Simultaneous Placement and Scheduling of Sensors
Abstract
We consider the problem of monitoring spatial phenomena, such as road speeds on a highway, using wireless sensors with limited battery life. A central question is to decide where to locate these sensors to best predict the phenomenon at the unsensed locations. However, given the power constraints, we also need to determine when to selectively activate these sensors in order to maximize the performance while satisfying lifetime requirements. Traditionally, these two problems of sensor placement and scheduling have been considered separately from each other; one first decides where to place the sensors, and then when to activate them. In this paper, we present an efficient algorithm, ESPASS, that simultaneously optimizes the placement and the schedule. We prove that ESPASS provides a constant-factor approximation to the optimal solution of this NP-hard optimization problem. A salient feature of our approach is that it obtains ldquobalancedrdquo schedules that perform uniformly well over time, rather than only on average. We then extend the algorithm to allow for a smooth power-accuracy tradeoff. Our algorithm applies to complex settings where the sensing quality of a set of sensors is measured, e.g., in the improvement of prediction accuracy (more formally, to situations where the sensing quality function is submodular). We present extensive empirical studies on several sensing tasks, and our results show that simultaneously placing and scheduling gives drastically improved performance compared to separate placement and scheduling (e.g., a 33% improvement in network lifetime on the traffic prediction task).
Additional Information
© 2009 IEEE. Issue Date: 13-16 April 2009; date of current version: 21 August 2009. This work was partially supported by NSF Grants CNS-0509383, CNS-0625518, CCF-0448095, CCF-0729022, ARO MURI W911NF0710287 and a gift from Intel. A. Gupta and C. Guestrin were partly supported by Alfred P. Sloan Fellowships, C. Guestrin by an IBM Faculty Fellowship and ONR Young Investigator Award N00014-08- 1-0752 (2008-2011). A. Krause was partly supported by a Microsoft Research Graduate Fellowship.Attached Files
Published - Krause2009p83812009_International_Conference_On_Information_Processing_In_Sensor_Networks__Ipsn_2009_.pdf
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Additional details
- Eprint ID
- 18196
- Resolver ID
- CaltechAUTHORS:20100507-151434408
- NSF
- CNS-0509383
- NSF
- CNS-0625518
- NSF
- CCF-0448095
- NSF
- CCF-0729022
- Army Research Office Multidisciplinary University Research Initiative (ARO MURI)
- W911NF0710287
- Intel
- Alfred P. Sloan Fellowships
- IBM Faculty Fellowship
- Office of Naval Research (ONR) Young Investigator Award
- N00014-08-1-0752 (2008-2011)
- Microsoft Research Graduate Fellowship
- Created
-
2010-06-02Created from EPrint's datestamp field
- Updated
-
2020-03-09Created from EPrint's last_modified field
- Other Numbering System Name
- INSPEC Accession Number
- Other Numbering System Identifier
- 10838307