Transcript
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    100-2511-S-002-016-MY2

    2011 6 1 2013 7 31

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    101 3 15

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    Summary

    In recent years, it began to focus on cultivation of imagination in engineering education, In

    addition to the enhance of engineering expertise, combination of imagination and professional

    innovation capability is very important. In this project, through by Engineering Introduction

    curriculum so that students can learn to fully complete a series of imaginative training courses. It

    is the initial required courses to enter other engineering field (e.g.: engineering graphics,

    surveying, ...) with guidance and support functions. We hope that through Engineering

    Introduction courses, the effectiveness of the curriculum of imagination complete play to the

    course among the other fields of engineering. We have designed a complete set of cultivate

    teaching materials and lesson plans of imagination, supporting teachers and students to complete

    the course teaching and learning. Through by subprojects1 who the researchers are educational

    background related theoretical research of the imagination, subprojects2 developed imagination

    teaching materials, teaching methods and assessment tools that appropriate engineering education,

    and verify the mechanism of imagination as well as the cultivation of imagination, and the use of

    its effectiveness in the teaching of the future. In addition, imagination is extremely important key

    in the field of engineering and technological sciences. Research results of this project are also

    available for reference and application of the instructional design of other engineering courses,

    and serve as examples of the use of imagination for scientific and technological talent cultivation.

    Keywordsimagination, engineering education, conceptual design studio of civil engineering,

    imaginative teaching materials, imaginative assessment tool.

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    Pad Game

    (emotion)

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    Todd (1993)

    Prados(1998)

    Rugarcia

    (2000)

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    IDEAL MODEL

    IDEAL MODEL

    IDEAL MODEL

    1

    IDEAL Training Model

    1. Ieee= Initiation eee

    2. Dee= Development e

    3. A = Alternatives

    4. L = Links

    IDEAL MODEL

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    42 44

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    2060 IDEAL Training Model

    IDEAL

    IDEAL Training Model 2060

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    6 2060 ( - )

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    2060

    case study

    (Joern Utzon)

    7 IDEAL

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    case study

    2060

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    case study

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    2060

    case study

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    IDEAL Training Model

    Woods

    (2000)

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    100

    IDEAL MODEL

    A

    2 T

    (t = 3.82, p = 001t = 4.06, p = .000)

    ( p

    > .05)

    2

    t p

    15 38.33 11.24 .58 .569

    14 36.29 7.31

    15 35.15 9.61 3.82 .001**

    14 23.68 6.03

    15 40.36 12.29 4.06 .000***

    14 24.52 8.14

    15 50.60 12.43 1.87 .073

    14 42.50 10.79

    15 38.40 8.06 1.65 .111

    14 33.88 6.57

    **p < .01, ***p < .001

    3 (MANOVA)

    (Wilks = .54, F = 7.20; Wilks = .53, F = 7.38)

    ( p > .05)

    (F = 22.33, p = 000)

    (F = 9.64, p = 004F = 19.43, p = 000)

    ( p > .05)

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    3

    Wilks F Levene SD Univariate F p

    .79 2.20 .04 12.36 2.94 .02 .882

    12.19 3.00

    .39 12.89 4.17 .05 .821

    13.21 3.42

    6.20* 13.09 5.69 1.72 .201

    10.88 2.80

    .54 7.20** .87 10.30 3.35 1.54 .226

    8.93 2.50

    .00 11.50 2.46 1.65 .210

    10.36 2.33

    28.18*** 13.35 6.89 22.33*** .000

    4.39 1.72

    .53 7.38** 8.65** 11.18 4.74 9.64** .004

    6.79 2.43

    .02 14.67 4.13 3.71 .065

    11.81 3.84

    2.04 14.62 5.80 19.43*** .000

    5.93 4.72

    .87 1.30 .20 10.31 3.90 2.63 .117

    8.14 3.24

    .01 12.18 3.45 1.33 .260

    10.83 2.78

    1.26 13.20 3.33 3.42 .075

    11.14 2.58

    .82 1.87 .18 10.18 2.59 .00 .989

    10.19 2.46

    .04 14.98 3.18 .79 .382

    13.93 3.17

    1.46 13.24 4.55 5.37* .028

    9.76 3.42

    15 14 * p < .05, ** p < .01, *** p < .001

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    4 T (t

    = 3.58, p = 001) (t = 3.96, p = 000) (t = 3.51, p = 001)

    (t = 4.82, p = 000) (t = 2.69, p = 012) (t = 3.78, p = 001)

    (t = 3.18, p = 003)

    ( p > .05)

    4

    t P

    2.48 0.52 3.58 .001**

    2.79 0.45

    2.69 0.43 3.96 .000***

    3.00 0.40

    2.72 0.60 3.51 .001**

    3.09 0.50

    3.01 0.48 1.99 .055

    3.19 0.45

    2.31 0.70 0.51 .612

    2.38 0.78

    2.59 0.54 1.23 .227

    2.76 0.70

    2.70 0.50 4.82 .000***

    3.10 0.46

    2.81 0.62 2.69 .012*

    3.03 0.64

    2.67 0.60 3.78 .001**

    3.06 0.54

    2.89 0.50 3.18 .003**

    3.18 0.40

    3.05 0.51 0.76 .452

    3.13 0.50

    N=31, * p < .05, **p < .01, ***p < .001

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    5 (MANCOVA)

    (Wilks = .81, F = 4.31, p = 009)

    ( p > .05) (F = 8.14, p = 006)

    ( F = 9.79, p = 003)

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    Wilks F

    Univariate F P

    .89 2.29 2.79 2.79 2.67 .108

    2.59 2.60

    3.00 2.99 1.57 .215

    2.84 2.85

    3.09 3.07 6.03* .017

    2.74 2.76

    .95 .88 3.19 3.15 1.50 .226

    2.93 2.98

    2.38 2.40 1.78 .188

    2.16 2.14

    2.76 2.70 1.41 .240

    2.43 2.50

    .81 4.31** 3.10 3.07 8.14** .006

    2.70 2.73

    3.03 3.02 .83 .367

    2.88 2.89

    3.06 3.05 9.79** .003

    2.63 2.64

    .94 1.81 3.18 3.16 2.94 .092

    2.93 2.96

    3.13 3.12 .24 .625

    3.04 3.05

    31 30* p < .05, **p < .01

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    IDEAL

    MODEL

    101

    100

    6

    80 91%

    8 9%

    7""

    1 - 0 0%

    2 0 0%

    3 2 2%

    4 29 33%

    5 - 57 65%

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    8""

    1 - 6 7%

    2 17 19

    3 27 31%

    4 18 20%

    5 - 20 23%

    101

    9101

    A B C

    IDEAL MODEL

    IDEAL MODEL

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    (1)

    2012

    IDEAL Training Model

    (2)

    (3)

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    IDEAL

    IDEAL Training Model

    Pad Game

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    web2.0 web3.0

    Prados, J.W. (1998). Engineering Education in the United States: Past, Present, and Future, In:

    Proceedings of ICEE98 Conference, 17 20 August 1998, Rio de Janeiro. Paper no.255.

    Rugarcia, R.M., Felder, D.R. &Woods, J.E. (2000). The future of engineering education: I. A

    vision for a new century, Chemistry Engineering Education,34(1),2000. 1625

    Todd, R. H., S. P. Magleby, C. D. Sorensen, B. R. Swan and D. K Anthony (1995). A survey of

    capstone engineering courses in North America. Journal of Engineering Education, vol. 84, no. 2,

    1995, 165-174.

    IDEAL

    https://sites.google.com/a/caece.net/ideal/

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    IDEAL

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