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Short-Term Urban Water Demand Prediction Considering Weather Factors

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Abstract

Accurate and reliable forecasting plays a key role in the planning and designing of municipal water supply infrastructures. Recent studies related to water demand prediction have shown that water demand is driven by weather variables, but the results do not clearly show to what extent. The principal aim of this research was to better understand the effects of weather variables on water demand. Additionally, it aimed to offer an appropriate and reliable technique to predict municipal water demand by using the Gravitational Search Algorithm (GSA) and Backtracking Search Algorithm (BSA) with Artificial Neural Network (ANN). Moreover, eight weather factors were adopted to evaluate their impact on the water demand. The principal findings of this research are that the hybrid GSA-ANN (Agent = 40) model is superior in terms of fitness function (based on RMSE) for yearly and seasonal phases. In addition, it is evidently clear from the findings that the GSA-ANN model has the ability to simulate both seasonal and yearly patterns for daily data water consumption.

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References

  • Adamowski JF (2008) Peak daily water demand forecast modeling using artificial neural networks. J Water Resour Plan Manag 134:119–128

    Article  Google Scholar 

  • Adamowski J, Fung Chan H, Prasher SO, Ozga-Zielinski B, Sliusarieva A (2012) Comparison of multiple linear and nonlinear regression, autoregressive integrated moving average, artificial neural network, and wavelet artificial neural network methods for urban water demand forecasting in Montreal, Canada. Water Resour Res 48:1–14

    Article  Google Scholar 

  • Ahmed M, Mohamed A, Homod R, Shareef H (2016) Hybrid LSA-ANN based home energy management scheduling controller for residential demand response strategy. Energies 9:716

    Article  Google Scholar 

  • Ahmed MS, Mohamed A, Khatib T, Shareef H, Homod RZ, Ali JA (2017) Real time optimal schedule controller for home energy management system using new binary backtracking search algorithm. Energy Build 138:215–227

    Article  Google Scholar 

  • ASCE Task Committee (2000) Artificial neural networks in hydrology. I: preliminary concepts. Journal of Hydrologic Egineering. ASCE Task Committee

  • Babel MS, Shinde VR (2011) Identifying prominent explanatory variables for water demand prediction using artificial neural networks: a case study of Bangkok. Water Resour Manag 25:1653–1676

    Article  Google Scholar 

  • Bakker M, Van Duist H, Van Schagen K, Vreeburg J, Rietveld L (2014) Improving the performance of water demand forecasting models by using weather input. 12th International Conference on Computing and Control for the Water Industry, 1–1-2014. 93–102

  • Basheer IA, Hajmeer M (2000) Artificial neural networks: fundamentals, computing, design, and application. J Microbiol Methods 43:3–31

    Article  Google Scholar 

  • Behboudian S, Tabesh M, Falahnezhad M, Ghavanini FA (2014) A long-term prediction of domestic water demand using preprocessing in artificial neural network. J Water Supply Res Technol AQUA 63:31–42

    Article  Google Scholar 

  • Bougadis J, Adamowski K, Diduch R (2005) Short-term municipal water demand forecasting. Hydrol Process 19:137–148

    Article  Google Scholar 

  • Chen D, Zou F, Lu R, Wang P (2017) Learning backtracking search optimisation algorithm and its application. Inf Sci 376:71–94

    Article  Google Scholar 

  • Donkor EA, Mazzuchi TH, Soyer R, Roberson JA (2014) Urban water demand forecasting: review of methods and models. J Water Resour Plan Manag 140:146–159

    Article  Google Scholar 

  • Firat M, Yurdusev MA, Turan ME (2009) Evaluation of artificial neural network techniques for municipal water consumption modeling. Water Resour Manag 23:617–632

    Article  Google Scholar 

  • Firat M, Turan ME, Yurdusev MA (2010) Comparative analysis of neural network techniques for predicting water consumption time series. J Hydrol 384:46–51

    Article  Google Scholar 

  • Fogden J, Wood G (2009) Access to Safe Drinking Water and Its Impact on Global Economic Growth. HaloSource Inc

  • Gato S, Jayasuriya N, Hadgraft R (2005) A simple time series approach to modelling urban water demand. Aust J Water Resour 8:153–164

    Google Scholar 

  • Gharghan SK, Nordin R, Ismail M (2016a) A Wireless Sensor Network with Soft Computing Localization Techniques for Track Cycling Applications. Sensors (Basel), 16

