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Research article

A new extension of the Rayleigh distribution: Properties, different methods of estimation, and an application to medical data

  • Received: 28 January 2025 Revised: 20 March 2025 Accepted: 24 March 2025 Published: 01 April 2025
  • MSC : 60E05, 62F10

  • Statistical distributions play a crucial role in modeling and analyzing real data with complex behavior. Modifying or extending traditional distributions to better capture the complex pattern of a real-world phenomenon have attracted researchers' attention. In this paper, we propose a distribution adaptable to different types of medical data: the exponentiated generalized Weibull–Rayleigh (EGWR) distribution. Its hazard function exhibits different shapes, demonstrating high flexibility in modeling different patterns. For the proposed distribution, some statistical properties, such as moments, Rényi entropy, and order statistics, are discussed. Different methods of estimation—maximum likelihood, least squares, maximum product of spacing, and Cramér–von Mises—were employed to estimate the distribution parameters. The efficiency of these methods in estimating the distribution parameters was compared in three simulation studies and three medical datasets. Furthermore, the goodness of the proposed distribution in fitting real data was examined, and the results demonstrated the efficiency and flexibility of the EGWR distribution in modeling medical data compared to other distributions.

    Citation: Dawlah Alsulami. A new extension of the Rayleigh distribution: Properties, different methods of estimation, and an application to medical data[J]. AIMS Mathematics, 2025, 10(4): 7636-7663. doi: 10.3934/math.2025350

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  • Statistical distributions play a crucial role in modeling and analyzing real data with complex behavior. Modifying or extending traditional distributions to better capture the complex pattern of a real-world phenomenon have attracted researchers' attention. In this paper, we propose a distribution adaptable to different types of medical data: the exponentiated generalized Weibull–Rayleigh (EGWR) distribution. Its hazard function exhibits different shapes, demonstrating high flexibility in modeling different patterns. For the proposed distribution, some statistical properties, such as moments, Rényi entropy, and order statistics, are discussed. Different methods of estimation—maximum likelihood, least squares, maximum product of spacing, and Cramér–von Mises—were employed to estimate the distribution parameters. The efficiency of these methods in estimating the distribution parameters was compared in three simulation studies and three medical datasets. Furthermore, the goodness of the proposed distribution in fitting real data was examined, and the results demonstrated the efficiency and flexibility of the EGWR distribution in modeling medical data compared to other distributions.



