BetterNet: Decision Support Software for Chlorination of
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BetterNet: Decision Support Software for Chlorination of
BetterNet Decision Support Software for Chlorination of Water Distribution Systems Mustafa Kemal Pektürk Hürevren Kılıç Selçuk Soyupak Content Problem Definition and Research Needs Standards for FRC Levels Literature Genetic Algoritms Objective Functions Antalya Konyaaltı WDS Applications Results References 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 2 Problem Definition and Research Needs • Problem definition Chlorine is added either at the source or at the exit of WTPs – Clorine decays during transport of water ; at some far away points from source, the FRC levels may be lower than the desired minimum values; it may increase the risk of water born diseases. – There may be excessive FRC levels at consumers’ tap near point of chlorine application: this may increase cancer risk. • Aim: Keeping FRC levels within allowable ranges to protect public health. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 3 Chlorine decay 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 4 Chlorine isoconcentration areas of a network 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 5 A software to improve chlorine distribution in networks 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 6 Problem Definition and Research Needs Three practical questions to be answered by the planners and the operators of water supply systems : 1) What should be the dosage of chlorine at the source or at the exit of WTP? 2) What should be the FRC level at any point within WDS? 3) Does WDS need any booster station ? 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 7 What does standards or regulations say about the FRC levels in WDSs? Reference Minimum FRC (mg/L) Maximum FRC (mg/L) Ministry of Health Turkey - 0,5 World Health Organization(WHO) 0,2 5,0 Munavalli ve Kumar 0,2 0,4 Kooij 0,3(optimum) - Constans 0,1 0,5 Rouhiainan 0,1 0,6 Issam ve Lebdi 0,1 0,5 Propato 0,2 0,4 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 8 Literature survey • Some authors have employed optimization techniques that utilized single objective function (Levi and Mallevialle [9]; Uber et all., [10] ; Boccelli et. all. [11]; Nace et all [12] ) • Rouhiainen et. all [13] have employed multiple objective functions that depends on pareto. • Rouhiainen et all employed [14] ANNtechniqe utilizing GA with single objective function. • Issam and Lebdi [3]; Uçaner and Özdemir [15] utilizes GA for optimum location and numbers of booster stations. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 9 The unique property of BetterNet software The unique property of this specific software : – “To minimize the risk of consumption of water outside the defined desirable range”, ( Pektürk [16]). 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 10 Solution Methodology: GA • GA Methodology has been adopted for BetterNet software. • It is an optimization methodology. • The methodology tries to find best solution in a systematical way. • The acceptable solutions can be reached very fast even for large networks with high speed computers. • It even find solutions that could not be solved with other techniques 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 11 GA-When to use? • For complex problems with large search space. • When it is difficult to find a solution within limited search space where the information is limited. • For complex problems for which classical optimization approaches are insufficient. • For problems for which the mathematical models that define the problem is complex or for which mathematical modelling is not possible. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 12 Logical Design of BetterNet Software Deterministic Modeling Tool (EPANET) EPS Module EPS Results Network Description Water Distribution Network Under Study Dosing Strategy (Location/Amount) Genetic Algorithm Implementation Dosing Strategy Dosing Strategies Descriptions (Location / Amount) (Location/Amount) Fitness Function Selection Crossover Mutation 3/12/2014 Pektürk, Kılıçarchitecture and SoyupakLosses Figure 1. The of Water the solution. Management in Water Supply SystemsSeptember 2012 ANTALYA 13 Objective functions The general rule of the optimization was to keep FRC levels for any time and for any node to be in between the desired cmax and cmin levels. