Numerical solution of first order linear fuzzy differential equations using Leapfrog method

Similar documents
NUMERICAL TREATMENT OF THE RLC SMOOTHING CIRCUIT USING LEAPFROG METHOD

Numerical Solution of Fuzzy Differential Equations

NUMERICAL SOLUTIONS OF FUZZY DIFFERENTIAL EQUATIONS BY TAYLOR METHOD

A Method for Solving Fuzzy Differential Equations Using Runge-Kutta Method with Harmonic Mean of Three Quantities

An Implicit Method for Solving Fuzzy Partial Differential Equation with Nonlocal Boundary Conditions

Solving Two-Dimensional Fuzzy Partial Dierential Equation by the Alternating Direction Implicit Method

Concept of Fuzzy Differential Equations

Two Step Method for Fuzzy Differential Equations

First Order Non Homogeneous Ordinary Differential Equation with Initial Value as Triangular Intuitionistic Fuzzy Number

NUMERICAL SOLUTION OF A BOUNDARY VALUE PROBLEM FOR A SECOND ORDER FUZZY DIFFERENTIAL EQUATION*

FUZZY SOLUTIONS FOR BOUNDARY VALUE PROBLEMS WITH INTEGRAL BOUNDARY CONDITIONS. 1. Introduction

A METHOD FOR SOLVING DUAL FUZZY GENERAL LINEAR SYSTEMS*

Numerical Investigation of the Time Invariant Optimal Control of Singular Systems Using Adomian Decomposition Method

A Novel Numerical Method for Fuzzy Boundary Value Problems

Fuzzy Numerical Solution to Horizontal Infiltration

New Multi-Step Runge Kutta Method For Solving Fuzzy Differential Equations

Solution of Fuzzy Growth and Decay Model

Solution of the Fuzzy Boundary Value Differential Equations Under Generalized Differentiability By Shooting Method

Adomian decomposition method for fuzzy differential equations with linear differential operator

IN most of the physical applications we do not have

SECOND OPTIONAL SERVICE QUEUING MODEL WITH FUZZY PARAMETERS

A Geometric Approach to Solve Fuzzy Linear Systems of Differential. Equations

Solving Fuzzy Nonlinear Equations by a General Iterative Method

SOLVING FUZZY DIFFERENTIAL EQUATIONS BY USING PICARD METHOD

Solving Systems of Fuzzy Differential Equation

Solution of the first order linear fuzzy differential equations by some reliable methods

Numerical Solution of Hybrid Fuzzy Dierential Equation (IVP) by Improved Predictor-Corrector Method

Numerical Solving of a Boundary Value Problem for Fuzzy Differential Equations

A New Method for Solving General Dual Fuzzy Linear Systems

SOLVING FUZZY LINEAR SYSTEMS OF EQUATIONS

A METHOD FOR SOLVING FUZZY PARTIAL DIFFERENTIAL EQUATION BY FUZZY SEPARATION VARIABLE

A method for solving first order fuzzy differential equation

Numerical Solution for Hybrid Fuzzy Systems by Milne s Fourth Order Predictor-Corrector Method

DIFFERENCE METHODS FOR FUZZY PARTIAL DIFFERENTIAL EQUATIONS

Type-2 Fuzzy Shortest Path

Numerical Solution of Fuzzy Differential Equations of 2nd-Order by Runge-Kutta Method

Approximations by interval, triangular and trapezoidal fuzzy numbers

You don't have to be a mathematician to have a feel for numbers. John Forbes Nash, Jr.

1.5. Analyzing Graphs of Functions. The Graph of a Function. What you should learn. Why you should learn it. 54 Chapter 1 Functions and Their Graphs

Research Article New Results on Multiple Solutions for Nth-Order Fuzzy Differential Equations under Generalized Differentiability

Fuzzy Distance Measure for Fuzzy Numbers

Research Article Adams Predictor-Corrector Systems for Solving Fuzzy Differential Equations

Leontief input-output model with trapezoidal fuzzy numbers and Gauss-Seidel algorithm

Solution of Fuzzy Maximal Flow Network Problem Based on Generalized Trapezoidal Fuzzy Numbers with Rank and Mode

Reduction Formula for Linear Fuzzy Equations

Fuzzy efficiency: Multiplier and enveloping CCR models

A new approach to solve fuzzy system of linear equations by Homotopy perturbation method

Comparison of 3-valued Logic using Fuzzy Rules

Properties of T Anti Fuzzy Ideal of l Rings

Fuzzy Topology On Fuzzy Sets: Regularity and Separation Axioms

Second order linear differential equations with generalized trapezoidal intuitionistic Fuzzy boundary value

