环境科学
大洪水
风暴
气候变化
变压器
水位
弹性(材料科学)
水准点(测量)
计算机科学
水文学(农业)
水资源管理
环境资源管理
气象学
工程类
地质学
地理
岩土工程
电气工程
考古
电压
物理
海洋学
热力学
地图学
大地测量学
作者
Pu-Yun Kow,Jia-Yi Liou,Ming-Ting Yang,Meng-Hsin Lee,Li‐Chiu Chang,Fi‐John Chang
标识
DOI:10.1016/j.scitotenv.2024.172246
摘要
Proactive management of pumping stations using artificial intelligence (AI) technology is vital for effectively mitigating the impacts of flood events caused by climate change. Accurate water level forecasts are pivotal in advancing the intelligent operation of pumping stations. This study proposed a novel Transformer-LSTM model to offer accurate multi-step-ahead forecasts of the flood storage pond (FSP) and river water levels for the Zhongshan pumping station in Taipei, Taiwan. A total of 19,647 ten-minute-based datasets of pumping operation and storm sewer, FSP, and river water levels were collected between 2014 and 2020 and further divided into training (70 %), validation (10 %), and test (20 %) datasets for model construction. The results demonstrate that the proposed model dramatically outperforms benchmark models by producing more accurate and reliable water level forecasts at 10-minute (T + 1) to 60-minute (T + 6) horizons. The proposed model effectively enhances the connections between input factors through the Transformer module and increases the connectivity across consecutive time series using the LSTM module. This study reveals interconnected dynamics among pumping operation and storm sewer, FSP, and river water levels, enhancing flood management. Understanding these dynamics is crucial for effective execution of management strategies and infrastructure revitalization against climate impacts. The Transformer-LSTM model's forecasts encourage water practices, resilience, and disaster risk reduction for extreme weather events.
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