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  1. NTU Theses and Dissertations Repository
  2. 理學院
  3. 氣候變遷與永續發展國際學位學程(含碩士班、博士班)
請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/101741
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dc.contributor.advisor童慶斌zh_TW
dc.contributor.advisorChing-Pin Tungen
dc.contributor.author葉佳諺zh_TW
dc.contributor.authorChia-Yen Yehen
dc.date.accessioned2026-03-04T16:12:09Z-
dc.date.available2026-03-05-
dc.date.copyright2026-03-04-
dc.date.issued2026-
dc.date.submitted2026-02-23-
dc.identifier.citation1. Brune, G. M. (1953). Trap efficiency of reservoirs. Eos, Transactions American Geophysical Union, 34(3), 407-418.
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4. Haith, D. A., Mandel, R., & Wu, R. S. (1992). GWLF (Generalized Watershed Loading Functions) version 2.0 user’s manual. Department of Agricultural and Biological Engineering, Cornell University.
5. Huss, M., & Hock, R. (2018). Global-scale hydrological response to future glacier mass loss. Nature Climate Change, 8(2), 135-140.
6. Katz, R. W. (1996). Use of conditional stochastic models to generate climate change scenarios. Climatic Change, 32(3), 237-255.
7. Kondolf, G. M., Gao, Y., Annandale, G. W., Morris, G. L., Jiang, E., Zhang, J., Cao, Y., Carling, P., Fu, K., Guo, Q., Hotchkiss, R., Peteuil, C., Sumi, T., Wang, H. W., Wang, Z., Wei, Z., Wu, B., Wu, C., & Yang, C. T. (2014). Sustainable sediment management in reservoirs and regulated rivers: Experiences from five continents. Earth's Future, 2(5), 256-280.
8. Lee, F.-Z., Lai, J.-S., Kantoush, S. A., & Sumi, T. (2024). Analysis of turbidity current plunging and floating woody debris in a reservoir during flood events. Journal of Hydrology: Regional Studies, 56, 102027.
9. Lee, F.-Z., Lai, J.-S., & Sumi, T. (2022). Reservoir Sediment Management and Downstream River Impacts for Sustainable Water Resources—Case Study of Shihmen Reservoir. Water, 14(3), 479.
10. Lin, C.-Y. (2021). MultiWG: Multi-site stochastic Weather Generator (MultiWG)Unknown article.
11. Morris, G. L., & Fan, J. (1998). Reservoir Sedimentation Handbook: Design and Management of Dams, Reservoirs, and Watersheds for Sustainable Use. McGraw-Hill Book Co.
12. Pimentel, D., Harvey, C., Resosudarmo, P., Sinclair, K., Kurz, D., McNair, M., Crist, S., Shpritz, L., Fitton, L., Saffouri, R., & Blair, R. (1995). Environmental and Economic Costs of Soil Erosion and Conservation Benefits. Science, 267(5201), 1117-1123.
13. Richardson, C. W. (1981). Stochastic simulation of daily precipitation, temperature, and solar radiation. Water Resources Research, 17(1), 182-190.
14. Semenov, M. A., & Barrow, E. M. (1997). Climatic Change, 35(4), 397-414.
15. TCFD. (2020). Guidance on Scenario Analysis for Non-Financial Companies.
16. Trenberth, K. E. (2011). Changes in precipitation with climate change. Climate Research, 47(1-2), 123-138.
17. Tung, C.-P., & Haith, D. A. (1995). Global-Warming Effects on New York Streamflows. Journal of Water Resources Planning and Management, 121(2), 216-225.
18. Verstraeten, G., & Poesen, J. (2000). Estimating trap efficiency of small reservoirs and ponds: methods and implications for the assessment of sediment yield. Progress in Physical Geography: Earth and Environment, 24(2), 219-251.
19. Vörösmarty, C. J., Meybeck, M., Fekete, B., Sharma, K., Green, P., & Syvitski, J. P. M. (2003). Anthropogenic sediment retention: major global impact from registered river impoundments. Global and Planetary Change, 39(1-2), 169-190.
20. Wilks, D. S. (1999). Multisite downscaling of daily precipitation with a stochastic weather generator. Climate Research, 11(2), 125-136.
21. Wilks, D. S., & Wilby, R. L. (1999). The weather generation game: a review of stochastic weather models. Progress in Physical Geography: Earth and Environment, 23(3), 329-357.
22. Lin, L.-Y., Lin, C.-T., Chen, Y.-M., Cheng, C.-T., Li, H.-C., & Chen, W.-B. (2022). The Taiwan Climate Change Projection Information and Adaptation Knowledge Platform: A Decade of Climate Research. Water, 14(3), 358.
