Models, systems, networks in economics, technology, nature and society

ISSN (print): 2227-8486  

Founder: Penza State University

Editor-in-Chief: Gerashchenko Sergey Mikhailovich, Doctor of Engineering. Sciences, Docent

Frequency / Access: 4 issues per year / Open

Included in: Higher Attestation Commission List, RISC

Ағымдағы шығарылым

№ 3 (2025)

Мұқаба

Бүкіл шығарылым

MODELS, SYSTEMS, NETWORKS IN ECONOMICS AND MANAGEMENT

RESILIENCE OF THE ECONOMY OF RUSSIAN REGIONS TO CRISIS SHOCK: INDUSTRY APPROACH
Gamidullaeva L., Roslyakova N., Vasin S.
Аннотация

Background. In 2020, Russian regions responded differently to external shocks due to the specific industry-specific effects of the COVID-19 pandemic. The study of factors of sustainable development of regional economies continues to be the focus of research interest. The subject of this work is the substantiation of industry determinants that can significantly determine the resistance of Russian regions to the 2020 pandemic shock. Research hypothesis: based on the analysis of industry dynamics in combination with the dynamics of GRP, it is possible to determine directions for increasing the sustainability of regional socioeconomic systems. Materials and methods. General scientific methods of analysis and synthesis, comparison and generalization of information, comparative, monographic, as well as special methods of economic and statistical research (grouping, correlation and regression analysis) were used. Results. The study concluded that the shocks that took place in 2020 have a negative impact on industries related to quality of life and human capital. Conclusions. As recommendations, it is proposed to implement systemic transformational changes in the economy of Russian regions in order to change the nature of the relationship between these industries and the dynamics of GRP in the long term. Institutional influences are also advisable, which should stop negative trends in the short term.

Models, systems, networks in economics, technology, nature and society. 2025;(3):5-21
pages 5-21 views
THE ROLE OF EXCHANGE TRADING IN ENSURING TRANSPARENCY OF INDUSTRY PRICING MECHANISMS
Malakhova Y., Badeeva E., Buldygin D.
Аннотация

Background. Commodity exchanges play an important role in the development of the country's economy. They provide an opportunity to determine the market capacity and competition conditions, exchange information and contribute to optimal pricing. Prices set on the exchange serve as a benchmark for other markets. The article reveals the role of ex change trading in crushed stone as prospects for the development of the construction materi als market. The purpose of the study is to investigate the need to organize exchange trades of building materials in order to form a transparent pricing system and increase tax collection in the budget. Materials and methods. The analysis of pricing for a number of building ma terials positions was conducted and the need for developing exchange trades as a source of information for regulation by the state, in particular tax authorities, was identified. General scientific research methods were used in the study: induction, analysis and generalization of data. Results. A classification of a potential exchange commodity – crushed stone – has been carried out, which will help buyers choose the right grade depending on its purpose. The adopted classification, reflecting the properties and purpose of crushed stone, will not only promote the transparency of transactions, but will also prevent tax evasion. Conclusions. The development of exchange trading as a single center for pricing in the construction materials market will create many conveniences for market participants and for the state. 

Models, systems, networks in economics, technology, nature and society. 2025;(3):22-33
pages 22-33 views
SOME FORMS OF INFLUENCE ON CRISIS PROCESSES IN REGIONAL ECONOMIES
Volodin V., Volodina N., Rozhkova L., Pitaikina I.
Аннотация

Background. In recent years, price fluctuations have increasingly affected the socio-economic stability of the constituent entities of the Russian Federation, especially under conditions of global turbulence and sanctions pressure. The aim of the study is to iden tify mechanisms capable of mitigating inflationary pressure and stabilizing regional econo mies. Materials and methods. The study employs an integrated approach combining eco nomic analysis, historical parallels, and critical evaluation of current regulatory measures. Results. The paper analyzes the impact of inflation on key sectors of regional economies, examines historical examples (including those from the 1990s), and assesses anti-crisis tools applied at the regional level. Special attention is paid to regional specifics, such as differences in economic structure, dependency on the federal center, and the population's social sensitiv ity. Conclusions. The effectiveness of responses to crisis processes largely depends on the coherence of fiscal and social policies, regional openness to innovation, and the flexibility of administrative decision-making. The article may be of interest to anti-crisis strategy devel opers, public administration bodies, and scholars studying regional resilience mechanisms under inflationary shocks. 

