Evapotranspiration Estimation Using Support Vector Machines and Hargreaves-Samani Equation for St. Johns, FL, USA

Similar documents
Intermittent demand forecasting by using Neural Network with simulated data

Modified Decomposition Method by Adomian and. Rach for Solving Nonlinear Volterra Integro- Differential Equations

Comparison Study of Series Approximation. and Convergence between Chebyshev. and Legendre Series

Research Article A New Second-Order Iteration Method for Solving Nonlinear Equations

Research Article A Unified Weight Formula for Calculating the Sample Variance from Weighted Successive Differences

Research Article Health Monitoring for a Structure Using Its Nonstationary Vibration

10-701/ Machine Learning Mid-term Exam Solution

Forecasting SO 2 air pollution in Salamanca, Mexico using an ADALINE.

Electricity consumption forecasting method based on MPSO-BP neural network model Youshan Zhang 1, 2,a, Liangdong Guo2, b,qi Li 3, c and Junhui Li2, d

Research Article Health Monitoring for a Structure Using Its Nonstationary Vibration

Estimation of Population Mean Using Co-Efficient of Variation and Median of an Auxiliary Variable

Improved Class of Ratio -Cum- Product Estimators of Finite Population Mean in two Phase Sampling

AClassofRegressionEstimatorwithCumDualProductEstimatorAsIntercept

Research Article Research on Application of Regression Least Squares Support Vector Machine on Performance Prediction of Hydraulic Excavator

Runoff Prediction with a Combined Artificial Neural Network and Support Vector Regression

The Sampling Distribution of the Maximum. Likelihood Estimators for the Parameters of. Beta-Binomial Distribution

Research on Dependable level in Network Computing System Yongxia Li 1, a, Guangxia Xu 2,b and Shuangyan Liu 3,c

Research Article Approximate Riesz Algebra-Valued Derivations

COMPLEX FACTORIZATIONS OF THE GENERALIZED FIBONACCI SEQUENCES {q n } Sang Pyo Jun

Information-based Feature Selection

Chain ratio-to-regression estimators in two-phase sampling in the presence of non-response

Correspondence should be addressed to Wing-Sum Cheung,

Double Stage Shrinkage Estimator of Two Parameters. Generalized Exponential Distribution

Investigating the Significance of a Correlation Coefficient using Jackknife Estimates

11 Correlation and Regression

Prediction of frost occurrence by estimating daily minimum temperature in semi-arid areas in Iran

The prediction of cement energy demand based on support vector machine Xin Zhang a, *, Shaohong Jing b

Two Topics in Number Theory: Sum of Divisors of the Factorial and a Formula for Primes

A statistical method to determine sample size to estimate characteristic value of soil parameters

Review Article Incomplete Bivariate Fibonacci and Lucas p-polynomials

Approximating the ruin probability of finite-time surplus process with Adaptive Moving Total Exponential Least Square

Scientific Review ISSN(e): , ISSN(p): Vol. 4, Issue. 4, pp: 26-33, 2018 URL:

Study on Coal Consumption Curve Fitting of the Thermal Power Based on Genetic Algorithm

RAINFALL PREDICTION BY WAVELET DECOMPOSITION

Modified Ratio Estimators Using Known Median and Co-Efficent of Kurtosis

Control Charts for Mean for Non-Normally Correlated Data

Uniform Strict Practical Stability Criteria for Impulsive Functional Differential Equations

Analytical solutions for multi-wave transfer matrices in layered structures

A Relationship Between the One-Way MANOVA Test Statistic and the Hotelling Lawley Trace Test Statistic

Research on real time compensation of thermal errors of CNC lathe based on linear regression theory Qiu Yongliang

ECE 8527: Introduction to Machine Learning and Pattern Recognition Midterm # 1. Vaishali Amin Fall, 2015

Machine Learning Theory Tübingen University, WS 2016/2017 Lecture 11

Volume 3, Number 2, 2017 Pages Jordan Journal of Electrical Engineering ISSN (Print): , ISSN (Online):

New Results for the Fibonacci Sequence Using Binet s Formula

Formulas for the Number of Spanning Trees in a Maximal Planar Map

Lecture 10: Performance Evaluation of ML Methods

Alternative Ratio Estimator of Population Mean in Simple Random Sampling

Classification of fragile states based on machine learning

Bounds for the Positive nth-root of Positive Integers

Free Space Optical Wireless Communications under Turbulence Channel Effect

Similarity Solutions to Unsteady Pseudoplastic. Flow Near a Moving Wall

Week 1, Lecture 2. Neural Network Basics. Announcements: HW 1 Due on 10/8 Data sets for HW 1 are online Project selection 10/11. Suggested reading :

G. R. Pasha Department of Statistics Bahauddin Zakariya University Multan, Pakistan

A New Multivariate Markov Chain Model with Applications to Sales Demand Forecasting