    Fractional calculus have recently become a fascinating field of study due to its vast applications in various aspects of modern life. It has been observed that many physical phenomena can be modeled successfully by means of fractional order differential equations, where the integer-order differential equations fails in modeling certain issues [1]. Compared to integer order derivatives some properties of the non-integer order derivatives are very tedious to deal with. Thus, it becomes of great importance to establish more results for fractional calculus. Recently lots of researchers have proposed new and efficient analytical and numerical schemes to approximate the solutions of numerous fractional order problems. In this connection one can find efficient work done by researchers such as the analysis of fractional Drinfeld-Sokolov-Wilson model with exponential memory [2], a homotopy perturbation sumudu transform method (HPSTM) for solving fractional equal width (EW) equation [3]. The ternary-fractional differential transform method, that extends its applicability to encompass initial value problems in the fractal 3D space [1]. The local fractional homotopy perturbation Sumudu transform scheme and the local fractional reduced differential transform method for a fractal vehicular traffic flow problem [4]. The authors in [5] have proposed a numerical algorithm based on homotopic technique to examine the fractional vibration equation in Atangana-Baleanu sense. The authors in [6] have presented the efficiency of the Atangana-Baleanu (AB) derivative over Caputo-Fabrizio (CF) to some nonlinear partial differential equations. The authors in [7] have done a comparative analysis of exothermic reactions model having constant heat source in the porous media via Caputo, Caputo Fabrizio and Atangana-Baleanu theories. In [8] a hybrid numerical scheme based on the homotopy analysis transform method (HATM) to examine the fractional model of nonlinear wave-like equations having variable coefficients is presented. The Klein-Gordon is one of the most important mathematical model which finds its applications in numerous phenomenon in science and engineering. It has been applied to non linear optics, quantum field theory, Plasma physics, fluid dynamics, chemical kinetics and solid state physics [9,10,11]. In literature a lot of work has been done on solving the Klein-Gordon equation analytically some of them are the tanh and the sine-cosine methods [12], the differential transform method [13], Modified Kudryashov method [14,15], ansatz method [16], Exp(ϕ(ϵ))-expansion method [17], and the variational iteration method [18]. The residual power series method for linear time fractional Klein-Gordon equation [19], homotopy analysis method [20,21], local fractional series expansion method [10], homotopy perturbation method [22], and the fractional Riccati expansion method [23]. In [24] a hybrid method based on local fractional Sumudu transform method and homotopy perturbation technique is employed to find the non differentiable solution of Klein-Gordon equation on Cantor sets. Since Most of the problems cannot be solved analytically so one must use numerical methods. Despite the fact that, numerical approximation of these equations are rare, in literature some excellent work is available, such as Mohebi et al utilized the Compact finite difference method [25] and the implicit RBF meshless method [26] for the approximation of linear time fractional Klein-Gordon equations. M. M. Khader [27] applied an efficient method based on the generalized laguerre polynomials for approximating the linear time fractional Klein-Gordon equations. In [28] the authors used the wavelet method for approximating a class of fractional Klein-Gordon equations. The authors in [29] proposed a numerical algorithm based on the applications of the operational matrices of the Legendre scaling functions for the approximation of fractional Klein-Gordon equation. The authors in [30] applied a high order compact finite difference scheme to two dimensional fractional Klein-Gordon equations. Dehghan et al [31] used radial basis functions to approximate the solution of non linear Klein-Gordon equations. However in these time stepping schemes the computations may be very expansive because each new iteration is dependent on the previous time step. An alternative way is to use the Laplace transform coupled with these numerical methods. In literature one can find numerous research work on the coupling of other numerical methods and Laplace transform. The Laplace transform was first coupled with the boundary integral method by Rizzo and Shippey [32]. Moridis and Reddell coupled Laplace transform with finite difference, boundary element and finite element methods [33,34,35]. In [36] the authors coupled the Galerkin method with Laplace transform. Moridis and Kansa [37] coupled multiquadric method and Laplace transform for the approximation of PDEs. In [38] the author studied RBF method coupled with Laplace transform on unit sphere. Similarly the coupling of Laplace transform with other numerical methods such as spectral method, finite difference method, boundary particle method, RBF method, and the finite element method can be found in [39,40,41,42,43,44] and the references therein. In this work we apply the idea of [45,46], the Laplace transform is coupled with local RBF method to approximate linear time-fractional Klein-Gordon equation. The Laplace transform is used to avoid the stability restrictions, which are commonly encountered in time-stepping procedure. The local radial basis function method is used to resolve the issue of ill-conditioning of the differentiation matrices and the sensitivity of shape parameter in global radial basis functions method. The main idea of the local radial basis function method is the collocation on overlapping sub-domains of the whole domain. The overlapping sub-domains remarkably reduce the size of collocation matrix by solving many small size matrices. Each small matrix has the same size as the number of nodes in the domain of influence of each node. In order to validate our method we consider linear time-fractional Klein-Gordon equation of the form [25]

    βα1αχ(x,t)tα+ηχ(x,t)t+κχ(x,t)=Lχ(x,t)+βα1f(x,t),0xL,1<α2,0t1,η0,κ0, (1.1)

    with initial and boundary conditions given in (1.2) and (1.3),

    χ(x,0)=f1(x),χ(x,t)t|t=0=f2(x),xΩ, (1.2)
    Bχ(x,t)=h(t),xΩ. (1.3)

    Here L and B are the governing and boundary differential operators, and αtα is the Caputo fractional derivative of order α defined by [47]:

    αtαχ(t)=1Γ(pα)t0(ts)mα1dmdsmχ(s)ds,m1αm,mN. (1.4)

    Let the Laplace transform of χ(t) be denoted and defined by

    ˆχ(s)=L{χ(t)}=0estχ(t)dt, (1.5)

    and the Laplace transform of the Caputo derivative is defined by

    L{αtαχ(t)}=sαˆχ(s)m1i=0sαi1χ(i)(0). (1.6)

    Here we construct a local RBF method coupled with Laplace transform for the approximation of the solution of the linear time-fractional Klein-Gordon equations. In order to avoid the time stepping procedure the Laplace transform is used to eliminate the time variable. Then the local RBF method is utilized to approximate the time independent linear PDE.

