IEEE COMMUNICATIONS LETTERS, VOL. 9, NO. 9, SEPTEMBER 2005 Zhen Guo,

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Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network IEEE COMMUNICATIONS LETTERS, VOL. 9, NO. 9, SEPTEMBER 2005 Zhen Guo, Mengchu Zhou, Fellow, IEEE, (周孟初, http://web.njit.edu/~zhou/) and Lev Zakrevski, Member, IEEE Presentation by Cheng-Ta Lee Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Outline Introduction Predictive Tracking Sensor Network Architecture Power Optimization and Quantitative Analysis Conclusion Future Work Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Introduction 1/3 Object tracking is an important application in wireless sensor networks Terrorist attack detection Traffic monitoring Most of researchers concentrate on tracking objects and finding efficient ways to forward the data reports to the sinks Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Introduction 2/3 Tracking Interval As the tracking interval becomes lower↓, in other words ”more frequent↑”, the tracking power consumption is increased ↑ As it increases ↑, the miss probability increases ↑, thereby lowering the tracking quality ↓ Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Introduction 3/3 This paper intends to propose a quantitative analytical model to find such an optimal tracking interval study the effect of the tracking interval on the miss probability propose a scheme called Predictive Accuracy-based Tracking Energy Saving (PATES) by exploiting the tradeoff between the accuracy and cost of sensing operation. Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Predictive Tracking Sensor Network Architecture 1/2 Object Tracking Sensor Networks An object tracking sensor network refers to a wireless sensor network designed to monitor and track the mobile targets in the covered area Generally, each sensor consists of three functional units Micro-Controller Unit (MCU) Sensor component RF radio communication component Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Predictive Tracking Sensor Network Architecture 2/2 Predictive Accuracy-based Tracking Energy Saving (PATES) In PATES, three modules must be in use. Monitoring and tracking Prediction and reporting Recovery The targets are missed, then the recovery module is initiated ALL NBR recovery ALL NODE recovery Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Power Optimization and Quantitative Analysis 1/6 quadratic function s: tracking interval a, b, and c are the constants missing probability P(s) Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Power Optimization and Quantitative Analysis 2/6 m: number of the neighbor around the current node. N: total number of sensors in whole network Notification: when a neighbor nodes detects the target, it sends notification to the currect node Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Power Optimization and Quantitative Analysis 3/6 T: Entire period s: Tracking interval Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Power Optimization and Quantitative Analysis 4/6 Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Power Optimization and Quantitative Analysis 5/6 a=0.0013, b=0.025, and c=0.062

Power Optimization and Quantitative Analysis 6/6 Fig. 2 shows the relationship between the power consumption and tracking interval Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Conclusion The power consumption with respect to tracking intervals can be minimized with a quadratic miss probability function under a given prediction algorithm A predictive tracking scheme to optimize the power efficiency with two stages of recovery is proposed The proposed scheme is demonstrated by the analytical results to be capable of successfully balancing the tradeoff between the prediction accuracy and tracking cost Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Future Work 1/2 Propose an algorithm to automatically model and validate the real-time relationship between miss probability and tracking interval Consideration three stages recovery or other recovery mechanism (for example, wake up all the two steps’ neighbor nodes around the current sensor in ALL_NBR recovery stage) Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Future Work 2/2 Decrease missing probability Because Erecovery = 9656mJ >> Esuccess = 42mJ For example, (always) wake up all the neighbor nodes around the current sensor in next state (Optimal number of wake up the neighbor nodes around the current sensor in next state) missing probability Number of wake up the neighbor nodes around the current sensor in next state Power consumption Number of wake up the neighbor nodes around the current sensor in next state Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network

Q & A Optimal Tracking Interval for Predictive Tracking in Wireless Sensor Network