Presentation is loading. Please wait.

Presentation is loading. Please wait.

Ayon Chakraborty and Samir R. Das WINGS Lab

Similar presentations


Presentation on theme: "Ayon Chakraborty and Samir R. Das WINGS Lab"— Presentation transcript:

1 Ayon Chakraborty and Samir R. Das WINGS Lab
Designing a Cloud-Based Infrastructure for Spectrum Sensing: A Case Study for Indoor Spaces Ayon Chakraborty and Samir R. Das WINGS Lab IEEE DCOSS 2016

2 Mobile Data Demand Skyrockets
Capacity Bottleneck Demand > 3X Capacity! Before we delve deeper into the spectrum sensing infrastructure I will try to point out the importance of wireless spectrum. The plot shows a timeline of average mobile broadband demand and capacity. If you look carefully, by 2016 the demand has already surpassed thrice the capacity. In this situation capacity becomes a bottleneck. In particular wireless network capacity. Mobile Broadband: Average Demand Per User Versus Average Capacity Per User Ref: Rysavy Research WINGS Lab

3 Managing Network Capacity
Capacity Bottleneck Solutions More Cell Sites Improve Backhaul / Core Now lets look at ways that address such capacity problems. The first one is by having more cell sites. Describe each. Mention LTE Shannon limit etc. We will focus on ways that help to find more spectrum or share spectrum resources. Better Utilize Spectrum Improve Spectral Efficiency WINGS Lab

4 Better Utilize Spectrum (e.g. White Space Channels)
Available TV White Space RSS Threshold 6MHz channels FCC opened up this spectrum band for unlicensed use in 2008. WINGS Lab

5 Finding Available White Spaces
Freq1 Freq. White Space 1 Available? 2 Approach 1: Estimate pathloss at (X, Y) using Propagation Models. Freq2 Approach 2: Take spectrum measurements at (X, Y). Location: (X, Y) WINGS Lab

6 Lost White Space: Causes
Propagation models perform poorly indoors and in urban canyon environments. Sometimes too complicated to use indoor models extensively and at scale. WINGS Lab

7 More White Space is Lost Indoors
Most people are indoors 80% of the time and 70% of the spectrum demand comes from indoor locations. Propagation model based techniques seems to lose ≈ 70% of the available white space. [Mobicom’13, CoNEXT’14]. Need for fine-grained spatio-temporal spectrum awareness through intelligent spectrum sensing. WINGS Lab

8 SpecSense System Scan Spectrum Server Sensing Scheduler
Messaging Broker Data Handler Measurements Spectrum Database Analytics Engine Mobile Spectrum Sensors Spectrum Database Web Dashboard WINGS Lab

9 Mobile Spectrum Sensors
Samsung Galaxy S6 Phone Raspberry-Pi Platform WINGS Lab

10 SpecSense Messaging System: MQTT
Useful when: Connectivity is intermittent. Bandwidth is at a premium. Lighter headers. Interact with one or more phone apps. Phone / tablet apps need to send data reliably without requiring code retry logic. Saves > 4% battery per day over HTTP to maintain an open stable connection. WINGS Lab

11 SpecSense Web Dashboard
Live at WINGS Lab

12 Indoor Usecase: Channel Selection
WS Ch. #1 WS Ch. #2 Which Channel to Use? WINGS Lab

13 AP-only Sensing. Poorer REM.
REM: Radio Environment Map Ch. #1 available Ch. #2 available WINGS Lab

14 Client-based Sensing Improves REM
Ch. #1 NOT available Ch. #2 NOT available WINGS Lab

15 More Sensors Reduce Estimation Error
WINGS Lab

16 Impacts Performance Estimation error in the REM leads to erroneous channel selection impacting performance. WINGS Lab

17 Summary A good amount of wireless spectrum resources are lost due to inefficiencies in signal detection. We built an end-to-end distributed spectrum sensing system to make signal detection more reliable. Using our system we demonstrate how a better channel can be selected by employing spectrum sensing capabilities in client devices. WINGS Lab

18 Thanks! Interested about the SpecSense system? Measurement Data
Deploy your own setup Develop SpecSense APIs Contact: WINGS Lab


Download ppt "Ayon Chakraborty and Samir R. Das WINGS Lab"

Similar presentations


Ads by Google