistry
• Mass conversation
• Energy conservation
 Philosophy of Science
o Scientific explanation and prediction ~ empirical verification
▪ Verification of predictions: actual test in predicting the future
o Problem of induction  → engineering
▪ It’s not because you’ve only seen white swans in your life, that there are no black swans
▪ At the same time; engineering heavily relies on induction
▪ Maybe not 100% scientific
o Ockham’s razor: simplest solution
▪ Simples solution is the best of other things being equal
o Theory and observation ~ Thomas Kuhn: paradigms
o Demarcation problem ~ Karl Popper: falsifiability
▪ It’s only science if you do falsified



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