A model is a human construct that simplifies and represents a real-world system to help understand it. A model has an input, a processor, and an output. Key aspects of developing a model include making simplifying assumptions, identifying boundary or initial conditions, and understanding its applicability. There are different types of models, including conceptual models, interactive lecture demonstrations, mathematical/statistical models, and teaching with visualizations. Models are useful for understanding systems, but all models are imperfect representations of reality.
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What is a model
1. What is a Model?
A model can come in many shapes, sizes, and styles. It is important to emphasize that a
model is not the real world but merely a human construct to help us better understand real
world systems. In general all models have an information input, an information processor,
and an output of expected results. Modeling Methodology for Physics Teachers (more info)
(1998) provides an outline of generic model structure that is useful for geoscience instruction.
In "Modeling the Environment" Andrew Ford gives a philosophical discussion of what
models are and why they are useful. The first few paragraphs of Chapter 1 of Ford's book are
worth a look.
Key features in common with the development of any model is that:
simplifying assumptions must be made;
boundary conditions or initial conditions must be identified;
the range of applicability of the model should be understood.
Model Types:
Below we identify 4 types of models for discussion and reference. Follow the link to a model
type for an introduction to its use in the classroom and example activities. In practice a well
developed model of a real-world system will likely contain aspects of each individual
model type described here.
Conceptual Models are qualitative models that help highlight important connections in real
world systems and processes. They are used as a first step in the development of more
complex models.
2. Interactive Lecture Demonstrations Interactive demonstrations are physical models of
systems that can be easily observed and manipulated and which have characteristics similar
to key features of more complex systems in the real world. These models can help bridge the
gap between conceptual models and models of more complex real world systems.
Mathematical and Statistical Models involve solving relevant equation(s) of a system or
characterizing a system based upon its statisical parameters such as mean, mode, variance or
regression coefficients. Mathematical models include Analytical models and Numerical
Models. Statistical models are useful in helping identify patterns and underlying relationships
between data sets.
Teaching with Visualizations By this we mean anything that can help one visualize how a
system works. A visualization model can be a direct link between data and some graphic or
image output or can be linked in series with some other type of model so to convert its output
into a visually useful format. Examples include 1-, 2-, and 3-D graphics packages, map
overlays, animations, image manipulation and image analysis.
Several additional quotes relevant to using models and developing theories include:
"All models are wrong but some are useful." George E.P. Box
3. "Make your theory as simple as possible, but no simpler." A. Einstein
"For every complex question there is a simple and wrong solution." A. Einstein.
References
Ford, Andrew, 2009 (2nd edition): Modeling the Environment . Island Press,
Washington D.C.