Title Ontological Modeling of the Knowledge Base of Intellectual GIS of Digital Agriculture
Introduction. The field of digital agriculture requires effective management of agricultural resources based on intelligent analysis of heterogeneous spatiotemporal data collected from various sensor sources. Modern geographic information systems (GIS) allow collecting, processing and visualizing th...
        Saved in:
      
    
          | Published in | Kìbernetika ta komp'ûternì tehnologìï (Online) no. 3; pp. 79 - 90 | 
|---|---|
| Main Authors | , | 
| Format | Journal Article | 
| Language | English | 
| Published | 
            V.M. Glushkov Institute of Cybernetics
    
        29.09.2025
     | 
| Subjects | |
| Online Access | Get full text | 
| ISSN | 2707-4501 2707-451X 2707-451X  | 
| DOI | 10.34229/2707-451X.25.3.7 | 
Cover
| Abstract | Introduction. The field of digital agriculture requires effective management of agricultural resources based on intelligent analysis of heterogeneous spatiotemporal data collected from various sensor sources. Modern geographic information systems (GIS) allow collecting, processing and visualizing this data, but their capabilities for semantic information coordination and automated decision-making remain limited. The ontological approach provides systematization, structuring and interoperability of sensor data, formalization of domain knowledge, as well as intelligent extension of GIS functionality for solving applied tasks. The purpose of the paper. The research is aimed at developing an ontological model of the knowledge base of intelligent GIS of digital agriculture, which will provide a formalized representation, integration and processing of knowledge of a given subject area in the OWL format and will contribute to the automation of the analysis of agrotechnical processes, increasing the relevance of query results and optimizing decision-making based on taking into account the semantics of interoperable data. Results. The need for knowledge processing is substantiated to extract context, interpret and integrate heterogeneous data coming from different sources (agrodrones, autonomous tractors, cartographic services, etc.) and having different structures and levels of detail. The semantic and pragmatic aspects of the ontology are determined in the form of a mind map, which reflects the dimensions of the ontology in terms of formalization and detailing of information content and reuse of the ontology to solve new applied problems and extend the knowledge network. A formal ontological model of a knowledge base is proposed, which covers the key entities (categories) of digital agriculture (soils, crops, climatic factors, technical means and agro-technological operations) in two components – the four-component ontology containing interconnected sets: concepts (classes and subclasses), relations, interpretation functions, axioms, and a separate set of instances of defined concepts, which plays the role of a database with which the previous sets are linked. The proposed model was validated on test data in the Protege environment, which supports the representation of knowledge in OWL notation. A number of queries were generated for the constructed ontological knowledge base based on the SPARQL language. Conclusions. The developed ontological model of the knowledge base for the intelligent geoinformation system of digital agriculture provides semantic integration and interpretation of heterogeneous data, automation of decision-making and, as a result, increasing the efficiency of agricultural production, and also allows to create a flexible and adaptive system capable of evolution by extending the created model by integrating new concepts and relations between them. Further research on this topic involves the implementation of logical inference mechanisms within the model using SWRL rules to increase the level of automation of decision-making processes. Keywords: ontology, geographic information system, digital agriculture, Protege, OWL, RDF, SPARQL, knowledge base, semantics. | 
    
