Resources

Modeling Scenario

1-018-LogisticPopModel-ModelingScenario

Author(s): Brian Winkel

SIMIODE - Systemic Initiative for Modeling Investigations and Opportunities with Differential Equations

Keywords: data analysis parameter estimation logistic Ciliate protozoa population limited growth paramecia Gause

311 total view(s), 37 download(s)

Abstract

Resource Image We offer artificial (toy) and historical data on limited growth population situations in the study of protozoa and lead students through several approaches to estimating parameters and determining the validity of the logistic model in these situations.

Citation

Researchers should cite this work as follows:

Article Context

Description

We offer modeling opportunities in which (1) an artificial data set is given and a model is required and (2) several data sets from an historical protozoan study in the Soviet Union in the 1930's form the basis of the modeling and data. Several different approaches for estimating parameters are offered and the results from these approaches will be compared with each other as well as against the data itself.

Article Files

  • nb 1-018-Mma-T-LogisticPopModel-TeacherVersion.nb(NB)
  • pdf 1-018-Mma-T-LogisticPopModel-TeacherVersion.pdf(PDF)
  • pdf 1-018-S-LogisticPopModel-StudentVersion.pdf(PDF)
  • tex 1-018-S-LogisticPopModel-StudentVersion.tex(TEX)
  • pdf 1-018-T-LogisticPopModel-TeacherVersion.pdf(PDF)
  • tex 1-018-T-LogisticPopModel-TeacherVersion.tex(TEX)
  • eps 1-18-ModelingTwoLogDataGenPlot.eps(EPS)
  • png LogisticPic.png(PNG)
  • cls SIMIODE.cls(CLS)
  • jpg SimiodeLogo.jpg(JPG)
  • License terms

Authors

Author(s): Brian Winkel

SIMIODE - Systemic Initiative for Modeling Investigations and Opportunities with Differential Equations

Comments

Comments

There are no comments on this resource.