Decision support system to determine hydroponic vegetable cultivation based on Internet of Things (IoT)

Currently, hydroponic vegetables have become a trend because of its efficient construction requires a minimum resource management. Determining the correct type of hydroponic vegetable before planting would affect the yield of the vegetables produced. However, the experiments conducted in this research resulted in deadlocks to determine the exact type of vegetable cultivated at the farm where the type of hydroponic vegetable depends on several factors that affect the quality and quantity, size weights, the number of leaves and the weight of plants. A decision support system is applied as a solution to the problem and IoT is performed to gain criteria data input. AHP method is conducted to measure criteria such as raw water PH, PPM of a nutritional solution, air temperature and sunlight illumination intensity and to find alternatives determined namely, lettuce, Pakcoy, Mustard greens, Spinach, Kale, Celery, and Chinese Kale. Results showed that Pakcoy in the first rank with a value of 0.25% and the second is spinach with a value of 0.16%, the Decision support system has proven to determine the type of vegetable on hydroponic vegetables.

[1]  Young Hun Song,et al.  Photoperiodic flowering: time measurement mechanisms in leaves. , 2015, Annual review of plant biology.

[2]  D. Siswanto,et al.  Design and construction of a vertical hydroponic system with semi-continuous and continuous nutrient cycling , 2017 .

[3]  Budi Arifitama,et al.  Improvisation of Minimax Algorithm with Multi Criteria Decision Maker (MCDM) in the Intelligent Agent of Card Battle Game , 2019, 2019 International Conference on Electrical Engineering and Computer Science (ICECOS).

[4]  Desta Yolanda,et al.  Internet of things using publish and subscribe method cloud-based application to NFT-based hydroponic system , 2016, 2016 6th International Conference on System Engineering and Technology (ICSET).

[5]  M. Borin,et al.  Hydroponic systems and water management in aquaponics: a review , 2017 .

[6]  Rupali Hande,et al.  IoT based Hydroponic Farm , 2018, 2018 International Conference on Smart Systems and Inventive Technology (ICSSIT).

[7]  Yaddarabullah,et al.  Service-Oriented Architecture for E-Marketplace Model Based on Multi-Platform Distributed System , 2019 .

[8]  Syafii Syafii,et al.  Development and Evaluation of Solar-Powered Instrument for Hydroponic System in Limapuluh Kota, Indonesia , 2015 .

[9]  R. Cameron,et al.  Urban hedges: A review of plant species and cultivars for ecosystem service delivery in north-west Europe , 2019, Urban Forestry & Urban Greening.

[10]  Zhengdong Huang,et al.  A Decision Support System for Plant Optimization in Urban Areas with Diversified Solar Radiation , 2017 .

[11]  Ardiansyah,et al.  Organic agriculture in Indonesia: challenges and opportunities , 2017, Organic Agriculture.

[12]  Rijo Jackson Tom,et al.  IoT based hydroponics system using Deep Neural Networks , 2018, Comput. Electron. Agric..