首页> 外文期刊>Agrivita: journal of agricultural science >Yield evaluation of Brassica rapa, Lactuca sativa, and Brassica integrifolia using image processing in an IoT-based aquaponics with temperature-controlled greenhouse
【24h】

Yield evaluation of Brassica rapa, Lactuca sativa, and Brassica integrifolia using image processing in an IoT-based aquaponics with temperature-controlled greenhouse

机译:使用温度控制的温室中使用基于物联网水产物的图像处理的芸苔属Rapa,Lactuca Sativa和Brassica Ordifolia的产量评估

获取原文
           

摘要

Among the main concerns in inefficient agricultural methodology involves critical food safety from weather instability, environmental degradation caused by waste from conventional farming, wasteful energy usage, and climate change. To give response to these, the paper introduced the development of a self-sustainable smart aquaponics system in a temperature-controlled greenhouse with a monitoring and automatic correction system using an Android device through Internet of Things (IoT) and plant growth monitoring system through image processing using Raspberry Pi. The system involves the acquiring of real time data detected by the light intensity sensor, and air temperature and humidity sensor.? It also includes the monitoring of the pH level, and temperature of the recirculating water of the system. If the acquired data is not within the threshold range, the correcting devices, namely grow lights, exhaust and inlet fans, evaporative cooler, aerator, and peristaltic buffer device were automatically triggered by the system to correct and achieve its normal status. The internet remote access includes the effective wireless transmission and reception of data report between the system and an Android unit with the Android application in real-time. The study focused on the evaluation of two experimental set-ups comparing the plant growth between the conventional soil-based farming and the smart aquaponics system using image processing. After data gathering, results showed that the smart aquaponics set-up successfully produced a yield better than the conventional farming set-up.
机译:在低效的农业方法中的主要问题中,来自恶劣的食物安全性,来自常规农业,浪费的能源使用和气候变化造成的废物引起的环境退化。为响应这些,本文介绍了一种在温控温室中的自我可持续智能Aquaponics系统的开发,通过图像(物联网)和植物生长监测系统通过图像,使用Android设备进行监控和自动校正系统使用覆盆子pi进行处理。该系统涉及获取由光强度传感器和空气温度和湿度传感器检测的实时数据。它还包括监测pH水平和系统再循环水的温度。如果所获取的数据不在阈值范围内,系统将由系统自动触发校正装置,即生长灯,排气和入口风扇,蒸发冷却器,曝气器和蠕动缓冲器和蠕动缓冲装置,以校正并达到其正常状态。 Internet远程访问包括系统和Android单元之间的有效无线传输和数据报告的数据报告,实时与Android应用程序。该研究侧重于评估两种实验组,比较常规土壤养殖与智能Aquaponics系统的植物生长使用图像处理。在数据收集之后,结果表明,智能的Aquaponics设置成功地产生了比传统农业设置更好的收益率。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号