Clusters partition algorithm for a self-organizing map for detecting resource-intensive database inquiries in a geo-ecological monitoring system

Tareq Nasser Mahdi, Jalal Qais Jameel, Konstantin A Polshchykov, Sergej A Lazarev, Ilya K Polshchykov, Vladimir Kiselev

Abstract


The paper presents the research, aimed at improving the efficiency of automated software system for geo-ecological monitoring of agro-industrial sector resources. An algorithm of clusters partition in a self-organizing map was developed, in order to detect resource-intensive inquiries to databases of agricultural resources and objects. The algorithm is based on using fuzzy inference. The corresponding software for implementing the proposed algorithm was created. The carried-out experimental research has demonstrated that this algorithm allows considerably increasing the correctness of detecting resource-intensive inquiries to databases in comparison with other similar software applications. The algorithm, presented in this paper, can be recommended for practical application in an automated software system for geo-ecological monitoring of agricultural resources and objects.

Full Text:

PDF

References


kuzichkin o.r., romanov r.v., dorofeev n.v., grecheneva a.v. 2020. organization and application of information and analytical support for geological monitoring of water use. iioab journal, 11(1): 20-26.

romanov r.v., kuzichkin o.r., vasiliev g.s., mikhaleva e.s. 2019. the use of the geoelectric method of the express control during the geoecological monitoring of the decentralized water supply. international multi-conference on industrial engineering and modern technologies, fareastcon-2019, 8934213.

vasilyev g.s., kuzichkin o.r., grecheneva a.v., dorofeev n.v., surzhik d.i. 2018. analysis of the combined transfer functions for geotechnical control. international multidisciplinary scientific geoconference sgem, 2: 43.

polshchykov k., shabeeb a.h.t., lazarev s., kiselev v. 2021. justification for the decision on loading channels of the network of geoecological monitoring of resources of the agroindustrial complex. periodicals of engineering and natural sciences, 9 (2):781-787.

alghazali s.m.m., polshchykov k., hailan a.m., svoykina l. 2021. development of intelligent tools for detecting resource-intensive database queries. international journal of advanced computer science and applications, 12 (7): 32-36.

chen i.-t., chang l.-ch., chang f.-j. 2018. exploring the spatio-temporal interrelation between groundwater and surface water by using the self-organizing maps. journal of hydrology, 556: 131-142.

chang l. c., wang w. h., chang f.j. 2020. explore training self-organizing map methods for clustering high-dimensional flood inundation maps. journal of hydrology, 595 (5): 125655.

chamundeswari g., varma g.p.s., satyanarayana ch. 2018. contact distribution function based clustering technique with self-organizing maps. international journal of image, graphics and signal processing, 10 (3): 9-17.

chushig-muzo d., soguero-ruiz c., mora-jimenez i. [et al.] 2020. data-driven visual characterization of patient health-status using electronic health records and self-organizing maps. ieee access, 8: 137019-137031.

abarca-alvarez f.j., navarro-ligero m.l., valenzuela-montes l.m., campos-sánchez f.s. 2019. european strategies for adaptation to climate change with the mayors adapt initiative by self-organizing maps. applied sciences, 9(18): 3859.

girau b., torres-huitzil c. 2020. fault tolerance of self-organizing maps. neural computing & applications, 32 (24): 17977-17993.

guaman d., delgado s., perez j. 2021. classifying model-view-controller software applications using self-organizing maps. ieee access, 9: 45201-45229.

alqudah a., al-qodah m., al-zoubi h.r., al-khassaweneh m.a. 2018. highly accurate recognition of handwritten arabic decimal numbers based on a self-organizing maps approach. intelligent automation and soft computing, 24(3): 493-505.

nguyen t.h. 2019. metagenome-based disease classification with deep learning and visualizations based on self-organizing maps. lecture notes in computer science, 11814: 307-319.

pen h., wang q., wang z. 2021. boundary precedence image inpainting method based on self-organizing maps. knowledge-based systems, 216: 106722.

qu x., yang l., guo k. 2021. a survey on the development of self-organizing maps for unsupervised intrusion detection. mobile network applications, 26: 808-829.

galutira e.f., medina r.p., fajardo a.c. 2019. a novel kohonen self-organizing maps using exponential decay average rate of change for color clustering. lecture notes in networks and systems, 67: 23-33.

polshchykov k., lazarev s., polshchykova o., igityan e. 2019. the algorithm for decision-making supporting on the selection of processing means for big arrays of natural language data. lobachevskii journal of mathematics, 40 (11): 1831-1836.

polshchykov k.a., lazarev s.a., konstantinov i.s. [et al.] 2020. assessing the efficiency of robot communication. russian engineering research: 40 (11): 936-938.

konstantinov i., polshchykov k., lazarev s., polshchykova o. 2017. model of neuro-fuzzy prediction of confirmation timeout in a mobile ad hoc network. ceur workshop proceedings. mathematical and information technologies, 1839: 174-186.

polshchykov k.o., lazarev s.a., zdorovtsov a.d. 2017. neuro-fuzzy control of data sending in a mobile ad hoc network. journal of fundamental and applied sciences, 9 (2s): 1494-1501.

ivaschuk o.a., polschykov k.a., lazarev s.a., ivaschuk o.d., fedorov v.i. 2016. integral estimate of terrestrial compartment condition in management of biotechnosphere of rural and urban areas // international journal of pharmacy and technology, 8(4): 27032-27038.

cornejo r. 2018. performance tuning basics. in: dynamic oracle performance analytics. apress, berkeley: https://doi.org/10.1007/978-1-4842-4137-0_1.

kuhn d., alapati s.r., padfield b. 2021. sql tuning advisor. in: expert indexing in oracle database 11g: https://doi.org/10.1007/978-1-4302-3736-5_9.

rahman h. 2021. oracle database design and development in ador composite ltd: http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/5484.

sharma m., singh g., singh r. 2019. a review of different cost-based distributed query optimizers. prog. artif. intell., 8: 45-62.




DOI: http://dx.doi.org/10.21533/pen.v10i1.2584

Refbacks

  • There are currently no refbacks.


Copyright (c) 2022 Tareq Nasser Mahdi, Jalal Qais Jameel, Konstantin A Polshchykov, Sergej A Lazarev, Ilya K Polshchykov, Vladimir Kiselev

Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.

ISSN: 2303-4521

Digital Object Identifier DOI: 10.21533/pen

Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License