A Systematic Review of Greenhouse Humidity Prediction and Control Models Using Fuzzy Inference Systems
Author(s) -
Sebastian-Camilo Vanegas-Ayala,
Julio Barón Velándia,
Daniel-David Leal-Lara
Publication year - 2022
Publication title -
advances in human-computer interaction
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.429
H-Index - 21
eISSN - 1687-5907
pISSN - 1687-5893
DOI - 10.1155/2022/8483003
Subject(s) - interpretability , adaptive neuro fuzzy inference system , computer science , inference , fuzzy logic , fuzzy inference system , fuzzy control system , data mining , machine learning , artificial intelligence , fuzzy inference , greenhouse , neuro fuzzy , cluster analysis , horticulture , biology
Cultivating in greenhouses constitutes a fundamental tool for the development of high-quality crops with a high degree of profitability. Prediction and control models guarantee the correct management of environment variables, for which fuzzy inference systems have been successfully implemented. The purpose of this review is determining the various relationships in fuzzy inference systems currently used for the modelling, prediction, and control of humidity in greenhouses and how they have changed over time to be able to develop more robust and easier to understand models. The methodology follows the PRISMA work guide. A total of 93 investigations in 4 academic databases were reviewed; their bibliometric aspects, which contribute to the objective of the investigation, were extracted and analysed. It was finally concluded that the development of models based in Mamdani fuzzy inference systems, integrated with optimization and fuzzy clustering techniques, and following strategies such as model-based predictive control guarantee high levels of precision and interpretability.
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