Chapter 7. Support Vector Machine

Optimally Sparse SVMs

MOMENT-METHOD ESTIMATION BASED ON CENSORED SAMPLE

FLUID LIMIT FOR CUMULATIVE IDLE TIME IN MULTIPHASE QUEUES. Akademijos 4, LT-08663, Vilnius, LITHUANIA 1,2 Vilnius University

Proof of Fermat s Last Theorem by Algebra Identities and Linear Algebra

Support vector machine revisited

Application of the Zhe Yin s Gene Inherits Law

Linear Regression Models

577. Estimation of surface roughness using high frequency vibrations

Applications of Two Dimensional Fractional Mellin Transform

The AMSU Observation Bias Correction and Its Application Retrieval Scheme, and Typhoon Analysis

THE TRANSFORMATION MATRIX OF CHEBYSHEV IV BERNSTEIN POLYNOMIAL BASES

Comparison of Minimum Initial Capital with Investment and Non-investment Discrete Time Surplus Processes

OPTIMAL PIECEWISE UNIFORM VECTOR QUANTIZATION OF THE MEMORYLESS LAPLACIAN SOURCE

567. Research of Dynamics of a Vibration Isolation Platform

Journal of Hydrosciences and Environment Available online at

Weakly Connected Closed Geodetic Numbers of Graphs

ECE 901 Lecture 12: Complexity Regularization and the Squared Loss

Discrete Orthogonal Moment Features Using Chebyshev Polynomials

A General Family of Estimators for Estimating Population Variance Using Known Value of Some Population Parameter(s)

Research Article Nonexistence of Homoclinic Solutions for a Class of Discrete Hamiltonian Systems

DERIVING THE 12-LEAD ECG FROM EASI ELECTRODES VIA NONLINEAR REGRESSION

A Unified Approach on Fast Training of Feedforward and Recurrent Networks Using EM Algorithm

Complex Number Theory without Imaginary Number (i)

Research Article Some E-J Generalized Hausdorff Matrices Not of Type M

International Journal of Mathematical Archive-5(7), 2014, Available online through ISSN

Finite Difference Approximation for Transport Equation with Shifts Arising in Neuronal Variability

A New Bound between Higher Order Nonlinearity and Algebraic Immunity

ECON 3150/4150, Spring term Lecture 3

Control chart for number of customers in the system of M [X] / M / 1 Queueing system

Improved Ratio Estimators of Population Mean In Adaptive Cluster Sampling

Taylor polynomial solution of difference equation with constant coefficients via time scales calculus

Solving a Nonlinear Equation Using a New Two-Step Derivative Free Iterative Methods

CONTENTS. Course Goals. Course Materials Lecture Notes:

Research Article Global Exponential Stability of Discrete-Time Multidirectional Associative Memory Neural Network with Variable Delays

ME 539, Fall 2008: Learning-Based Control

Pattern Classification

The Choquet Integral with Respect to Fuzzy-Valued Set Functions

γ-max Labelings of Graphs

Power Weighted Quantile Regression and Its Application

ECO 312 Fall 2013 Chris Sims LIKELIHOOD, POSTERIORS, DIAGNOSING NON-NORMALITY

Research Article Measurement and Prediction Method of Compressibility Factor at High Temperature and High Pressure

Topics Machine learning: lecture 2. Review: the learning problem. Hypotheses and estimation. Estimation criterion cont d. Estimation criterion

New Approximations to the Mathematical Constant e

Mechanical Efficiency of Planetary Gear Trains: An Estimate

Abstract. Ranked set sampling, auxiliary variable, variance.

Transcription:

Evirometal Egieerig 0th Iteratioal Coferece eissn 2029-7092 / eisbn 978-609-476-044-0 Vilius Gedimias Techical Uiversity Lithuaia, 27 28 April 207 Article ID: eviro.207.094 http://eviro.vgtu.lt DOI: https://doi.org/0.3846/eviro.207.094 Evapotraspiratio Estimatio Usig Support Vector Machies ad Hargreaves-Samai Equatio for St. Johs, FL, USA Fatih Üeş, Yuus Ziya Kaya 2, Mustafa Mamak 3, Mustafa Demirci 4, 4 Civil Egieerig Departmet, Iskederu Techical Uiversity, Iskederu, Turkey 2, 3 Civil Egieerig Departmet, Osmaiye Korkut Ata Uiversity, Osmaiye Turkey E-mails: fatihues66@gmail.com; 2 yuuszkaya@osmaiye.edu.tr; 3 mmamak@osmaiye.edu.tr (correspodig author); 4 mustafa.demirci@iste.edu.tr Abstract. Iformatio about Evapotraspiratio (ET) calculatios are ot clear eough eve it is a importat part of hydrological cycle. There are may parameters which effect ET directly or idirectly such as Solar Radiatio (SR) ad Air Temperature (AT). I this study authors focused o the modellig ET usig Support Vector Machies (SVM) method because this method has abilities to solve oliear problems. For the traiig SVM 58 daily AT, SR, Wid Speed (U) ad Relative Humidity (RH) meteorological parameters are used ad model is tested usig 385 daily parameters. Data set is take from St. Johs, Florida, USA weather statio. To uderstad the abilities of SVM for ET predictio agaist Hargreaves-Samai formula, the test set is applied to this empirical equatio. Determiatio coefficiet of SVM with observed daily ET values is calculated as 0.93 ad determiatio coefficiet of Hargreaves- Samai formula with observed daily ET is foud as 0.90. Compariso betwee both methods is doe usig Mea Square Error (MSE), Mea Absolute Error (MEA) ad determiatio coefficiet statistics. As a result it is see that SVM method is trustier tha Hargreaves-Samai formula for daily ET predictio. Keywords: evapotraspiratio, hargreaves-samai, estimatio, modellig. Coferece Topic: Water egieerig. Itroductio Evapotraspiratio estimatio takes a major role for irrigatio maagemet ad hydraulic desigs. Despite this major role, ET is ot uderstood well eough (Brutsaert 982). Evapotraspiratio is a combiatio of evaporatio ad traspiratio. Whe the crop is small i a stated area, evaporatio is the mai factor of ET but whe the crop is well developed the the mai factor is goig to be traspiratio ( FAO. d.). Therefore, to uderstad the ET mechaism, it is eeded to uderstad evaporatio ad traspiratio. Basically, evaporatio takes place at the topsoil whe the water is available ad traspiratio is the removal of vapour to the atmosphere from the crop tissues (Kişi 2007). Difficulties of ET predictio come from oliear direct or idirect effects o ET such as SR, AT, RH meteorological variables. Hece, i the past decade some artificial itelligece ad data miig methods are used to estimate daily ET, evaporatio ad pa evaporatio. For istace M5T method is used to estimate Referece ET (Pal, Deswal 2009), artificial eural etworks for ET predictio (Kumar et al. 20) ad geeralized eural etworks for ET predictio (Kişi 2006). I this study, ET is estimated usig Support Vector Machies (SVM) as a data miig method. SR, AT, RH, U daily meteorological parameters are used to trai SVM model ad test set results are obtaied. SVM model results are compared with Hargreaves-Samai empirical formula test set results usig determiatio coefficiet, Mea Square Error (MSE) ad Mea Absolute Error (MAE). Data set is dowloaded from USGS website (USGS.gov. d.) for the St. Johs FL, USA regio. Methodology Support Vector Machies (SVM) SVM is a data miig method which is i use for regressio ad classificatio. This method is described by Vapik (Vapik et al. 996). It is possible to classify variables o a plae by drawig a borderlie betwee them. The borderlie which is draw betwee variables must be as far as possible to each variable. Here it is SVM defies how to draw this borderlie betwee variables group. SVM workig priciple is give by Figure. 207 Fatih Üeş, Yuus Ziya Kaya, Mustafa Mamak, Mustafa Demirci. Published by VGTU Press. This is a ope-access article distributed uder the terms of the Creative Commos Attributio (CC BY-NC 4.0) Licese, which permits urestricted use, distributio, ad reproductio i ay medium, provided the origial author ad source are credited.

Üeş, F.; Kaya, Y. Z.; Mamak, M.; Demirci, M. 207. Evapotraspiratio estimatio usig support vector machies ad Fig.. SVM workig priciples (Kişi 205) Forecastig vector, support vector, oliear fuctio, Kerel fuctio ad forecastig results are the stages of SVM workig priciple as give by Figure. For further iformatio about Support Vector Machies (SVM) readers are referred to (Vapik et al. 996). Hargreaves-Samai Formula Necessary parameters for calculatio of daily ET with Hargreaves-Samai equatio are daily maximum temperature (T max), daily miimum temperature (T mi) ad extraterrestrial solar radiatio (R s) (Hargreaves, Samai 985). The equatio which is used for calculatio is give below; ET= 0.035 0.408 Rs ( T+ 7.8 ), () where: T represets daily mea temperature ad Rs extraterrestrial solar radiatio i Hargreaves-Samai equatio. Evaluatio Criteria Mea Square Error (MSE), Mea Absolute Error (MAE) ad determiatio coefficiet statistics are calculated usig equatios (2, 3 & 4). R= MSE= * fi yi ; ( ) 2 (2) N i = MAE= * fi yi ; (3) N i = i= i i ( y ) ( x ). 2 2 ( x ). ( ) i y i= i= i where: f i represets predicted values ad y i represets daily observed values for equatio (2&3) x i shows ith actual value, y i shows ith predicted value, x represets x mea ad y represets y mea at equatio (4)., (4) Results This study is focused o SVM method abilities o ET estimatio. Hece, a SVM model is created by usig SR, AT, RH, U daily meteorological parameters as iput. Model test results are compared with Hargreaves-Samai empirical equatio. Compariso is doe with Mea Square Error (MSE), Mea Absolute Error (MAE) ad determiatio coefficiet statistics. Distributio graph ad scatter chart of SVM model ad Hargreaves-Samai formula results are give separately. 2

