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Front-End Cost Estimation by Selective Case-Based Reasoning for Building Construction Projects

DC Field Value Language
dc.contributor.advisor이현수-
dc.contributor.author안요섭-
dc.date.accessioned2017-07-13T06:34:37Z-
dc.date.available2017-07-13T06:34:37Z-
dc.date.issued2016-02-
dc.identifier.other000000133790-
dc.identifier.urihttps://hdl.handle.net/10371/118655-
dc.description학위논문 (박사)-- 서울대학교 대학원 : 건축학과, 2016. 2. 이현수.-
dc.description.abstractA successful building construction project can be achieved by estimating construction cost with high level of accuracy, which is particularly crucial in the front-end stage due to the influence on cost reduction and effective cost management. However, since there are problems regarding inaccurate budgeting for building construction projects, limited information availability, limited usage of unit price of actual construction cost, and lack of flexibility of cost estimation models for diverse building project, owners and cost estimators need to establish an effective cost estimation countermeasures.

To deal with the aforementioned problems, this dissertation aims to develop a front-end cost estimation methodology by selective case-based reasoning (CBR) for building construction projects for improving 1) cost estimation accuracy, 2) reliability of human trust on estimated costs, and 3) transparency of cost estimation process.

More specifically, this research has objectives of developing three modules that are 1) Module 1: Case-Base Development, 2) Module 2: CBR Method Selection, and 3) Module 3: CBR Cost Estimation. The Module 2 again comprises 1) Sub-Module 1: Normalization Method Selection (interval, Gaussian distribution-based, Z-score, logistic function-based, and ratio normalizations), 2) Sub-Module 2: Attribute Weighting Method Selection (Attribute Impact, entropy, feature counting, and genetic algorithms), and 3) Sub-Module 3: Similarity Measurement Method Selection (Mahalanobis distance-based, Euclidean distance-based, arithmetic summation-based, fractional function-based).

The proposed front-end cost estimation methodology by selective case-based reasoning was validated using leave-one-out cross validation method for multi-family housing (100 cases), military barrack (117 cases), and government office (52 cases) projects. Accuracy (under mean absolute error rate, mean squared deviation, and mean absolute deviation), stability (under standard deviation), and appropriateness (using kernel density estimation) of cost estimation results were examined. More importantly, the level of flexibility of the selective CBR model which provides the most accurate and stable normalization, attribute weighting, and similarity measurement method according to different types of building projects was tested.

The results of case studies for the validation of the proposed methodology are summarized as below: For the multi-family housing project, ratio normalization method, GA attribute weighting method, and arithmetic summation similarity measurement method-based CBR cost model was proposed to be the most accurate and stable. For the military barrack project, interval/ratio normalization method, GA attribute weighting method, and Euclidean distance similarity measurement method-based CBR cost model was suggested to be the most accurate and stable. For the government office project, ratio normalization method, AI attribute weighting method, and fractional function similarity measurement method-based CBR cost model was derived to be the most accurate and stable.

As contributions of the research, the suggested data preprocessed case-base development procedures are expected to improve transparency and reliability of cost estimate results. Also, this research performed validations of the improved estimate accuracy and explanatory power of the selective CBR models for different characteristics of case-bases. Consequently, accurate front-end cost estimations with enhanced flexibility responding to various building construction projects are expected.
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dc.description.tableofcontentsChapter 1. Introduction 1
1.1 Research Background 1
1.2 Problem Statement 3
1.3 Research Objectives, Methodology and Scope 8

Chapter 2. Issues in Front-End Cost Estimation 15
2.1 Overview of Cost Planning 16
2.1.1 Role of Front-End Cost Estimation in Cost Planning 16
2.1.2 Importance of Front-End Cost Estimation in Cost Planning 18
2.2 Requirements for Front-End Cost Estimation 21
2.2.1 Cost Estimate Accuracy 21
2.2.2 Reliability of Human Trust 23
2.2.3 Transparency of Estimation Process 25
2.3 Current Practice Reviews on Front-End Cost Estimation 27
2.3.1 Inaccurate Budgeting for Building Construction Projects 27
2.3.2 Limited Information Availability 30
2.3.3 Limited Usage of Unit Price of Actual Construction Cost 33
2.3.4 Lack of Flexibility for Diverse Building Projects 35
2.4 Literature Reviews on Front-End Cost Estimation 39
2.5 Summary 42

Chapter 3. Case-Based Reasoning Approach 45
3.1 Principles of CBR 46
3.1.1 Overview of CBR 46
3.1.2 CBR Problem-Solving Process 47
3.1.3 CBR and Rule-Based Reasoning 50
3.2 CBR Advantages, Limitations, and Issues 52
3.2.1 Advantages of CBR 52
3.2.2 Limitations of CBR 55
3.2.3 Challenging Issues in CBR 56
3.3 CBR Model Components 60
3.3.1 Normalization for Case Representation 60
3.3.2 Attribute Weighting for Case Indexing 65
3.3.3 Similarity Measurement for Case Retrieval 68
3.4 Summary 71

Chapter 4. CBR Model Design Experiment for Improving Cost Estimation 73
4.1 Normalization Method and Accuracy 73
4.1.1 Normalization Issue 73
4.1.2 Comparative Experimental Design 74
4.1.3 Results and Discussions 76
4.2 Attribute Weighting Method and Accuracy 80
4.2.1 Attribute Weighting Issue 80
4.2.2 Concept of Attribute Impact 82
4.2.3 Comparative Experimental Design 90
4.2.4 Results and Discussions 98
4.3 Similarity Measurement Method and Accuracy 102
4.3.1 Covariance Effect Issue 102
4.3.2 Comparative Experimental Design 103
4.3.3 Simulation Data Test 106
4.3.4 Applicability Test 112
4.4 Summary 116

Chapter 5. Cost Estimation Methodology by Selective Case-Based Reasoning 119
5.1 Overview of Methodology Development 119
5.2 Case-Base Development 124
5.3 CBR Method Selection and Cost Estimation 134
5.3.1 Sub-Module 1: Normalization Method Selection 134
5.3.2 Sub-Module 2: Attribute Weighting Method Selection 141
5.3.3 Sub-Module 3: Similarity Measurement Method Selection 147

Chapter 6. Case Studies 155
6.1 Validation Methods and Process 155
6.2 Multi-Family Housing 161
6.2.1 Case-base Profile 161
6.2.2 Results and Discussions 167
6.3 Military Barrack 180
6.3.1 Case-base Profile 180
6.3.2 Results and Discussions 183
6.4 Government Office 195
6.4.1 Case-base Profile 195
6.4.2 Results and Discussions 198
6.5 Summary 211
Chapter 7. Conclusions 219
7.1 Research Results 220
7.2 Research Contributions 223
7.3 Limitations and Future Research 225

Bibliography 227

Appendix 245

Abstract (Korean) 281
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dc.formatapplication/pdf-
dc.format.extent6466226 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjectFront-End Cost Estimation-
dc.subjectBuilding Construction Project-
dc.subjectSelective Case-Based Reasoning-
dc.subjectData Preprocessing-
dc.subjectNormalization-
dc.subjectAttribute Weighting-
dc.subjectSimilarity Measurement-
dc.subject.ddc690-
dc.titleFront-End Cost Estimation by Selective Case-Based Reasoning for Building Construction Projects-
dc.typeThesis-
dc.description.degreeDoctor-
dc.citation.pages282-
dc.contributor.affiliation공과대학 건축학과-
dc.date.awarded2016-02-
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