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 14 Centralization of FRC levels m T Min ( SSD c(i, j ) cmedian ) 2 i 1 j 1 SSD(m, T) : The sum of square of differences between FRC concentration levels and desirable average FRC concentration value (median of maximum and minimum allowable concentrations) throughout the EPS process, m : Total number of nodes, T : EPS duration excluding the starting transition period, i, j : Indices for the nodes and time steps, c(i,j) : Calculated FRC concentration level at ith node for the jth time step, cmedian= Desirable median level, cmin : Minimum allowable FRC concentration level within WDS, cmax : Maximum allowable FRC concentration level within WDS, Allowable range: (cmin ≤ ≤ cmax) 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 15 Minimization of variance of FRC levels within WDS T Min ( 2 K (c j 1 i 1 i, j c) 2 N 1 ) ci,j : FRC concentration level of node i in time j , σ2 : Variance of concentrations ,concentrations within acceptable range i : The index of a node , K : Total number of nodes , T : EPS duration excluding the starting transition period, : Average of the calculated concentrations , N : T*K 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 16 Minimization of risk of occurrence probability of FRC concentration values outside of the allowable range T Min ( R (1 KP Q j 1 i 1 T c i, j i, j )) NN Q j 1 i 1 c i, j i, j Where R : Risk of consumption of water with FRC values outside of the the allowable range , ci,j: Chlorine concentration level of node i in time j, Qi,j : The amount of flow demand at node i in time j, KP : Total number of nodes having concentration levels withinin allowable range (where cmin ≤ ≤ cmax) NN : Total number of nodes, T : EPS duration excluding the starting transition period, 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 17 Minimization of trihalomethane formation risk index NN T Min ( SSD TORI c(i, j ) cmin ) 2 i 1 j 1 SSD : The sum of square of differences between FRC concentration levels and permitted lowest concentration values throughout the EPS process, NN : Total number of nodes, T : EPS duration excluding the starting transition period, i, j : Indices for the nodes and time steps, c(i, j) : FRC concentration level at node i in time step j, 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 18 Minimization of total FRC that reaches to consumers: NN T Min (Total FRC that reaches to consumers Qi , j Ci , j ) i 1 j 1 NN : Total number of nodes, T : EPS duration excluding the starting transition period, i, j : Indices for the nodes and time steps, c(i,j) : Measured chlorine concentration level at node i in time step j, Qi,j : The amount of water demand at node i in time j. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 19 How to use BetterNet software? We have to enter two categories of parameters: 1. GA Application Parameters 2. WDS Parameters 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 20 GA Application Parameters GA parameters/switches that can be set by the user 1)Population size 2)Cross over probability 3)Mutation probability 4)Elitisim percentage 5)Termination mode 6)Generation size 7)Ε psilon Value 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 21 WDS Parameters GA parameters/switches that can be set by the user 1)Objective function 2)Solution method 3)Number of booster stations 4)Dosing regime 5)Existence of source dosing 6)Chlorination range of boosters 7)Boosting step size 8)Desirable range of chlorine 9)Transition period control 10)Transition period 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 22 Results and discussions 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 23 A hypothetical network Demand pattern 1.8 1 2 Demand Factor (Average=1) 1.4 3 32 33 30 34 28 4 4 44 14 16 1.0 40 31 25 2 43 1.2 30 27 29 26 1.6 17 16 5 5 6 6 18 41 8 19 15 1 29 3 7 20 42 7 9 8 39 18 21 10 35 40 22 19 20 0.8 0.6 0.4 11 32 23 9 45 36 31 24 21 10 12 22 25 33 37 23 11 13 26 34 41 0.2 38 0.0 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 36 37 Time(hours) Number of Nodes Number of Source Reservoirs Number of Tanks Number of Pumps Number of Pipes Total of Pipe Lengths (km) 39 2 1 1 45 43. 