Improving the efficiency of diagnosing errors in computer devices for processing economic data functioning in the class of residuals

Authors

DOI:

https://doi.org/10.15587/1729-4061.2023.289185

Keywords:

error diagnosis, processing of economic data, class of residuals, non-positional code structure

Abstract

This paper proposes an improved method for diagnosing errors of computer devices, which process economic data in computer systems, by increasing efficiency. The object of research is the processes of control and diagnosis of data errors, in the class of residuals (CR). The improved method of diagnosing economic data represented in the non-positional system of calculation in CR is based on the application of orthogonal bases of partial sets of bases. The use of these bases makes it possible to organize the process of parallel processing of the projections of the output number of the non-positional code structure. This makes it possible to increase the efficiency of data diagnostics by n times, depending on the length of the bit grid of computer systems. For a single-byte computer system, the efficiency of data diagnosis increases by 1.2 times compared to the existing method based on the zeroing principle. At the same time, the effectiveness of operational control and diagnostics systems for data processing in CR with the growth of bit grids has been proven.

Based on the results, it is shown that, unlike the correction codes used in the positional counting system, the arithmetic codes in CR have additional correction capabilities. An example of a specific implementation of the process of applying operational control and diagnosing errors in the processing of economic data presented in CR is given. The improved diagnostic method will make it possible (in comparison with existing diagnostic methods) to reduce the time, which increases the efficiency of the diagnostic procedure of data operating in CR. The results give grounds for asserting that, based on the improved method and the developed algorithm for the implementation of data diagnostics, it is possible to synthesize a device for reliable and operational control and diagnostics of economic data operating in CR

Author Biographies

Svitlana Onyshchenko, National University "Yuri Kondratyuk Poltava Polytechnic

Doctor of Economic Sciences, Professor

Department of Finance, Banking and Taxation

Alina Yanko, National University "Yuri Kondratyuk Poltava Polytechnic

PhD, Associate Professor

Department of Computer and Information Technologies and Systems

Alina Hlushko, National University "Yuri Kondratyuk Poltava Polytechnic"

PhD, Associate Professor

Department of Finance, Banking and Taxation

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Improving the efficiency of diagnosing errors in computer devices for processing economic data functioning in the class of residuals

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Published

2023-10-31

How to Cite

Onyshchenko, S., Yanko, A., & Hlushko, A. (2023). Improving the efficiency of diagnosing errors in computer devices for processing economic data functioning in the class of residuals. Eastern-European Journal of Enterprise Technologies, 5(4 (125), 63–73. https://doi.org/10.15587/1729-4061.2023.289185

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Mathematics and Cybernetics - applied aspects