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姓名 吳忠霖(Chung-lin Wu)  查詢紙本館藏   畢業系所 土木工程學系
論文名稱 考量時間帶變動下航空公司飛航排程暨班次表建立之研究
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摘要(中) 飛航排程對航空業者營運影響甚鉅,而良好的飛航排程,除考量航空公司本身的機隊供給、相關作業措施、實務上的限制及旅客的反應,更重要的是航空公司是否取得理想之時間帶。本研究以航空業者立場,在給定的營運資料下,包括機隊規模、機場額度、相關飛航成本等,以營運利潤最大化為目標,構建一考量時間帶分配及變動需求之短期飛航排程模式。若航空公司希望透過次要時間帶交易改善現有之飛航排程表,該模式將會分析其租用時間帶及交換的時間帶是否會為航空公司帶來利潤,並輸出新的飛航排程表及航空公司之利潤,提供航空業者一短期排程暨班次表建立之輔助規劃工具。
本研究利用網路流動技巧構建模式,此模式包含機流網路與多重人流網路。在機流網路的設計上,假設時間帶分佈位置為已知,並以整數流動方式定式機隊於時空中的排程。在人流網路中,為考量等待旅客在實務中的流失情況,本研究加入旅客選擇模式以定式此一旅客流動問題,並於二網路流動間加上實務限制,以符合實際的飛航作業。該模式為一非線性混合整數規劃問題,其屬於NP-hard性質的問題,在求解上更難於以往傳統之飛航排程規劃問題。為有效求解大規模問題,因而本研究發展一反覆求解架構,以重複修正該航空公司的市場分配需求,並配合求解固定性需求之短期飛航排程問題,以求解模式。最後本研究參考某國各機場與該國各航空公司之國內線相關營運資料為例,進行測試分析,結果顯示本研究所提出考量時間帶變動下之短期飛航排程模式及求解演算法的效果甚佳。
摘要(英) Fleet routing and flight scheduling are important in the field of airline operations. In order to create a brilliant flight schedule for an airline, the fleet and its supply, related operating requirements, restrictions on practice, and customers’ response on its service should be taken into account. Last but not least, the most important part is that airline could acquire the ideal slots in the airport or not. In this paper, based on the airline’s perspective, given the operating data, including fleet size, airport flight quota, and related flight cost, the objective is to maximize the operating profit and build a short-term flight scheduling model with slot allocation and variable demands. If the airline wants to improve the flight schedule with secondary slot trading, this model would analyze whether the rented slots or the swapped slots would be profitable for airlines. New flight schedule and the profit for the airline would be displayed within this model. The model will also provide assistance in planning to construct their short-term flight schedules and timetables for airlines.
This paper employed network flow techniques to construct the model which includes fleet flow network and multiple passengers network. For fleet flow network design, it is assumed that time slot location has been known, and we applied integer flow networks to formulate the aircraft routes in terms of time and space. In the passenger flow networks, considering the loss of waiting passengers in real case, this paper introduced a passenger choice model to formulate passenger flows. Constraints between the fleet flow and passenger flow network were considered to fulfill the real operating requirements. The model is a mixed integer non-linear programming problem that is characterized as a NP-hard problem and is more difficult to be solved than traditional flight scheduling problems that are often formulated as integer linear programs. To solve the model with practical size problems efficiently, we developed an iterative solution framework which will repeatedly modify the target airline market share in iteration and solve a fixed-demand flight scheduling problem. We used certain country of airports data and related operating data of domestic passenger transportation from some airlines to analyze. The test results show this model that to be effective and that the solution method could be useful in practice.
關鍵字(中) ★ 時間帶
★ 飛航排程
★ 變動需求
★ 旅客選擇模式
★ 非線性混合整數規劃問題
★ 次要市場交易
關鍵字(英) ★ time slot
★ fleet routing
★ variable demand
★ passenger choice model
★ nonlinear mixed integer program
★ secondary trading
論文目次 摘要 i
Abstract ii
致謝 vi
圖目錄 vii
表目錄 viii
第一章 緒論 1
1.1 研究背景與動機 1
1.2 研究目的與範圍 2
1.3 研究方法與流程 3
第二章 文獻回顧 4
2.1 時間帶定義及制度相關文獻 4
2.2 時間帶分配相關文獻 6
2.3 旅客需求模式相關文獻 10
2.4 飛航排程問題相關文獻 14
2.5 小結 19
第三章 模式建構 20
3.1 模式架構 20
3.1.1 模式假設 20
3.1.2 機流時空網路 23
3.1.3 人流時空網路 26
3.1.4 旅客選擇模式 28
3.2 問題定式 32
3.2.1 數學定式 32
3.3 小結 36
第四章 模式求解 37
4.1 求解架構 37
4.2 模式求解步驟 38
4.3 整體程式求解 40
4.4 人流流量推擠 40
4.5 單機定線 41
4.6 下限解求解方式 42
4.7 範例測試 43
4.8 小結 49
第五章 實例測試 50
5.1 資料輸入 50
5.1.1 航線資料 51
5.1.2 規劃草擬班表及各航線競爭航空公司班表 51
5.1.3 旅客起迄資料 52
5.1.4 機場額度限制 53
5.1.5 機場時間帶資料 54
5.1.6 航機種類及機隊規模 56
5.1.7 成本資料 56
5.1.8 票價資料 58
5.1.9 旅客選擇模式參數資料 58
5.2 輸出資料 59
5.3 敏感度分析 64
5.3.1 機隊規模 64
5.3.2 旅次量敏感度分析 65
5.3.3 時間帶限制數量敏感度分析 65
5.3.4 旅客考慮時間敏感度分析 66
5.3.5 票價敏感度分析 69
5.3.6 租用時間帶價格敏感度分析 70
5.3.7 可用時間帶數量敏感度分析 70
5.3.8 交換時間帶數量敏感度分析 73
5.4 方案分析 75
5.5 小結 76
第六章 結論與建議 77
6.1 結論 77
6.2 建議 78
6.3 貢獻 80
參考文獻 81
附錄 85
求解結果及敏感度分析結果 85
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指導教授 顏上堯(Shang-yao Yan) 審核日期 2014-7-11
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