Models, systems, networks in economics, technology, nature and society. 2025;(3):34-45
pages 34-45 views
APPROACHES TO CREATING EMISSION FORECASTING SYSTEMS FOR MODERN INDUSTRIAL PROCESSES
Skobelev D., Popov A., Ganyavin V., Kostyleva V., Malyavin A.
Аннотация

 Background. Success in achieving technological sovereignty, technological lead ership and environmental well-being of the state is inextricably linked to the implementation of environmental industrial policy and the transition to the best available technologies. Materials and methods. The methodology for developing a predictive emission control system model, as well as its tests and verifications, is based on a comparison of indirect emission measurements (obtained through modeling) and direct emission measurements (performed using a temporarily installed automatic measuring system). Results. The principles of development of predictive emissions monitoring systems based on mathematical models using technological data are con sidered. The legal basis for the application of such systems at industrial facilities in Russia and abroad is briefly considered. The features of technological processes, their automation levels, as well as typical pollutants emitted into the atmospheric air as part of waste gases are analyzed for key sectors of Russian industry: power generation, ferrous and non-ferrous metallurgy, hydrocarbon processing, fertilizers production, cement production). The paper considers the concept of predictive analytics platform, shows the relevance of its development, including the creation of predictive emission monitoring systems, in the context of industrial and techno logical policy of the Russian Federation. Conclusions. The advantage of using large amounts of process data can be put into practice to obtain useful information. 

Models, systems, networks in economics, technology, nature and society. 2025;(3):46-64
pages 46-64 views
CONFLICT OF INTERNATIONAL MECHANISMS FOR IMPLEMENTING NATIONAL ECONOMIC INTERESTS
Chernetsova N.
Аннотация

Background. Sustainable development of the country's economic system is a function of the system of national interests, the implementation of which is largely deter mined by the degree of effectiveness of international economic institutions. The purpose of the study is to establish the nature of the conflict of international mechanisms for imple menting national interests and analyze the problems of functioning of modern international economic institutions that generate it. Materials and methods. To achieve this goal, general scientific and special methods were used: aggregation, abstraction, systematization of the analyzed material, grouping. The research methodology is based on the institutional-evolu tionary concept and systems approach. Results. The concept of dependence of the implemen tation of national economic interests on the degree of effectiveness of international economic institutions is presented. Conclusions. Resolving contradictions, a successful response to threats and challenges provoked for international economic institutions by the modern geo economic situation, is a necessary condition for overcoming the conflict of international mechanisms for the implementation of national economic interests, preserving national sov ereignty and ensuring sustainable development of the national economic system. 

Models, systems, networks in economics, technology, nature and society. 2025;(3):65-77
pages 65-77 views
A MODEL FOR EVALUATING THE EFFECTIVENESS OF INNOVATIVE PROJECTS IN THE ELECTRIC POWER INDUSTRY
Shifrin I., Dolotin A., Surovitskaya G.
Аннотация

Background. At the present stage, the growth rates of regional economies are largely determined by the effectiveness of innovative projects in the electric power industry. The latter operates in conditions of high wear and tear of electrical networks and equipment, increased consumption of electric energy by consumers, and insufficient financing of invest ment programs. Existing models for assessing the economic efficiency of innovative projects in the electric power industry do not provide acceptable accuracy in assessing potential inno vative projects, taking into account the parameters of the existing infrastructure of a particular energy facility. Materials and methods. To analyze modern evaluation approaches, when considering innovative projects, their features and limitations are taken into account, taking into account the regional component and operational factors. The methodological basis of the study was an integrated approach that combined logical analysis to identify cause-and-effect relationships, economic calculation of effects, and statistical verification of hypotheses. The data processing included the consolidation of technical and economic indicators of PJSC ROSSETI North-West for 2023 (energy losses, tariffs, operating characteristics) and the sub sequent calculation of effects with aggregation into an integral indicator. Results. A model for evaluating the effectiveness of innovative projects in the electric power industry is pro posed, shifting the focus of evaluation from uncertain forecasts to measurable parameters and based on determining the increase in capital expenditures and reduction of operating and operating costs in the context of the project. Conclusions. Using the model will make it pos sible to review traditional approaches to evaluating innovative projects for the introduction of intelligent electrical systems in conditions of insufficient information about their possible payback. 