    Applying the Laplace transform to Eqs (1.1) and (1.3), we get

    βα1(sαˆχ(x,s)sα1χ(x,0)sα2χt(x,0))+η(sˆχ(x,s)χ(x,0))+κˆχ(x,s)=Lˆχ(x,s)+βα1ˆf(x,s), (2.1)

    thus we have the following linear system

    (βα1sαI+ηsI+κIL)ˆχ(x,s)=ˆg(x,s),xΩ, (2.2)
    Bˆχ(x,s)=h(s),xΩ, (2.3)

    where

    ˆg(x,s)=βα1sα1χ(x,0)+βα1sα2χt(x,0)+ηχ(x,0)+βα1ˆfχ(x,s).

    In the following section the local RBF method is used to approximate the differential operator L and B in order to solve the problem (2.2)–(2.3) in Laplace space.

    In local RBF method the approximation of the function ˆχ(x), for a given set of data points {ˆχ(xi):i=1,...,N}, where {xi:i=1,...,N}ΩRd,d1 takes the form

    ˆχ(xi)=xjΩiλjϕ(xixj), (2.4)

    where λi={λij:j=1,...,n} is the vector of expansion coefficients, ϕ(r),r0 is radial kernel and the distance between the centers xi and xj is r=xixj, and Ωi is a sub domain of Ω containing xi, and around xi it contains n neighboring centers. So we have N number of n×n linear systems given by

    ^χχi=Φiλi,i=1,2,3,...,N, (2.5)

    the elements of the interpolation matrix Φi are bikj=ϕ(xkxj),wherexk,xjΩi, each n×n system is then solved for the unknowns λi={λij:j=1,...,n}. Next the operator Lˆχ(x), is approximated by

    Lˆχ(xi)=xjΩiλijLϕ(xixj), (2.6)

    the above Eq (2.6) can be expressed as

    Lˆχ(xi)=λiνi, (2.7)

    where νi is of order 1×n and λi of order n×1, the entries of νi are shown in the following equation

    νi=Lϕ(xixj),xjΩi, (2.8)

    using Eq (2.5), the coefficients λi can be eliminated as,

    λi=(Φi)1ˆχi, (2.9)

    using the values of λi from (2.9) in (2.7) we get,

    Lˆχ(xi)=νi(Φi)1ˆχi=wiˆχi (2.10)

    where,

    wi=νi(Φi)1, (2.11)

    Hence the linear differential L is approximated using the local RBF method for each center xi as

    LˆχDˆχ. (2.12)

    The matrix D is sparse differentiation matrix which approximates the linear differential operator L. The matrix D has order N×N which contains n non-zero and Nn zero entries, where n is the number of centers in the sub domain Ωi. The same procedure can be applied to the boundary operator B.

    In literature a large number of radial kernels are available. In this article we have selected the multi-quadrics ϕ(r)=1+(rc)2 for our numerical approximation. The accuracy of the numerical solution greatly depends on the parameter c. The researchers always search for that value of c which gives an optimal solution. In this regard a large amount of work has been done such as [48,49,50] and references therein. Here we utilize the uncertainty principle [51] for optimal shape parameter c.

    Algorithm:

    ● The interval 1012<Cond<1016 is selected for the condition number (Cond) of the system matrices of the given problem.

    ● Using SVD, the interpolation matrix is decomposed as R,P,Q=svd(Φi). The order of Φi is n×n (n is the number of centers in each Ωi), and the n singular values of the matrix Φi lies on the diagonal of the matrix P (P is a diagonal matrix), and the condition number of Φi is Cond=Φi(Φi)1=max(P)min(P).

    ● The c is searched until the condition 1012<Cond<1016 is satisfied, the algorithm is given as

    Step 1: set Cond=1

    Step 2: select 1012<Cond<1016

    Step 3: whileCond>CondmaxandCond<Condmin

    Step 4: R,P,Q=svd(Φi)

    Step 5: Cond=max(P)min(P)

    Step 6: ifCond<Condmin,c=cδc

    Step 7: ifCond>Condmax,c=c+δc

    c(optimal)=c.

    Optimal value of the parameter c is obtained, when the above condition is satisfied, and then we can compute the inverse using (Φi)1=(RPQT)1=QP1RT [52]. Hence wi in (2.11) can be computed.

