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IoT based prediction of water quality index for farm irrigation

机译:基于机械灌溉水质指标的IOT预测

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Agriculture sector of Indian economy in which more than half of the population is involved, contributes to less than quarter of the GDP. With advancement in ICT, tools and techniques can be developed that can help in analyzing and automating various phases of farming for improving productivity. This work focuses on analysing the quality of irrigation water and developing a model for prediction of Irrigation Water Quality Index(IWQI) based on Salinity and Sodicity. Development of IWQI can save time and cost of lab tests for irrigation water. Five parameters of water N $a^{+}$, $C1^{-}$, EC, $HCO^{3-}$ and SAR are measured using which the IWQI is calculated. These five parameters are further reduced to three parameters using correlation analysis and a classification model for prediction of water quality class is developed using various classification techniques. Best result is obtained by Random Forest Classifier followed by Gradient Boosting and Neural Network Classifier. The classification model can be used in IoT based farming systems for preventing salinity based damage to the crops.
机译:印度经济农业部门涉及超过一半的人口,贡献少于季度GDP。随着ICT的进步,可以开发工具和技术,可以帮助分析和自动化农业各阶段以提高生产力。这项工作侧重于分析灌溉水的质量,并基于盐度和善良性开发灌溉水质指数(IWQI)预测模型。 IWQI的开发可以节省实验室测试的时间和成本进行灌溉水。测量使用IWQI的IWQI来测量IWQI的5美元R $ a ^ {+} $,$ c1 {-} $,ec,$ hco ^ {3 - } $和sar。使用各种分类技术开发了这五个参数进一步减少到三个参数,并使用各种分类技术开发了用于预测水质类的分类模型。最佳结果是由随机林分类器获得的,然后是渐变升压和神经网络分类器。分类模型可用于基于物联网的农业系统,以防止基于盐度对作物的损害。

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