|---|---|
| AbstractList | Introduction. The field of digital agriculture requires effective management of agricultural resources based on intelligent analysis of heterogeneous spatiotemporal data collected from various sensor sources. Modern geographic information systems (GIS) allow collecting, processing and visualizing this data, but their capabilities for semantic information coordination and automated decision-making remain limited. The ontological approach provides systematization, structuring and interoperability of sensor data, formalization of domain knowledge, as well as intelligent extension of GIS functionality for solving applied tasks. The purpose of the paper. The research is aimed at developing an ontological model of the knowledge base of intelligent GIS of digital agriculture, which will provide a formalized representation, integration and processing of knowledge of a given subject area in the OWL format and will contribute to the automation of the analysis of agrotechnical processes, increasing the relevance of query results and optimizing decision-making based on taking into account the semantics of interoperable data. Results. The need for knowledge processing is substantiated to extract context, interpret and integrate heterogeneous data coming from different sources (agrodrones, autonomous tractors, cartographic services, etc.) and having different structures and levels of detail. The semantic and pragmatic aspects of the ontology are determined in the form of a mind map, which reflects the dimensions of the ontology in terms of formalization and detailing of information content and reuse of the ontology to solve new applied problems and extend the knowledge network. A formal ontological model of a knowledge base is proposed, which covers the key entities (categories) of digital agriculture (soils, crops, climatic factors, technical means and agro-technological operations) in two components – the four-component ontology containing interconnected sets: concepts (classes and subclasses), relations, interpretation functions, axioms, and a separate set of instances of defined concepts, which plays the role of a database with which the previous sets are linked. The proposed model was validated on test data in the Protege environment, which supports the representation of knowledge in OWL notation. A number of queries were generated for the constructed ontological knowledge base based on the SPARQL language. Conclusions. The developed ontological model of the knowledge base for the intelligent geoinformation system of digital agriculture provides semantic integration and interpretation of heterogeneous data, automation of decision-making and, as a result, increasing the efficiency of agricultural production, and also allows to create a flexible and adaptive system capable of evolution by extending the created model by integrating new concepts and relations between them. Further research on this topic involves the implementation of logical inference mechanisms within the model using SWRL rules to increase the level of automation of decision-making processes. Keywords: ontology, geographic information system, digital agriculture, Protege, OWL, RDF, SPARQL, knowledge base, semantics. Introduction. The field of digital agriculture requires effective management of agricultural resources based on intelligent analysis of heterogeneous spatiotemporal data collected from various sensor sources. Modern geographic information systems (GIS) allow collecting, processing and visualizing this data, but their capabilities for semantic information coordination and automated decision-making remain limited. The ontological approach provides systematization, structuring and interoperability of sensor data, formalization of domain knowledge, as well as intelligent extension of GIS functionality for solving applied tasks. The purpose of the paper. The research is aimed at developing an ontological model of the knowledge base of intelligent GIS of digital agriculture, which will provide a formalized representation, integration and processing of knowledge of a given subject area in the OWL format and will contribute to the automation of the analysis of agrotechnical processes, increasing the relevance of query results and optimizing decision-making based on taking into account the semantics of interoperable data. Results. The need for knowledge processing is substantiated to extract context, interpret and integrate heterogeneous data coming from different sources (agrodrones, autonomous tractors, cartographic services, etc.) and having different structures and levels of detail. The semantic and pragmatic aspects of the ontology are determined in the form of a mind map, which reflects the dimensions of the ontology in terms of formalization and detailing of information content and reuse of the ontology to solve new applied problems and extend the knowledge network. A formal ontological model of a knowledge base is proposed, which covers the key entities (categories) of digital agriculture (soils, crops, climatic factors, technical means and agro-technological operations) in two components – the four-component ontology containing interconnected sets: concepts (classes and subclasses), relations, interpretation functions, axioms, and a separate set of instances of defined concepts, which plays the role of a database with which the previous sets are linked. The proposed model was validated on test data in the Protege environment, which supports the representation of knowledge in OWL notation. A number of queries were generated for the constructed ontological knowledge base based on the SPARQL language. Conclusions. The developed ontological model of the knowledge base for the intelligent geoinformation system of digital agriculture provides semantic integration and interpretation of heterogeneous data, automation of decision-making and, as a result, increasing the efficiency of agricultural production, and also allows to create a flexible and adaptive system capable of evolution by extending the created model by integrating new concepts and relations between them. Further research on this topic involves the implementation of logical inference mechanisms within the model using SWRL rules to increase the level of automation of decision-making processes.  | 
    
| Author | Kasim, Anisa Kasim, Masud  | 
    
| Author_xml | – sequence: 1 givenname: Anisa orcidid: 0000-0003-3627-3855 surname: Kasim fullname: Kasim, Anisa organization: V.M. Glushkov Institute of Cybernetics of the NAS of Ukraine, Kyiv – sequence: 2 givenname: Masud surname: Kasim fullname: Kasim, Masud organization: National University of Life and Environmental Sciences of Ukraine, Kyiv  | 
    