    Following the discretization by local RBF method of the linear differential and boundary operators L and B respectively, the system (2.2)–(2.3) is solved for each point s. Finally the solution of the problem (1.1)–(1.3) is obtained using the inverse of Laplace transform

    χ(x,t)=12πiσ+iσiestˆχ(x,s)ds. (2.13)

    In applying the Laplace transform method the calculation of inverse Laplace transform is the main difficulty. In many cases it is difficult to find the inverse Laplace transform analytically so numerical methods must be used. A large number of methods for the numerical inversion of Laplace transform have been developed. In this work we use the idea of [39,42] in which the integration is performed over a parabolic or hyperbolic path Γ, so the integral in equation (2.13) can be written as

    χ(x,t)=12πiΓestˆχ(x,s)ds,σ>σ0, (2.14)

    where Γ is a path of integration joining σi to σ+i and

    s=s(ω), (2.15)

    using (2.15) in (2.14), we find the following expression

    χ(x,t)=12πies(ω)tˆχ(x,s(ω))ˊs(ω)dω, (2.16)

    Finally the trapezoidal rule with uniform step size k is used to approximate (2.16), as

    χk(x,t)=k2πiMj=Mesjtˆχ(x,sj)ˊsj,sj=s(ωj),ωj=jk. (2.17)

    The approximate solution of the proposed scheme is defined by Eq (2.17). The accuracy of (2.17) greatly depends on the path of the integration Γ. There are various contours available in the literature. Recently the hyperbolic [41] and parabolic [42] contours are used to approximate the integer and fractional order PDEs. In our computations the hyperbolic path due to [41] is used.

    s(ω)=η+γ(1sin(διω)),forωR,(Γ) (3.1)

    where η0, γ>0, 12π<β<π, and 0<δ<β12π. In fact, when we choose Imω=λ, the Eq (3.1) is reduced to the left branch of the hyperbola

    (xγηγsin(δ+λ))2(yγcos(δ+λ))2=1, (3.2)

    transforming the strip Zr={ω:Imωr,r>0} into the hyperbola Ωr={s:ωZr}Γ. Suppose Σϕ={s0:|args|ϕ}0,0<ϕ<(1α)ϕ2, and let Σηβ=η+Σβ,ΓΩrΣηβ. The following theorem gives the error estimate of the scheme for the contour Γ.

    Theorem 3.1 ([41], Theorem 2.1) let the solution of (1.1) be χ(x,t), with ˆf(x,t) analyitc in Σηβ. Let ΓΩrΣηβ, and b>0 be defined by b=cosh1(1θτsin(δ)), where τ=t0T, 0<θ<1, 0<t0<T, and let γ=θ¯rMbT. Then for the approximate solution defined by (2.17), with k=bM¯rlog2,|χ(x,t)χk(x,t)|(χ0+ˆf(x,t)Σηβ)CQeητg(ρrM)eμM, for μ=¯r(1θ)b, ρr=θ¯rτsin(δr)b, g(x)=max(1,log(1x)), ¯r=2πr, r>0, C=Cδ,r,β, and t0tT. Thus the corresponding error estimate is of the order

    Error Estimate=|χ(x,t)χk(x,t)|=O(g(ρrM)eμM).

    In order to investigate the systems (2.2)–(2.3) stability, we represent the system in discrete form as

    Y^χχ=b, (4.1)

    where Y is the sparse differentiation matrix of order N×N obtained using local RBF method. For the system (4.1) the constant of stability is given by

    C=supˆχ0ˆχYˆχ, (4.2)

    where C is finite using any discrete norm . on RN. From (4.2) we may write

    Y1ˆχYˆχC, (4.3)

    Similarly for the pseudoinverse Y of Y, we can write

    Y=supv0Yvv. (4.4)

    Thus we have

    Ysupv=Yˆχ0YYˆχYˆχ=supˆχ0ˆχYˆχ=C. (4.5)

    We can see that Eqs (4.3) and (4.5) confirms the bounds for the stability constant C. Calculating the pseudoinverse for approximating the system (4.1) numerically may be very expansive computationally, but it ensures the stability. The MATLAB's function condest can be used to estimate Y1 in case of square systems, thus we have

    C=condest(Y)Y (4.6)

    This work well with less number of computations for our sparse differentiation matrix Y. Figures 1 and 2 show the bounds for the constant C of our system (2.2)–(2.3) for Problem 3. Selecting N=50, M=80, n=15, and α=0.8 at t=1, we have 1C1.1620. It is observed that the stability constant is bounded by very small numbers, which guarantees the stability of the proposed local RBF scheme.

