Maricopa Community Colleges  ECE102   20016-99999 

Official Course Description: MCCCD Approval:  5-26-2009

ECE102  2009 Summer I – 2011 Summer II

L+L  2.0 Credit(s)  4.0 Period(s)  3.4 Load  Acad

Engineering Analysis Tools and Techniques

Learning culture of engineering, engineering use of computer tools, and computer modeling as applied to engineering analysis and design.

Prerequisites: Two years of high school algebra or MAT122 or departmental approval. Corequisites: MAT151 or MAT182 or MAT187.

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MCCCD Official Course Competencies:

 

ECE102  2009 Summer I – 2011 Summer II

Engineering Analysis Tools and Techniques

 

1.

Contrast cooperative and competitive learning environments. (I)

2.

Use basic social and communication skills in a group setting. (I)

3.

Demonstrate self-evaluation of progress through developmental assessment techniques, such as student learning journals, check-sheets, or portfolios. (I)

4.

Define functions and expressions using engineering/mathematical modeling software. (II)

5.

Plot two- and three-dimensional representations of data and functions using engineering/mathematical modeling software. (II)

6.

Fit functions to discrete sets of data using engineering/mathematical modeling software. (II)

7.

Solve linear and nonlinear equations using engineering/mathematical modeling software. (II)

8.

Solve systems of linear and nonlinear equations using engineering/mathematical modeling software. (II)

9.

Use programming structures to implement algorithms for computer models. (II)

10.

Develop and refine computer models using engineering/mathematical modeling software. (II, III)

11.

Describe the structure of a spreadsheet. (II)

12.

Use cell references to evaluate expressions in a spreadsheet. (II)

13.

Manipulate cells and ranges of cells to construct a spreadsheet. (II)

14.

Use conditional structures in the development of a spreadsheet. (II)

15.

Develop two- and three-dimensional graphs of data using a spreadsheet. (II)

16.

Use graph types to represent different types of data generated with a spreadsheet. (II)

17.

Import and export data to and from other computer applications using a spreadsheet. (II)

18.

Develop and refine computer models using a spreadsheet. (II, III)

19.

Explain what a computer model is and why engineers use computer models. (III)

20.

Contrast deterministic and stochastic computer models. (III)

21.

Define the term heuristic, and explain how heuristics are used in the modeling process. (III)

22.

Describe a sensitivity analysis, and explain how it relates to the modeling process. (III)

23.

Build and apply a deterministic computer model to the solution of a design-oriented problem. (III)

24.

Build and apply a stochastic computer model to the solution of a design-oriented problem. (III)

25.

Explain how probability is used in the development of stochastic computer models. (III)

26.

Interpret and analyze the results of computer models. (III)

27.

Explain how feasibility constraints are used in the modeling process. (III)

28.

Present the results of computer models. (III)

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MCCCD Official Course Outline:

 

ECE102  2009 Summer I – 2011 Summer II

Engineering Analysis Tools and Techniques

 

I. Learning Culture

A. Principles of cooperative learning

B. Cooperative learning environments vs. competitive learning environments

C. Social skills necessary to be successful in cooperative settings

D. Self-assessment techniques

II. Engineering Tools

A. Engineering/mathematical modeling software

1. General syntax and structure

2. Expression syntax

3. Function definition

4. Plotting of functions

5. Solution of a linear equation

6. Solution of a nonlinear equation

7. Solution of systems of linear and nonlinear equations

8. Plotting discrete data sets

9. Fitting linear and nonlinear functions to discrete data sets

10. Algorithmic structure (If, For, While, etc.)

11. Uses in computer modeling

B. Spreadsheet

1. General spreadsheet structure

2. Expressions and cell references

3. Manipulation of cells and ranges of cells

4. Conditional structures

5. Graphing sets of data

6. Importing and exporting data

7. Uses in computer modeling

III. Computer Modeling

A. Principles of the modeling process

B. Heuristics and how they are used in the modeling process

C. Interpretation of results and solutions from computer models

D. Stochastic and deterministic computer models

E. Organizing and representing data effectively

F. Optimization

G. Comparing algorithms and effective use of models

H. Probability and stochastic modeling

I. Knowledge models and their importance

J. Modeling examples and case studies

 

 

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