3.8 Proceedings Paper

Wearable FPGA Platform for Accelerated DSP and AI Applications

Publisher

IEEE
DOI: 10.1109/PerComWorkshops53856.2022.9767398

Keywords

Wearable computing; FPGA; embedded computing; IoT; digital signal processing

Funding

  1. Huawei Technologies

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This study presents an extensible FPGA platform for wearable computing and IoT research. The platform, based on Intel MAX10 FPGA, is small in size and can be used for pre-processing high-speed data streams. The comparison of DSP operations and FIR filters shows that this platform has sufficient computing power for digital communication algorithms.
Some algorithms benefit from a hardware digital logic implantation to achieve higher speed or to meet specific timing requirements, such as in digital signal processing, digital communication, and also when investigating hardware-accelerated machine learning algorithms. We present an extensible, miniature, battery-operated Field Programmable Gate Array (FPGA) platform for wearable computing and IoT research, based on an Intel MAX10 FPGA. The platform is 30x30mm in size and can be used as a standalone device, or as an extension to a similarly sized microcontroller board, for example to pre-process high-speed data streams in hardware prior to relaying the data to a conventional processor. We present the FPGA board and characterise power consumption, resource usage, and processing speed for the implementation of elementary DSP operations, notably FIR filters. We also carry out a direct comparison of these metrics for the FIR algorithm running on an ARM Cortex M4 processor as well as a soft-core processor synthesized on the FPGA board. The results show that this miniature FPGA platform has sufficient logic gates and computing power for a wide class of digital communication algorithms. The platform hardware and firmware is available on GitHub.

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