基于缺失观测值的LSTM神经网络的综合下水道水深软测量

IF 2.4 3区 环境科学与生态学 Q2 ENGINEERING, CIVIL Journal of Hydro-environment Research Pub Date : 2021-09-01 DOI:10.1016/j.jher.2021.01.006
Rocco Palmitessa , Peter Steen Mikkelsen , Morten Borup , Adrian W.K. Law
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引用次数: 13

摘要

信息和通信技术结合原位传感器越来越多地用于城市排水系统的管理。在这些系统中收集的大量数据可以用来训练数据驱动的软传感器,它可以补充物理传感器。由于具有识别数据模式的能力,人工神经网络长期以来一直用于时间序列预测。长短期记忆(LSTM)神经网络配备了记忆门,以帮助它们学习数据序列中的时间依赖性,并已被证明在预测城市排水系统的水位方面优于其他类型的网络。当用于软测量时,神经网络通常接收先前的观察作为输入,因为这些是当前值的良好预测器。然而,先前的观测可能由于传输错误而丢失,或者由于不容易解释的错误而被视为异常。本研究量化并比较了LSTM网络在有限或缺失先验观测的情况下的预测准确性。我们将这些情景应用于丹麦哥本哈根的一个联合下水道溢流室的11个月的观测系列。我们观察到,i) LSTM预测通常在训练运行中显示出很大的可变性,这可以通过改进超参数(不可训练参数)的选择来减少;Ii)当已知最近的观测时,增加过去的信息并不能提高预测的准确性;iii)当先前的水深观测中引入了空白时,LSTM网络能够用其他可用的输入特征(一天中的时间和降雨强度)补偿缺失的信息;iv)在没有事先水深观测的情况下训练的LSTM网络产生了较大的预测误差,但仍然与其他情景相比较,并且捕获了干天气和湿天气的行为。因此,我们得出结论,LSTM神经网络可以被训练成城市排水系统中的软传感器,即使物理传感器的观测数据缺失。
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Soft sensing of water depth in combined sewers using LSTM neural networks with missing observations

Information and communication technologies combined with in-situ sensors are increasingly being used in the management of urban drainage systems. The large amount of data collected in these systems can be used to train a data-driven soft sensor, which can supplement the physical sensor. Artificial Neural Networks have long been used for time series forecasting given their ability to recognize patterns in the data. Long Short-Term Memory (LSTM) neural networks are equipped with memory gates to help them learn time dependencies in a data series and have been proven to outperform other type of networks in predicting water levels in urban drainage systems. When used for soft sensing, neural networks typically receive antecedent observations as input, as these are good predictors of the current value. However, the antecedent observations may be missing due to transmission errors or deemed anomalous due to errors that are not easily explained. This study quantifies and compares the predictive accuracy of LSTM networks in scenarios of limited or missing antecedent observations. We applied these scenarios to an 11-month observation series from a combined sewer overflow chamber in Copenhagen, Denmark. We observed that i) LSTM predictions generally displayed large variability across training runs, which may be reduced by improving the selection of hyperparameters (non-trainable parameters); ii) when the most recent observations were known, adding information on the past did not improve the prediction accuracy; iii) when gaps were introduced in the antecedent water depth observations, LSTM networks were capable of compensating for the missing information with the other available input features (time of the day and rainfall intensity); iv) LSTM networks trained without antecedent water depth observations yielded larger prediction errors, but still comparable with other scenarios and captured both dry and wet weather behaviors. Therefore, we concluded that LSTM neural network may be trained to act as soft sensors in urban drainage systems even when observations from the physical sensors are missing.

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来源期刊
Journal of Hydro-environment Research
Journal of Hydro-environment Research ENGINEERING, CIVIL-ENVIRONMENTAL SCIENCES
CiteScore
5.80
自引率
0.00%
发文量
34
审稿时长
98 days
期刊介绍: The journal aims to provide an international platform for the dissemination of research and engineering applications related to water and hydraulic problems in the Asia-Pacific region. The journal provides a wide distribution at affordable subscription rate, as well as a rapid reviewing and publication time. The journal particularly encourages papers from young researchers. Papers that require extensive language editing, qualify for editorial assistance with American Journal Experts, a Language Editing Company that Elsevier recommends. Authors submitting to this journal are entitled to a 10% discount.
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