AI-powered sensor fault detection for cost-effective smart greenhouses

被引:0
|
作者
Shekarian, Seyed Mohammadhossein [1 ]
Aminian, Mahdi [1 ]
Fallah, Amir Mohammad [1 ]
Moghaddam, Vaha Akbary [2 ]
机构
[1] Univ Guilan, Sch Engn, Dept Comp Engn, Rasht, Iran
[2] Washington Univ St Louis, Sch Med, Computat & Syst Biol Program, Div Biol & Biomed Sci, St. Louis, MO USA
关键词
Greenhouse Sensor Network; Internet of Things; Deep Learning; Fault Tolerance; NETWORKS; IDENTIFICATION; TEMPERATURE; INTERNET; IOT;
D O I
10.1016/j.compag.2024.109198
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Sensor networks in greenhouses play a pivotal role in controlling the stability of environmental and chemical factors. The Internet of Things (IoT) has been widely adopted for monitoring various sensor networks in greenhouses. In the present study, an IoT platform for remote monitoring of greenhouse environment is designed. The platform consists of a sensor node, a sink node, and an edge server. The sensor node measures indoor and outdoor humidity and temperature, interior CO(g), and interior luminosity and transmits data to the sink node, where it is timestamped. The sink node is connected to an edge server through the Mosquitto MQTT broker and the data is subsequently transferred to a MongoDB Cloud infrastructure, where the data of each variable is stored in proper formats. In the second part of the study, four 1D convolutional neural networks (CNNs) were developed for data prediction of each sensor to provide fault-tolerance in the system. The first three models, for predicting inner humidity and temperature, outdoor temperature, and outdoor humidity, directly predict the actual data of the faulty sensor based on regression analysis. The last model is designed for predicting CO and luminosity and performs data classification for faulty sensors. The models provide a high level of precision in their predictions. The RMSE for interior temperature and humidity and exterior temperature and humidity are 0.86 degrees C, 3.47%, 0.682 degrees C, and 2.74%, respectively. Additionally, the accuracy for luminosity and CO classification are 89.70% and 83.43%. Comparison of 1D CNN, decision tree, and linear regression model revealed that the machine learning models considerably outperform linear regression model, and they can better capture the nonlinear correlations among the variables. Furthermore, the predictive outcomes of the models were consistent across different weather conditions. The proposed methodology can be used to induce tolerance against faulty reads at sensor level in greenhouse sensor networks, independent of time and the data gathered by the faulty sensors. The study indicates that exploiting cloud resources for promoting the use of complex AI models on IoT platforms can provide a suitable solution for real-time monitoring and fault control of greenhouse environmental factors.
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页数:15
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