Litcius/Paper detail

Hybrid Deep Learning Predictor for Smart Agriculture Sensing Based on Empirical Mode Decomposition and Gated Recurrent Unit Group Model

Xuebo Jin, Nian-Xiang Yang, Xiaoyi Wang, Yuting Bai, Tingli Su, Jianlei Kong

2020Sensors110 citationsDOIOpen Access PDF

Abstract

Smart agricultural sensing has enabled great advantages in practical applications recently, making it one of the most important and valuable systems. For outdoor plantation farms, the prediction of climate data, such as temperature, wind speed, and humidity, enables the planning and control of agricultural production to improve the yield and quality of crops. However, it is not easy to accurately predict climate trends because the sensing data are complex, nonlinear, and contain multiple components. This study proposes a hybrid deep learning predictor, in which an empirical mode decomposition (EMD) method is used to decompose the climate data into fixed component groups with different frequency characteristics, then a gated recurrent unit (GRU) network is trained for each group as the sub-predictor, and finally the results from the GRU are added to obtain the prediction result. Experiments based on climate data from an agricultural Internet of Things (IoT) system verify the development of the proposed model. The prediction results show that the proposed predictor can obtain more accurate predictions of temperature, wind speed, and humidity data to meet the needs of precision agricultural production.

Topics & Concepts

Hilbert–Huang transformWind speedComputer scienceMode (computer interface)Data miningComponent (thermodynamics)Predictive modellingDeep learningArtificial intelligenceMachine learningReal-time computingMeteorologyTelecommunicationsGeographyWhite noiseOperating systemThermodynamicsPhysicsSmart Agriculture and AIFood Supply Chain TraceabilityAdvanced Chemical Sensor Technologies