Publication | Closed Access
Dynamic sample rate adaptation for long-term IoT sensing applications
25
Citations
8
References
2016
Year
Unknown Venue
Smart SensorPrecision AgricultureEnvironmental MonitoringEngineeringWireless Sensor SystemEnergy EfficiencyIot CommunicationAgricultural EconomicsLow Cost SensorEnergy MonitoringHigh Data QualityData ScienceSmart FarmingInternet Of ThingsRenewable Energy MonitoringGeographyIot Data ManagementSignal ProcessingIot Data AnalyticsEnergy ManagementRemote Sensing
In long-term sensing applications data patterns can vary significantly over time. Often a multitude of sensors are used to measure different types of environmental conditions. Considering such variations it is hard to select a predefined sample rate that guarantees both, high data quality and energy efficiency. Hence, this paper presents a dynamic sample rate adaptation that strikes a balance offering optimal energy efficiency while maintaining high data quality. Based on the general concept of Bollinger Bands, a metric is derived that solely depends on the trend of the measured data itself. A real world measurement in the area of smart farming is used to show the effectiveness of this approach.
| Year | Citations | |
|---|---|---|
Page 1
Page 1