Models for forecasting water demand using time series analysis: a case study in Southern Brazil

Author:

Ristow Danielle C. M.1,Henning Elisa2,Kalbusch Andreza1,Petersen Cesar E.3

Affiliation:

1. Civil Engineering Department, Santa Catarina State University, Joinville, Brazil

2. Mathematics Department, Santa Catarina State University, Joinville, Brazil

3. Department of Civil Construction, Federal University of Paraná, Curitiba, Brazil

Abstract

Abstract Technology has been increasingly applied in search for excellence in water resource management. Tools such as demand-forecasting models provide information for utility companies to make operational, tactical and strategic decisions. Also, the performance of water distribution systems can be improved by anticipating consumption values. This work aimed to develop models to conduct monthly urban water demand forecasts by analyzing time series, and adjusting and testing forecast models by consumption category, which can be applied to any location. Open language R was used, with automatic procedures for selection, adjustment, model quality assessment and forecasts. The case study was conducted in the city of Joinville, with water consumption forecasts for the first semester of 2018. The results showed that the seasonal ARIMA method proved to be more adequate to predict water consumption in four out of five categories, with mean absolute percentage errors varying from 1.19 to 15.74%. In addition, a web application to conduct water consumption forecasts was developed.

Funder

Fundação de Amparo à Pesquisa e Inovação do Estado de Santa Catarina

Conselho Nacional de Desenvolvimento Científico e Tecnológico

Publisher

IWA Publishing

Subject

Public Health, Environmental and Occupational Health,Pollution,Waste Management and Disposal,Water Science and Technology,Development

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