RSSI-Based Distributed Self-Localization for Wireless Sensor Networks used in Precision Agriculture
Pooyan Abouzar, David G. Michelson, and Maziyar Hamdi

TL;DR
This paper presents a scalable, power-efficient RSSI-based distributed localization algorithm for large wireless sensor networks in precision agriculture, suitable for applications with less demanding accuracy requirements.
Contribution
It introduces a recursive, distributed localization method that leverages RSSI and minimal communication, compatible with existing protocols like ZigBee, for large-scale agricultural WSNs.
Findings
Lower computational complexity per node
Compatible with ZigBee and AODV protocols
Suitable for large-scale, power-constrained WSNs
Abstract
Node localization algorithms that can be easily integrated into deployed wireless sensor networks (WSNs) and which run seamlessly with proprietary lower layer communication protocols running on off-the-shelf modules can help operators of large farms and orchards avoid the difficulty, cost and/or time involved with manual or satellite-based node localization techniques. Even though the state-of-the-art node localization algorithms can achieve low error rates using distributed techniques such as belief propagation (BP), they are not well suited to WSNs deployed for precision agriculture applications with large number of nodes, few number of landmarks and lack real time update capability. The algorithm proposed here is designed for applications such as pest control and irrigation in large farms and orchards where greater power efficiency and scalability are required but location accuracy…
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