23. 李保憲. (2011). 氣候變遷下水庫長期溢頂風險分析與評估-以石門水庫為例 國立臺灣大學.
24. 林冠州. (2022). 氣候變遷下流域環境及永續農業調適策略之制定及評估-以石門水庫上游集水區為例. 《農業工程學報》 68卷4期 (2022/12) Pp. 63-79.
25. 林軒德. (2017). 經驗動態建模於季長期天氣展望與乾旱預警系統之應用-以濁水溪流域為例 國立臺灣大學.
26. 林嘉佑. (2016). 因應氣候變遷之供水系統調適能力建構與監測修正調適路徑之研究 國立臺灣大學.
27. 莊立昕. (2010). 氣候變遷對供水系統承載力影響評估方法之建立 國立臺灣大學.
28. 連以婷. (2010). 水文模式之參數不確定性分析 國立臺灣大學.
29. 劉政其. (2023). 水庫防淤操作對供水營運風險影響之研究 國立臺灣大學.
30. 水利署水利規劃試驗所. (2020). 水庫防淤管理與技術應用. 經濟部水利署.
31. 經濟部水利署北區水資源局. (2022). 111年度經濟部水利署北區水資源局統年報.
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/101741-
dc.description.abstract由於臺灣地形狹長且河川坡陡流急的特徵,上游河川水流於豪雨與颱風期間易夾帶大量泥砂進入水庫,長期造成了淤積問題,目前石門水庫的有效運作僅達到其儲水容量的三分之二,另有三分之一的庫容被沉積的淤泥所佔據,對北部地區供水安全與調度能力構成潛在風險。隨著全球氣候變遷影響加劇,極端降雨事件之頻率與強度預期將增加,可能進一步改變集水區水文過程與泥砂輸移機制。因此評估不同氣候情境下石門水庫泥砂累積與庫容演變趨勢,對於水庫永續經營與風險管理具有重要意義。
本研究整合氣象合成模式(WGEN)產製之未來氣候資料與台灣氣候變遷推估資訊平台(Taiwan Climate Change Projection Information and Adaptation Knowledge Platform, TCCIP)之統計降尺度資料,作為不同氣候輸入來源,並應用水文模式 Generalized Watershed Loading Functions (GWLF) 模擬集水區流量程,推估石門水庫入流量與泥砂輸移情形。在不同排放情境(SSP1-2.6、SSP5-8.5)及清淤策略下,分析未來至2060年之庫容變化趨勢,並納入不同清淤策略情境,評估工程管理措施對庫容維持之影響。
研究結果顯示,氣候資料來源之統計特性差異將影響流量分布形態與尾端行為。TCCIP 日資料於低雨量區段呈現集中現象,高分位尾端延伸能力相對有限;合成氣象資料則可提供較多自然變異取樣範圍,使流量尾端行為更具彈性。時間尺度分析亦指出,月尺度下流量分布較為穩定,而較短時間尺度下差異放大,顯示氣候輸入之統計結構對逕流模擬具有尺度依賴性。在未來情境推估方面,若未實施清淤措施,水庫有效容量將呈現持續下降趨勢;透過適當清淤策略可有效延緩容量衰減。多模式整合有助於降低單一氣候模式之偏差影響,但氣候模式差異、合成模式隨機性及水文模式結構假設仍為未來推估之主要不確定性來源。
zh_TW
dc.description.abstractDue to Taiwan’s elongated topography and steep river gradients, intense rainfall and typhoon events frequently transport large amounts of sediment from upstream catchments into reservoirs, leading to long-term sedimentation problems. At present, the effective storage capacity of Shimen Reservoir has been reduced to approximately two-thirds of its original design capacity, with the remaining one-third occupied by accumulated sediment, posing potential risks to regional water supply security and operational flexibility in northern Taiwan. Under ongoing climate change, the frequency and intensity of extreme precipitation events are projected to increase, potentially altering watershed hydrological processes and sediment transport mechanisms. Therefore, evaluating sediment accumulation and reservoir capacity evolution under different climate scenarios is essential for sustainable reservoir management and risk mitigation.
This study integrates future climate data generated by a weather generator model (WGEN) and statistically downscaled data provided by the Taiwan Climate Change Projection Information and Adaptation Knowledge Platform (TCCIP) as alternative climate inputs. The Generalized Watershed Loading Functions (GWLF) model is applied to simulate watershed runoff processes, from which inflow and sediment transport to Shimen Reservoir are estimated. Under different emission scenarios (SSP1-2.6 and SSP5-8.5) and dredging strategy scenarios, reservoir capacity changes are projected through 2060, and the effectiveness of engineering management measures in mitigating storage loss is assessed.