Two Successive Schemes for Numerical Solution of Linear Fuzzy Fredholm Integral Equations of the Second Kind

On Neutrosophic Semi-Supra Open Set and Neutrosophic Semi-Supra Continuous Functions

Finding Limits Graphically and Numerically. An Introduction to Limits

THIRD ORDER RUNGE-KUTTA METHOD FOR SOLVING DIFFERENTIAL EQUATION IN FUZZY ENVIRONMENT. S. Narayanamoorthy 1, T.L. Yookesh 2

Numerical Method for Solving Second-Order. Fuzzy Boundary Value Problems. by Using the RPSM

Crisp Profile Symmetric Decomposition of Fuzzy Numbers

Fuzzy Least-Squares Linear Regression Approach to Ascertain Stochastic Demand in the Vehicle Routing Problem

Numerical Method for Fuzzy Partial Differential Equations

Fuzzy Difference Equations in Finance

International Journal of Mathematics Trends and Technology (IJMTT) Volume 48 Number 4 August 2017

Space Coordinates and Vectors in Space. Coordinates in Space

Finding Limits Graphically and Numerically. An Introduction to Limits

Hadi s Method and It s Advantage in Ranking Fuzzy Numbers

Existence of Solutions to Boundary Value Problems for a Class of Nonlinear Fuzzy Fractional Differential Equations

Chapter 2. Fuzzy function space Introduction. A fuzzy function can be considered as the generalization of a classical function.

SOLVING FUZZY LINEAR SYSTEMS BY USING THE SCHUR COMPLEMENT WHEN COEFFICIENT MATRIX IS AN M-MATRIX

Simultaneous Orthogonal Rotations Angle

Remarks on Fuzzy Differential Systems

What Did You Learn? Key Terms. Key Concepts. 158 Chapter 1 Functions and Their Graphs

Appendix 2 Complex Analysis

Representation of Functions by Power Series. Geometric Power Series

AE/ME 339. K. M. Isaac Professor of Aerospace Engineering. December 21, 2001 topic13_grid_generation 1

Part D. Complex Analysis

Australian Journal of Basic and Applied Sciences, 5(9): , 2011 ISSN Fuzzy M -Matrix. S.S. Hashemi

FIRST- AND SECOND-ORDER IVPS The problem given in (1) is also called an nth-order initial-value problem. For example, Solve: Solve:

Solution of Fuzzy System of Linear Equations with Polynomial Parametric Form

A Study on Vertex Degree of Cartesian Product of Intuitionistic Triple Layered Simple Fuzzy Graph

General Dual Fuzzy Linear Systems

The General Solutions of Fuzzy Linear Matrix Equations

COMPUTATIONAL METHODS AND ALGORITHMS Vol. I - Numerical Methods for Ordinary Differential Equations and Dynamic Systems - E.A.

Application of iterative method for solving fuzzy Bernoulli equation under generalized H-differentiability

Numerical solution of the first order linear fuzzy differential equations using He0s variational iteration method

Bifurcations of the Controlled Escape Equation

On Supra Bitopological Spaces

Regular Physics - Notes Ch. 1

Numerical Method for Solving Fuzzy Nonlinear Equations

Fuzzy economic production in inventory model without shortage

A New Approach for Solving Dual Fuzzy Nonlinear Equations Using Broyden's and Newton's Methods

Ch 2.5: Autonomous Equations and Population Dynamics

Key Renewal Theory for T -iid Random Fuzzy Variables

Best Approximation in Real Linear 2-Normed Spaces

Generalized Triangular Fuzzy Numbers In Intuitionistic Fuzzy Environment

Solving fuzzy fractional Riccati differential equations by the variational iteration method

Time-Frequency Analysis: Fourier Transforms and Wavelets

CHAPTER 80 NUMERICAL METHODS FOR FIRST-ORDER DIFFERENTIAL EQUATIONS

THE HEATED LAMINAR VERTICAL JET IN A LIQUID WITH POWER-LAW TEMPERATURE DEPENDENCE OF DENSITY. V. A. Sharifulin.