  • Gharghan SK, Nordin R, Ismail M, Ali JA (2016b) Accurate wireless sensor localization technique based on hybrid pso-ann algorithm for indoor and outdoor track cycling. Ins Electric Electron Eng Sensors J 16:529–541

    Google Scholar 

  • Jain A, Ormsbee LE (2002) Short-term water demand forecast modeling techniques conventional methods versus AI. Am Water Works Assoc 94:64–72

    Article  Google Scholar 

  • Jain A, Varshney AK, Joshi UC (2001) Short-term water demand forecast modelling at IIT Kanpur using artificial neural networks. Water Resour Manag 15:299–321

    Article  Google Scholar 

  • Kotsiantis SB, Kanellopoulos D, Pintelas PE (2006) Data preprocessing for supervised leaning. Int J Comput Sci 1:111–117

    Google Scholar 

  • Liu J, Savenije HHG, Xu J (2003) Forecast of water demand in Weinan City in China using WDF-ANN model. Phys Chem Earth, Parts A/B/C 28:219–224

    Article  Google Scholar 

  • Maier HR, Dandy GC (2000) Neural networks for the prediction and forecasting of water resources variables: a review of modelling issues and applications. Environ Model Softw 15:101–124

    Article  Google Scholar 

  • Pallant J (2011) SPSS SURVIVAL MANUAL: a step by step guide to data analysis using SPSS. Australia, Allen & Unwin

    Google Scholar 

  • Payal A, Rai CS, Reddy BVR (2015) Analysis of some feedforward artificial neural network training algorithms for developing localization framework in wireless sensor networks. Wirel Pers Commun 82:2519–2536

    Article  Google Scholar 

  • Rashedi E, Nezamabadi-Pour H, Saryazdi S (2009) GSA: a gravitational search algorithm. Inf Sci 179:2232–2248

    Article  Google Scholar 

  • Sarker RC, Gato S, Imteaz M (2013) Temperature and rainfall thresholds corresponding to water consumption in Greater Melbourne, Australia. 20th International Congress on Modelling and Simulation, 1–6 December 2013 Adelaide, Australia. Modelling and Simulation Society of Australia and New Zealand, 2576–2582

  • Shahin MA, Jaksa MB, Maier HR (2008) State of the art of artificial neural networks in geotechnical engineering. Electron J Geotech Eng 13:1–26

    Google Scholar 

  • Shuaib M, Kalavathi SM, Rajan CA, C. (2015) Optimal capacitor placement in radial distribution system using gravitational search algorithm. Int J Electr Power Energy Syst 64:384–397

    Article  Google Scholar 

  • Su Z, Wang H, Yao P (2016) A hybrid backtracking search optimization algorithm for nonlinear optimal control problems with complex dynamic constraints. Neurocomputing 186:182–194

    Article  Google Scholar 

  • Tabachnick BG, Fidell LS (2013) Using Multivariate Statistics, United States of America, Pearson Education, Inc

  • Xiong H, Pandey G, Steinbach M, Kumar V (2006) Enhancing data analysis with noise removal. Inst Electric Electron Eng Trans Knowl Data Eng 18:304–319

    Google Scholar 

  • YVW (2017) Yarra Valley Annual Report Water 2016–2017. Australia

  • Zhang JJ, Song R, Bhaskar NR, French MN (2006) Short-term water demand forecasting: a case study. 8th Annual Water Distribution Systems Analysis Symposium, August 27–30, 2006 Cincinnati, Ohio, USA. United States, 1–14

  • Zhoua SL, McMahon TA, Walton A, Lewis J (2000) Forecasting daily urban water demand: a case study of Melbourne. J Hydrol 236:153–164

    Article  Google Scholar 

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Acknowledgements

The Iraqi Ministry of Higher Education and Scientific Research, Wasit University supported this project. I thank Peter Roberts, the Demand Forecasting Manager, Yarra Valley Water for providing all data.

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Correspondence to Salah L. Zubaidi.

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Zubaidi, S.L., Gharghan, S.K., Dooley, J. et al. Short-Term Urban Water Demand Prediction Considering Weather Factors. Water Resour Manage 32, 4527–4542 (2018). https://doi.org/10.1007/s11269-018-2061-y

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  • DOI: https://doi.org/10.1007/s11269-018-2061-y

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