Models, systems, networks in economics, technology, nature and society. 2025;(3):78-88
pages 78-88 views

MODELS, SYSTEMS, MECHANISMS IN THE TECHNIQUE

QUEUE SEPARATION AS A METHOD OF OPTIMIZATION OF ANT COLONY ALGORITHM FOR MULTI-MACHINE ASSEMBLY JOB SHOP SCHEDULING
Ivanov M.
Аннотация

Background. Ant Colony Algorithm is an effective method of solving assembly job shop problem. But its computational complexity makes it impractical for real-life tasks of hundreds and thousands of operations. Materials and methods. This article describes a method to significantly increase computational effectiveness of the algorithm for multimachine problem – the most important case for practical use. The proposed method uses separation of the task queue into a number of subqueues for each type of the processing machines and applying Ant Colony Optimization to each of them separately. Results. It is shown that for large-scale problems (thousands of operations) runtime decreases 10 times or more without losing the quality of solutions. Conclusions. This modification significantly increases ACO algorithm speed when applied to practical tasks of machine manufacturing plants.

Models, systems, networks in economics, technology, nature and society. 2025;(3):89-101
pages 89-101 views
MAINTENANCE AND REPAIR OF MEDICAL EQUIPMENT IN CONDITIONS OF LIMITED RESOURCES
Ivaschenko A., Mashkov K.
Аннотация

Background. The paper discusses the urgent problem of organizing the maintenance and repair of modern medical equipment in conditions of low availability of components and spare parts and limited resource. Materials and methods. For the first time, a decomposed resource model is proposed and the experience of its practical use for organizing the maintenance and repair of medical equipment is presented, taking into account modern requirements and operating conditions. The decomposed resource model is based on the hierarchical decomposition of a unit of medical equipment (device) into components according to the criterion of autonomy and frequency of maintenance and repair. Autonomy means the feasibility of separate maintenance and repair of components taking into account the requirements of reliability and safety of the equipment. The requirement of necessity and sufficiency of maintenance of a unit of medical equipment is determined in the form of the requirement of unity of coverage of events of maintenance and repair of its components. Results. It is proposed to use the proposed decomposed resource model in solving the problem of managing maintenance and repair during the transition from planning according to regulations to planning by resource. The developed model of the decomposed resource was implemented in planning the maintenance and repair of some types of medical equipment in the clinics of the Samara State Medical University for cases where scheduled provision of spare parts and components is impossible. Conclusions. The proposed model of the decomposed resource allows implementing adaptive methods for planning and managing the maintenance and repair of medical equipment in decision support systems for the operation of equipment with a limited resource.

Models, systems, networks in economics, technology, nature and society. 2025;(3):102-112
pages 102-112 views
NEURAL NETWORK CLASSIFIER OF CHEST X-RAY IMAGES FOR DETECTING SIGNS OF COVID-19 PNEUMONIA
Krivonogov L., Inomboev I., Cheban Y.
Аннотация

Background. This study presents the development of a neural network-based binary classifier for detecting COVID-related pneumonia in chest X-ray images. Arguments are given in favor of using X-ray as an alternative to computed tomography in detecting abnormalities in the lungs, associated with COVID-19. An analysis of existing publications on automatic classification of X-ray images with signs of COVID-19 pneumonia is conducted. Materials and methods. The author's dataset consisting of 1240 chest X-ray images was used to train and test the model. The training part of the dataset was subjected to the augmentation procedure. An original fourteen-layer classifier model was proposed and trained over 20 epochs. Results. The classification quality was assessed using standard metrics. The following metric values were obtained: Sensitivity (Recall) – 95,4 %, Specificity – 97,8 %, Accuracy – 96,7 %, Precision – 96,6 %, F1-scope – 96 %. Supplementary testing on 228 images from the COVID-19 Radiography Database of the Kaggle platform demonstrated consistent performance: Sensitivity (Recall), Specificity, Accuracy – 96 %, Precision – 93 %, F1-scope – 94 %. Conclusions. The quality of classification of chest X-ray images by the developed model corresponds to the current level and is close enough to the medical one. The developed classifier can be used in clinical radiology practice as an AI-assistant for radiologists.

Models, systems, networks in economics, technology, nature and society. 2025;(3):113-126
pages 113-126 views
COMPARISON OF SOFTWARE IMPLEMENTATIONS OF THE METHOD OF UNCERTAIN LAGRANGE MULTIPLIERS AND THE METHOD OF PENALTY FUNCTIONS IN SOLVING THE PROBLEM OF DETERMINING THE EQUILIBRIUM COMPOSITION USING THE EXAMPLE OF THE C-O SYSTEM
Sechenov P., Rybenko I.
Аннотация

Background. The problem of finding the equilibrium composition of a complex multicomponent system is accomplished by determining the minimum of the reduced Gibbs energy under constraints associated with taking into account the mass balance. Materials and methods. The choice of methods for transition from a conditional optimization problem to an unconditional optimization problem is considered. The methods of undetermined Lagrange multipliers and the penalty function method with different parameters were compared. The choice of the method for transition from the unconditional optimization problem to the conditional optimization problem affected the form of the objective function of the reduced Gibbs energy. Results. When changing the objective function, it was necessary to modify the algorithm for determining the first and second derivatives in the Newton – Raphson method, which is used to solve a system of nonlinear algebraic equations. Conclusions. A comparative analysis of two software implementations of the penalty function method is carried out: with a constant penalty value and with a monotonically increasing penalty value, and the Lagrange multiplier method.

