Real-Time Agriculture Yield Monitor System (AYMS) Using Deep Feedforward (DFF) Neural Network

M. C S, Mohith Gowda H R, A. K A, R. R
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Abstract

Agriculture stands as the backbone of our Nation, by Contributing 7% of the total Indian Economy. The drivers of agriculture are facing a huge problem in predicting the yield in different varieties of soil. Currently, the use of sophisticated technologies in the field of agriculture is underdeveloped when compared to other sectors over the past few decades. Self-mortality rates of farmers considerably increasing from the past four-five years. This is mainly due to the debt overhead usually caused by low yield. Crops yield decline considerably due to unpredictable weather, environmental changes, and diseases. This can say that agricultural landowners fear to use new technologies and tend to follow the age-old tradition of farming. The sphere of computing with its rigorous learning capabilities is inevitable to find a novel solution for agriculture-related issues. In this paper, this issue is addressed and have come up with an improvised idea to help farmers get a better yield for their crops. Deep learning has been used to predict the yield. This technology is made handy for every farmer to learn and use it effectively via a simple IoT device installed in their fields and a smartphone application. This improvised system has been named as Agriculture Yield Monitor System (AYMS). This has proved to be more efficient and beneficial to farmers.
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基于深度前馈神经网络的农业产量实时监测系统(AYMS)
农业是我们国家的支柱,占印度经济总量的7%。农业驱动者在预测不同土壤品种的产量方面面临着一个巨大的问题。目前,与过去几十年的其他部门相比,农业领域对尖端技术的使用还不发达。农民的自我死亡率在过去四五年间显著上升。这主要是由于低收益通常造成的债务开销。由于不可预测的天气、环境变化和疾病,农作物产量大幅下降。这可以说,农业土地所有者害怕使用新技术,倾向于遵循古老的农业传统。计算领域以其严格的学习能力为农业相关问题寻找新的解决方案是必然的。在本文中,解决了这个问题,并提出了一个临时的想法,以帮助农民获得更好的作物产量。深度学习已被用于预测产量。通过安装在农田中的简单物联网设备和智能手机应用程序,每个农民都可以方便地学习和有效地使用这项技术。这个简易系统被命名为农业产量监测系统(AYMS)。事实证明,这对农民来说效率更高,也更有利。
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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Real-Time Agriculture Yield Monitor System (AYMS) Using Deep Feedforward (DFF) Neural Network Development of a Model to Predict and Intimate Optimum Farm Matching System for Sikkim Using Ms Office 2016 Software
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