Application of Machine Learning in Precision Agriculture using IoT

Sharvane Murlidharan, V. Shukla, A. Chaubey
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引用次数: 3

Abstract

The demand for food has been increasing over the past six decades with the global population increase. Scientists have been finding different ways to meet this demand, such as; green revolution and genetically modified crop methods. These involve an unnatural technique to increase the yield, such as chemical fertilizers, pesticides, and modified seeds; these might be beneficial in the short term but might slowly disturb the internal body mechanism. In recent years, consumers are becoming more concerned about their food intake and prefer food with no adulteration and harmful pesticides. This has brought in the hype for a subdivision of framing, organic farming, where organic fertilizers and pesticides are used to retain the quality and nutrition values of the crop bring harvested. In organic farming, the right crop must be chosen according to the soil type and climate. This reduces the chance of pre-harvest crop losses caused by the abiotic stress in the environment, such as the soil pH levels, improper irrigation, climate, and temperature. However, when the desired conditions are provided to the crop, we can reduce the pre-harvest loss up to 35%. This paper offers a practical approach to reduce this loss by predicting what crop can be planted according to the present soil conditions and climate to prevent pre-harvest losses. The model involves a temperature and humidity sensor, a soil moisture sensor, a soil pH sensor, IoT, and a water pump under a greenhouse environment connected with the help of a development board, Raspberry pi, and machine learning techniques.
机器学习在物联网精准农业中的应用
在过去的60年里,随着全球人口的增长,对食物的需求一直在增加。科学家们一直在寻找不同的方法来满足这一需求,比如;绿色革命和转基因作物方法。这些方法包括使用非自然技术来提高产量,如化肥、杀虫剂和改良种子;这些可能在短期内有益,但可能会慢慢扰乱体内机制。近年来,消费者越来越关注他们的食物摄入量,更喜欢无掺假和有害农药的食品。这带来了对框架的细分,有机农业的炒作,其中使用有机肥料和农药来保持收获的作物的质量和营养价值。在有机农业中,必须根据土壤类型和气候选择合适的作物。这减少了因环境中的非生物胁迫(如土壤pH值、不适当的灌溉、气候和温度)造成的收获前作物损失的机会。然而,当作物获得所需的条件时,我们可以减少收获前损失高达35%。本文提供了一种实用的方法来减少这种损失,根据目前的土壤条件和气候预测可以种植什么作物,以防止收获前损失。该模型包括温度和湿度传感器、土壤湿度传感器、土壤pH传感器、物联网(IoT)、温室环境下的水泵,通过开发板、树莓派和机器学习技术连接在一起。
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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