Deterministic and Probabilistic Modeling of the Logistic Growth

EMU I-REP

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dc.contributor.advisor Tandoğdu, Yücel
dc.contributor.author Noupoue, Yves Yannick Yameni
dc.date.accessioned 2022-05-26T09:41:52Z
dc.date.available 2022-05-26T09:41:52Z
dc.date.issued 2019
dc.date.submitted 2019-08
dc.identifier.citation Noupoue, Yves Yannick Yameni. (2019). Deterministic and Probabilistic Modeling of the Logistic Growth. Thesis (Ph.D.), Eastern Mediterranean University, Institute of Graduate Studies and Research, Dept. of Mathematics, Famagusta: North Cyprus. en_US
dc.identifier.uri http://hdl.handle.net/11129/5556
dc.description Doctor of Philosophy in Applied Mathematics and Computer Science. Thesis (Ph.D.)--Eastern Mediterranean University, Faculty of Arts and Sciences, Dept. of Mathematics, 2019. Supervisor: Assist. Prof. Dr. Yücel Tandoğdu. en_US
dc.description.abstract The logistic growth concept investigated by many researchers has wide applications in different fields. An exact solution to the logistic growth problem can always be obtained using the first order differential equation. However, this is not always possible when the fractional order of derivative is used. This work investigated the use of deterministic and probabilistic approaches for modeling the logistic growth models. The deterministic model was built using classical and fractional differential equations. Hadamard type fractional derivative and integral were used to prove the existence and uniqueness of the solution to the fractional logistic differential equation using theorems. Numerical methods were employed to approximate the solution in the fractional case since it has no analytic form. The probabilistic approach used by employing the Gaussian kernel smoothing. A comparison of deterministic and probabilistic methods performance in modeling the logistic growth concept, minimum error levels were achieved with the fractional method, and Gaussian kernel smoother method with bandwidth 22. Keywords: Gaussian kernel, optimal bandwidth, fractional differential equation, Hadamard derivative, Caputo-Fabrizio, Grünwald-Letnikov, generalized Euler method, carrying capacity. en_US
dc.description.abstract ÖZ: Birçok araştırmacının üzerinde çaliştığı lojistik büyüme kavramı pek çok farklı alanda uygulanabilir. Birinci dereceden diferansiyel denklemler kullanılarak, lojistik büyüme problemlerinin tam çözümü mümkündür. Ancak, kesirli diferansiyel denklemler kullanıldığında tam çözüm bulmak mümkün olmayabilir. Bu çalışmada lojistik büyüme kavramının modellenmesi deterministik ve probabilistik yaklaşımlarla araştırıldı. Deterministik model, klasik ve kesirli diferansiyel denklemler kullanılarak tayin edildi. Hadamard türü kesirli differansiyel ve integral kullanılarak kesirli diferansiyel türü lojistik denklem için tek çözüm olacağı teoremlerle ispatlanmıştır. Analitik çözümün elde edilemediği kesirli durumlar için, nümerik yöntemlerle yaklaşık değerler bulunmuştıur. Probabilistik yaklaşımda Gauss kernel düzleştiricisi kullanılmıştır. Lojistik büyüme modellenmesi sürecinde kullanılan deterministik ve istatistiksel yöntemler, tahmin işleminde ortaya çıkan hatala gözönünde bulundurularak karşılaştırılmıştır. En düşük hatalar Kesirli üssel metod ve Gauss kernel düzleştirici metodunda band genişliği 22 iken elde edilmiştir. Anahtar kelimeler: Gauss kernel, optimum band genişliği, kesirli diferansiyel denklem, Hadamard türevi, Caputo-Fabrizio, Grünwald-Letnikov, genelleştirilmiş Euler metodu, taşıma kapasitesi. en_US
dc.language.iso eng en_US
dc.publisher Eastern Mediterranean University (EMU) - Doğu Akdeniz Üniversitesi (DAÜ) en_US
dc.rights info:eu-repo/semantics/openAccess en_US
dc.subject Mathematics en_US
dc.subject Applied Mathematics and Computer Science en_US
dc.subject Fractional differential equations en_US
dc.subject Gaussian kernel en_US
dc.subject optimal bandwidth en_US
dc.subject fractional differential equation en_US
dc.subject Hadamard derivative en_US
dc.subject Caputo-Fabrizio en_US
dc.subject Grünwald-Letnikov en_US
dc.subject generalized Euler method en_US
dc.subject carrying capacity en_US
dc.title Deterministic and Probabilistic Modeling of the Logistic Growth en_US
dc.type doctoralThesis en_US
dc.contributor.department Eastern Mediterranean University, Faculty of Arts and Sciences, Dept. of Mathematics en_US


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