Litcius/Paper detail

An Adaptive Sampling Period Approach for Management of IoT Energy Consumption: Case Study Approach

Carlos Rodriguez-Pabon, Guillermo Riva, Carlos Zerbini, Juan Ruiz-Rosero, Gustavo Ramírez-González, Juan Carlos Corrales

2022Sensors14 citationsDOIOpen Access PDF

Abstract

The Internet of Things (IoT) opens opportunities to monitor, optimize, and automate processes into the Agricultural Value Chains (AVC). However, challenges remain in terms of energy consumption. In this paper, we assessed the impact of environmental variables in AVC based on the most influential variables. We developed an adaptive sampling period method to save IoT device energy and to maintain the ideal sensing quality based on these variables, particularly for temperature and humidity monitoring. The evaluation on real scenarios (Coffee Crop) shows that the suggested adaptive algorithm can reduce the current consumption up to 11% compared with a traditional fixed-rate approach, while preserving the accuracy of the data.

Topics & Concepts

Internet of ThingsComputer scienceAdaptive samplingEnergy consumptionSampling (signal processing)Real-time computingConsumption (sociology)Energy (signal processing)Data miningTelecommunicationsEmbedded systemEngineeringStatisticsElectrical engineeringMathematicsMonte Carlo methodSocial scienceDetectorSociologySmart Agriculture and AIFood Supply Chain TraceabilityIoT and Edge/Fog Computing
An Adaptive Sampling Period Approach for Management of IoT Energy Consumption: Case Study Approach | Litcius