博碩士論文 107355007 詳細資訊




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姓名 戴萬源(Wan-Yuan Tai)  查詢紙本館藏   畢業系所 土木系營建管理碩士在職專班
論文名稱 H型鋼構件智慧塗裝路徑優化研究
(The research of H-shaped steel intelligent coating)
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摘要(中) 由於工廠的生產塗裝H型鋼結構部件的配置複雜性和尺寸因素,H型鋼結構部件的塗層工作通常由人工完成。 H型鋼結構件非常巨大且複雜,這是塗裝廠需要面對的生產率較低的問題,特別是對於行業中高度以客戶為導向的需求。研究目標是為H型鋼部件開發最佳的塗層路徑。文獻綜述提出了用於設置參數,識別構型和優化H型鋼組件塗層路徑的方法。通過針對大多數H型鋼部件的定義數據庫,構建了該算法以高精度(> 90%)識別鋼結構部件,然後進行塗層處理。與手動塗層相比,本研究模擬了100種不同的H型鋼塗層情況。研究結果表明,平均節省時間可達到總手動塗佈時間的24.6%。這是非常重要的,因為該行業正面臨熟練工人的短缺和高塗料成本,這兩者都給從業人員帶來了經營困難。
摘要(英) The coating work for H-steel components is usually carried out by manual due to factory capacity and H-steel components’ configuration complexity and size. The larger and more complex the H-steel components are the lower productivity a coating factory needs to face, especially for highly customer-oriented demands from the industries. The research objective is to develop optimal coating paths for H-steel components. The literature review suggests the methods setting parameters, recognizing configuration and optimizing coating paths for H-steel components. By a given database for most H-steel components, the algorithm is built to recognize the components with a high accuracy (>90%) and then to deal with coating. The evaluation simulates 100 different cases of H-steel coating, compared to manual coating. Findings turn out that the average time saving can reach 24.6% of the total manual coating time. It is significant since the industry is facing the shortage of skillful workers and high coating costs which both have caused difficult for practitioners to run their business.
關鍵字(中) ★ H型鋼構件
★ 鋼構件塗裝
★ 塗裝優化路徑
★ 路徑規劃
關鍵字(英) ★ H-steel component
★ coating path
★ optimization
★ recognition
★ construction industry
論文目次 目錄
中文摘要 i
ABSTRACT ii
目錄 iii
圖目錄 vi
表目錄 viii
第一章 緒論 1
1.1研究背景與動機 1
1.3研究目的 2
1.4研究範圍 2
1.5研究流程 2
第二章 文獻回顧 6
2.1 模式識別 6
2.1.1 模式識別之應用 6
2.1.2 於鋼構件之相關應用 8
2.2 最佳化路徑 8
2.2.1 最佳路徑規劃與產生的執行流程 9
2.2.2 塗裝路徑規劃中需考量的因素 9
2.2.2 相關塗裝路徑規劃的研究 10
2.3 鋼構件塗裝 11
第三章 塗裝優化路徑規劃 13
3.1 塗裝路徑研究設定 13
3.2 塗裝優化路徑的規劃流程 13
3.3路徑基礎型式確立 14
3.4塗裝參數考量 14
第四章 塗裝優化路徑 20
4.1 塗裝優化路徑的建制流程 20
4.2 H型鋼構件尺寸參數獲取 20
4.3 路徑建制 21
4.4塗裝優化路徑規劃與建制的成果 22
4.5成果驗證 24
4.5.1塗裝優化路徑的正確性及適用性驗證 24
4.5.2塗裝路徑優化之效果驗證 35
4.5.3以H型鋼構公規分析塗裝路徑優化之效果驗證 38
4.6成果分析與討論 42
第五章 結論與建議 51
5.1 結論 51
5.2 研究建議 52
參考文獻 53
附錄A 56
H型鋼構件斷面的詳細圖説 56
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指導教授 陳介豪(Jieh-Haur Chen) 審核日期 2020-7-28
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