Work place: University of Maroua, Faculty of Science, Department of Mathematics and Computer Sciences, Maroua, Cameroon
E-mail: isaac.touza@univ-maroua.cm
Website:
Research Interests:
Biography
Isaac Touza is a Ph.D. researcher in Machine Learning at the University of Maroua, Cameroon. His research focuses on ontology-based approaches for automatic text classification, leveraging domain knowledge to enhance machine learning models for natural language processing tasks. His academic interests span artificial intelligence, data mining, and semantic technologies. He is currently a lecturer in the Department of Mathematics and Computer Science at the Faculty of Science, University of Maroua. He is also a seasoned full-stack developer with over 10 years of experience.
By Ngazia Balama Gazissou Balama Isaac Touza Daouda Hassana Daouda Dayang Paul
DOI: https://doi.org/10.5815/ijeme.2026.03.01, Pub. Date: 8 Jun. 2026
Sustainable grazing management requires balancing livestock productivity with ecosystem preservation, yet existing monitoring systems integrate heterogeneous data from IoT sensors, satellite imagery, and field surveys without a unified semantic layer, limiting holistic decision support. This paper proposes ONTOGRAZING, an ontology-based monitoring architecture for sustainable grazing management. Using the Uschold and King ontology engineering framework, domain knowledge was collected through surveys involving 23 livestock farmers and 4 agro-pastoral institutions in Cameroon, complemented by a systematic literature review. Seven core concepts and fourteen semantic relationships were modeled in OWL using Protégé. A five-module monitoring architecture composed of Query Reformulator, Data Integrator, Source Monitoring, Alert, and Storage modules was designed around the ontology. ONTOGRAZING was evaluated using the HermiT 1.4.3.456 reasoner and SPARQL queries. The ontology contains 47 classes, 14 object properties, and 9 data properties, and passed all consistency checks. Comparative analysis demonstrates that ONTOGRAZING is the first ontology to jointly cover forage management, dietary preferences, pasture composition, ecological–economic trade-offs, and land-use regulations. These results highlight the potential of ontology-based integration to improve interoperability and semantic decision support in agro-pastoral systems, while future work will focus on full prototype implementation and integration with real-world IoT platforms and agricultural databa.
[...] Read more.Subscribe to receive issue release notifications and newsletters from MECS Press journals