    Figure 1.  The stability constant C is shown for our differentiation matrix Y corresponding to problem 3, obtained using N=70,n=10,M=50, and α=0.85.
    Figure 2.  The contour of integration is shown for the Problem 3 for M=50.

    This section is devoted to the numerical experiments. The proposed method is tested here for 1-D time fractional order Klein-Gordon equations. The multi-quadrics radial kernels ϕ(r) = (1+(rc)2)1/2 are used in all our numerical experiments. The Uncertainty principle [51] is used to optimize the shape parameter c. The accuracy of the method is measured using L error defined by

    L=χ(x,t)χk(x,t)=max1jN(|χ(x,t)χk(x,t)|)

    is used. Here χk and χ are the numerical and exact solutions respectively.

    If we use β=1, κ=1, and η=0, Eq (1.1) takes the form

    αχ(x,t)tα+χ(x,t)2χ(x,t)x2=f(x,t), (5.1)

    where 1α2,t0,0x1, with zero boundary and initial conditions. The domain [0,1] is selected for the problem with exact solution

    χ(x,t)=t2(eex)sin(x),

    and non homogeneous term

    f(x,t)=2t2α(2α)Γ(2α)(eex)sin(x)+t2(2eex)sin(x)+2t2excos(x).

    The MATLAB's command ω=M:k:M is used to generate the quadrature points along the path of integration Γ. The parameters used in our computations are α=1.75,η=2,τ=t0T,r=0.1387,θ=0.1,δ=0.1541,t0=0.5andT=5. Using Eq (3.1) the remaining optimal parameters can be found for the hyperbolic path Γ. In our computations n=6 in the sub domain Ωi and N=40 in the global domain Ω are selected. The error estimates and L errors are shown in Tables 1 and 2. The efficiency of the method can be seen in the results. The actual error and error estimates are shown in Figure 3 and the absolute errors for different values of α are shown in Figure 4. The numerical and the exact solutions are shown in Figures 5 and 6 respectively.

    Table 1.  Approximate solution for Problem 1 at t=1, and 1×1012κ1×1016, in the domain [0,1].
    N=60,
    n=5
    α=1.25
    M L Error (Γ) Error Estimate (Γ) CPU time(s)
    10 7.65×104 4.4187 0.145896
    15 2.30×103 2.6363 0.158580
    20 1.30×103 1.5582 0.169243
    30 1.38×104 0.5373 0.218606
    40 6.57×106 0.1836 0.384568
    50 1.25×105 0.0625 0.682311
    60 9.58×106 0.0212 1.143210
    70 9.70×106 0.0072 2.792846
    80 9.66×106 0.0024 5.805704
    [25] 1.34×106

     | Show Table
    DownLoad: CSV
    Table 2.  Approximate solution for Problem 1 at t=1, and 1×1012κ1×1016, in the domain [0,1].
    N=60,
    n=5
    α=1.75
    M L Error (Γ) Error Estimate (Γ) CPU time(s)
    10 7.65×104 4.4187 0.151320
    15 2.30×103 2.6363 0.190760
    20 1.30×103 1.5582 0.173974
    30 1.38×104 0.5373 0.275586
    40 6.35×106 0.1836 0.483761
    50 1.19×105 0.0625 0.732991
    60 8.99×106 0.0212 1.269992
    70 9.11×106 0.0072 3.328360
    80 9.07×106 0.0024 5.789626
    [25] 4.45×105

     | Show Table
    DownLoad: CSV
    Figure 3.  Plot of Actual error and Error Estimate corresponding to problem 1 obtained using N=90 nodes in the global domain, n=10 nodes in the local domain, fractional order α=1.85, at t=1. The figure illustrate that the convergence rate of the numerical computation of inverse Laplace transform is inline with the Error Estimate (theoretical bound).
    Figure 4.  The absolute errors for different values of α are shown. It is observed that the error decreases with increasing the value of fractional order α.
    Figure 5.  The numerical solution obtained using N=70 nodes in global domain, n=10 nodes in local domain, M=30, and fractional order α=1.95.
    Figure 6.  The exact solution obtained using N=70 nodes in global domain, n=10 nodes in local domain, M=30, and fractional order α=1.95.