| BookMark | eNp1kMtOAjEUhhuDiYg8gLt5AbCXKR2WiIoTMSzEhMRF08vpWFKnZGYI8vYOoOxcnZ4v_b_k_NeoU8YSELoleMhSSsd3VGAxSDlZDSkfsqG4QN0z6pzfmFyhfl2vMcZ0TDDLeBd9LH0TIFmUTQyx8EaF5DVaCL4skuiS5hOSlzLuAtgCkntVw4HmZQMhgGm27fdZ_nZgD77wTbtOisqbbWi2FdygS6dCDf3f2UPvT4_L6fNgvpjl08l8YAgnYgCMCQ1WGM1chkdaY0dHQlHjBE8d4UJQZ9szOdaWOUKsEEBcS5UGNSbAeig_eW1Ua7mp_Jeq9jIqL48gVoVUVeNNAJkaSyhTliur0tQxnYmMpEqPqGYj6rLWRU-ubblR-50K4SwkWB7bloc6ZVvtt6RcMinaEDmFTBXrugL3f2b1l_kBXJODwA | 
    
| Cites_doi | 10.34229/2707-451X.22.2.10 10.1109/CSCI58124.2022.00270 10.1016/j.aasri.2012.11.116 10.15587/1729-4061.2015.51050 10.3390/su13116387 10.15407/csc.2019.03.023 10.1007/978-3-030-03014-8_15  | 
    
| ContentType | Journal Article | 
    
| DBID | AAYXX CITATION ADTOC UNPAY DOA  | 
    
| DOI | 10.34229/2707-451X.25.3.7 | 
    
| DatabaseName | CrossRef Unpaywall for CDI: Periodical Content Unpaywall DOAJ Directory of Open Access Journals  | 
    
| DatabaseTitle | CrossRef | 
    
| DatabaseTitleList | CrossRef | 
    
| Database_xml | – sequence: 1 dbid: DOA name: DOAJ Directory of Open Access Journals url: https://www.doaj.org/ sourceTypes: Open Website – sequence: 2 dbid: UNPAY name: Unpaywall url: https://proxy.k.utb.cz/login?url=https://unpaywall.org/ sourceTypes: Open Access Repository  | 
    
| DeliveryMethod | fulltext_linktorsrc | 
    
| Discipline | Sciences (General) | 
    
| EISSN | 2707-451X | 
    
| EndPage | 90 | 
    
| ExternalDocumentID | oai_doaj_org_article_4cd123ad5ada44f3b87814ab62b362f8 10.34229/2707-451x.25.3.7 10_34229_2707_451X_25_3_7  | 
    
| GroupedDBID | AAYXX ALMA_UNASSIGNED_HOLDINGS CITATION GROUPED_DOAJ ADTOC UNPAY  | 
    
| ID | FETCH-LOGICAL-c1517-e337bed7cb3f806bb0f267a2cf754f15772fd42250bd3f11d77e1f772abea91e3 | 
    
| IEDL.DBID | DOA | 
    
| ISSN | 2707-4501 2707-451X  | 
    
| IngestDate | Tue Oct 07 09:28:34 EDT 2025 Tue Oct 07 09:00:25 EDT 2025 Thu Oct 09 00:36:36 EDT 2025  | 
    
| IsDoiOpenAccess | true | 
    
| IsOpenAccess | true | 
    
| IsPeerReviewed | true | 
    
| IsScholarly | true | 
    
| Issue | 3 | 
    
| Language | English | 
    
| License | https://creativecommons.org/licenses/by-nc-sa/4.0 cc-by-nc  | 
    
| LinkModel | DirectLink | 
    
| MergedId | FETCHMERGED-LOGICAL-c1517-e337bed7cb3f806bb0f267a2cf754f15772fd42250bd3f11d77e1f772abea91e3 | 
    
| ORCID | 0000-0003-3627-3855 | 
    
| OpenAccessLink | https://doaj.org/article/4cd123ad5ada44f3b87814ab62b362f8 | 
    
| PageCount | 12 | 
    
| ParticipantIDs | doaj_primary_oai_doaj_org_article_4cd123ad5ada44f3b87814ab62b362f8 unpaywall_primary_10_34229_2707_451x_25_3_7 crossref_primary_10_34229_2707_451X_25_3_7  | 
    
| PublicationCentury | 2000 | 
    
| PublicationDate | 2025-9-29 | 
    
| PublicationDateYYYYMMDD | 2025-09-29 | 
    
| PublicationDate_xml | – month: 09 year: 2025 text: 2025-9-29 day: 29  | 
    
| PublicationDecade | 2020 | 
    
| PublicationTitle | Kìbernetika ta komp'ûternì tehnologìï (Online) | 
    
| PublicationYear | 2025 | 
    
| Publisher | V.M. Glushkov Institute of Cybernetics | 
    
| Publisher_xml | – name: V.M. Glushkov Institute of Cybernetics | 
    
| References | ref13 ref12 ref15 ref14 ref11 ref10 ref0 ref2 ref1 ref8 ref7 ref9 ref4 ref3 ref6 ref5  | 
    
