Prediction of the DO Factor at Bugok Bridge, Oncheoncheon, Using Deep Learning

Heesung Lim, Hyunuk An, Jaenam Lee, Hyungjin Shin, Nagweon Choi, Jingul Joo
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Abstract

The use of monitoring in river management is known to be both economical and rational, and the amount of digital information globally is increasing over time. AI research utilizing such data has been widely employed recently in the field of water resources and hydrology, yielding excellent predictive results. In this study, we utilized DO (Dissolved Oxygen) factor and meteorological data collected from the Bugok Bridge site in the Oncheoncheon watershed through an automatic water quality measurement network. We employed the LSTM (Long Short Term Memory) algorithm, a type of deep learning known for its excellent time series learning capabilities, as the learning algorithm. To confirm the potential of the use of big data, we conducted a comparative analysis by performing hourly and daily predictions, and an accuracy analysis by comparing actual and predicted data. For data utilization, missing data from the data collected by the automatic measurement network were linearly interpolated. It was confirmed that the predictive performance for the DO factor was higher using hourly than daily data.
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利用深度学习预测温川富谷桥的溶解氧系数
众所周知,在河流管理中使用监测既经济又合理,而全球的数字信息量正与日俱增。利用这些数据进行的人工智能研究近年来在水资源和水文领域得到了广泛应用,并取得了卓越的预测效果。在本研究中,我们利用了通过自动水质测量网络从温川流域布谷桥站点收集到的溶解氧(DO)因子和气象数据。我们采用了 LSTM(长短期记忆)算法作为学习算法,这是一种深度学习算法,以其出色的时间序列学习能力而著称。为了证实大数据的使用潜力,我们通过每小时和每天的预测进行了比较分析,并通过比较实际数据和预测数据进行了准确性分析。在数据利用方面,对自动测量网络收集的数据中的缺失数据进行了线性插值。结果证实,每小时数据比每日数据的溶解氧因子预测性能更高。
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