Fuzzy Decision Support Model based on Virtual Plant for Green-Leaf Vegetable Investment
How to Cite?
Ditdit Nugeraha Utama, Antoni Wibowo, "Fuzzy Decision Support Model based on Virtual Plant for Green-Leaf Vegetable Investment," International Journal of Engineering Trends and Technology, vol. 69, no. 11, pp. 180-186, 2021. Crossref, https://doi.org/10.14445/22315381/IJETT-V69I11P223
Abstract
Plant computational model (PCM) is a 3 dimension (3d) virtual plant model that configures the whole plant growth system statistically and morphologically. It is a part of the study result of the bigger domain, environmental or ecological informatics. This study constructed the PCM of green-leaf vegetable plant Bok Choy (Brassica chinensis L.). The model was combined with other constructed decision support models (DSM) to give users an investment suggestion. Three kined of method operated here; functional-structural plant model (FSPM) functioned to develop the PCM, fuzzy logic used to develop the investment model, and simple mathematical approach operated to merge both models. The hybrid model can suggest the optimal decision in investing the green-leaf vegetables economically and environmentally. 2,696 Bok Choy plants are a break-event-point the farmer can plant that give a profit.
Keywords
plan computation model, decision support model, functional-structural plant model, Bok Choy, fuzzy logic, investment, green-leaf vegetable.
Reference
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