Study of the Effect of Physical Parameters on Commercial Hydroponics Based on Internet of Things (IoT): A Case Study of Bok Coy Plants (Brassica rapa) and Water Spinach (Ipomoea Aquatica)

IF 0.5 Q4 MULTIDISCIPLINARY SCIENCES Journal of Mathematical and Fundamental Sciences Pub Date : 2023-04-17 DOI:10.5614/j.math.fund.sci.2022.54.2.5
M. Budiman, Efraim Partogi, A. Kristi, Prianka Anggara, N. Aminah
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Abstract

Population growth causes the demand for food to increase. One solution that can be applied is agriculture with hydroponic technology. To increase production efficiency, one must know the physical parameters that most influence the production process. This research used an IoT system to gather accurate and precise measurement data of physical parameters to be used as a dataset for machine learning. The dataset consisted of light intensity, humidity, air temperature, and total dissolved solids (TDS). Plant growth was measured by leaf area of the plant, number of leaves, and plant stem length every 3 to 4 days. The models used in the machine learning process were linear regression, polynomial regression, and random forest regression. The machine learning results showed that the best model for predicting plant growth was random forest regression with an MAE of 8.3% and an R2 of 0.93, for both bok coy and water spinach. The variables that influence growth the most are TDS and light intensity. According to the relationship between TDS gradient and plant growth gradient, the most optimal growth can be achieved by raising the TDS gradient or by maintaining a high TDS, which can be achieved by adding nutrient solution to the tank regularly.
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基于物联网的商业水培物理参数影响研究——以豆科植物(Brassica rapa)和水菠菜(Ipomoea Aquatica)为例
人口增长导致对食物的需求增加。一个可以应用的解决方案是水培技术的农业。为了提高生产效率,必须了解对生产过程影响最大的物理参数。本研究使用物联网系统收集准确、精确的物理参数测量数据,作为机器学习的数据集。数据集包括光照强度、湿度、空气温度和总溶解固体(TDS)。每3 ~ 4 d测定植株叶面积、叶片数和茎长。机器学习过程中使用的模型有线性回归、多项式回归和随机森林回归。机器学习结果表明,预测植物生长的最佳模型是随机森林回归,对菠菜和菠菜的MAE为8.3%,R2为0.93。对生长影响最大的变量是TDS和光照强度。根据TDS梯度与植物生长梯度的关系,可以通过提高TDS梯度或保持较高的TDS来达到最优的生长效果,这可以通过定期向池中添加营养液来实现。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
0
审稿时长
24 weeks
期刊介绍: Journal of Mathematical and Fundamental Sciences welcomes full research articles in the area of Mathematics and Natural Sciences from the following subject areas: Astronomy, Chemistry, Earth Sciences (Geodesy, Geology, Geophysics, Oceanography, Meteorology), Life Sciences (Agriculture, Biochemistry, Biology, Health Sciences, Medical Sciences, Pharmacy), Mathematics, Physics, and Statistics. New submissions of mathematics articles starting in January 2020 are required to focus on applied mathematics with real relevance to the field of natural sciences. Authors are invited to submit articles that have not been published previously and are not under consideration elsewhere.
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