Smart Crop Growth Monitoring Based on System Adaptivity and Edge AI

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Abstract

This work proposes a smart crop growth monitoring system that contains an adaptive cryptography engine to ensure the security of sensor data and an edge artificial intelligence (AI) based estimator to classify the pest and disease severity (PDS) of target crops. Based on the smart system management mechanism, cryptographic functions can be adapted to varying and real-time requirements, while the actuators can be controlled to interact with the physical world to ensure the healthy growth of crops. Experiments show when all the four cryptographic hardware modules, including RTEA32, RTEA64, XTEA32 and XTEA64, are supported, using the adaptive cryptography engine, 72.4% of slice LUTs and 68.4% of slice registers in terms of the Xilinx Zynq-7000 XC7Z020 chip can be saved. Through the smart system management mechanism, a power consumption of 0.009 watts can be reduced. Furthermore, using the binarized neural network (BNN) hardware module of the PDS estimator, the recognition accuracy of target crops i.e. dragon fruits can achieve 76.57%. Compared to the microprocessor-based design and the GPU accelerated one, the same BNN architecture on the FPGA can accelerate the frames per second by a factor of 4,919.29 and a factor of 1.08, respectively.

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Huang, C. H., Chen, B. W., Lin, Y. J., & Zheng, J. X. (2022). Smart Crop Growth Monitoring Based on System Adaptivity and Edge AI. IEEE Access, 10, 64114–64125. https://doi.org/10.1109/ACCESS.2022.3183277

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