Abstract

Short-term water demand forecasting plays an important role in smart management and real-time simulation of water distribution systems (WDSs). This paper proposes a hybrid model for the short-term forecasting in the horizon of one day with 15 min time steps, which improves the forecasting accuracy by adding an error correction module to the initial forecasting model. The initial forecasting model is firstly established based on the least square support vector machine (LSSVM), the errors time series obtained by comparing the observed values and the initial forecasted values is next transformed into chaotic time series, and then the error correction model is established by the LSSVM method to forecast errors at the next time step. The hybrid model is tested on three real-world district metering areas (DMAs) in Beijing, China, with different demand patterns. The results show that, with the help of the error correction module, the hybrid model reduced the mean absolute percentage error (MAPE) of forecasted demand from (5.64%, 4.06%, 5.84%) to (4.84%, 3.15%, 3.47%) for the three DMAs, compared with using LSSVM without error correction. Therefore, the proposed hybrid model provides a better solution for short-term water demand forecasting on the tested cases.

Highlights

  • One critical factor in planning, design, operation, and management of water distribution system (WDS) is satisfying quality water demand at reasonable pressure [1,2,3]

  • H_LSSVM_Chaos provides a higher accuracy than the other two indicators, the H_LSSVM_Chaos models provide the closest estimates to the corresponding observed models according to the performance indicators R2, mean absolute error (MAE), mean absolute percentage error (MAPE), and root means square error (RMSE)

  • To obtain more accurate predictions, this study proposes a hybrid framework with the error correction module which uses the chaotic time series, and investigates the performance of the framework in the short-term water demand forecasting with one day ahead and a

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Summary

Introduction

One critical factor in planning, design, operation, and management of water distribution system (WDS) is satisfying quality water demand at reasonable pressure [1,2,3]. Water demand forecasting plays an important role in activities of the WDS such as water production, pump station operation, real-time modeling, and other strategic decisions of water management [1,6]. The long-term forecasting model (1 to 10 years’ forecast horizon) pays more attention to the plan and design of WDSs. The short-term forecasting model (1 day to 1 month’s forecast horizon) targets the real-time water demands of the existing WDSs, which is generally used for daily

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