Prediction of soil moisture using machine learning techniques: A case study of an IoT-based irrigation system in a naturally ventilated polyhouse

IF 1.6 4区 农林科学 Q2 AGRONOMY
Lakshmi Poojitha Challa, Chandra Deep Singh, Kondapalli Venkata Ramana Rao, Anakkallan Subeesh, Mandru Srilakshmi
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Abstract

The agricultural sector faces a massive challenge in enhancing food production for the growing population with limited water resources. For effective and optimum utilization of fresh water, developing smart irrigation systems based on the internet of things (IoT) is essential for scheduling irrigation based on crop water requirements. In this study, an IoT-based irrigation system was developed and evaluated inside a greenhouse located in the experimental fields of Indian Council of Agricultural Research-Central Institute of Agricultural Engineering (ICAR-CIAE), Bhopal, India. Data on microenvironmental parameters such as temperature, relative humidity, light intensity, soil temperature and soil moisture were collected from the sensors developed inside the greenhouse. Soil moisture was predicted based on the field data collected via different machine learning techniques, such as the decision tree (DT), random forest (RF), multiple linear regression (MLR), extreme gradient boosting (XGB), K-nearest neighbour (KNN) and artificial neural network (ANN) methods, with three input combinations. The ANN (coefficient of determination [R2] = 0.942, 0.939) models performed well but were found to be less effective than the RF (R2 = 0.991, 0.951) and XGB (R2 = 0.997, 0.941) models in the training and testing phases, respectively. The RF and XGB models outperformed the other models, while the MLR (R2 = 0.955, 0.875) technique underperformed. With respect to both the testing and training datasets, the models trained with all four inputs outperformed the models trained with two or three inputs.

利用机器学习技术预测土壤湿度:基于物联网的自然通风温室灌溉系统案例研究
农业部门面临着巨大的挑战,如何在有限的水资源条件下提高粮食产量,满足日益增长的人口需求。为了有效和优化利用淡水,开发基于物联网(IoT)的智能灌溉系统对于根据作物需水量安排灌溉至关重要。本研究开发了基于物联网的灌溉系统,并在印度博帕尔印度农业研究理事会-中央农业工程研究所(ICAR-CIAE)试验田的温室内进行了评估。温室内开发的传感器收集了温度、相对湿度、光照强度、土壤温度和土壤湿度等微环境参数的数据。根据收集到的田间数据,通过不同的机器学习技术,如决策树(DT)、随机森林(RF)、多元线性回归(MLR)、极梯度提升(XGB)、K-近邻(KNN)和人工神经网络(ANN)方法,以三种输入组合预测土壤湿度。人工神经网络模型(决定系数 [R2] = 0.942,0.939)表现良好,但在训练和测试阶段的效果分别低于 RF 模型(R2 = 0.991,0.951)和 XGB 模型(R2 = 0.997,0.941)。RF 和 XGB 模型的表现优于其他模型,而 MLR(R2 = 0.955,0.875)技术表现不佳。就测试数据集和训练数据集而言,使用全部四个输入进行训练的模型优于使用两个或三个输入进行训练的模型。
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来源期刊
Irrigation and Drainage
Irrigation and Drainage 农林科学-农艺学
CiteScore
3.40
自引率
10.50%
发文量
107
审稿时长
3 months
期刊介绍: Human intervention in the control of water for sustainable agricultural development involves the application of technology and management approaches to: (i) provide the appropriate quantities of water when it is needed by the crops, (ii) prevent salinisation and water-logging of the root zone, (iii) protect land from flooding, and (iv) maximise the beneficial use of water by appropriate allocation, conservation and reuse. All this has to be achieved within a framework of economic, social and environmental constraints. The Journal, therefore, covers a wide range of subjects, advancement in which, through high quality papers in the Journal, will make a significant contribution to the enormous task of satisfying the needs of the world’s ever-increasing population. The Journal also publishes book reviews.
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