Araştırma Makalesi
BibTex RIS Kaynak Göster
Yıl 2015, Cilt: 3 Sayı: 1, 137 - 153, 15.05.2015
https://doi.org/10.36753/mathenot.421232

Öz

Kaynakça

  • [1] Guo, M., Xue, X. and Li, R., Impulsive functional differential inclusions and fuzzy population models. Fuzzy Sets and Systems 138 (2003), 601-615.
  • [2] El Naschie, M.S., A review of E-infinite theory and the mass spectrum of high energy particle physics. Chaos, Solitons and Fractals 19 (2004), 209-236.
  • [3] El Naschie, M.S., The concepts of E-infinite: an elementary introduction to the Cantorianfractal theory of quantum physics. Chaos, Solitons and Fractals 22 (2004), 495-511.
  • [4] El Naschie, M.S., On a fuzzy Khler manifold which is consistent with the two slit experiment. International Journal of Nonlinear Science Numerical Simulation 6 (2005), 95-98.
  • [5] Tanaka,Y., Mizuna Y. and Kado, T., Chaotic dynamics in the Friedman equation. Chaos, Solitons and Fractals 24 (2005), 407-422.
  • [6] El Naschie, M.S., From experimental quantum optics to quantum gravity via a fuzzy Khler manifold. Chaos, Solitons and Fractals 25 (2005), 969-977.
  • [7] Zhang, H., Liao, X. and Yu, J., Fuzzy modelling and synchronization of hyperchaotic systems. Chaos, Solitons and Fractals 26 (2005), 835-843.
  • [8] Feng, G. and Chen, G., Adaptive control of discrete-time chaotic systems: a fuzzy control approach. Chaos, Solitons and Fractals 23 (2005), 459-467.
  • [9] Jiang, W., Guo-Dang, Q. and Bin, D., H∞ variable universe adaptive fuzzy control for chaotic systems. Chaos, Solitons and Fractals 24 (2005), 1075-1086.
  • [10] Abbad, M.F.,Von Keyserlingk, D.G.,Linkens, D.A. and Mahfouf,M., Survey of utilisation of fuzzy technology in medicine and healthcare. Fuzzy Sets and Systems 120 (2001), 331-349.
  • [11] Barro, S. and Marn, R.,Fuzzy logic in medicine,Heidelberg, Physica-verlag,2002.
  • [12] Helgason, C.M. and Jobe, T.H., The fuzzy cube and causal efficiacy: representation of concomitant mechanisms in stroke. Neural Networks 11 (1998), 549-555.
  • [13] Nieto, J.J. and Torres, A., Midpoints for fuzzy sets and their application in medicine. Artificial Intelligence in Medicine 27 (2003), 81-101.
  • [14] Bandyopadhyay, S., An efficient for superfamily classification of amino acid sequences: feature extraction, fuzzy clustering and prototype selection. Fuzzy Sets and Systems 152 (2005), 5-16.
  • [15] Casasnovas, J. and Rossell, F., Averaging fuzzy biopolymers. Fuzzy Sets and Systems 152 (2005), 139-158.
  • [16] Chang, B.C. and Halgamuge, S.K., Protein motif extraction with neuro-fuzzy optimization. Bioinformatics 18 (2002), 1084-1090.
  • [17] Dembl, D. and Kastner, P., Fuzzy C-means method for clustering microarray data. Bioinformatics 19 (2003), 973-980.
  • [18] Heger, A. and Halm, L.,Sensitive pattern discovery with fuzzy alignments of distantly related proteins. Bioinformatics 19 (2003), 130-137.
  • [19] Nieto, J.J., Torres, A., Georgiou, D.N. and Karakasidis, T.E., Fuzzy polynucleatide spaces and metrics. Bulletin of Mathematical Biology 68 (2006), 301-317.
  • [20] Kaleva, O., Fuzzy differential inclusions. Fuzzy Sets and Systems 24 (1987), 301-317.
  • [21] Kloeden, P., Remarks on Peano-like theorems for fuzzy differential equations. Fuzzy Sets and Systems 44 (1991), 161-164.
  • [22] Seikkala, S., On the fuzzy initial value problem, Fuzzy Sets and Systems 24 (1987), 319-330.
  • [23] Song, S. and Wu, C., Existence and uniqueness of solution to the Cauchy problem of fuzzy differential equations. Fuzzy Sets and Systems 110 (2000), 55-67.
  • [24] Wu,C., Song, S. and Stanley Lee, E.,Approximate solution existence and uniqueness of the Cauchy problem of fuzzy differential equations. Journal of Mathematical Analysis and Applications 202 (1996), 629-644.
  • [25] Kaleva, O., The Cauchy problem for fuzzy differential equations. Fuzzy Sets and Systems 35 (1990), 389-396.
  • [26] He, Q. and Yi, W., On fuzzy differential equations. Fuzzy Sets and Systems 32 (1989), 321- 325.
  • [27] Menda, W., Linear fuzzy differential equation system on R1 . Journal of Fuzzy Syst Math2(1) (1988), 51-56 (in Chinese).
  • [28] Allahviranloo, T., Ahmadi,N. and Ahmadi, E., Numerical solution of fuzzy differential equations by predictor-corrector method. Information sciences 177 (2007), 1633-1647.
  • [29] Friedman,M., Ma, M. and Kandel, A., Numerical solution of fuzzy differential and integral equations. Fuzzy Sets and Systems 106 (1999), 35-45.
  • [30] Ma, M., Friedman, M. and Kandel, A., Numerical solution of fuzzy differential equations. Fuzzy Sets and Systems 105 (1999), 133-138.
  • [31] Khastan, A. and Ivaz, K., Numerical solution of fuzzy differential equations by Nystr¨om method. Chaos, Solitons and Fractals 41 (2009), 859-865.
  • [32] Isaacson, E. and Keller, H.B.,Analysis of Numerical Methods, Wiley, New York, 1966. [33] Stefanini, L.,Sorini, L. and Guerra, M.L., Parametric representation of fuzzy numbers and application to fuzzy calculus. Fuzzy Sets and Systems 157 (2006),2423-2455.
  • [34] Dong-Kai, Z., Wen-Li, F., Ji-qing, Q. and Duoming, X., On the study of linear properties for fuzzy number-valued fuzzy integrals. Fuzzy Information and Engineering 54 (2009),227-232.
  • [35] Colombo, G. and Krivan, V.,Fuzzy differential inclusions and non-probabilistic likelihood. Dynamic Systems and Applications 1 (1992),419-440.
  • [36] Kaleva, O.,Interpolation of fuzzy data. Fuzzy Sets and Systems 35 (1990),389-396.
  • [37] Effati, S. and Pakdaman, M., Artificial neural network approach for solving fuzzy differential equations. Information Sciences 180 (2010),1434-1457.
  • [38] Abu-Argub, O., El-Ajou, A., Momani, S.and Shawagfeh, N.,Analytical solutions of fuzzy initial value problems by HAM. Applied Mathematics and Information Sciences 5 (2013),1903- 1909.

NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD

Yıl 2015, Cilt: 3 Sayı: 1, 137 - 153, 15.05.2015
https://doi.org/10.36753/mathenot.421232

Öz

In this paper Milne’s predictor-corrector method to solve the fuzzy
first first-order initial value problem are investigated. Sufficiently conditions
for stability and convergence of the proposed algorithm are also proved. Their
applicability is illustrated by two examples.

Kaynakça

  • [1] Guo, M., Xue, X. and Li, R., Impulsive functional differential inclusions and fuzzy population models. Fuzzy Sets and Systems 138 (2003), 601-615.
  • [2] El Naschie, M.S., A review of E-infinite theory and the mass spectrum of high energy particle physics. Chaos, Solitons and Fractals 19 (2004), 209-236.
  • [3] El Naschie, M.S., The concepts of E-infinite: an elementary introduction to the Cantorianfractal theory of quantum physics. Chaos, Solitons and Fractals 22 (2004), 495-511.
  • [4] El Naschie, M.S., On a fuzzy Khler manifold which is consistent with the two slit experiment. International Journal of Nonlinear Science Numerical Simulation 6 (2005), 95-98.
  • [5] Tanaka,Y., Mizuna Y. and Kado, T., Chaotic dynamics in the Friedman equation. Chaos, Solitons and Fractals 24 (2005), 407-422.
  • [6] El Naschie, M.S., From experimental quantum optics to quantum gravity via a fuzzy Khler manifold. Chaos, Solitons and Fractals 25 (2005), 969-977.
  • [7] Zhang, H., Liao, X. and Yu, J., Fuzzy modelling and synchronization of hyperchaotic systems. Chaos, Solitons and Fractals 26 (2005), 835-843.
  • [8] Feng, G. and Chen, G., Adaptive control of discrete-time chaotic systems: a fuzzy control approach. Chaos, Solitons and Fractals 23 (2005), 459-467.
  • [9] Jiang, W., Guo-Dang, Q. and Bin, D., H∞ variable universe adaptive fuzzy control for chaotic systems. Chaos, Solitons and Fractals 24 (2005), 1075-1086.
  • [10] Abbad, M.F.,Von Keyserlingk, D.G.,Linkens, D.A. and Mahfouf,M., Survey of utilisation of fuzzy technology in medicine and healthcare. Fuzzy Sets and Systems 120 (2001), 331-349.
  • [11] Barro, S. and Marn, R.,Fuzzy logic in medicine,Heidelberg, Physica-verlag,2002.
  • [12] Helgason, C.M. and Jobe, T.H., The fuzzy cube and causal efficiacy: representation of concomitant mechanisms in stroke. Neural Networks 11 (1998), 549-555.
  • [13] Nieto, J.J. and Torres, A., Midpoints for fuzzy sets and their application in medicine. Artificial Intelligence in Medicine 27 (2003), 81-101.
  • [14] Bandyopadhyay, S., An efficient for superfamily classification of amino acid sequences: feature extraction, fuzzy clustering and prototype selection. Fuzzy Sets and Systems 152 (2005), 5-16.
  • [15] Casasnovas, J. and Rossell, F., Averaging fuzzy biopolymers. Fuzzy Sets and Systems 152 (2005), 139-158.
  • [16] Chang, B.C. and Halgamuge, S.K., Protein motif extraction with neuro-fuzzy optimization. Bioinformatics 18 (2002), 1084-1090.
  • [17] Dembl, D. and Kastner, P., Fuzzy C-means method for clustering microarray data. Bioinformatics 19 (2003), 973-980.
