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Development and Applications of Hazardous Gas Dispersion Surrogate Model Using Machine Learning : 기계 학습을 활용한 유해 가스 확산 대리 모델의 개발과 응용

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dc.contributor.advisor이원보-
dc.contributor.author전경우-
dc.date.accessioned2018-11-12T00:55:24Z-
dc.date.available2018-11-12T00:55:24Z-
dc.date.issued2018-08-
dc.identifier.other000000152483-
dc.identifier.urihttps://hdl.handle.net/10371/143063-
dc.description학위논문 (박사)-- 서울대학교 대학원 : 공과대학 화학생물공학부, 2018. 8. 이원보.-
dc.description.abstractThe method of predicting hazardous gas dispersion using Computational Fluid Dynamics (CFD) is advantageous in that it can be utilized in various ways due to its high accuracy. However, it has structural complexity and requires a lot of computing resources, which hinders its utilization.

First, TOXIM, which is a toxic gas dispersion simulator that can be easily used by anyone, has been developed solving the structural complexity of computational fluid dynamics. The stability of the simulator is confirmed by carrying out case study under various conditions using TOXIM. In addition, TOXIM's methodology of simulating gas leak accident that occurred in Gumi prove similarity between actual and simulation results.

Next, a surrogate model is developed to reduce computation time of computational fluid dynamics and utilize it in real time. Compressed computational fluid dynamics calculation results are obtained by using various deep learning methods, and a surrogate model is created using neural network based functions. Among them, VAEDC-DNN shows the highest accuracy. It is confirmed that the computation time is reduced to several seconds in the surrogate model compared to several hours in the actual computational fluid dynamics. This demonstrates that computational fluid dynamics can be used in real time in a gas leak accident.

Finally, the CFD model is applied to the gas leak detector placement problem. A surrogate model is used to generate various gas leak accident scenarios and the position of the detector is optimized by applying the Mixed Integer Linear Programming using the generated samples. Optimization results showed better performance when using surrogate model.
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dc.description.tableofcontentsAbstract 1

Contents . 3

List of Figures. 6

List of Tables 8

CHAPTER 1 : Introduction. 9

1.1. Research motivation 9

1.2. Mathematical formulation of CFD . 10

1.3. Outline of the thesis. 12

1.4. Associated publications . 12

Chapter 2: Development and Applications of Hazardous Gas Dispersion Simulator: TOXIM 13

2.1. Chapter outline . 13

2.2. Background 14

2.3. Methodology 15

2.4. Development result. 19

2.5. Toxic gas dispersion case study using TOXIM 22

2.6. Validation . 27

Chapter 3: Toxic gas dispersion modeling for real-time analysis using variational autoencoder with convolutional neural networks 30

3.1. Chapter outline . 30

3.2. Background 32

3.3. Toxic gas dispersion CFD model. 38

3.3.1. Model description 39

3.3.2. Lethality calculation. 43

3.3.3. Numerical setup . 44

3.3.4. Data sampling and preprocessing 45

3.4. VAEDC-DNN surrogate model. 48

3.4.1. Model architecture . 50

3.4.2. Latent space and variational lower bound estimator 54

3.4.3. Performance evaluation and numerical setting 56

3.5. Result and discussion. 59

3.6. Chapter Conclusions. 72

Chapter 4: Development of surrogate model using CFD and artificial neural networks to optimize gas detector layout. 75

4.1. Chapter outline . 75

4.2. Introduction 76

4.2.1. Detector allocation problem . 76

4.2.2. Surrogate model with CFD. 79

4.3. Method. 80

4.3.1. CFD Setting . 82

4.3.2. ANN Regression 87

4.3.3. Detector Allocation Optimization . 90

4.4. Result. 93

4.4.1. ANN results . 93

4.4.2. Sensor Allocation Result 96

4.4.3. Discussion . 98

4.5. Chapter Conclusion 103

Chapter 5: Concluding remarks. 104

5.1 Conclusion 104

5.1 Future works . 105

Nomenclature . 106

Literature cited 109

Abstract in Korean (요 약). 119
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dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subject.ddc660.6-
dc.titleDevelopment and Applications of Hazardous Gas Dispersion Surrogate Model Using Machine Learning-
dc.title.alternative기계 학습을 활용한 유해 가스 확산 대리 모델의 개발과 응용-
dc.typeThesis-
dc.contributor.AlternativeAuthorKyeongwoo Jeon-
dc.description.degreeDoctor-
dc.contributor.affiliation공과대학 화학생물공학부-
dc.date.awarded2018-08-
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