印度智能降雨预报装置驱动的自动灌溉模型

IF 0.5 Q4 AGRONOMY Journal of Agricultural Extension Pub Date : 2023-01-30 DOI:10.4314/jae.v27i1.9
Mahadeo Ambildhuke Geeta, Gupta Banik Barnali
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引用次数: 0

摘要

本文提出了一种简单的基于降雨预测装置的自动灌溉管理算法,该算法将天气参数和土壤湿度测量相结合,用于作物生长阶段每种条件下所需的水分平衡,从而减少农民对灌溉的干预,并通过在启动灌溉电机之前预测降雨量来避免不必要的灌溉。该设备由各种技术提供动力,如深度学习对负责降雨的云进行分类,机器学习模型根据大气参数预测降雨,以及使用不同传感器从现场收集数据的物联网(IoT)。这种算法非常适合偏远地区的农民,因为无法使用互联网和WIFI。该设备将连接到电机上,将从传感器获取数据,仅在设备级别进行降雨预测,并根据土壤湿度值和降雨预测开关电机,无需任何人为干预。
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Automatic Irrigation Model Powered by Smart Rain Prediction Device in India
This paper presents a simple rain prediction device-based automatic irrigation management algorithm using a combination of weather parameters and soil moisture measurements for the water balance required for a crop at each condition during its growing phase that will reduce farmer intervention for irrigation and avoid unnecessary irrigation by predicting the rainfall before starting the motor for irrigating the field. This device is powered by various technologies like deep learning to classify clouds responsible for rain, machine learning models to predict rainfall based on atmospheric parameters and the Internet of Things (IoT) using different sensors to collect data from the field. This algorithm is very appropriate for farmers who are in remote locations and are not able to use the internet and WIFI due to its unavailability. The device will be attached to the motor, will take the data from sensors and will do the rain prediction at device level only and will switch ON/OFF the motor based on the soil moisture value and rain prediction without any human intervention.
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来源期刊
CiteScore
1.10
自引率
25.00%
发文量
62
期刊介绍: The Journal of Agricultural Extension (JAE) is devoted to the advancement of knowledge of agricultural extension services and practice through the publication of original and empirically based research, focusing on; extension administration and supervision, programme planning, monitoring and evaluation, diffusion and adoption of innovations; extension communication models and strategies; extension research and methodological issues; nutrition extension; extension youth programme; women-in-agriculture; extension, Climate Change and the environment, ICT, innovation systems. JAE will normally not publish articles based on research covering very small geographic area that cannot feed into policy except they present critical insights into emerging agricultural innovations.
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