    If we use β=1, κ=1, and η=1, Eq (1.1) takes the form

    αχ(x,t)tα+χ(x,t)t+χ(x,t)=2χ(x,t)x2+f(x,t), (5.2)

    where 1α2,t0,0x1, with zero initial and boundary conditions, the exact solution of the problem is

    χ(x,t)=t2xsin(x1),

    and non homogeneous term is

    f(x,t)=2t2α(2α)Γ(2α)xsin(x1)+2txsin(x1)+t2xsin(x1)t2(2cos(x1)xsin(x1)).

    The MATLAB's command ω=M:k:M is used to generate the quadrature points along the path of integration Γ. The parameters used in our computations are α=1.75,r=0.1387,δ=0.1541,θ=0.1,τ=t0T,η=2,t0=0.5andT=5. Using Eq (3.1) the remaining optimal parameters can be found for the hyperbolic path Γ. In our computations n=7 centers in the sub domain Ωi and N=50 in the global domain Ω are selected. The error estimates and L errors are shown in Tables 3 and 4. Also the maximum absolute errors for different values of α are shown in Table 5, which shows the efficiency of the proposed method. The numerical and exact solutions of this problem are shown in Figures 7 and 8 respectively and plot of Actual error and Error Estimate corresponding to problem 2 are shown in Figure 9.

    Table 3.  Approximate solution for Problem 2 at t=1, and 1×1012κ1×1016, in the domain [0,1].
    M=80,
    n=5
    α=1.25
    N L Error (Γ) Error Estimate (Γ) CPU time(s)
    10 5.77×105 0.0024 0.561563
    20 1.27×105 0.0024 1.125699
    30 3.55×106 0.0024 1.252799
    40 2.43×106 0.0024 2.716533
    50 2.87×106 0.0024 4.686349
    60 3.78×106 0.0024 6.319554
    80 8.38×106 0.0024 8.773851
    90 8.20×107 0.0024 9.862299
    [25] 5.91×107

     | Show Table
    DownLoad: CSV
    Table 4.  Approximate solution for Problem 2 at t=1, and 1×1012κ1×1016, in the domain [0,1].
    N=50,
    n=7
    α=1.75
    M L Error (Γ) Error Estimate (Γ) CPU time(s)
    10 3.32×104 4.4187 0.146540
    15 9.63×104 2.6363 0.160951
    20 5.71×104 1.5582 0.170815
    30 6.70×105 0.5373 0.212776
    40 7.76×106 0.1836 0.361477
    50 4.25×106 0.0625 0.585600
    60 5.48×106 0.0212 1.047157
    70 5.42×106 0.0072 1.872323
    80 5.44×106 0.0024 4.417500
    [25] 7.59×106

     | Show Table
    DownLoad: CSV
    Table 5.  The maximum absolute errors (L errors) for different values of α are shown for Problem 2. The computations are done at t=1, and 1×1012κ1×1016, in the domain [0,1], selecting N=11,n=5, and M=60.
    x α=1.25 α=1.5 α=1.75 α=1.95
    0 1.463×106 1.463×106 1.463×106 1.463×106
    0.1 1.353×106 1.340×106 1.326×106 1.315×106
    0.2 1.155×106 1.131×106 1.104×106 1.079×106
    0.3 9.710×107 9.400×107 9.010×107 8.630×107
    0.4 8.170×107 7.820×107 7.360×107 6.850×107
    0.5 6.760×107 6.410×107 5.910×107 5.320×107
    0.6 5.180×107 4.860×107 4.370×107 3.740×107
    0.7 3.510×107 3.240×107 2.830×107 2.220×107
    0.8 1.620×107 1.430×107 1.130×107 6.200×108
    0.9 1.300×108 2.300×108 3.900×108 6.800×108
    1 3.590×107 3.590×107 3.590×107 3.590×107

     | Show Table
    DownLoad: CSV
    Figure 7.  The numerical solution obtained using N=30 nodes in global domain, n=5 nodes in local domain, M=60, and fractional order α=1.85.
    Figure 8.  The exact solution obtained using N=30 nodes in global domain, n=5 nodes in local domain, M=60, and fractional order α=1.85.
    Figure 9.  Plot of Actual error and Error Estimate corresponding to problem 2 obtained using N=80 nodes in the global domain, n=10 nodes in the local domain, fractional order α=1.75, at t=1. The figure illustrate that the convergence rate of the numerical computation of inverse Laplace transform is inline with the Error Estimate (theoretical bound).