2 3/12/2014 24 27 17 28 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA Total Base Nodal Demand (cmh) 754 12 15 14 38 13 35 39 (mm) 200400 24 One application example : Rules of optimization: Chlorine boosting range: 0.2-0.5.0 ppm; Number of boosting station: 4; Step size = 0.05 ppm ; Cmin=0.2 ppm ; Cmax=0.5 ppm ;Transition duration= 24 hours;ε=0.001 The Objective Function for which optimization was performed → OF 1 “Centralization of FRC levels” OF 2 “Minimization of variance of FRC levels within WDS” OF3 “Minimization of risk of occurrence probability of FRC concentration values outside of the allowable range” 42.20801 0.007041431 0.04558521 85.36046 42.20801 0.007041431 0.04558521 85.36046 46.57488 0.007240229 0.0463766 93.76543 58.73776 0.009021726 0.07322767 66.70158 5.053405Kg/day 5.053405Kg/day 5.157116Kg/day 4.644409Kg/day The calculated values for different objectives↓ SSD σ2 R THM Formation Risk Index Total chlorine consumption 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA OF4 “Minimization of trihalomethane formation risk index” 25 The Objective Function for which optimization was performed → Nodes ->Dosages 3/12/2014 OF 1 “Centralization of FRC levels” 7 38 28 19 → → → → 0.4 0.45 0.4 0.4 OF 2 “Minimization of variance of FRC levels within WDS” 7 28 19 38 → → → → 0.4 0.4 0.4 0.45 OF3 “Minimization of risk of occurrence probability of FRC concentration values outside of the allowable range” 7 33 28 19 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA → 0.45 → 0.45 → 0.45 → 0.45 OF4 “Minimization of trihalomethane formation risk index” 34 32 28 19 → → → → 0.2 0.2 0.2 0.2 26 Effects of Number of Boosters and Optimation Rules on Objective Function Values “The calculated variance values under different optimization rules and booster numbers.” “The calculated SSD under different optimization rules and booster numbers” The calculated variance values under different optimization rules and booster numbers 0.010 The calculated SSD under different optimization rules and booster numbers 70 0.009 60 0.007 40 0.006 Variance Sum of square of deviations 0.008 50 30 0.005 0.004 20 0.003 10 0 0 1 2 3 4 5 The SSD for The SSD for The SSD for The SSD for OF1 OF2 OF3 OF4 0.002 0.001 Number of boosters 0.000 0 1 2 3 4 5 The calculated variance for The calculated variance for The calculated variance for The calculated variance for OF1 OF2 OF3 OF4 optimization optimization optimization optimization Number of bosters 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 27 Effects of Number of Boosters and Optimation Rules on Objective Function Values “The calculated exposure risk under different optimization rules and booster numbers.” “The calculated TFRI under different optimization rules and booster numbers.” The calculated exposure risk under different optimization rules and booster numbers The calculated TFRI under different optimization rules and booster numbers 0.08 100 0.06 80 0.04 60 TFRI Exposure risk 0.10 0.02 40 0.00 0 1 2 3 4 5 Calculated Calculated Calculated Calculated exposure risk for exposure risk for exposure risk for exposure risk for OF1 optimization OF2 optimization OF3 optimization OF4 optimization 20 Number of boosters 0 0 1 2 3 4 5 Calculated Calculated Calculated Calculated TFRI for TFRI for TFRI for TFRI for OF1 OF2 OF3 OF3 Number of boosters 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 28 ANTALYA Konyaaltı WDS The WDS has detailed and realistic information. The network can be operated independently from other parts of Antalya –Network. There are enough SCADA monitoring stations within network. The area is important from national and international tourism point of view. BOGACAY POMPA ISTASYONU 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 29 Application properties- The following GA Parameters have been adopted for an efficient