M.S.N. Murty* and G. Suresh Kumar**

Abstract Formulas for finding a weighted least-squares fit to a vector-to-vector transformation are provided in two cases: (1) when the mapping is

Properties of Limits

Transcription:

IOSR Journal of Mathematics (IOSR-JM) e-issn: 78-578, p-issn: 39-765X. Volume, Issue 5 Ver. I (Sep-Oct. 4), PP 7- Numerical solution of first order linear fuzz differential equations using Leapfrog method S. Sekar, K. Prabhavathi (Department of Mathematics, Government Arts College (Autonomous), Salem 636 7, India) (Department of Mathematics, Bannari Amman Institute of Technolog, Sathamangalam 638 4, India) Abstract : This paper presents numerical solutions of first order linear fuzz differential equations using Leapfrog method. The obtained discrete solutions are compared with single-term Haar wavelet series (STHWS) method []. Error graphs and error calculation tables are presented to highlight the efficienc of the Leapfrog method. This method can be implemented in the digital computers and take an time of solutions. Kewords: Fuzz differential equations, Fuzz initial value problems, Haar wavelet series, Leapfrog method, Single-term Haar wavelet series method. I. Introduction S. Abbasband and T. Allahviranloo [] addressed knowledge about dnamical sstems modelled b differential equations is often incomplete or vague. It concerns, for example, parameter values, functional relationships, or initial conditions. The well-known methods for solving analticall or numericall initial value problems can onl be used for finding a selected sstem behavior, e.g., b fixing the unknown parameters to some plausible values. The topics of fuzz differential equations, which attracted a growing interest for some time, in particular, in relation to the fuzz control, have been rapidl developed recent ears. The concept of a fuzz derivative was first introduced b S. L. Chang, L. A. Zadeh in [3]. It was followed up b D. Dubois, H. Prade in [4], who defined and used the extension principle. Other methods have been discussed b M. L. Puri, D. A. Ralescu in [5] and R. Goetschel, W. Voxman in [6]. Fuzz differential equations and initial value problems were regularl treated b O. Kaleva in [7] and [8], S. Seikkala in [9]. A numerical method for solving fuzz differential equations has been introduced b M. Ma, M. Friedman, A. Kandel in [] via the standard Euler method. The structure of this paper is organized as follows. In section, the proposed leapfrog method is explained in detailed. In section 3, some basic results on fuzz numbers and definition of a fuzz derivative, which have been discussed b S. Seikkala in [9], are given. In section 4, we define the problem that is a fuzz initial value problem. Its numerical solution is of the main interest of this work. Solving numericall the fuzz differential equation b the Leapfrog method is discussed in section 5. The proposed algorithm is illustrated b some examples in section 5 and the conclusion is in section 6. II. Leapfrog Method The most familiar and elementar method for approximating solutions of an initial value problem is Euler s Method. Euler s Method approximates the derivative in the form of d f t,, t, R b a finite difference quotient t t h t / h. We shall usuall discretize the independent variable in equal increments: tn tn h, n,,..., t. Henceforth we focus on the scalar case, N =. Rearranging the difference quotient gives us the corresponding approximate values of the dependent variable: n n hf t n, n, n,,..., t To obtain the leapfrog method, we discretize t n as in tn tn h, n,,..., t, but we double the time interval, h, and write the midpoint approximation h t h t h t in the form t h t h t / h and then discretize it as follows: n n hf t n, n, n,,..., t 7 Page

Numerical solution of first order linear fuzz differential equations using Leapfrog method The leapfrog method is a linear m = -step method, with a, a, b, b and b. It uses slopes evaluated at odd values of n to advance the values at points at even values of n, and vice versa, reminiscent of the children s game of the same name. For the same reason, there are multiple solutions of the leapfrog method with the same initial value. This situation suggests a potential instabilit present in multistep methods, which must be addressed when we analze them two values, and, are required to initialize solutions of n n hf t n, n, n,,..., t uniquel, but the analtical problem d f t,, t, R onl provides one. Also for this reason, one-step methods are used to initialize multistep methods. III. Preliminaries A parallelogram fuzz number u is defined b four real numbers k < l < m < n, where the base of the parallelogram is the interval [k, n] and its vertices at x = l, x = m. Parallelogram fuzz number will be written as u = (k, l, m, n). The membership function for the parallelogram fuzz number u = (k,, m, n) is defined as the following : x k, k x l l k ux, l x m u () x n, m x n m n we will have : () u > if k > ; () u > if > ; (3) u > if m > & (4) u > if n >. Let us denote R F b the class of all fuzz subsets of R (i.e. u :R [, ]) satisfing the following properties: (i) u RF, u is normal, i.e. x R with u x. (ii) u RF, u is convex fuzz set, i.e. utx t min u x, u, t,, x, R. (iii) u RF, u is upper semi continuous on R. (iv) x R; u x is compact, where A denotes the closure of A. Then R F is called the space of fuzz numbers.obviousl R R F. Here R R F is understood as R = {{x}; x is usual real number}. We define the r-level set, xr; [u]r = {x \ u(x) r}, r ; () Clearl, [u] = { x \ u(x) > } is compact, which is a closed bounded interval and we denote b [u]r= [u(r),u(r)]. It is clear that the following statements are true. u r is a bounded left continuous non decreasing function over [,],.. u r is a bounded right continuous non increasing function over [,], 3. u r u r for all r (,], for more details see [],[3]. Let D: R F R F R+ U, D (u, v) =Sup r[,] max u r v r, u r r numbers, where [u] r = [ u r, u r ],[v] r = [ v r, v r v, be Hausdorff distance between fuzz ]. The following properties are well-known: D(u + w, v + w) = D(u, v), u, v, w RF,, D(k.u, k.v) = k D(u, v), k R, u, v RF, D(u + v, w + e) D(u,w) + D(v,e), u, v, w, e R and (R F, D) is a complete metric space. F 8 Page

