4.5 Article

A Sustainable Forage-Grass-Power Fuel Cell Solution for Edge-Computing Wireless Sensing Processing in Agriculture 4.0 Applications

期刊

ENERGIES
卷 16, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/en16072943

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Agriculture 4.0; edge computing; energy harvesting; IoT; plant microbial fuel cells; wireless sensor networks

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Intelligent sensing systems based on edge-computing are crucial for IoT and Agriculture 4.0 applications. Developing wireless sensing systems that utilize edge-computing improves accuracy in soil sensing and data interpretation. The challenge is to sustainably power the wireless sensing system with alternative energy sources, such as plant microbial fuel cells, and this study aims to develop a solution using a forage-grass-power fuel cell for an IoT LoRa network. The experiment demonstrates the feasibility of utilizing the plant microbial fuel cell for soil monitoring with sustainable energy generation and transmission capabilities.
Intelligent sensing systems based on the edge-computing paradigm are essential for the implementation of Internet of Things (IoT) and Agriculture 4.0 applications. The development of edge-computing wireless sensing systems is required to improve the sensor's accuracy in soil and data interpretation. Therefore, measuring and processing data at the edge, rather than sending it back to a data center or the cloud, is still an important issue in wireless sensor networks (WSNs). The challenge under this paradigm is to achieve a sustainable operation of the wireless sensing system powered with alternative renewable energy sources, such as plant microbial fuel cells (PMFCs). Consequently, the motivation of this study is to develop a sustainable forage-grass-power fuel cell solution to power an IoT Long-Range (LoRa) network for soil monitoring. The stenotaphrum secundatum grass plant is used as a microbial fuel cell proof of concept, implemented in a 0.015 m(3)-chamber with carbon plates as electrodes. The BQ25570 integrated circuit is employed to harvest the energy in a 4 F supercapacitor, which achieves a maximum generation capacity of 1.8 mW. The low-cost pH SEN0169 and the SHT10 temperature and humidity sensors are deployed to analyze the soil parameters. Following the edgecomputing paradigm, the inverse problem methodology fused with a system identification solution is conducted, correcting the sensor errors due to non-linear hysteresis responses. An energy power management strategy is also programmed in the MSP430FR5994 microcontroller unit, achieving average power consumption of 1.51 mW, similar to 19% less than the energy generated by the forage-grasspower fuel cell. Experimental results also demonstrate the energy sustainability capacity achieving a total of 18 consecutive transmissions with the LoRa network without the system's shutting down.

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