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Published byJohnathan Armstrong Modified over 9 years ago
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Minimizing Energy Consumption with Probabilistic Distance Models in Wireless Sensor Networks Yanyan Zhuang, Jianping Pan, Lin Cai University of Victoria, Canada
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2 Background & Related Work Clustering Schemes Cluster Head (CH) + cluster nodes two-tier hierarchical structure: simple node coordination Multi-hop: avoid long-range transmissions
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3 Background & Related Work (cont.) Grid-Based Clustering Partition: equal-sized squares Facilitate data dissemination: sensors can transmit data without route setup in advance Manhattan Walk Diagonal-First Routing
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4 Background & Related Work (cont.) Variable-size Clustering traffic volume highly skewed → bottleneck consume their energy much faster than other nodes → earlier breakdown of the network Existing Work time synchronization/frequent message exchanges linear network, or quasi-two-dimensional
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5 Distance Distribution Model Wireless Transmitter : data transmission rate : a constant related to the environment : path loss exponent [2,6]
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6 Distance Distribution Model Energy consumption → node distance → average distance (?) → Average Distance Model Grid structure & geometric property → probabilistic distance distribution → Distance Distribution Model
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7 Coordinate Distributions Two nodes in same grid (AB): U[0,1] Two nodes in diagonal grids (PQ) X1, Y1 ~ U[0,1] and X2, Y2 ~ U[-1,0] Two nodes in parallel grids (RS) X1, Y1, Y2 ~ U[0,1] and X2 ~ U[-1,0]
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8 Distance Distributions Node distance: Goal: Four step derivation Difference --> Square --> Sum --> Square Root
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9 Distance Distributions Node distance: Goal: Four step derivation Difference --> Square --> Sum --> Square Root
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10 (1) Difference distribution Example: P and Q
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11 (2) Square distribution Example: P and Q
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12 (3) Sum distribution (4) Square-root distribution
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13 Example: P and Q
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14 PDF within a Unit Grid & Polyfit
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15 PDF between Parallel/Diagonal Grids Parallel Diagonal
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16 Probabilistic Energy Optimization Simulation Setup: Friis Free Space & Two-Ray Ground cross-over distance : system loss factor : rx/tx antenna height : wavelength of the carrier signal
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17 Distance Verification CDF vs. Simulation One-hop Energy Consumption
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18 Total Energy Consumption: Distance Distribution vs. Average Model
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19 Improvement: Variable Size Griding P and Q X1, Y1 ~ U[0,1-q] X2, Y2 ~ U[-q(1-q),0] R X1 ~ U[-q,0], Y1 ~ U[0,1-q] S X2 ~ [-q, -q(1-q)], Y2 ~ U[-q(1-q),0]
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20 Distance Verification CDF vs. Simulation One-hop Energy Consumption CDF with q=0.4 and 0.7 One-Hop Energy Consumption with q=0.5
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21 Per-Grid/Total Energy Consumption vs. Size Ratio
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22 Conclusions Energy consumption model based on distance distributions Nonuniform grid-based clustering: both data traffic and energy consumption balanced The importance of grid-based clustering and the optimal grid size ratio that can balance the overall energy consumption
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23 Thanks! Q&A
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24 Coordinate Distributions Two nodes in same grid (AB): U[0,1] Two nodes in diagonal grids (PQ) X1, Y1: U[0,1] and X2, Y2: U[-1,0] Two nodes in parallel grids (RS) X1, Y1, Y2: U[0,1] and X2: U[-1,0]
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25 X1, Y1 ~ U[0,1] X2, Y2 ~ U[-1,0]
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26 Improvement: Variable Size Griding PQ: X1, X2 ~ U[0,1-q] and Y1, Y2 ~ U[-q(1-q),0] R: X1 ~ U[-q,0], Y1 ~ U[0,1-q] S: X2 ~ [-q, -q(1-q)], Y2 ~ U[-q(1-q),0]
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27 Wireless Channel Model : the data transmission rate : a constant related to the environment : path loss exponent [2,6] : distance distribution function (poly fit appx)
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