Üeş, F.; Kaya, Y. Z.; Mamak, M.; Demirci, M. 207. Evapotraspiratio estimatio usig support vector machies ad Fig. 2. SVM test results distributio graph It is show i Figure 2 that distributio of SVM model results is i same directio with observed daily values for test set. R 2 =0.93 Fig. 3. SVM test results scatter chart Determiatio coefficiet of SVM method is calculated as 0.93 which is also give i Figure 3. Fig. 4. Distributio graph of Hargreaves-Samai equatio test results 3

Üeş, F.; Kaya, Y. Z.; Mamak, M.; Demirci, M. 207. Evapotraspiratio estimatio usig support vector machies ad Daily distributio graph of Hargreaves-Samai which is give by Figure 4 shows that there is high correlatio betwee empirical formula ad observed daily values. R 2 =0.90 Fig. 5. Scatter chart of Hargreaves-Samai equatio test set results Scatter chart of Hargreaves-Samai empirical formula is give by Figure 5. Determiatio coefficiet is calculated as 0.90 which that meas determiatio coefficiet is almost same as SVM model determiatio coefficiet. The determiatio coefficiet, MSE ad MAE values of SVM model ad Hargreaves-Samai equatio are give i Table. Although the determiatio coefficiets of both methods seem to be equal, MSE ad MAE values of SVM model are less tha Hargreaves-Samai method. Method Table. Compariso statistics Parameters Used Determiatio Coefficiet MSE MAE SVM SR, AT, RH, U 0.93 0.78 0.298 Hargreaves-Samai AT, SR 0.90 0.550 0.635 Coclusio Authors study o ET estimatio usig SVM model for St. Johs, FL, USA regio. It is uderstood that SVM method gives quite close results to Hargreaves-Samai empirical equatio results. MSE, MAE error calculatios preset that both method could be employed ET predictio successfully, but accordig to the error calculatios it is clear that SVM method results are better tha empirical equatio results. This study is carried out for a particular regio St. Johs, FL, USA. That is why authors proposed that SVM method should be applied to differet regios to verify SVM method ability o ET estimatio. Refereces Brutsaert, W. 982. Evaporatio ito the atmosphere: theory, history ad applicatios. Spriger Netherlads. https://doi.org/0.007/978-94-07-497-6 FAO.. d. Chapter Itroductio to evapotraspiratio [olie], [cited 0 December 207]. Available from Iteret: http://www.fao.org/docrep/x0490e/x0490e04.htm Hargreaves, G. H.; Samai, Z. A. 985. Referece crop evapotraspiratio from temperature, Applied Egieerig i Agriculture : 96 99. https://doi.org/0.303/203.26773 Kişi, O. 205. Pa evaporatio modelig usig least square support vector machie, multivariate adaptive regressio splies ad M5 model tree, Joural of Hydrology 528: 32 320. https://doi.org/0.06/j.jhydrol.205.06.052 Kişi, O. 2007. Evapotraspiratio modellig from climatic data usig a eural computig techique, Hydrological Processes 2: 925 934. https://doi.org/0.002/hyp.6403 4

Üeş, F.; Kaya, Y. Z.; Mamak, M.; Demirci, M. 207. Evapotraspiratio estimatio usig support vector machies ad Kişi, Ö. 2006. Geeralized regressio eural etworks for evapotraspiratio modellig, Hydrological Scieces Joural 5: 092 05. https://doi.org/0.623/hysj.5.6.092 Kumar, M.; Raghuwashi, N. S.; Sigh, R. 20. Artificial eural etworks approach i evapotraspiratio modelig: a review, Irrigatio Sciece 29: 25. https://doi.org/0.007/s0027-00-0230-8 Pal, M.; Deswal, S. 2009. M5 model tree based modellig of referece evapotraspiratio, Hydrological Processes 23: 437 443. https://doi.org/0.002/hyp.7266 USGS.gov..d. Sciece for a chagig world [olie], [cited 2 Jauary 207]. Available from Iteret: https://www.usgs.gov/ Vapik, V.; Vapik, V.; Golowich, S. E.; Smola, A. 996. Support vector method for fuctio approximatio, regressio estimatio, ad sigal processig, Advaces i Neural Iformatio Processig Systems 9: 28 287. 5