CEYLAGRO: Information Technological Approach for an Optimized and Centralized Agriculiture Platform

T. Kaushalya, B. Y. S. Wijewardana, A. Karunasena, M. G. G. Kavishika, S. Gamage, L. Weerasinghe
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Abstract

Sri Lankan Agriculture sector can be considered as a crucial component as it contributes 18% of country GDP. As native farmers still cling to inapplicable traditional theorems and practices to track customer's vegetable consumption trends, they failed to assure a “good price” for their harvest. Also, the plants are prone to many diseases and pests' attacks which causes loss of the harvest. Unreliable problem identification, poor knowledge on application of fertilizers and pesticides have caused the farmers to lose their profits. As a solution to mitigate these problems, this study has built a computerized system with a vegetable price prediction system and a plant disease, pest identification system. Taking Potato as an example, the parameters of the time series model were analyzed through experiment and has built the price predictor using ARIMA model. Also, with advanced Image processing and CNN techniques Plant disease, pest identifier has built. Desirable results of the entire system have been achieved with more than 94%-97% rate of accuracy. The ultimate goal of this study is to achieve the optimal growth of the sector by navigating the users for a quality and effective decision making by reliable market trends and problem identification.
CEYLAGRO:优化和集中农业平台的信息技术途径
斯里兰卡的农业部门可以被认为是一个重要组成部分,因为它贡献了国家GDP的18%。由于当地农民仍然坚持不适用的传统定理和做法来跟踪客户的蔬菜消费趋势,他们未能确保他们的收获“好价格”。此外,这些植物容易受到许多疾病和害虫的袭击,导致收成损失。不可靠的问题识别,对化肥和农药的应用知识贫乏,导致农民失去了他们的利润。为了解决这些问题,本研究建立了蔬菜价格预测系统和植物病虫害鉴定系统的计算机化系统。以马铃薯为例,通过实验对时间序列模型的参数进行了分析,并利用ARIMA模型建立了价格预测器。同时,利用先进的图像处理和CNN技术,建立了植物病虫害识别系统。整个系统达到了理想的效果,准确率在94% ~ 97%以上。本研究的最终目标是借由可靠的市场趋势与问题辨识,引导使用者做出高品质且有效的决策,以达成行业的最佳成长。
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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