Smart Agriculture: An Expert System for Tomato Plant Disease Diagnosis
Resource type
Authors/contributors
- Sheta, Alaa (Author)
- Elashmawi, Walaa H. (Author)
- Othman, Emad S. (Author)
Title
Smart Agriculture: An Expert System for Tomato Plant Disease Diagnosis
Abstract
Tomato plant diseases pose a significant threat to agricultural productivity, resulting in substantial economic losses. Early and accurate diagnosis is crucial for effective disease management. This paper describes the design and implementation of expert systems for tomato disease detection using the CLIPS (C Language Integrated Production System) platform. The tool is designed to help farmers and agronomists accurately identify diseases affecting tomato crops by simulating knowledge from professional experts. We carefully developed a set of rules to distinguish leaf blight symptoms from those of other tomato diseases and provided recommendations to minimize crop losses and maximize yields. The expert system was developed using a forward-chaining inference engine, and its performance was evaluated through a set of real-world test cases, demonstrating a high level of accuracy and consistency in decision-making. © The Author(s), under exclusive license to Springer Nature Switzerland AG 2026.
Proceedings Title
Lect. Notes Networks Syst.
Conference Name
Lecture Notes in Networks and Systems
Publisher
Springer Science and Business Media Deutschland GmbH
Date
2026
Volume
1801 LNNS
Pages
227-240
ISBN
978-3-032-15783-6
Citation Key
shetaSmartAgricultureExpert2026
Short Title
Smart Agriculture
Language
English
Library Catalog
Scopus
Extra
Journal Abbreviation: Lect. Notes Networks Syst.
Citation
Sheta, A., Elashmawi, W. H., & Othman, E. S. (2026). Smart Agriculture: An Expert System for Tomato Plant Disease Diagnosis. Lect. Notes Networks Syst., 1801 LNNS, 227–240. https://doi.org/10.1007/978-3-032-15784-3_17
Department
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