    Here we consider the 1-D linear Klein-Gordon equation of the form [19]

    αχ(x,t)tα=2χ(x,t)x2+χ(x,t),0α1,t0,xR, (5.3)

    with initial condition χ(x,0)=1+sin(x) and exact solution χ(x,t)=sin(x)+Eα(tα), where Eα(t)=m=0tmΓ(αm+1). The domain [4,4] is selected for the given problem. The quadrature points are generated using the MATLAB's command ω=M:k:M along the path of integration Γ. The parameters used in our computations are α=0.8,r=0.1387,η=2,τ=t0T,θ=0.1,δ=0.1541,t0=0.5andT=5. Using Eq (3.1) the remaining optimal parameters can be found for the hyperbolic path Γ. In our computations we select n=6 centers in the sub domain Ωi and N=40 in the global domain Ω are selected. The error estimates and L errors are shown in Tables 6 and 7. Similar behavior is observed as in the previous examples. The numerical and exact solutions for problem 3 are shown in Figures 10 and 11 and plot of Actual error and Error Estimate corresponding to problem 3 are shown in Figure 12.

    Table 6.  Approximate solution for Problem 3 at t=1, and 1×1012κ1×1016, in the domain [4,4].
    N=70,
    n=10,
    α=0.25
    M L Error (Γ) Error Estimate (Γ) CPU time(s)
    10 7.37×100 4.4187 0.168655
    20 4.14×101 1.5582 0.216721
    30 3.13×101 0.5373 0.268500
    40 9.80×103 0.1836 0.352215
    50 1.49×102 0.0625 0.480307
    60 2.60×103 0.0212 0.899249
    70 8.67×104 0.0072 2.037757
    80 8.90×104 0.0024 3.956089
    90 8.12×104 8.18×104 6.517429

     | Show Table
    DownLoad: CSV
    Table 7.  Approximate solution for Problem 3 at t=1, and 1×1012κ1×1016, in the domain [4,4].
    N=40,
    n=6,
    α=0.8
    M L Error (Γ) Error Estimate (Γ) CPU time(s)
    10 2.68×100 4.4187 0.158384
    15 4.53×101 2.6363 0.162534
    20 3.36×101 1.5582 0.162535
    30 1.59×101 0.5373 0.189903
    40 2.0×103 0.1836 0.245566
    50 8.70×103 0.0625 0.344221
    60 1.10×103 0.0212 0.502084
    70 6.32×104 0.0072 0.923548
    80 5.70×104 0.0024 2.520403

     | Show Table
    DownLoad: CSV
    Figure 10.  The numerical solution obtained using N=40 nodes in global domain, n=8 nodes in local domain, M=50, and fractional order α=0.9.
    Figure 11.  The exact solution obtained using N=40 nodes in global domain, n=8 nodes in local domain, M=50, and fractional order α=0.9.
    Figure 12.  Plot of Actual error and Error Estimate corresponding to problem 3 obtained using N=70 nodes in the global domain, n=10 nodes in the local domain, fractional order α=0.85, at t=1. The figure illustrate that the convergence rate of the numerical computation of inverse Laplace transform is inline with the Error Estimate (theoretical bound).

    In this article, we constructed a local RBF method based on Laplace transform proposed for the approximation of the solution of the linear time fractional Klein-Gordon equations. In time stepping procedure usually the time instability is encountered and for accuracy we need a very small time step size. Global RBF methods are efficient and accurate only for small amount of nodes. They become inefficient and the differentiation matrix becomes ill-conditioned for large amount of nodes. The main advantage of this method is that it avoids the time stepping procedure with the help of Laplace transform, and the local RBF method has been used to resolve the issue of ill-conditioning. The numerical results confirmed the stability and convergence of the method. The comparison of the results with other methods led us to conclude that the proposed local RBF method coupled with Laplace transform is an efficient method for approximation of the solution of the linear time fractional Klein-Gordon equations.

    The authors wish to thank the referees for their careful reading of the manuscript and valuable suggestions.This work was supported in part by the National Key Research and Development Program under Grant 2018YFB0904205, in part by the Key Laboratory of Pattern Recognition and Intelligent Information Processing, Institutions of Higher Education of Sichuan Province under Grant MSSB-2020-12.

    The authors declare that no competing interests exist.



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