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A Real-Time Data Analysis Platform for Short-Term Water Consumption Forecasting with Machine Learning

机译:用于机器学习的短期用水量预测实时数据分析平台

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This article presents a real-time data analysis platform to forecast water consumption with Machine-Learning (ML) techniques. The strategy fully relies on a web-oriented architecture to ensure better management and optimized monitoring of water consumption. This monitoring is carried out through a communicating system for collecting data in the form of unevenly spaced time series. The platform is completed by learning capabilities to analyze and forecast water consumption. The analysis consists of checking the data integrity and inconsistency, in looking for missing data, and in detecting abnormal consumption. Forecasting is based on the Long Short-Term Memory (LSTM) and the Back-Propagation Neural Network (BPNN). After evaluation, results show that the ML approaches can predict water consumption without having prior knowledge about the data and the users. The LSTM approach, by being able to grab the long-term dependencies between time steps of water consumption, allows the prediction of the amount of consumed water in the next hour with an error of some liters and the instants of the 5 next consumed liters in some milliseconds.
机译:本文介绍了一个实时数据分析平台,以预测机器学习(ML)技术的用水量。该策略完全依赖于面向Web的架构,以确保更好的管理和优化对耗水量的监测。通过通信系统进行该监视,用于以不均匀间隔时间序列的形式收集数据。该平台通过学习能力来分析和预测耗水能力来完成。分析包括检查数据完整性和不一致,在寻找缺失数据时,并检测异常消耗。预测基于长期内记忆(LSTM)和后传播神经网络(BPNN)。在评估之后,结果表明ML方法可以预测耗水量而不先验到数据和用户的知识。通过能够抓住水消耗的时间步长之间的长期依赖性的LSTM方法,允许在下一小时内使用一些升的误差和下一个消耗的升的5个速度的误差预测下一小时的误差一些毫秒。

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