Urban Farming Growth Monitoring System Using Artificial Neural Network (ANN) and Internet of Things (IOT)

Mohamed Mydin M. Abdul Kader, Muhammad Naufal Mansor, Wan Azani Mustafa, Zol Bahri Razali, Ahmad Anas Nagoor Gunny, Samsul Setumin, Muhammad Khusairi Osman, Mohaiyedin Idris, Muhammad Firdaus Akbar, Premavathy Kunasakaran, Muhammad Zubir Zainol, Nor Syamina Sharifful Mizam
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引用次数: 0

Abstract

As an introduction to this project, the growth-related traits, such as above-ground biomass and leaf area, are critical indicators to characterize the growth of indoor lettuce plants. Currently, non-destructive methods for estimating growth-related traits are subject to limitations in that the methods are susceptible to noise and heavily rely on manually designed features. It is also one of the problem statements in this project. Based on this project the next problem is manual control of nutrients may cause quality issues to the lettuce plant. If the nutrient supply is too much or less, it will disturb the growth of the lettuce plant either the lettuce plant is dead or stunted. This project is about urban farming growth monitoring system using Artificial Neural Network (ANN) and Internet of Things (IoT). In this project, a method for monitoring the growth of indoor lettuce plants was proposed by using digital images and an ANN using Deep Learning Architecture. DLA is mostly developed by the software of MATLAB or Python to insert and run the coding. DLA is mostly used for image detection, pattern recognition, and natural language processing through the graph for Neural Network. Next, the Internet of Things (IoT) is a medium to store images of indoor lettuce plant growth into the Cloud (Google Drive). Furthermore, it takes indoor lettuce plant images as the input, an ANN was trained to learn the relationship between images and the corresponding growth- related traits with other fixed parameters. The pH level parameters were controlled by other fixed parameters to take the images of indoor lettuce plant growth. The parameters used in this project are temperature and humidity. This helps to compare the results of Artificial Neural Network (ANN), widely adopted methods were also used. Concisely, this project is expected to develop the Deep Learning Architecture using an Artificial Neural Network (ANN) with digital images as a robust tool for the monitoring of the growth of indoor lettuce plants every 30 minutes per day. Generally, focused on an urban farming growth monitoring system using Artificial Neural Network (ANN) and the Internet of Things (IoT).
利用人工神经网络(ANN)和物联网(IOT)的城市农业生长监测系统
作为本项目的导言,生长相关性状(如地上生物量和叶面积)是描述室内生菜植物生长特征的关键指标。目前,估算生长相关性状的非破坏性方法存在局限性,即这些方法易受噪声影响,且严重依赖人工设计的特征。这也是本项目的问题之一。在此项目的基础上,下一个问题是人工控制养分可能会导致生菜植株出现质量问题。如果养分供应过多或过少,都会影响生菜植株的生长,导致生菜植株死亡或发育不良。本项目是关于使用人工神经网络(ANN)和物联网(IoT)的城市农业生长监控系统。在该项目中,利用数字图像和使用深度学习架构的人工神经网络,提出了一种监测室内生菜植物生长的方法。DLA 主要由 MATLAB 或 Python 软件开发,用于插入和运行编码。DLA 主要用于图像检测、模式识别,以及通过神经网络图进行自然语言处理。其次,物联网(IoT)是将室内生菜植物生长图像存储到云端(Google Drive)的媒介。此外,它还以室内生菜植物图像为输入,通过训练 ANN 来学习图像与相应的生长相关性状以及其他固定参数之间的关系。酸碱度参数由其他固定参数控制,以获取室内生菜植物生长图像。本项目中使用的参数是温度和湿度。这有助于比较人工神经网络(ANN)的结果,也使用了广泛采用的方法。简而言之,本项目有望利用数字图像开发人工神经网络(ANN)深度学习架构,作为每天每 30 分钟监测室内生菜植物生长情况的强大工具。总体而言,重点是利用人工神经网络(ANN)和物联网(IoT)开发城市农业生长监测系统。
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