Publication | Open Access
Predicting the Batteries' State of Health in Wireless Sensor Networks Applications
37
Citations
34
References
2018
Year
EngineeringWireless Sensor SystemSensor ConnectivitySensor NetworksNodes Battery StateSystems EngineeringEnergy Storage DeviceBattery ParametersBattery DegradationElectrical EngineeringEnergy HarvestingElectrochemical Power SourceComputer EngineeringEnergy StorageBattery SohCollaborative Sensor NetworkElectric BatteryEnergy ManagementBattery ConfigurationSensor HealthSensor OptimizationBatteries
The lifetime of wireless sensor networks deployments depends strongly on the nodes battery state of health (SoH). It is important to detect promptly those motes whose batteries are affected and degraded by ageing, environmental conditions, failures, etc. There are several parameters that can provide significant information of the battery SoH, such as the number of charge/discharge cycles, the internal resistance, voltage, drained current, temperature, etc. The combination of these parameters can be used to generate analytical models capable of predicting the battery SoH. The generation of these models needs a previous process to collect dense data traces with sampled values of the battery parameters during a large number of discharge cycles under different operating conditions. The collected data allow the development of mathematical models that can predict the battery SoH. These models are required to be simple because they must be executed in motes with low computational capabilities. The paper shows the complete process of acquiring the training data, the models generation and its experimental validation using rechargeable batteries connected to Telosb motes. The obtained results provide significant insight of the battery SoH at different temperatures and charge/discharge cycles.
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