Principles of Systems Thinking
This article forms part of the Systems Thinking Knowledge Area. It identifies systems principles as part of the basic ideas of Systems Thinking.
Some additional concepts more directly associated with Engineered Systems are described and a summary of system principles associated with the concepts aready defiend, is provided. A number of additional “laws” and heuristics are also discussed.
Systems Principles, Laws, and Heuristics
A principle is a general rule of conduct or behavior (Lawson and Martin 2008), or a basic generalization that is accepted as true and that can be used as a basis for reasoning or conduct (WordWeb 2012c). Thus, systems principles can be used as a basis for reasoning about systems (systems thinking) or associated conduct (systems approaches).
In the What is Systems Thinking? article a “systems thinking paradox” is discussed. How can we take a holistic system view while still being able to focus on changing or creating systems? The system principles described in this article are primarily focused on giving guidance on how to deal with this paradox in the application of systems thinking as part of a systems approach.
Separation of Concerns
A Systems Approach is focused on a system of interest (soi) defined as an open system that interacts with and adapts to other systems in an environment; contains open, interacting subsystems, and forms part of some wider or greater whole. The systems approach then considers an SOI to be open and dynamic, and to be comprised of open, dynamic, interacting subsystems. It also understands the SOI to exist in an environment; to interact with, and adapt to, other systems in that environment; and to form part of a larger, wider, or containing system, (Hitchins 2009).
synthesis brings parts together to act and interact as a unified whole. A system evolves, or is created to achieve a purpose, by the combination of system elements such that they cooperate, coordinate, contribute, and behave synergistically, enabled by their relationships, interconnections and interactions, (Hitchins 2008: 120).
abstraction is the process of taking away characteristics from something in order to reduce it to a set of essential characteristics (SearchCIO 2012). In attempting to understand complex situations it is easier to focus on bounded problems, whose solutions “still remaining agnostic to the greater problem.” (Erl 2012). This sounds reductionist, but is applied effectively in natural systems and engineered systems. The key is that one of the selected problems needs to be the concerns of the system as a whole. This idea of a balance between using abstraction to focus on specific concerns while ensuring we continue to consider the whole is at the centre of Systems Approaches.
A view is a subset of information observed of one or more entities, such as systems. The physical or conceptual point from which a view is observed is the viewpoint , which can be motivated by one or more observer concerns. Different views of the same target must be both separated, to reflects separation of concerns, and integrated such that all views of a given target are consistent and form a coherent whole (Hybertson 2009). Sample views of a system: internal (what does it consist of?); external (what are its properties and behavior as a whole?); static (parts, structures); dynamic (interactions).
encapsulation , encloses system elements and their interactions from the external environment is discussed in Concepts of Systems Thinking. Encapsulation is associated with modularity the degree to which a system's components may be separated and recombined (Griswold 1995). Modularity applies to systems in many domains, natural, social and engineered. In engineering, encapsulation is the isolation of a system function within a module and providing precise specifications for the module (IEEE Std. 610.12-1990).
dualism is a characteristic of systems in which they exhibit seemingly contradictory characteristics that are important for the system (Hybertson 2009). The yin yang concept in Chinese philosophy emphasizes the interaction between dual elements and their harmonization, ensuring a constant dynamic balance often through a cyclic dominance of one element and then the other, such as day and night (IEP 2006).
From a systems perspective the interaction, harmonization, and balance between system properties is important. (Hybertson 2009) defines Leverage as the duality between:
- Power the extent to which a system solves a specific problem
- Generality the extent to which a system solves a whole class of problems.
While some systems or elements may be optimised for one extreme of such dualities a dynamic balance is needed to be effective in solving complex problems.
Summary of Systems Principles
A set of systems principles is given in Table 1 below.
The names points to concepts underlying the principle (see article on Concepts of Systems Thinking). Following the table, two additional sets of items related to systems principles are noted and briefly discussed: Prerequisite laws for design science, and heuristics and pragmatic principles.
