Abstract

Every morning, water suppliers need to define their pump schedules for the next 24 h for drinking water production. Plans must be designed in such a way that drinking water is always available and the amount of unused drinking water pumped into the network is reduced. Therefore, operators must accurately estimate the next day’s water consumption profile. In real-life applications with standard consumption profiles, some expert system or vector autoregressive models are used. Still, in recent years, significant improvements for time series prediction have been achieved through special deep learning algorithms called long short-term memory (LSTM) networks. This paper investigates the applicability of LSTM models for water demand prediction and optimal pump control and compares LSTMs against other methods currently used by water suppliers. It is shown that LSTMs outperform other methods since they can easily integrate additional information like the day of the week or national holidays. Furthermore, the online- and transfer-learning capabilities of the LSTMs are investigated. It is shown that LSTMs only need a couple of days of training data to achieve reasonable results. As the focus of the paper is on the real-world application of LSTMs, data from two different water distribution plants are used for benchmarking. Finally, it is shown that the LSTMs significantly outperform the system currently in operation.

Highlights

  • Every day, water distribution companies are challenged with the decision of how much drinking water should be produced for consumption during the day

  • This paper investigates the applicability of long short-term memory (LSTM) models for water demand prediction and optimal pump control and compares LSTMs against other methods currently used by water suppliers

  • The LSTM, being in focus in this paper, was investigated in several points of view. It was benchmarked against the Vector Autoregressive Models (VAR)

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Summary

Introduction

Water distribution companies are challenged with the decision of how much drinking water should be produced for consumption during the day. The energy to pump drinking water into the distribution network should be used efficiently. In order for the water suppliers to plan the operation of pumping stations, it is crucial to make reliable predictions of the drinking water consumption during the day. With this knowledge, they can evaluate different operation plans with respect to energy and cost resulting in significant savings. German water supply operation is not entirely automated. Based on the water flow and pressure inside the system, operators can decide to switch water transport pumps on and off

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