  • [18] Heger, A. and Halm, L.,Sensitive pattern discovery with fuzzy alignments of distantly related proteins. Bioinformatics 19 (2003), 130-137.
  • [19] Nieto, J.J., Torres, A., Georgiou, D.N. and Karakasidis, T.E., Fuzzy polynucleatide spaces and metrics. Bulletin of Mathematical Biology 68 (2006), 301-317.
  • [20] Kaleva, O., Fuzzy differential inclusions. Fuzzy Sets and Systems 24 (1987), 301-317.
  • [21] Kloeden, P., Remarks on Peano-like theorems for fuzzy differential equations. Fuzzy Sets and Systems 44 (1991), 161-164.
  • [22] Seikkala, S., On the fuzzy initial value problem, Fuzzy Sets and Systems 24 (1987), 319-330.
  • [23] Song, S. and Wu, C., Existence and uniqueness of solution to the Cauchy problem of fuzzy differential equations. Fuzzy Sets and Systems 110 (2000), 55-67.
  • [24] Wu,C., Song, S. and Stanley Lee, E.,Approximate solution existence and uniqueness of the Cauchy problem of fuzzy differential equations. Journal of Mathematical Analysis and Applications 202 (1996), 629-644.
  • [25] Kaleva, O., The Cauchy problem for fuzzy differential equations. Fuzzy Sets and Systems 35 (1990), 389-396.
  • [26] He, Q. and Yi, W., On fuzzy differential equations. Fuzzy Sets and Systems 32 (1989), 321- 325.
  • [27] Menda, W., Linear fuzzy differential equation system on R1 . Journal of Fuzzy Syst Math2(1) (1988), 51-56 (in Chinese).
  • [28] Allahviranloo, T., Ahmadi,N. and Ahmadi, E., Numerical solution of fuzzy differential equations by predictor-corrector method. Information sciences 177 (2007), 1633-1647.
  • [29] Friedman,M., Ma, M. and Kandel, A., Numerical solution of fuzzy differential and integral equations. Fuzzy Sets and Systems 106 (1999), 35-45.
  • [30] Ma, M., Friedman, M. and Kandel, A., Numerical solution of fuzzy differential equations. Fuzzy Sets and Systems 105 (1999), 133-138.
  • [31] Khastan, A. and Ivaz, K., Numerical solution of fuzzy differential equations by Nystr¨om method. Chaos, Solitons and Fractals 41 (2009), 859-865.
  • [32] Isaacson, E. and Keller, H.B.,Analysis of Numerical Methods, Wiley, New York, 1966. [33] Stefanini, L.,Sorini, L. and Guerra, M.L., Parametric representation of fuzzy numbers and application to fuzzy calculus. Fuzzy Sets and Systems 157 (2006),2423-2455.
  • [34] Dong-Kai, Z., Wen-Li, F., Ji-qing, Q. and Duoming, X., On the study of linear properties for fuzzy number-valued fuzzy integrals. Fuzzy Information and Engineering 54 (2009),227-232.
  • [35] Colombo, G. and Krivan, V.,Fuzzy differential inclusions and non-probabilistic likelihood. Dynamic Systems and Applications 1 (1992),419-440.
  • [36] Kaleva, O.,Interpolation of fuzzy data. Fuzzy Sets and Systems 35 (1990),389-396.
  • [37] Effati, S. and Pakdaman, M., Artificial neural network approach for solving fuzzy differential equations. Information Sciences 180 (2010),1434-1457.
  • [38] Abu-Argub, O., El-Ajou, A., Momani, S.and Shawagfeh, N.,Analytical solutions of fuzzy initial value problems by HAM. Applied Mathematics and Information Sciences 5 (2013),1903- 1909.
Toplam 37 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Bölüm Articles
Yazarlar