Numerical solution of first order linear fuzz differential equations using Leapfrog method IV. Fuzz Initial Value Problems Consider a first-order fuzz initial value differential equation is given b t f t, t, t t, T, t, (3) where is a fuzz function of t, f (t, ) is a fuzz function of the crisp variable t and the fuzz variable, is the fuzz derivative of and t is a parallelogram or a parallelogram shaped fuzz number. We denote the fuzz function b,. It means that the r-level set of (t) for t t, Tis t r t; r, t; r, t t ; r, t ; r, r, r we write f t; f t;, f t; and f t; Ft,,, f t; Gt,,. Because of t f t, we have f t; t; r Ft ; t; r, t; r (4) f t; t; r G t; t; r, t; r (5) B using the extension principle, we have the membership function f(t; (t))(s) = Sup{(t)( )\s = f( t, )}, s R (6) so fuzz number f(t; (t)). From this it follows that f t; t r f t, t; r, f t, t; r, r ; (7) where f t t; r min f t, u\ u t r f t t; r max f t, u\ u t, (8), r (9) Definition 4. A function f: R R F is said to be fuzz continuous function, if for an arbitrar fixed t R and, such that t t D f t, f t exists. Throughout this paper we also consider fuzz functions which are continuous in metric D. Then the continuit of f(t, (t); r) guarantees the existence of the definition of f(t, (t); r) for t t, T and r, []. Therefore, the functions G and F can be definite too. V. Numerical Examples Consider a first-order fuzz initial value differential equation is given b In this section, the exact solutions and approximated solutions obtained b Leapfrog method and STHWS method. To show the efficienc of the Leapfrog method, we have considered the following problem taken from [], along with the exact solutions. The discrete solutions obtained b the two methods, Leapfrog method and STHWS method; the absolute errors between them are tabulated and are presented in Table and Table. To distinguish the effect of the errors in accordance with the exact solutions, graphical representations are given for selected values of r and are presented in Fig. to Fig. 6 for the following problem, using three dimensional effects. Example 5. Consider the initial value problem [] t tf t, t,,..r e,.5.r e The exact solution at t =. is given b Y.; r..r e e.5.5,.5.r ee, r Example 5. Consider the fuzz initial value problem [] 9 Page