search in solution space 3/12/2014 GA Application Parameter Low Middle High Cross over probability 0,85 0,90 0,95 Mutation probability 0,01 0,03 0,05 Elitisim percentage 0,1 0,2 0,4 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 30 Application properties- (Cont.) • 12 Different scenarios have been established for Konyaaltı WDS. • 7 of these 12 Scenarios represent operational conditions under low decay kinetics; 5 of these 12 Scenarios represent operational conditions under high decay kinetics. • The desirable FRC level at any point and at any time in WDS is above 0.2 ppm under any operational condition while water chlorine level is 0.45 ppm after chlorination applicaton at Bogacay Pumping Station ( TÜBİTAK 1007 G 088 project report [25] ). • Objective function 3 has been generally adopted to minimize the consumption of chlorine outside the desirable range. In parallel to the satisfaction of objective function 3 ; the magnitudes of the other objective functions have been calculated and used as decision support arguments. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 31 First interface-WDS parameters 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 32 Second Interface-GA Application Parameters 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 33 Table 1. The properties of Application (chlorine decay rate in water kb=0.11305 day-1 v and pipe wall chlorine decay rate kw= -0.01 ) [TÜBİTAK 107G088 NO PROJECT REPORT]. Minimization of risk of occurrence probability of FRC concentration values outside of the allowable range” Objective function Algorithm Dosing regime Source dosing Number of boosting station Boosting chlorination range OF3 Improved GA Continuous Present 2 0,3-0,4 Desirable chlorine levels (mg/l) Population size Generations Cross over probability Mutation probability Elitism percentage 0,3-0,4 100 50 0,85 0,01 0,4 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 34 Results related to attainable improvement • Two booster stations should be established at – Station No 70301 with constant feeding level of 0.4ppm, & – Station No 70024 with constant feeding level of 0.4ppm. • The study results have shown that the risk of consumption of water with chlorine levels outside allowable range could be reduced from 0/00 0.957 to 0/00 0.316 operating 2 booster stations with above characteristics. • The risk levels could be improved further only by improving dead ends. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 35 The reduction in the of consumption of water with chlorine levels outside allowable range by using 2 stations 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 36 The nodes with water age of more than 30 days 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 37 General Results • Decision support software (for water distribution system chlorination) that can determine the number of boosters, their locations and operating regimes is developed [24]. • The reached solutions keeps chlorine utilization at minimum levels in order to minimize system specific trihalomethane formation risk index and reducing the chlorine levels to lower values at the exit of main sources. • Using BetterNet requires a domain expertise in water distribution network design and analysis. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 38 Acknowledegements • TUBITAK-Türkiye Bilimsel ve Teknolojik Araştırma Kurumu- (Turkish scientific and technological instituton) for support through project 1007 G 088. • ASAT (Antalya Water and Sewage Administration ) • Akdeniz University Administration, • Akdeniz University Department of Environmental Engineering • Atilim University 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 39 Special Thanks to • Prof.Dr.Habib Muhammetoglu for wonderful management of the project. • Prof.Dr. Ayse Muhammetoglu for deterministic modelling and kinetic studies. