Publication:
Smart Intelligent Floriculture Assistant Agent (SIFAA)

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Date

2021-12-09

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2021 3rd International Conference on Advancements in Computing (ICAC), SLIIT

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Abstract

Technology has become a vital aspect for various functional purposes throughout the world and some industries like floriculture have not adapted technology to solve and facilitate currently facing problems and provide the supply to the demand. Consequently, we have identified and implemented a solution that will address major aspects of such industry barriers. To address these major aspects we proposed a system Smart Intelligent Floriculture Assistant Agent (SIFAA), which uses expert knowledge with solutions and guideline such as identify diseases based on deep learning techniques. It also suggests remedies for diseases based on the expert knowledge, recommend best products for customers by using Reinforcement Learning (RL) technique, motivate cultivators by using demand forecasting, and apply feature engineering by using Linear Regression (LR) and ensemble advance LightGBM Regressors techniques.

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Floriculture, Smart Intelligent System, Deep Learning, Reinforcement Learning, Recommendation System, Demand Forecasting

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