Mine Aylin Bayrak

Emine Can Bu kişi benim

Yayımlanma Tarihi 15 Mayıs 2015
Gönderilme Tarihi 9 Ocak 2015
Yayımlandığı Sayı Yıl 2015 Cilt: 3 Sayı: 1

Kaynak Göster

APA Bayrak, M. A., & Can, E. (2015). NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD. Mathematical Sciences and Applications E-Notes, 3(1), 137-153. https://doi.org/10.36753/mathenot.421232
AMA Bayrak MA, Can E. NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD. Math. Sci. Appl. E-Notes. Mayıs 2015;3(1):137-153. doi:10.36753/mathenot.421232
Chicago Bayrak, Mine Aylin, ve Emine Can. “NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD”. Mathematical Sciences and Applications E-Notes 3, sy. 1 (Mayıs 2015): 137-53. https://doi.org/10.36753/mathenot.421232.
EndNote Bayrak MA, Can E (01 Mayıs 2015) NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD. Mathematical Sciences and Applications E-Notes 3 1 137–153.
IEEE M. A. Bayrak ve E. Can, “NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD”, Math. Sci. Appl. E-Notes, c. 3, sy. 1, ss. 137–153, 2015, doi: 10.36753/mathenot.421232.
ISNAD Bayrak, Mine Aylin - Can, Emine. “NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD”. Mathematical Sciences and Applications E-Notes 3/1 (Mayıs 2015), 137-153. https://doi.org/10.36753/mathenot.421232.
JAMA Bayrak MA, Can E. NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD. Math. Sci. Appl. E-Notes. 2015;3:137–153.
MLA Bayrak, Mine Aylin ve Emine Can. “NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD”. Mathematical Sciences and Applications E-Notes, c. 3, sy. 1, 2015, ss. 137-53, doi:10.36753/mathenot.421232.
Vancouver Bayrak MA, Can E. NUMERICAL SOLUTION OF FUZZY DIFFERENTIAL EQUATIONS BY MILNE’S PREDICTOR-CORRECTOR METHOD. Math. Sci. Appl. E-Notes. 2015;3(1):137-53.

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