Results indicate that differences in the statistical characteristics of climate data sources influence flow distribution patterns and tail behavior. TCCIP daily rainfall data exhibit concentration in low-intensity rainfall ranges and relatively limited extension in upper quantiles, while synthetic weather data provide a broader range of natural variability, enhancing the representation of extreme flow behavior. Temporal scale analysis further reveals that flow distributions are more stable at the monthly scale, whereas discrepancies become amplified at shorter time scales, indicating a scale-dependent influence of climate input statistics on runoff simulations. Under future climate scenarios, reservoir effective storage is projected to decline continuously without dredging measures, whereas appropriate dredging strategies can substantially mitigate storage loss. Although multi-model integration reduces the bias associated with individual climate models, uncertainties arising from climate model variability, stochastic sampling in synthetic weather generation, and structural assumptions in the hydrological model remain key sources of projection uncertainty.
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dc.description.tableofcontents論文口試委員會審定書 I
謝誌 II
摘要 IV
Abstract V
目次 VII
圖次 IX
表次 XI
第一章 、緒論 1
1.1 研究動機 1
1.2 研究目的 2
1.3 論文框架 2
第二章 、文獻回顧 5
2.1 氣象合成模式 5
2.2 氣候變遷對石門水庫流量的影響 5
2.3 水庫泥砂變化與影響 6
2.4 臺灣的水庫泥砂管理 9
第三章 、研究方法 11
3.1 模式介紹 11
3.1.1 氣候模型降尺度 11
3.1.2 氣象合成模式 13
3.1.3 GWLF水文模式 14
3.2 庫容計算 18
3.2.1 入砂量率定曲線 18
3.2.2 囚砂率Brune經驗公式 20
第四章 、研究區域介紹與模式資料說明 23
4.1 研究區域概述 23
4.1.1 地理位置及基本特徵 23
4.2 理論及使用之資料 24
4.2.1 歷史資料選定 25
4.2.2 TCCIP AR6統計降尺度基期資料 26
4.2.3 TCCIP AR6統計降尺度推估日資料 26
4.2.4 氣候推估資料來源比較與適用性說明 27
4.3 情境設定與模式選擇 30
4.3.1 探索情境與規範情境之比較 30
4.3.2 氣候模型挑選及選擇 33
4.3.3 GWLF模式之參數設定 34
4.3.4 水庫防淤操作情境 34
第五章 、結果與討論 37
5.1 氣候變遷下溫度及降雨變化趨勢 37
5.2 GWLF模式結果 40
5.2.1 GWLF模式驗證 40
5.2.2 基期與歷史氣象資料模擬結果比較 44
5.2.3 水文模擬流量變化 48
5.3 未來長期庫容推估 52
5.3.1 歷史期間庫容推估方法之檢核 52
5.3.2未來推估庫容結果 54
第六章 、結論與建議 67
6.1 結論 67
6.2 建議 68
參考文獻 71
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dc.language.isozh_TW-
dc.subject氣候變遷-
dc.subject氣候資料-
dc.subject水文模式-
dc.subject水庫淤積-
dc.subject清淤策略-
dc.subjectClimate Change-
dc.subjectClimate Data-
dc.subjectHydrological Model-
dc.subjectReservoir Sedimentation-
dc.subjectDesilting Strategies-
dc.title氣候變遷下石門水庫泥砂淤積影響評估zh_TW
dc.titleImpact Assessment of Sediment Accumulation in Shihmen Reservoir under Climate Changeen
dc.typeThesis-
dc.date.schoolyear114-1-
dc.description.degree碩士-
dc.contributor.coadvisor賴進松zh_TW
dc.contributor.coadvisorJing-Sung Laien
dc.contributor.oralexamcommittee許少瑜; 謝宜桓zh_TW
dc.contributor.oralexamcommitteeShao-Yiu Hsu;Yi-Huan Hsiehen
dc.subject.keyword氣候變遷,氣候資料水文模式水庫淤積清淤策略zh_TW
dc.subject.keywordClimate Change,Climate DataHydrological ModelReservoir SedimentationDesilting Strategiesen
dc.relation.page73-
dc.identifier.doi10.6342/NTU202600133-
dc.rights.note未授權-
dc.date.accepted2026-02-23-
dc.contributor.author-college理學院-
dc.contributor.author-dept氣候變遷與永續發展國際學位學程-
dc.date.embargo-liftN/A-
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