草莓种植自主水培环境与实时远程咨询系统

S. Samaranayake, Shevon Krishmal, P. Cooray, Thyaga Senatilaka, S. Rajapaksha, Wellalage Sasini Nuwanthika
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引用次数: 3

摘要

草莓是一种非常受欢迎的水果,在世界各地被广泛食用。由于它的营养价值,它的消费量近年来急剧增加。具有如此高的健康和经济价值的草莓,在斯里兰卡只有一个地区种植。这是因为这些地区的气候有利于草莓生长。本研究利用物联网、图像处理、机器学习等技术,提出了一种对草莓栽培所需的环境因子和营养进行自动监测和控制的封闭环境设计,具备对每株草莓进行远程实时监测和分析的能力。此外,该系统使用相机导航系统捕获每个草莓植物的图像,并使用机器学习算法分析这些图像以识别生长阶段。这个决策过程用从草莓农场获得的草莓图片进行了验证。此外,当前捕获的图像可以在下一个生长周期中使用,以提高精度。通过增加塔的高度和制冷功率,可以很容易地扩展所提出的系统。通过这种方式,克服气候和地理限制,草莓种植可以扩展到斯里兰卡的所有地区。
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Autonomous Hydroponic Environment with Live Remote Consulting System for Strawberry Farming
Strawberries are a very popular fruit and are widely consumed all over the world. Due to its nutritional value, its consumption has increased tremendously in recent times. Strawberry, which has such high health and economic value, is grown in only one area in Sri Lanka. This is since the climate in those areas is favorable for strawberries. Using the Internet of Things, image processing, and machine learning, this research proposed a design for a closed environment with automatic monitoring and controlling of environmental factors and nutrition required for strawberry cultivation with the capability of remote live monitoring and analysis of each plant. Also, the proposed system captures the images of each strawberry plant using a camera navigation system and analyses those images using a machine learning algorithm to identify the growing stage. This decision making process was verified using strawberry pictures acquired from a strawberry farm. In addition, current capturing images can use in the next growth cycle to increase accuracy. The proposed system can be easily expanded by increasing the height of the tower and refrigeration power. Through this, strawberry cultivation can be expanded to all parts of Sri Lanka by overcoming climatic and geographical limitations.
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