| References_xml | – ident: ref1 – ident: ref12 doi: 10.34229/2707-451X.22.2.10 – ident: ref2 – ident: ref14 doi: 10.1109/CSCI58124.2022.00270 – ident: ref5 – ident: ref6 – ident: ref7 – ident: ref13 doi: 10.1016/j.aasri.2012.11.116 – ident: ref8 doi: 10.15587/1729-4061.2015.51050 – ident: ref9 – ident: ref3 doi: 10.3390/su13116387 – ident: ref4 doi: 10.15407/csc.2019.03.023 – ident: ref10 doi: 10.1007/978-3-030-03014-8_15 – ident: ref0 – ident: ref11 – ident: ref15  | 
    
| SSID | ssj0002910385 ssib044750725  | 
    
| Score | 2.3068764 | 
    
| Snippet | Introduction. The field of digital agriculture requires effective management of agricultural resources based on intelligent analysis of heterogeneous... | 
    
| SourceID | doaj unpaywall crossref  | 
    
| SourceType | Open Website Open Access Repository Index Database  | 
    
| StartPage | 79 | 
    
| SubjectTerms | digital agriculture geographic information system knowledge base ontology owl protege rdf semantics sparql  | 
    
| SummonAdditionalLinks | – databaseName: Unpaywall dbid: UNPAY link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV1LbxMxEB5BegAOlPIQAYp84MBD-_BrnT2mhVJAFCQaKYjD4mdVUTarJhGFX19P4q2KEAe4rUazstafZ2fGHn8D8KSsNafM08xpO8qEj6ZYCxkNzzNrnTOUWtzveH9Q7U_E26mc9n1Oi8JapC7FE_x8qYvj79Gm5oWb2XkxTnVimK3LotNdTOGZbHij8s6Fq7BRyRiMD2BjcvBx_BlbyqkSGb1XDZDTM52uzzW5YKwueuFZzmTOc_WbZ1oR-N-Aa8u20z9_6JOTS15nbxO-9nd31sUm3_LlwuT2159Ujv_7QbfgZopISVLcgiu-vQ1byebn5Gkipn52B74c4soiH9pF_8ck2EoNL7STWSAxlCTv-i06shPdI0ov31Mhr998QtnL4yPsVULGR6eJ-sPfhcneq8Pd_Sw1Z8hsDBJU5jlXxjtlDQ-jsjKmDKxSmtmgpAhUxqg9uDjPsjSOB0qdUp6GKNXG65p6fg8G7az194G4mKVaVtVGSCuoZtp6WjnhmJXKx7eG8LwHpunWHBxNzF1WKDaIYoPQpskbwg5Cd6GI9NkrQYSgSdbYCOuix9ZOaqeFCNyMkPlLm4qZ6NDDaAgvLoD_-5BnacgH_6T9EK4j4lhzwupHMFicLv12DGwW5nFavOcjw_Rw priority: 102 providerName: Unpaywall  | 
    
| Title | Title Ontological Modeling of the Knowledge Base of Intellectual GIS of Digital Agriculture | 
    
| URI | http://cctech.org.ua/images/docs/Articles/2025/paper_25_3_7.pdf https://doaj.org/article/4cd123ad5ada44f3b87814ab62b362f8  | 
    
| UnpaywallVersion | publishedVersion | 
    
| hasFullText | 1 | 
    
| inHoldings | 1 | 
    
| isFullTextHit | |
| isPrint | |
| journalDatabaseRights | – providerCode: PRVAON databaseName: DOAJ Directory of Open Access Journals customDbUrl: eissn: 2707-451X dateEnd: 99991231 omitProxy: true ssIdentifier: ssj0002910385 issn: 2707-451X databaseCode: DOA dateStart: 20200101 isFulltext: true titleUrlDefault: https://www.doaj.org/ providerName: Directory of Open Access Journals – providerCode: PRVHPJ databaseName: ROAD: Directory of Open Access Scholarly Resources customDbUrl: eissn: 2707-451X dateEnd: 99991231 omitProxy: true ssIdentifier: ssib044750725 issn: 2707-4501 databaseCode: M~E dateStart: 20200101 isFulltext: true titleUrlDefault: https://road.issn.org providerName: ISSN International Centre  | 
    
