研究生: |
吳禮安 LI-AN WU |
---|---|
論文名稱: |
深度學習於河川橋梁水位預測模式建立之研究 -應用SOS-NNLSTM Deep Learning on the Prediction Model of River Bridge Water Level in the Lower Reaches Using SOS-NNLSTM |
指導教授: |
鄭明淵
Min-Yuan Cheng |
口試委員: |
潘南飛
Nang-Fei Pan 周瑞生 Jui-Sheng Chou 鄭明淵 Min-Yuan Cheng |
學位類別: |
碩士 Master |
系所名稱: |
工程學院 - 營建工程系 Department of Civil and Construction Engineering |
論文出版年: | 2023 |
畢業學年度: | 111 |
語文別: | 中文 |
論文頁數: | 95 |
中文關鍵詞: | 水位預測 、深度學習 、人工智慧 、河川水位 |
外文關鍵詞: | SOS-NNLSTM, River flood |
相關次數: | 點閱:754 下載:0 |
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台灣四面環海,位於西太平洋熱帶氣旋盛行地區,氣候深受季風、颱風及洋流的影響,每逢夏秋兩季之時,常受到颱風的強風暴雨侵襲,平均年降雨量約為 2,510 公釐,其中約有 78%集中在 4~10 月間的梅雨及颱風季節,颱風帶來的大量雨水,常導致淹水災害,而台灣跨河橋梁每逢颱風來襲時常有斷橋之疑慮,為了確保橋梁上車輛安全,橋梁預警的發展越來越重要。在橋梁預警中,水位預報是重要的一大環節,因為本研究目的為建立一套有系統且完整的河川橋樑水位預測模式。本研究蒐集國內河川水位預報模式相關文獻,找出影響水位之因子,並以有完整橋樑水位資料的大安溪流域作為案例,蒐集2011-2017侵台颱風資料、雨量以及水位資料作為模式輸入因子,輸出資料為河川下游橋樑水位。利用SOS-NNLSTM演算法建立國道橋樑水位模式,進行未來1小時至未來2小時水位預報。
研究結果顯示,SOS-NNLSTM於預測河川水位上有不錯的表現,未來可根據本研究之模式搭配即時觀測系統,協助相關管理單位擬訂適當的防災策略。預測未來水位作為防災參考依據,以期達到減災的目的,研究成果可望為橋梁安全預警所使用。
Surrounded by the sea, Taiwan is located in the prevailing tropical cyclone in the western Pacific. The climate is deeply affected by monsoons, typhoons and ocean currents. During the summer and autumn, it is often hit by strong storms of typhoons. The average annual rainfall is about 2,510 mm. 78% concentrated in the plum rain and typhoon seasons from April to October. The heavy rain caused by typhoons often caused flooding disasters. Taiwan’s cross-river bridges often have doubts about broken bridges when typhoons strike, in order to ensure vehicles on the bridges. Safety, the development of bridge warnings is becoming more and more important. Water level forecasting is an important part of bridge warning, because the purpose of this study is to establish a systematic and complete bridge water level prediction model. This study collects relevant literatures on domestic water level forecasting models, finds the factors affecting the water level, and uses the Da'an River Basin with complete national bridge water level data as a case to collect typhoon data, rainfall and water level data for 2011-2017 as model input factors. The output data is the water level of the bridge downstream of the national highway. The SOS-NNLSTM algorithm is used to establish the water level model of the national bridge, and the water level forecast for the next hour to the next 2 hours
The results show that SOS-NNLSTM has a good performance in predicting the water level. In the future, the real-time observation system can be matched according to the model of this study to assist the relevant management units to formulate appropriate disaster prevention strategies. Predicting the future water level as a reference for disaster prevention, in order to achieve the purpose of disaster reduction, the research results are expected to be used for bridge safety warning
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