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基于 LSTM 的城市河流水位短期实时滚动预测——以中国福州市为例。

Short Term Real-Time Rolling Forecast of Urban River Water Levels Based on LSTM: A Case Study in Fuzhou City, China.

机构信息

Faculty of Architecture, Civil and Transportation Engineering, Beijing University of Technology, Beijing 100124, China.

School of Water and Environment, Chang'an University, Xi'an 710054, China.

出版信息

Int J Environ Res Public Health. 2021 Sep 2;18(17):9287. doi: 10.3390/ijerph18179287.

Abstract

Water level management is an important part of urban water system management. In flood season, the river should be controlled to ensure the ecological and landscape water level. In non-flood season, the water level should be lowered to ensure smooth drainage. In urban areas, the response of the river water level to rainfall and artificial regulation is relatively rapid and strong. Therefore, building a mathematical model to forecast the short-term trend of urban river water levels can provide a scientific basis for decision makers and is of great significance for the management of urban water systems. With a focus on the high uncertainty of urban river water level prediction, a real-time rolling forecast method for the short-term water levels of urban internal rivers and external rivers was constructed, based on long short-term memory (LSTM). Fuzhou City, China was used as the research area, and the forecast performance of LSTM was analyzed. The results confirm the feasibility of LSTM in real-time rolling forecasting of water levels. The absolute errors at different times in each forecast were compared, and the various characteristics and causes of the errors in the forecast process were analyzed. The forecast performance of LSTM under different rolling intervals and different forecast periods was compared, and the recommended values are provided as a reference for the construction of local operational forecast systems.

摘要

水位管理是城市水系管理的重要组成部分。在洪水季节,应控制河道水位,以确保生态和景观用水。在非洪水季节,应降低水位以确保排水顺畅。在城市地区,河水水位对降雨和人工调节的响应较为迅速和强烈。因此,建立一个数学模型来预测城市河流水位的短期趋势,可以为决策者提供科学依据,对城市水系管理具有重要意义。针对城市河流水位预测的高度不确定性,基于长短期记忆网络(LSTM)构建了城市内部和外部河流短期水位的实时滚动预测方法。以中国福州市为研究区域,分析了 LSTM 的预测性能。结果证实了 LSTM 在实时滚动水位预测中的可行性。比较了每个预测中不同时间的绝对误差,并分析了预测过程中误差的各种特征和原因。比较了不同滚动间隔和不同预测时段下 LSTM 的预测性能,并提供了推荐值,以供当地业务化预报系统建设参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5354/8430923/1f5df36f9ba6/ijerph-18-09287-g001.jpg

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