Development of a new numerical scheme for the solution of exponential growth and decay models

OMS-Vol. 5 (2021), Issue 1, pp. 18 – 26 Open Access Full-Text PDF
S. E. Fadugba
Abstract: This paper presents the development of a new numerical scheme for the solution of exponential growth and decay models emanated from biological sciences. The scheme has been derived via the combination of two interpolants namely, polynomial and exponential functions. The analysis of the local truncation error of the derived scheme is investigated by means of the Taylor’s series expansion. In order to test the performance of the scheme in terms of accuracy in the context of the exact solution, four biological models were solved numerically. The absolute error has been computed successfully at each mesh point of the integration interval under consideration. The numerical results generated via the scheme agree with the exact solution and with the fifth order convergence based upon the analysis carried out. Hence, the scheme is found to be of order five, accurate and is a good approach to be included in the class of linear explicit numerical methods for the solution of initial value problems in ordinary differential equations.
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On new approximations for the modified Bessel function of the second kind \(K_0(x)\)

OMS-Vol. 5 (2021), Issue 1, pp. 11 – 17 Open Access Full-Text PDF
Francisco Caruso, Felipe Silveira
Abstract: A new series representation of the modified Bessel function of the second kind \(K_0(x)\) in terms of simple elementary functions (Kummer’s function) is obtained. The accuracy of different orders in this expansion is analysed and has been shown not to be so good as those of different approximations found in the literature. In the sequel, new polynomial approximations for \(K_0(x)\), in the limits \(0 < x \leq 2\) and \(2\leq x < \infty\), are obtained. They are shown to be much more accurate than the two best classical approximations given by the Abramowitz and Stegun's Handbook, for those intervals.
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Refinements of two fractional versions of Hadamard inequalities for Caputo fractional derivatives and related results

OMS-Vol. 5 (2021), Issue 1, pp. 1 – 10 Open Access Full-Text PDF
Ghulam Farid, Atiq Ur Rehman, Sidra Bibi, Yu-Ming Chu
Abstract: The aim of this paper is to study the fractional Hadamard inequalities for Caputo fractional derivatives of strongly convex functions. We obtain refinements of two known fractional versions of the Hadamard inequality for convex functions. By applying identities for Caputo fractional derivatives we get refinements of error bounds of these inequalities. The given results simultaneously provide refinements as well as generalizations of already known inequalities.
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Some basic properties of Sombor indices

ODAM-Vol. 4 (2021), Issue 1, pp. 1 – 3 Open Access Full-Text PDF
Ivan Gutman
Abstract: The recently introduced class of vertex-degree-based molecular structure descriptors, called Sombor indices (\(SO\)), are examined and a few of their basic properties established. Simple lower and upper bounds for \(SO\) are determined. It is shown that any vertex–degree–based descriptor can be viewed as a special case of a Sombor-type index.
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On Adomian decomposition method for solving nonlinear ordinary differential equations of variable coefficients

OMS-Vol. 4 (2020), Issue 1, pp. 476 – 484 Open Access Full-Text PDF
AbdulAzeez Kayode Jimoh, Aolat Olabisi Oyedeji
Abstract: This paper considers the extension of the Adomian decomposition method (ADM) for solving nonlinear ordinary differential equations of constant coefficients to those equations with variable coefficients. The total derivatives of the nonlinear functions involved in the problem considered were derived in order to obtain the Adomian polynomials for the problems. Numerical experiments show that Adomian decomposition method can be extended as alternative way for finding numerical solutions to ordinary differential equations of variable coefficients. Furthermore, the method is easy with no assumption and it produces accurate results when compared with other methods in literature.
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Best proximity point of modified Suzuki-Edelstein-Geraghty type proximal contractions

EASL-Vol. 3 (2020), Issue 4, pp. 94 – 104 Open Access Full-Text PDF
Leta Bekere Kumssa
Abstract: In this paper, we introduce the notion of modified Suzuki-Edelstein-Geraghty proximal contraction and prove the existence and uniqueness of best proximity point for such mappings. Our results extend and unify many existing results in the literature. We draw corollaries and give illustrative example to demonstrate the validity of our result.
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On properties of inner product type integral transformers

OMA-Vol. 4 (2020), Issue 2, pp. 160 – 169 Open Access Full-Text PDF
Benard Okelo
Abstract: In this paper, we give characterizations of certain properties of inner product type integral transformers. We first consider unitarily invariant norms and operator valued functions. We then give results on norm inequalities for inner product type integral transformers in terms of Landau inequality, Grüss inequality. Lastly, we explore some of the applications in quantum theory.
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A holistic comparison between deep learning techniques to determine Covid-19 patients utilizing chest X-Ray images

EASL-Vol. 3 (2020), Issue 4, pp. 85 – 93 Open Access Full-Text PDF
Taki Hasan Rafi
Abstract: Novel coronavirus likewise called COVID-19 began in Wuhan, China in December 2019 and has now outspread over the world. Around 63 millions of people currently got influenced by novel coronavirus and it causes around 1,500,000 deaths. There are just about 600,000 individuals contaminated by COVID-19 in Bangladesh too. As it is an exceptionally new pandemic infection, its diagnosis is challenging for the medical community. In regular cases, it is hard for lower incoming countries to test cases easily. RT-PCR test is the most generally utilized analysis framework for COVID-19 patient detection. However, by utilizing X-ray image based programmed recognition can diminish the expense and testing time. So according to handling this test, it is important to program and effective recognition to forestall transmission to others. In this paper, author attempts to distinguish COVID-19 patients by chest X-ray images. Author executes various pre-trained deep learning models on the dataset such as Base-CNN, ResNet-50, DenseNet-121 and EfficientNet-B4. All the outcomes are compared to determine a suitable model for COVID-19 detection using chest X-ray images. Author also evaluates the results by AUC, where EfficientNet-B4 has 0.997 AUC, ResNet-50 has 0.967 AUC, DenseNet-121 has 0.874 AUC and the Base-CNN model has 0.762 AUC individually. The EfficientNet-B4 has achieved 98.86% accuracy.
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