Litcius/Paper detail

A data-driven approach to increasing the lifetime of IoT sensor nodes

Shikhar Suryavansh, Abu Benna, Chris Guest, Somali Chaterji

2021Scientific Reports39 citationsDOIOpen Access PDF

Abstract

Data transmission accounts for significant energy consumption in wireless sensor networks where streaming data is generated by the sensors. This impedes their use in many settings, including livestock monitoring over large pastures (which forms our target application). We present Ambrosia, a lightweight protocol that utilizes a window-based timeseries forecasting mechanism for data reduction. Ambrosia employs a configurable error threshold to ensure that the accuracy of end applications is unaffected by the data transfer reduction. Experimental evaluations using LoRa and BLE on a real livestock monitoring deployment demonstrate 60% reduction in data transmission and a 2 [Formula: see text] increase in battery lifetime.

Topics & Concepts

Computer scienceWireless sensor networkData transmissionSoftware deploymentTransmission (telecommunications)Reduction (mathematics)Real-time computingEnergy consumptionProtocol (science)Sliding window protocolTransfer (computing)Data reductionComputer networkWindow (computing)Data miningTelecommunicationsElectrical engineeringEngineeringOperating systemGeometryParallel computingPathologyAlternative medicineMedicineMathematicsIoT Networks and ProtocolsSmart Grid Energy ManagementEnergy Efficient Wireless Sensor Networks