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自动养分估算器:基于植物生长情况在水培植物中分配营养液。

Automatic nutrient estimator: distributing nutrient solution in hydroponic plants based on plant growth.

作者信息

Sangeetha Tupili, Periyathambi Ezhumalai

机构信息

Department of Information Technology, Rajalakshmi Engineering College, Chennai, Tamil Nadu, India.

Department of Computer Science and Engineering, R.M.D. Engineering College, Kavaraipettai, Tamil Nadu, India.

出版信息

PeerJ Comput Sci. 2024 Feb 23;10:e1871. doi: 10.7717/peerj-cs.1871. eCollection 2024.

Abstract

BACKGROUND

The primary objective is to address the specific needs of plants at different growth stages by delivering precise nutrient concentrations tailored to their developmental requirements. Challenges such as uneven nutrient distribution, fluctuations in pH and electrical conductivity, and inadequate nutrient delivery pose potential hindrances to achieving optimal plant health and yield in hydroponic systems. By overcoming these challenges, the hydroponic farming community aims to enhance the accuracy of nutrient dosing, streamline automation processes, and minimize resource wastage. Hydroponics, a cultivation technique without soil, facilitates the growth of organic vegetation while concurrently minimizing water use and eliminating the necessity for pesticides. In order to achieve effective cultivation of hydroponic plants, it is essential to maintain a controlled environment that encompasses essential factors such as temperature, carbon dioxide (CO) levels, oxygen availability, and appropriate lighting conditions. Additionally, it is crucial to ensure the provision of vital nutrients to maximize output and productivity. Due to the demanding nature of a hydroponic farmer's schedule, it is necessary to minimize the amount of time dedicated to nutrient management, as well as pH and EC adjustments.

METHODS

In order to determine and deliver the proper amount of vital nutrients, such as nitrogen, phosphorus, and potassium, based on the plant growth stage, we presented an automatic hydroponic nutrient estimator in this system. We noticed that the plant's nutrient consumption varies depending on its stage of growth according to plant psychology. Four peristaltic pumps with the necessary sensors are controlled by an Arduino board in the suggested system. Both filling and draining the water are done using each pump. To identify the plant stage, we apply the Plant Growth Stage Identification algorithm to encompass the seedling, vegetative, flowers, and fruit stages.

RESULTS

The experimental results reveal that the Growth Stage Identification algorithm obtains 97.5% accuracy for the first 5 weeks with 1,715 ppm of nutrition ingestion, identifying the vegetative state. The flowering stage is identified with 97.5% accuracy in the 6-9th week with 2,380 ppm of nutrition consumption, and the fruiting location is determined with 99.4% accuracy in the last 10-15th week with 2,730 ppm of nutrition consumption.

摘要

背景

主要目标是通过提供符合植物不同生长阶段发育需求的精确养分浓度,来满足植物的特定需求。养分分布不均、pH值和电导率波动以及养分供应不足等挑战,对水培系统中实现最佳植物健康状况和产量构成潜在阻碍。通过克服这些挑战,水培种植群体旨在提高养分投加的准确性,简化自动化流程,并减少资源浪费。水培是一种无土栽培技术,有助于有机植物生长,同时减少水的使用并消除对农药的需求。为了实现水培植物的有效种植,保持一个包含温度、二氧化碳(CO)水平、氧气供应和适当光照条件等关键因素的可控环境至关重要。此外,确保提供关键养分以最大化产量和生产力也至关重要。由于水培种植者的日程安排要求苛刻,有必要尽量减少用于养分管理以及pH值和电导率调整的时间。

方法

为了根据植物生长阶段确定并提供适量的关键养分,如氮、磷和钾,我们在该系统中展示了一种自动水培养分估算器。我们注意到,根据植物生理学,植物的养分消耗因其生长阶段而异。建议系统中的一个Arduino板控制四个带有必要传感器的蠕动泵。每个泵用于加水和排水。为了识别植物阶段,我们应用植物生长阶段识别算法来涵盖幼苗、营养生长、开花和结果阶段。

结果

实验结果表明,生长阶段识别算法在前5周内,营养摄入量为1715 ppm时,识别营养生长状态的准确率为97.5%。在第6 - 9周,营养消耗量为2380 ppm时,识别开花阶段的准确率为97.5%,在最后第10 - 15周,营养消耗量为2730 ppm时,确定结果位置的准确率为99.4%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7e55/10909207/8617eddc4a7d/peerj-cs-10-1871-g001.jpg

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