What to do about the transitional region?
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On the Implications of the Log-normal Path Loss Model: An Efficient Method to Deploy and Move Sensor Motes Yin Chen, Andreas Terzis November 2, 2011. Transitional region. Connected region. What to do about the transitional region?
What to do about the transitional region?
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Presentation Transcript
On the Implications of the Log-normal Path Loss Model: An Efficient Method to Deploy and Move Sensor Motes Yin Chen, Andreas Terzis November 2, 2011
Transitional region Connected region • What to do about the transitional region? • Place motes in the transitional region vs in the connected region
Our Proposal • Occupy the transitional region • Perform random trials to construct links with high PRR • Based on the Log-normal radio model
Outline • Introduce log-normal path loss model • Discuss pitfalls • Present the experimental results – reality check
Log-normal Path Loss Model • Received signal strength at a distance is • , is a Gaussian random variable • Due to artifacts in the environment (occlusions, multipath, etc.) • Does not consider temporal variation distance Sender Receiver Power of the transmitted signal Path loss exponent Random variation Path loss at distance
Three Regions of Radio Links • As the distance increases, we go through 3 regions • Connected: • Transitional: • Disconnected: • Observation • The packet reception ratio at any given location is random
Connected Region • In connected region • PRR is very likely to be high • Trying one location will likely produce good link 5 meters Sender Receiver
Transitional Region • In transitional region • PRR may or may not be high • Trying a few spots should yield a good link 15 meters Sender Receiver
Disconnected Region • In disconnected region • PRR is very unlikely to be high • Trying multiple spots seems worthless 40 meters Sender Receiver
Outline • Introduce log-normal path loss model • Discuss pitfalls • Present the experimental results – reality check
Pitfalls • Log-normal path loss model is not perfect • The Gaussian variation in signal strength is a statistical observation • Signal strengths at nearby locations are correlated
Reality Check • Verify log-normal path loss model • Quantify spatial correlations • Count number of trials to construct good links • Investigate temporal variations
Experimental Setup • Devices • TelosB motes • iRobot with an Ebox-3854 running Linux • Environments • Outdoor parking lot • Lawn • Indoor hallway • Indoor testbed • Two forests
Evaluations on the Log-normal Model • Holds well in all the environments • Example figure for the parking lot • We can subtract the solid line from the raw RSSI readings • The residual RSSI values are samples of the random variable :
Reality Check • Verify log-normal path loss model • Quantify spatial correlations • Count number of trials to construct good links • Investigate temporal variations
Spatial Correlation • PRR measurements at a parking lot • iRobot moves in a 2-d plane (the ground) • Black cell : PRR below 85%; Gray cell : PRR above 85% • PRR are correlated • Trying two adjacent locations flipping two coins • In all of our experiments, 1 meteris sufficient to remove most correlation
Reality Check • Verify log-normal path loss model • Quantify spatial correlations • Count number of trials to construct good links • Investigate temporal variations
Number of Trials - Configuration 1 meter • Grid sampling • Bernoulli trials • Number of trials to find a good PRR is geometrically distributed distance
Number of Trials - Results • Measure and compute the length of connected region • Place motes at distances longer than
Number of Trials – Fitting Geometric Distribution Suggests that 1 meter ensures independent trials.
Connecting Two Motes Relay TARB TAR TBR Mote A Mote B • TAR: number of trials to connect to A • TBR: number of trials to connect to B • TARB: number of trials to connect to both A and B
Reality Check • Verify log-normal path loss model • Quantify spatial correlations • Count number of trials to construct good links • Investigate temporal variations
Temporal Variation • Box plots of residual RSSI values for two forests
Conclusion • Log-normal model fits sensornets • Signal correlation vanishes at 1 meter separation • Easy to find good links in the transitional region • Rule of thumb: at twice the length of connected region, number of trials is less than 5 with high probability
Application – Placing Relay Nodes • Number of relay nodes at large scale • Place 120 sensor motes in an area of size 800m by 800m • Run Steiner Tree algorithm to place relay nodes
Application – Mobile Sensor Networks • Mobile sink • If the current spot yields low PRR, move 1 meter • Minimize travel distance • Mobile motes Signal variation in the space domain Signal variation in the time domain
Thank you! Questions?