Numerical solution of first order linear fuzz differential equations using Leapfrog method t t, t I,,.75.5r,.5.5r, r. The exact solution is given b Y t; r ; re t, Y t; r ; re t which at t = Y ; r.75.5r e,.5.5r e, r. Example 5.3 Consider the fuzz initial value problem [] t c, t c where c i, for i =, are triangular fuzz numbers. The exact solution is given b Y t; r lr tanw rt, Y t; r l r tanw r t, with l w r c r/ c r, l r c r/ c r, r c r/ c r, w r c r/ c r,,, where c r c, r, c, r and c r c, r, c, r c, r.5.5r, c, r.5.5r, c,r.75.5r, c, r.5.5r, The r-level sets of t are Y t; r c,r sec w rt, Y t; r c rsec w rt,,,, which defines a fuzz number. We have ft, ; r min c. u c u t; r, t; r, c c, r, c, r, c c,r, c, r, f t, ; r maxc. u c u t; r, t; r, c c r, c r, c c r, c r.,, Table : Error Calculations STHWS Error Example 5. Example 5. Example 5.3 r..e-7.e-7 6.E-7 6.E-7.E-7.E-8..E-7.E-7 7.E-7 7.E-7.E-7.E-8.3 3.E-7 3.E-7 8.E-7 8.E-7 3.E-7 3.E-8.4 4.E-7 4.E-7 9.E-7 9.E-7 4.E-7 4.E-8.5 5.E-7 5.E-7.E-6.E-6 5.E-7 5.E-8.6 6.E-7 6.E-7.E-6.E-6 6.E-7 6.E-8.7 7.E-7 7.E-7.E-6.E-6 7.E-7 7.E-8.8 8.E-7 8.E-7.3E-6.3E-6 8.E-7 8.E-8.9 9.E-7 9.E-7.4E-6.4E-6 9.E-7 9.E-8.E-6.E-6.5E-6.5E-6.E-6 9.9E-8 Table : Error Calculations Leapfrog Error Example 5. Example 5. Example 5.3 r..e-7.e-7 6.E-7 6.E-7.E-7.E-8..E-7.E-7 7.E-7 7.E-7.E-7.E-8.3 3.E-7 3.E-7 8.E-7 8.E-7 3.E-7 3.E-8,,,, Page

Numerical solution of first order linear fuzz differential equations using Leapfrog method.4 4.E-7 4.E-7 9.E-7 9.E-7 4.E-7 4.E-8.5 5.E-7 5.E-7.E-6.E-6 5.E-7 5.E-8.6 6.E-7 6.E-7.E-6.E-6 6.E-7 6.E-8.7 7.E-7 7.E-7.E-6.E-6 7.E-7 7.E-8.8 8.E-7 8.E-7.3E-6.3E-6 8.E-7 8.E-8.9 9.E-7 9.E-7.4E-6.4E-6 9.E-7 9.E-8.E-6.E-6.5E-6.5E-6.E-6 9.9E-8 Fig. Error estimation of Example 5. at Fig. Error estimation of Example 5. at Fig. 3 Error estimation of Example 5. at Fig. 4 Error estimation of Example 5. at Fig. 5 Error estimation of Example 5.3 at Fig. 6 Error estimation of Example 5.3 at VI. Conclusion In this paper, the Leapfrog method has been successfull emploed to obtain the approximate analtical solutions of the first order linear fuzz differential equations. Compare to STHWS method, Leapfrog method gives less error from the Table and Table. Also it is clear that from the Fig. to Fig. 6 the Leapfrog method introduced in Section performs better than STHWS method. Acknowledgements The authors gratefull acknowledge the Dr. A. Murugesan, Assistant Professor, Department of Mathematics, Government Arts College (Autonomous), Cherr Road, Salem - 636 7, for encouragement and support. The authors also thank Dr. S. Mehar Banu, Assistant Professor, Department of Mathematics, Government Arts College for Women (Autonomous), Salem - 636 8, Tamil Nadu, India, for her kind help and suggestions. Page

Numerical solution of first order linear fuzz differential equations using Leapfrog method References [] S.Sekar and S.Senthilkumar, Single-term Haar wavelet series for fuzz differential equations, International Journal of Mathematics Trends and Technolog, 4(9), 3, 8 88 [] S. Abbasband and T. Allahviranloo, Numerical solutions of fuzz differential equations b Talor method, Journal of Computational Methods in Applied Mathematics.,, 3-4. [3] S. S. L. Chang and L. A. Zadeh, On fuzz mapping and control, IEEE Transactions on Sstems, Man, and Cbernetics,, 97, 3 34. [4] D. Dubois and H. Prade, Towards fuzz differential calculus.iii. Differentiation, Fuzz Sets and Sstems, 8( 3), 98, 5 33. [5] M. L. Puri and D. A. Ralescu, Differentials of fuzz functions, Journal of Mathematical Analsis and Applications, 9(), 983, 55 558. [6] R. Goetschel and Woxman, Elementar fuzz calculus, Fuzz Sets and Sstems, 8, 986, 3-43. [7] O. Kaleva, Fuzz differential equations, Fuzz Sets and Sstems, 4(3), 987, 3 37. [8] O. Kaleva, The Cauch problem for fuzz differential equations, Fuzz Sets and Sstems, 35(3), 99, 389 396. [9] S. Seikkala, On the fuzz initial value problem, Fuzz Sets and Sstems, 4(3), 987, 39 33. [] M. Ma, M. Friedman and A. kandel, Numerical Solutions of Fuzz Differential Equations, Fuzz Sets and Sstems, 5, 999, 33-38. Page