Environmental Lighting towards Growth Effect Monitoring System of Plant Factory using ANN

Mohamed Mydin M. Abdul Kader, Muhammad Naufal Mansor, Zol Bahri Razali, Wan Azani Mustafa, Ahmad Anas Nagoor Gunny, Samsul Setumin, Muhammad Khusairi Osman, Mohaiyedin Idris, Muhammad Firdaus Akbar, Wan Muhamad Faris Naim Muhami Farid, Muhammad Zubir Zainol, Nor Syamina Sharifful Mizam
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Abstract

Malaysia is currently driven to become another most developed country in the world. Among other priority sector is Food Sustainability. Along the process, our vegetable supply-demand keeps increasing by year. Compared to traditional systems, closed systems or its other name called hydroponic is getting more important for plant production, with artificial light which has many potential advantages, including better quality transplants, shorter production time and less resource use. To gain full profit from it, the quality of vegetables needs to be controlled efficiently. Climate conditions, especially temperature and light intensity, have a significant impact on vegetable growth and yield, as well as nutritional quality. Plant growth and development are influenced by a variety of environmental factors, the most important one is light intensity. Among the problems to be tackled in this research are plant growth manual observation, light intensity variation and abundance of growth-related data to be evaluated manually. Therefore, to solve these problems, the specific type of vegetable used here is lettuce. The proposed methods are, observation of plant growth conducted automatically round the clock in intervals of 15 minutes for the whole month (estimated mature period of lettuce), using images captured. At the same time, the proposed light intensity which is red & white to the ratio of 2:1 (optimum ratio recommended by previous researchers) will be used. The issue of data to be evaluated manually will be solved using Artificial Neural Network (ANN) architecture, in specific Deep Learning. Concisely, the results & analysis shows the research is successfully developed for plant growth monitoring by using artificial neural network which, reached 80% to 90% accuracy in the training and validation session that made the architecture sufficient for determining the growth of the said vegetable. This is indeed foreseen, will highly assist the farmer in better monitoring the growth rate of the plant.
利用 ANN 实现植物工厂生长效果监测系统的环境照明设计
马来西亚目前正努力成为世界上另一个最发达的国家。其中一个优先领域就是食品可持续性。在此过程中,我国的蔬菜供应需求逐年增加。与传统系统相比,封闭系统或其另一个名称--水培系统在植物生产中越来越重要,人工光照具有许多潜在优势,包括更好的移植质量、更短的生产时间和更少的资源使用。要想从中充分获利,就必须有效控制蔬菜的质量。气候条件,尤其是温度和光照强度,对蔬菜的生长和产量以及营养质量有重大影响。植物的生长发育受多种环境因素的影响,其中最重要的是光照强度。本研究要解决的问题包括植物生长人工观测、光照强度变化和需要人工评估的生长相关数据的丰富性。因此,为了解决这些问题,本研究使用的特定蔬菜类型为莴苣。所提出的方法是,利用捕捉到的图像,以 15 分钟为间隔,全天候自动观察植物生长情况,观察时间为整个月(莴苣的预计成熟期)。同时,将使用建议的光强,即红光和白光的比例为 2:1(以往研究人员推荐的最佳比例)。人工评估数据的问题将通过人工神经网络(ANN)架构,特别是深度学习来解决。简而言之,结果和分析表明,这项研究利用人工神经网络成功开发了植物生长监测技术,在训练和验证过程中达到了 80% 至 90% 的准确率,使该架构足以确定上述蔬菜的生长情况。可以预见,这将极大地帮助农民更好地监测植物的生长速度。
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