simulation model
(noun)
a model that utilizes mathematical algorithms to predict complex responses in ecosystem dynamics
Examples of simulation model in the following topics:
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Modeling Ecosystem Dynamics
- Conceptual models describe ecosystem structure, while analytical and simulation models use algorithms to predict ecosystem dynamics.
- In these cases, scientists often use analytical or simulation models.
- Like analytical models, simulation models use complex algorithms to predict ecosystem dynamics.
- However, sophisticated computer programs have enabled simulation models to predict responses in complex ecosystems.
- Compare and contrast conceptual, analytical, and simulation models of ecosystem dynamics
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Studying Ecosystem Dynamics
- Many different models are used to study ecosystem dynamics, including holistic, experimental, conceptual, analytical, and simulation models.
- Three basic types of ecosystem modeling are routinely used in research and ecosystem management: conceptual models, analytical models, and simulation models.
- Analytical and simulation models are mathematical methods of describing ecosystems that are capable of predicting the effects of potential environmental changes without direct experimentation, although with limitations in accuracy.
- A simulation model is created using complex computer algorithms to holistically model ecosystems and to predict the effects of environmental disturbances on ecosystem structure and dynamics.
- Differentiate between conceptual, analytical, and simulation models of ecosystem dynamics, and mesocosm and microcosm research studies
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Chance Models
- Stochastic modeling builds volatility and variability (randomness) into a simulation and, therefore, provides a better representation of real life from more angles.
- A stochastic model would be able to assess this latter quantity with simulations.
- Stochastic models can be simulated to assess the percentiles of the aggregated distributions.
- In a simulated stochastic model, the simulated losses can be made to "pass through" the layer and the resulting losses are assessed appropriately.
- Support the idea that stochastic modeling provides a better representation of real life by building randomness into a simulation.
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Checking for independence
- We simulated these differences assuming that the independence model was true, and under this condition, we expect the difference to be zero with some random fluctuation.
- H0: Independence model.
- HA: Alternative model.
- Based on the simulations, we have two options. (1) We conclude that the study results do not provide strong evidence against the independence model.
- A stacked dot plot of differences from 100 simulations produced under the independence model, H0, where gender sim and decision are independent.
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Instructional Models and Applications
- Promoting student-ownership, using a particular medium to focus attention, telling stories, simulating and recreating events, and utilizing resources and data on the Internet are among them.
- Three instructional models that implement problem-based inquiry will be discussed next with particular attention to instructional strategies and practical examples.
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The Carbon Cycle
- Plumes of carbon dioxide in the simulation swirl and shift as winds disperse the greenhouse gas away from its sources.
- The carbon dioxide visualization was produced by a computer model called GEOS-5, created by scientists at NASA Goddard Space Flight Center's Global Modeling and Assimilation Office.
- The visualization is a product of a simulation called a "Nature Run."
- The model is then left to run on its own and simulate the natural behavior of the Earth's atmosphere.
- This Nature Run simulates January 2006 through December 2006.
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Small sample hypothesis testing for a proportion exercises
- (c) Based on large sample theory, we modeled ˆ p using the normal distribution.
- Describe how to perform such a simulation and, once you had results, how to estimate the p-value.
- (b) Based on large sample theory, we modeled ˆ p using the normal distribution.
- Describe a setup for a simulation that would be appropriate in this situation and how the p-value can be calculated using the simulation results.
- The p-value will be two times the proportion of simulations where ≤ 0.57.
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Generating the null distribution and p-value by simulation
- Each client can be simulated using a deck of cards.
- There were 5 simulated cases with a complication and 57 simulated cases without a complication, i.e. = 5/62 = 0.081.
- One simulation isn't enough to get a sense of the null distribution; many simulation studies are needed.
- The normal model poorly approximates the null distribution for when the success-failure condition is not satisfied.
- However, we can generate an exact null distribution and p-value using the binomial model from Section 3.4.
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Conclusion: Implications for Teaching and Learning
- One is for the students to learn about history following a conceptual change model.
- Simulations can be used to present exposing or discrepant events to individual learners or in a group setting.
- MERLOT (Multimedia Educational Resource for Learning and Online Teaching), located at http://www.merlot.org, contains simulations for the domains of business, physics, genetics, and medical education among others.
- Most of the simulations are designed for adult learners, but a few are targeted for K-12 education.
- Interactive Physics (http://www.inspiration.com/) and Geometer's Sketchpad (http://www.keypress.com/sketchpad/)are two popular simulation-construction tools.
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Steps to Integrating Experiential Learning in the Classroom
- Simulations and gaming within instruction also involve direct experience and thus are valid examples of experiential learning.
- In addition, it has been found that simulations which shorten the debriefing period at the end of the game session can diminish their own effectiveness.
- Thus, it is apparent that the reflective observation and abstract conceptualization portions of simulations and games are vital to learning, which has also been established by the Experiential Learning Theory (Ulrich, 1997).
- Specifically, there has been an effort to utilize this model to increase the effectiveness of Continuing Professional Development (CPD) e-learning courses.