Name | Statement of Principle |
---|---|
regularity | Systems science should find and capture regularities in systems, because those regularities promote systems understanding and facilitate systems practice. (Bertalanffy 1968) |
holism | A system should be considered as a single entity, a whole, not just as a set of parts. (Ackoff 1979; Klir 2001) |
Interaction | The properties, capabilities, and behavior of a system derive from its parts, from interactions between those parts, and from interactions with other systems. (Hitchins 2009 p. 60) |
Relations | A system is characterized by its relations: the interconnections between the elements. Feedback is a type of relation. The set of relations defines the network of the system. (Odum 1994) |
boundary | A boundary or membrane separates the system from the external world. It serves to concentrate interactions inside the system while allowing exchange with external systems. (Hoagland, Dodson, and Mauck 2001) |
synthesis | Systems can be created by choosing (conceiving, designing, selecting) the right parts, bringing them together to interact in the right way, and in orchestrating those interactions to create requisite properties of the whole, such that it performs with optimum efectiveness in its operational environment, so solving the problem that prompted its creation” (Hitchins 2008: 120). |
Separation of Concerns | A larger problem is more effectively solved when decomposed into a set of smaller problems or concerns. (Erl 2012; Greer 2008) |
abstraction | A focus on essential characteristics is important in problem solving because it allows problem solvers to ignore the nonessential, thus simplifying the problem. (Sci-Tech Encyclopedia 2009; SearchCIO 2012; Pearce 2012) |
modularity | Unrelated parts of the system should be separated, and related parts of the system should be grouped together. (Griswold 1995; Wikipedia 2012a) |
Encapsulation | Hide internal parts and their interactions from the external environment. (Klerer 1993; IEEE 1990) |
view | Multiple views, each based on a system aspect or concern, are essential to understand a complex system or problem situation. (Edson 2008; Hybertson 2009) |
Similarity/ Difference | Both the similarities and differences in systems should be recognized and accepted for what they are. (Bertalanffy 1975 p. 75; Hybertson 2009). Avoid forcing one size fits all, and avoid treating everything as entirely unique. |
dualism | Recognize dualities and consider how they are, or can be, harmonized in the context of a larger whole (Hybertson 2009) |
leverage | Achieve maximum leverage (Hybertson 2009). Because of the power versus generality tradeoff, leverage can be achieved by a complete solution (power) for a narrow class of problems, or by a partial solution for a broad class of problems (generality. |
Change | Change is necessary for growth and adaptation, and should be accepted and planned for as part of the natural order of things, rather than something to be ignored, avoided, or prohibited. (Bertalanffy 1968; Hybertson 2009) |
Stability/ Change | Things change at different rates, and entities or concepts at the stable end of the spectrum can and should be used to provide a guiding context for rapidly changing entities at the volatile end of the spectrum (Hybertson 2009). The study of complex adaptive systems can give guidance to system behavior and design in changing environments (Holland 1992). |
Equifinality | In open systems, the same final state may be reached from different initial conditions and in different ways. (Bertalanffy 1968). This principle can be exploited especially in systems of purposeful agents. |
Parsimony | One should choose the simplest explanation of a phenomenon, the one that requires the fewest assumptions. (Cybernetics 2012). This applies not only to choosing a design, but also operations and requirements. |
Layer, hierarchy | The evolution of complex systems is facilitated by their hierarchical structure (including stable intermediate forms), and the understanding of complex systems is facilitated by their hierarchical description. (Pattee 1973; Bertalanffy 1968; Simon 1996) |
network | The network is a fundamental topology for systems that forms the basis of togetherness, connection, and dynamic interaction of parts that yield the behavior of complex systems (Lawson 2010; Martin et al. 2004; Sillitto 2010) |
The principles are not independent. They have synergies and tradeoffs. Lipson (2007), for example, argued that “Scalability of open-ended evolutionary processes depends on their ability to exploit functional modularity, structural regularity and hierarchy.” He proposed a formal model for examining the properties, dependencies, and tradeoffs among these principles. Edson (2008) related many of the above principles in a structure called the conceptagon, which he modified from (Boardman and Sauser 2008), and also provided guidance on how to apply the principles. Not all principles apply to every system or engineering decision. Judgment, experience, and heuristics (see below) help understand which principles apply in a given situation.
