IoT-based Monitoring System for Oyster Mushroom Farming

Y. D. Surige, Perera W. S. M, Gunarathna P. K. N, Ariyarathna K. P. W, N. Gamage, D. Nawinna
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引用次数: 2

Abstract

Agriculture plays a major segment in the economy of Sri Lanka, a developing country. Mushrooms, farming is a popular option among the farmers as it consumes less space and less time for growing while offering a high nutritional value, but most farmers fail to obtain the best yield from their cultivations due to the defects and inefficiencies in the manual methods that are being presently used. This paper presents an ICT solution to avoid inefficiencies in the mushroom farming process. The system is developed focusing one of the popular mushroom type ‘Oyster Mushrooms’. The system offers four functionalities to perform mushroom farming precisely The system offers four functionalities to perform mushroom farming precisely. The Environmental Monitoring function is built with the support of a Long Short Term Memory (LSTM), Harvest time detection function is developed with the support of Convolutional Neural Networks (CNN) with Mobile Net V2 model, The Disease detection and control recommendation function is based on the support of CNN with mobile Net V2 model and the Yield prediction function is developed using the support of Long Short Term Memory (LSTM), The farmer is connected to the system through a mobile application. The system can monitor the environmental factors with an accuracy of 89% and the harvest time can be detected with an accuracy of 92%. Also, the system detects the mushroom diseases with an accuracy of 99% and predicts the monthly yield of a mushroom cultivation with an accuracy of 97%. The intense use of precise farming will eventually lead to high mushroom yields.
基于物联网的香菇养殖监控系统
农业在斯里兰卡这个发展中国家的经济中占有重要地位。蘑菇种植是农民的热门选择,因为它消耗更少的空间和时间来种植,同时提供高营养价值,但由于目前使用的人工方法的缺陷和效率低下,大多数农民无法从他们的种植中获得最佳产量。本文提出了一种信息通信技术解决方案,以避免蘑菇养殖过程中的低效率。该系统是针对一种流行的蘑菇类型“平菇”开发的。该系统提供了四个功能来精确地进行蘑菇养殖。环境监测功能在长短期记忆(LSTM)的支持下构建,收获时间检测功能在移动网络V2模型的卷积神经网络(CNN)的支持下开发,疾病检测和控制推荐功能基于移动网络V2模型的CNN的支持,产量预测功能利用长短期记忆(LSTM)的支持开发。农民通过移动应用程序连接到该系统。该系统监测环境因素的准确度为89%,检测收获时间的准确度为92%。此外,该系统检测蘑菇病害的准确率为99%,预测蘑菇栽培的月产量的准确率为97%。精耕细作的密集使用最终将导致蘑菇的高产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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