Показати скорочену інформацію

dc.contributor.authorСачанюк-Кавецька, Н. В.uk
dc.contributor.authorГуда, О. В.uk
dc.contributor.authorКрадінова, Т. А.uk
dc.contributor.authorSachaniuk-Kavetska, N.en
dc.contributor.authorHuda, O.en
dc.contributor.authorKradinova, T.en
dc.date.accessioned2026-04-17T07:45:19Z
dc.date.available2026-04-17T07:45:19Z
dc.date.issued2026
dc.identifier.citationСачанюк-Кавецька Н. В., Гуда О. В., Крадінова Т. А. Диференціальні рівняння в техніці й природничих науках: чисельне та дано-орієнтоване моделювання логістичної динаміки // Системні технології. 2026. № 2 (163). С. 204-212.uk
dc.identifier.issn2707-7977
dc.identifier.urihttps://ir.lib.vntu.edu.ua//handle/123456789/51173
dc.description.abstractRecent studies on differential equations increasingly combine classical mathematical modeling with data-driven identification techniques. This trend is especially relevant in engineering and natural sciences, where real systems are often described by nonlinear dynamics, while the available data are limited or affected by noise. In such a context, a modern manuscript should not remain purely descriptive; it must demonstrate a reproducible computational result that quantitatively confirms the declared methodological approach. The purpose of this paper is twofold: first, to summarize the applied role of differential equations in engineering and natural sciences; second, to verify, on a reproducible control problem, the accuracy of two approaches to dynamic modeling: classical numerical integration and data-driven identification of the right-hand side from limited noisy observations. The study uses the logistic equation dN/dt = rN(1−N/K) with parameters r = 1, K = 100, N(0) = 10 on the interval t ∈ [0; 10]. The exact analytical solution is used as a benchmark. Numerical integration is performed by the explicit Euler method and the fourth-order Runge-Kutta method with a time step h = 0.5. In addition, a simplified data-driven model of the right-hand side is considered in the form f(N)=aN+bN². The coefficients are identified by least squares from synthetic derivative data corrupted by 2% relative noise. The identified model is then reintegrated and compared with the benchmark trajectory. The obtained results demonstrate a substantial difference in accuracy between the two numerical schemes. For the same step size, the Euler method yields RMSE = 2.664, while RK4 gives RMSE = 0.0039. The final value N(10) is reproduced much more accurately by RK4. At the same time, the identified data-driven model recovers coefficients a = 1.0053 and b = -0.01006, which are close to the theoretical values 1 and -0.01. The reconstructed trajectory has RMSE ≈ 0.15, showing that even a simple parametric representation can preserve the essential nonlinear behavior and saturation near the carrying capacity. The scientific contribution of the paper lies in methodological consistency. Instead of declaratively referring to neural differential equations without quantitative evidence, the manuscript provides a transparent comparative numerical experiment and a reproducible data-driven identification procedure. This removes the discrepancy between the stated goal, the applied methods, and the conclusions. The proposed framework may serve as a basis for further extensions to multidimensional systems, partial differential equations, and neural differential models with a complete training and validation pipeline.en
dc.language.isouk_UAuk_UA
dc.publisherУкраїнський державний університет науки і технологійuk
dc.relation.ispartofСистемні технології. № 2 (163) : 204-212.uk
dc.subjectдиференціальні рівнянняuk
dc.subjectлогістичне рівнянняuk
dc.subjectметод Ейлераuk
dc.subjectметод Рунге-Куттаuk
dc.subjectпараметрична ідентифікаціяuk
dc.subjectматематичне моделюванняuk
dc.subjectтехнічні системиuk
dc.subjectприродничі наукиuk
dc.subjectпрогнозуванняuk
dc.titleДиференціальні рівняння в техніці й природничих науках: чисельне та дано-орієнтоване моделювання логістичної динамікиuk
dc.title.alternativeDifferential equations in engineering and natural sciences: numerical and data-driven modeling of logistic dynamicsen
dc.typeArticle, professional native edition
dc.typeArticle
dc.identifier.udc517.9:62:5
dc.identifier.doihttps://doi.org/10.34185/1562-9945-2-163-2026-19
dc.identifier.orcidhttps://orcid.org/https://orcid.org/0000-0001-6405-1331
dc.identifier.orcidhttps://orcid.org/https://orcid.org/0000-0002-3602-7892
dc.identifier.orcidhttps://orcid.org/https://orcid.org/0000-0002-5611-1290


Файли в цьому документі

Thumbnail

Даний документ включений в наступну(і) колекцію(ї)

Показати скорочену інформацію