Several principles illustrate the relation of view with the dualism and yin yang principle. An important example is the Holism and Separation of Concerns pair of principles. These look contradictory, but they are dual ways of dealing with complexity. Holism deals with complexity by focusing on the whole system, and Separation of Concerns deals with complexity by dividing a problem or system into smaller more manageable elements that focus on particular concerns. They are reconciled by the fact that both views are needed to understand systems and to engineer systems; focusing on only one or the other does not give sufficient understanding or a good overall solution. This dualism is closely related to the Systems Thinking Paradox described in What is Systems Thinking?. Rosen (1979) discussed “false dualisms” of systems paradigms that are considered incompatible but are in fact different aspects or views of reality. In the present context, they are thus reconcilable through yin yang harmonization. Edson (2008) emphasized viewpoints as an essential principle of systems thinking and specifically as a way to understand opposing concepts.
Guidance on how to apply many of these principles to engineered systems is given in the article Synthesizing Possible Solutions as well as in System Definition and other knowledge areas in Part 3 of this SEBoK.
Prerequisite Laws of Design Science
John Warfield (1994) identified a set of laws of generic design science that are related to systems principles. Three of these laws are stated here.
- ‘’Law of Requisite Variety’’: A design situation embodies a variety that must be matched by the specifications. The variety includes the diversity of stakeholders. This law is an application to design science of the Ashby (1956) Law of Requisite Variety, which was defined in the context of cybernetics and states that to successfully regulate a system, the variety of the regulator must be at least as large as the variety of the regulated system.
- ‘’Law of Requisite Parsimony’’: Information must be organized and presented in a way that prevents human information overload. This law derives from Miller’s (1956) findings on the limits of human information processing capacity. Warfield’s structured dialog method is one possible way to help achieve the requisite parsimony.
- ‘’Law of Gradation’’: Any conceptual body of knowledge can be graded in stages or varying degrees of complexity and scale, ranging from simplest to most comprehensive, and the degree of knowledge applied to any design situation should match the complexity and scale of the situation. A corollary, called the Law of Diminishing Returns, is that a body of knowledge should be applied to a design situation to the stage at which the point of diminishing returns is reached.
Heuristics and Pragmatic Principles
A heuristic is a common sense rule intended to increase the probability of solving some problem (WordWeb 2012b). In the present context it may be regarded as an informal or pragmatic principle. Maier and Rechtin (2000) identified an extensive set of heuristics that are related to systems principles. A few of these heuristics are stated here, and each is related to principles described above.
- Relationships among the elements are what give systems their added value. This is related to the ‘’Interaction’’ principle.
- Efficiency is inversely proportional to universality. This is related to the ‘’Leverage’’ principle.
- The first line of defense against complexity is simplicity of design. This is related to the ‘’Parsimony’’ principle.
- In order to understand anything, you must not try to understand everything (attributed to Aristotle). This is related to the ‘’Abstraction’’ principle.
An INCOSE working group (INCOSE 1993) defined a set of “pragmatic principles” for Systems Engineering. They are essentially best practice heuristics for engineering a system. A large number of heuristics are given. Three examples:
- Know the problem, the customer, and the consumer
- Identify and assess alternatives so as to converge on a solution
- Maintain the integrity of the system
Hitchins defines a similar set of principles which also consider some of the issues of hierarchy and complexity of particular relevance to a system approach (Hitchins 2009).
References
Works Cited
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Primary References
Bertalanffy, L. von. 1968. General System Theory: Foundations, Development, Applications. Revised ed. New York, NY: Braziller.
Hybertson, D. 2009. Model-Oriented Systems Engineering Science: A Unifying Framework for Traditional and Complex Systems. Auerbach/CRC Press, Boca Raton, FL.
Klir, G. 2001. Facets of Systems Science, 2nd ed. New York: Kluwer Academic/Plenum Publishers.
Additional References
Francois, F. (ed.). 2004. International Encyclopedia of Systems and Cybernetics, 2nd ed. K. G. Saur.
Meyers, R. (ed.). 2009. Encyclopedia of Complexity and Systems Science (10 vol. set). Springer.
Midgley, G. (ed.). 2003. Systems Thinking (4 Vol. Set). Sage Publications Ltd.
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