Models, systems, networks in economics, technology, nature and society. 2025;(3):127-140
pages 127-140 views
COMPREHENSIVE METHODOLOGY OF SUPPORTING INVESTMENT DECISIONS
Zinenko A.
Аннотация

Background. The paper highlights the need to modify traditional statistical methods that are based on the assumption of normal distribution of quotes and do not take into account more complex dynamic characteristics of financial assets. The author proposes a new methodology that includes a binary approach to selecting assets in a portfolio, where the basis for making a decision is the feedback received from multidisciplinary forecasting methods. The purpose of the study is to improve the efficiency of investment decisions by developing a comprehensive methodology for supporting decision-making based on the transformation, combination and synthesis of statistical and spectral methods for forecasting time series. Materials and methods. The comprehensive methodology includes forecasting methods ARIMA/ARMA, ARIMA/GARCH and Fourier decomposition, modified by the author. To make decisions on this basis, a general model and its special cases was developed - modified random forest and Adaboost algorithms. Results. Validation of the models included in the methodology was carried out in comparison with the classical Markowitz model on four world indices for different periods. In the vast majority of cases, the proposed models showed a better result than the classical model. Conclusions. The integrated methodology for supporting investment decision-making is more flexible compared to existing ones due to adaptation to the nature of time series and allows for increased investment efficiency, which was shown during validation. In the future, author plans to test the methodology on the Russian market with calculation of the economic effect.

Models, systems, networks in economics, technology, nature and society. 2025;(3):141-152
pages 141-152 views
THE METHOD OF STATISTICAL EVALUATION ERRORS IN OPTICAL AND GEOMETRIC DATA FOR INFORMATION PROCESSING AND ANALYSIS SPACE ASSETS
Lavrov R., Chashin I., Ivanyu A., Ivanyu A.
Аннотация

Background. The paper raises the problem of reducing the statistical error in the formation of projection parameters of optoelectronic images of space objects using a three-dimensional opto-geometric model, since the use of existing methods for constructing such models is limited by the uncertainty of the angle of the space object and the size of its geometric primitives, which leads to alignment errors beyond the statistical error. Materials and methods. To overcome these limitations in the formation of image projection parameters, a variant of constructing a projective configuration based on the use of a mechanism for perceiving the depth of a scene when it is displayed on the image plane is proposed. Results. An algorithm for determining diffuse reflection coefficients has been developed based on a formal representation of the optical characteristics vectors of the structural elements of a space object and leading to a reduction in uncertainty when dividing surfaces into equivalence classes according to the diffuse reflection coefficient. Conclusions. The fundamental difference between the proposed approach is a qualitatively different instrumental support for determining diffuse reflection coefficients by analyzing the topology of the structural elements of a space object.

Models, systems, networks in economics, technology, nature and society. 2025;(3):153-166
pages 153-166 views
ANALYSIS OF STATISTICAL INDICATORS OF HEARTRATE VARIABILITY AND ECG SIGNAL VARIABILITY NORMALLY AND WITH SIGNS OF ARRHYTHMIA
Adamova A., Budanov K., Kuzmin A.
Аннотация

Background. Calculation and comparative analysis of heart rate variability and variability parameters is an urgent task of classification of arrhythmic and normal ECG signals. The objective is a comparative analysis of statistical indicators of heart rate variability and ECG signal variability by two methods and assessment of differences in parameters for different types of signal. Materials and methods. Two groups of signals from the open PhysioNet database were selected as initial data: those obtained from healthy people and those with arrhythmic disorders. For these signals, histograms of the probability density distribution of their amplitude characteristics and relative increments of a number of cardiointervals were constructed. The areas of mismatch of the histograms were calculated as metrics of their difference. Results. An assessment was made of the difference in the indicators of ECG signal variability and heart rate variability based on the averaged histograms of the distributions of ECG signal values for each group and the calculation of the ratio of the area of the mismatch region to the total area of the histogram, while the ratio for the first method was 48 %, and for the second – from 33 to 38 % for various indicators. Conclusions. The obtained data show the potential applicability of both methods for analyzing ECG signals for signs of arrhythmia.

Models, systems, networks in economics, technology, nature and society. 2025;(3):167-178
pages 167-178 views

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