Smart Irrigation System with Predictive Analytics using Machine Learning and IoT

A. Sleem, Ibrahim Elhenawy
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引用次数: 0

Abstract

Water scarcity is a significant issue in agriculture, making efficient irrigation practices crucial for sustainable farming. Integration of Internet of Things (IoT) and machine learning technologies are becoming of great importance to improve irrigation efficiency and reduce water usage. In this paper, we propose an intelligent irrigation system that take the advantage of IoT to improve the predictive analytics of groundwater levels. Our system used a deep learning to estimate the groundwater level using convolutional recurrent model that analyzed the sensory measurements necessary to predict groundwater levels. The model is trained on a large dataset of time series records and corresponding groundwater levels, allowing it to learn the complex patterns and relationships between time series features and groundwater levels. The experimental predictive analytics provided accurate irrigation recommendations, and the remote monitoring capabilities allowed farmers to adjust the irrigation schedule as needed.
使用机器学习和物联网的预测分析智能灌溉系统
水资源短缺是农业中的一个重大问题,有效的灌溉方法对可持续农业至关重要。物联网(IoT)和机器学习技术的融合对于提高灌溉效率和减少用水量变得非常重要。在本文中,我们提出了一种利用物联网的智能灌溉系统来改进地下水水位的预测分析。我们的系统使用深度学习来估计地下水位,使用卷积循环模型来分析预测地下水位所需的感官测量。该模型在大量时间序列记录和相应的地下水位数据集上进行训练,使其能够学习时间序列特征与地下水位之间的复杂模式和关系。实验预测分析提供了准确的灌溉建议,远程监控功能允许农民根据需要调整灌溉计划。
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