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 40 Thanks to • Eng. Ethem Karadirek (Akdeniz University) • Engineers Ismail Demirel, Tugba Ozden and Ibrahim Palanci of ASAT 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 41 REFERENCES 1) “Sağlık Bakanlığı, İnsani Tüketim Amaçlı Sular Hakkında Yönetmelik”, Resmi Gazete: 17 Şubat 2005 Perşembe- Sayı: 25730 ; Değişiklik: Resmi Gazete: 24.07.2005 Tarih ve 25885 Sayı. 2) Dünya Sağlık Teşkilatı (World Health Organization), 2008, “Guidelines for Drinking Water Quality, Third Edition Incorporating The first and second addenda, Recommendations”, Geneva. 3) N. Issam, F. Lebdi, Genetic algorithm for optimal choice of chlorine booster stations in drinking water networks - Algorithme Genetique (AG) Pour Le Choix Optimal Des Stations D’appoint De Chlorine Sur Les Reseaux D`eau Potable, Revue des Sciences de l`eau, no:1 (2006) 47-55. 4) G.R.Munavalli ve M.S.M.Kumar, 2003, J. Water Resour. Plan. Manage.-ASCE , 129, 493 5) V.D.Kooij , 2003. 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Cincinnati, ABD. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 42 REFERENCES (Cont.) • • • • • • • • 9) Y.Levi ve J.Mallevialle , 1995, Proc. of the China Water Supply Association, Safety of Water Supply in Transmission and Distribution Systems, Shanghai, China. 10) J.G.Uber , R.S.Summers, D.C.Boccelli, M.T.Koechling, M.E.Tryby ve L.A. Rossman, 1996, Proc. of the AWWA Annual Conference, June 23-27, Toronto, Ontario, Canada. , Cilt: D: 197. 11 )D.L.Boccelli, M.E. Tryby, J.G. Uber, L.A. Rossman, M.L. Zierolf, ve M.M. Polycarpou, 1998, J. of Wat. Res. Plan. and Mana., 124(2), 99 12) A.Nace, P.Harmant ve P.Villon, 2001, Proc of the World Water & Environmental Resource Congress, May 20-24, Orlando, Florida, (Editörler Phelps ve G.Sehlke). 13) C.J.Rouhiainen, M.O.Tade, ve G.West, 2003.a. Multi Objective Algorithm for Optimal Scheduling of Chlorine Dosing in Water Distribution Systems”, Department of Chemical Engineering, Curtin University of Technology, http://www.lania.mx/~ccoello/EMOO/rouhiainen03a.pdf.gz Perth, Australia. 14) C.J.Rouhiainen, M.O.Tade ve G.West, 2003b, Proc.of the 20th Convention of the Australian Water Association, 6-10 April, 2003, Perth, Australia, 1. 15) O.N.Özdemir, ve M.E.Uçaner, 2005. Success of Booster Chlorination for Water Supply Networks with Genetic Algorithms, Journal of Hydraulic Research, 43:3, 267. 16)M.K.Pektürk, 2010, “A Domain Aware Genetic Algorithm for Optimum Booster Chlorination In Water Distribution Systems”, Yüksek Lisans Tezi, Bilgisayar Mühendisliği Bölümü, Atılım Üniversitesi, Ankara, Haziran. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 43 REFERENCES (Cont.) 17) S.Soyupak, H.Kılıç ve M.K. Pektürk, 2011, “Daha iyi şebeke kullanıcı klavuzu Genetik algoritma tabanlı şebeke dezenfeksiyon yazılımı sürüm (2.2)”, TÜBİTAK 1007 G 088 Nolu Proje final rapor eki (EK-6), “İçme Suyu Dağıtım Şebekelerinde Optimum Klorlama Uygulamalarının Matematiksel Modeller Kullanılarak Gerçekleştirilmesi ve Dezenfeksiyon Sistemlerinin Yönetimi”. 18) D.Beasley, D.R.Bull ve R.R.Martin, 1993, University Computing, 15(2), 58 19) M.Dorigo ve T.Stützle, 2004, “Ant Colony Optimization”, MIT Press, Cambridge,MA. 20) D.Karaboğa, ve B.Akay, 2009, App. Math. and Comp., 214, 108 21) L.N. De Castro ve J.I.Timmins, 2002, “Arificial Immune Systems: A New Computational Intelligence Approach”, Springer-Verlag, London 22) J.Hertz, A.Krogh, R.G.Palmer, 1993, “Introduction to the Theory of Neural Computation, Lecture Notes Volume I”., Santa Fe Institute, Studies in the Sciences of Complexity, AddisonWesley Publishing Company,CA. 23) L.A.Rosmann, 2000, “EPANET-2” , National Risk Management Research Laboratory, Office of Research and Development , USA EPA, Cincinatti , OH 45268. 24) Pektürk, M.K., Kılıç H. ve Soyupak, S., (2010). “DahaİyiŞebeke 2.2 Yazılımı Kullanıcı Kılavuzu”, Atılım Üniversitesi, Ankara. 25) ASAT (Antalya Su ve Atıksu İdaresi Genel Müdürliğü - Akdeniz Üniversitesi Çevre Mühendisliği Bölümü, 2011, “TÜBİTAK 1007 G 088 Nolu Proje final rapor , İçme Suyu Dağıtım Şebekelerinde Optimum Klorlama Uygulamalarının Matematiksel Modeller Kullanılarak Gerçekleştirilmesi ve Dezenfeksiyon Sistemlerinin Yönetimi Projesi”, Proje Yöneticisi: Prof.Dr. Habib Muhammetoğlu. 3/12/2014 Pektürk, Kılıç and Soyupak- Water Losses Management in Water Supply SystemsSeptember 2012 ANTALYA 44
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