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Title Page
Abstract
Contents
Ⅰ. INTRODUCTION 13
Ⅱ. RESEARCH HISTORY 15
2.1. The etymology and history of perfume 15
2.2. The definition and function of fragrance 17
2.3. The structure of perfume 18
2.3.1. The stage of perfume 18
2.3.1. The volatility of perfume 18
2.4. The role of perfume 19
2.5. Fragrance 20
2.5.1. Natural fragrance 20
2.5.2. Extraction methods of natural fragrances 20
SECTION 1. Development of an Automatic Perfume Production Machine 21
Ⅲ. MATERIALS AND METHODS 22
3.1. Auto perfume device 22
3.1.1. Auto perfume machine design concept 22
3.1.2. The design and production of auto perfume device component 32
3.1.3. Principle of pump operation of Automatic perfume device 35
3.1.4. Automatic perfume block diagram 37
3.1.5. Automatic perfume device's program design 39
Ⅳ. RESULTS AND DISCUSSION 41
4.1. Manufacturing of Automatic perfume device 41
4.1.1. Exterior structure of automatic perfume device 41
4.1.2. Implementation of automatic perfume device's program 44
SECTION 2. Artificial Intelligence-assisted Recommendation Program 55
Ⅲ. MATERIALS AND METHODS 56
3.1. Fragrance recipe recommendation system 56
3.1.1. Open data 56
3.1.2. Closed data 59
3.1. Plant materials 69
3.2. Essential oil extraction 69
3.3. Gas Chromatography-mass spectrometry (GC-MS) 70
Ⅳ. RESULTS AND DISCUSSION 71
4.1. Recipe recommendation system 71
4.1.1. Open data collection 71
4.1.2. Major fragrance type 72
4.2. Close data collection 74
4.2.1. The production of fragrances combination 74
4.2.2. Fragrance Evaluation program 77
4.2.3. Artificial intelligence algorithm evaluation 81
4.2.4. Implementation of perfume recipe recommendation system 82
4.2.5. Execution of Recipe Recommendation System Using Artificial Intelligence 91
4.3. The Yield and Color of Cymbopogon 104
4.4. Chemical composition of lemongrass essential oil from Cambodia 105
4.5. Discussion 107
Ⅴ. CONCLUSION 110
REFERENCES 114
논문요지 118
APPENDIX 119
Figure 1. The overall design of the perfume device. 24
Figure 2. The overall design of the perfume device's isometric view. 25
Figure 3. Raspberry Pi's frame design from the front. 26
Figure 4. The design of Raspberry Pi's frame from the bottom. 27
Figure 5. The design of the power supply panel. 28
Figure 6. The design of the relay board panel. 29
Figure 7. The design of the motor frame 30
Figure 8. The design of the main frame and fragrance storage design 31
Figure 9. Design of the Gyeongbokgung from the front 33
Figure 10. Design of the Gyeongbokgung from the side view 34
Figure 11. The design of the pump and control panel 36
Figure 12. Control block diagram of an automatic fragrance device 38
Figure 13. Automatic perfume device's program design. 40
Figure 14. The final looks of the automatic fragrance device. 42
Figure 15. The 3D drawing and final printing of Gyeongbokgung. 43
Figure 16. Automatic perfume device's coding. 45
Figure 17. Automatic perfume device's coding. 46
Figure 18. Automatic perfume device's coding. 47
Figure 19. Automatic perfume device's coding. 48
Figure 20. Automatic perfume device coding. 49
Figure 21. Automatic perfume device's coding. 50
Figure 22. Automatic perfume device's coding. 51
Figure 23. Automatic perfume device's coding. 52
Figure 24. The fragrance device pump control program. 53
Figure 25. Automatic perfume device's program design. 56
Figure 26. Program procedure for open data collection. 58
Figure 27. Experiment perfume arrangement in the box. 60
Figure 28. Fragrance Combination and manufacturing method. 61
Figure 29. The diagram of the fragrance evaluation program. 65
Figure 30. The diagram of recipe recommendation system. 68
Figure 31. Manual fragrance evaluation program for closed data. 78
Figure 32. Perceptron machine learning algorithm. 83
Figure 33. Perceptron machine learning algorithm. 84
Figure 34. Multi-perceptron machine learning algorithm. 85
Figure 35. Multi-perceptron machine learning algorithm. 86
Figure 36. Deep-multi-perceptron machine learning algorithm. 87
Figure 37. Deep-multi-perceptron machine learning algorithm. 88
Figure 38. Deep-multi-perceptron machine learning algorithm. 89
Figure 39. Perfume recipe recommendation system program. 90
Figure 40. Michael Edwards' Fragrance Wheel 2014. 91
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