Abstract

WiFi backscatter communication has emerged as a promising enabler of ultralow-power connectivity for Internet of things, wireless sensor network and smart energy. In this paper, we propose a multi-filter design for effective decoding of WiFi backscattered signals. Backscattered signals are relatively weak compared to carrier WiFi signals and therefore require algorithms that filter out original WiFi signals without affecting the backscattered signals. Two multi-filter designs for WiFi backscatter decoding are presented: the summation and delimiter approaches. Both implementations employ the use of additional filters with different window sizes to efficiently cut off undesired noise/interference, thus enhancing frame detection and decoding performance, and can be coupled with a wide range of decoding algorithms. The designs are particularly productive in the frequency-shift WiFi backscatter communication. We demonstrate via prototyping and testbed experiments that the proposed design enhances the performance of various decoding algorithms in real environments.

Highlights

  • From unmanned aerial vehicles (UAVs) to smart homes, smart factories, smartphones and many more, Internet of things (IoT) brings together data, processes, people and things all networked to produce an immense infrastructure of information system

  • We proposed a multi-filter design for decoding in WiFi backscatter communication with frequency shift, which can be combined with a wide range of existing decoding algorithms for performance enhancement

  • They developed an IoT sensor for backscattering WiFi signals and a radio circuit as well as an algorithm for the WiFi access point (AP) which doubles as a reader and a standard WiFi transmitter

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Summary

Introduction

From unmanned aerial vehicles (UAVs) to smart homes, smart factories, smartphones and many more, Internet of things (IoT) brings together data, processes, people and things all networked to produce an immense infrastructure of information system. A critical observation on the trend of WiFi backscatter reveals a paramount issue which is the severe fluctuation of WiFi signals due to the nature of orthogonal frequency-division multiplexing (OFDM) Such fluctuation remains in backscattered signals but in carrier WiFi signals known as self-interference, making decoding a challenging task. Low-pass filtering of received signals is essential prior to decoding in WiFi backscatter communication. We proposed a multi-filter design for decoding in WiFi backscatter communication with frequency shift, which can be combined with a wide range of existing decoding algorithms for performance enhancement. The margin of BER decrease reveals a huge performance difference between the single filter design to the tune of 34% and 44% enhancement for our multi-filter summation and delimiter schemes, respectively, under a good channel condition.

Related Work
System Model
Observation on Preprocessing of the Received Signal
Threshold Defined Segregation
Filter Window Length
Multi-Filter Decoding
Summation Approach
Delimiter Approach
Hybrid Approach
Threshold Finder for Frame Detection
Performance Evaluation
Setup and Configuration of Experiment
Significance of Filtering
Office Scenario
Hallway Scenario
Power Consumption and Processing Costs
Findings
Conclusions
Full Text
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