| link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwrV1LTxsxELZQeoAeKp4iLSAfONCiTdavdXwMbXlVpEgQKYiD5SeqhBZEg9r-ezy7TpQeUC-9jnY11jfjmfHrG4T2S2UYoYEU3rhBwUOaioqLNPECdc57S4iD_Y6LUXU65ucTMVlo9QV3wlp64Ba4Pnc-BVfjhfGG88jsAEiajK2oTbE3Ns98y4FaWEwlTwIWu1JmT4WYTBUQgcN9RipLIPouSXvEyTilqp-FZNKjosd68q8k1XD5v0XLz_Wj-fPL3N8vJKDjVfQuV4542I54DS2Feh2t5bn5Ex9kAumPG-j2GjwAf6-ns8iGoeUZPDzHDxGnkg9_m22l4aOUxkC6-J4En5xdgezLjzvoKYKHd0-ZoiNsovHx1-vPp0VuolC4lMxlERiTNnjpLIuDsrK2jLSShrooBY9EpOo6-gSCKK1nkRAvZSAxSY0NRpHAtlCnfqjDNsI-rSYdrZTlwnFiqHGBVJ576oQM6a8u-jRDTT-2XBk6rTEaiDVArAFiTYVmWnbREeA6_xBorhtBMr7Oxtf_Mn4XHc6t8rrK31nl-_-h8gNaodACGA6m1A7qTJ-ew26qS6Z2r3HBPfRmPLoc3rwAQAfcGg | 
    
| linkProvider | Directory of Open Access Journals | 
    
| linkToUnpaywall | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV1LbxMxEB5BegAOlPIQAYp84MBD-_BrnT2mhVJAFCQaKYjD4mdVUTarJhGFX19P4q2KEAe4rUazstafZ2fGHn8D8KSsNafM08xpO8qEj6ZYCxkNzzNrnTOUWtzveH9Q7U_E26mc9n1Oi8JapC7FE_x8qYvj79Gm5oWb2XkxTnVimK3LotNdTOGZbHij8s6Fq7BRyRiMD2BjcvBx_BlbyqkSGb1XDZDTM52uzzW5YKwueuFZzmTOc_WbZ1oR-N-Aa8u20z9_6JOTS15nbxO-9nd31sUm3_LlwuT2159Ujv_7QbfgZopISVLcgiu-vQ1byebn5Gkipn52B74c4soiH9pF_8ck2EoNL7STWSAxlCTv-i06shPdI0ov31Mhr998QtnL4yPsVULGR6eJ-sPfhcneq8Pd_Sw1Z8hsDBJU5jlXxjtlDQ-jsjKmDKxSmtmgpAhUxqg9uDjPsjSOB0qdUp6GKNXG65p6fg8G7az194G4mKVaVtVGSCuoZtp6WjnhmJXKx7eG8LwHpunWHBxNzF1WKDaIYoPQpskbwg5Cd6GI9NkrQYSgSdbYCOuix9ZOaqeFCNyMkPlLm4qZ6NDDaAgvLoD_-5BnacgH_6T9EK4j4lhzwupHMFicLv12DGwW5nFavOcjw_Rw | 
    
| openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Title+Ontological+Modeling+of+the+Knowledge+Base+of+Intellectual+GIS+of+Digital+Agriculture&rft.jtitle=K%C3%ACbernetika+ta+komp%27%C3%BBtern%C3%AC+tehnolog%C3%AC%C3%AF+%28Online%29&rft.au=Kasim%2C+Anisa&rft.au=Kasim%2C+Masud&rft.date=2025-09-29&rft.issn=2707-4501&rft.eissn=2707-451X&rft.issue=3&rft.spage=79&rft.epage=90&rft_id=info:doi/10.34229%2F2707-451X.25.3.7&rft.externalDBID=n%2Fa&rft.externalDocID=10_34229_2707_451X_25_3_7 | 
    
| thumbnail_l | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=2707-4501&client=summon | 
    
| thumbnail_m | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=2707-4501&client=summon | 
    
| thumbnail_s | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=2707-4501&client=summon |