Publication | Closed Access
Model-based calibration for sensor networks
73
Citations
13
References
2004
Year
Unknown Venue
Systematic BiasEngineeringMeasurementLocalizationUncertainty ModelingCalibration ProcedureSensor NetworksData ScienceCalibrationUncertainty QuantificationCamera CalibrationManagementSystems EngineeringModel-based CalibrationSensor PlacementCalibration ProblemComputer EngineeringModel CalibrationSignal ProcessingSensor CalibrationSensorsRobust ModelingSensor OptimizationMultivariate CalibrationMeasurement System
Calibration is the process of mapping raw sensor readings into corrected values by identifying and correcting systematic bias. Calibration is important from both off-line and on-line perspectives. Major objectives of calibration procedure include accuracy, resiliency against random errors, ability to be applied in various scenarios, and to address a variety of error models. In addition, a compact mapping function is attractive in terms of both storage and robustness. We start by introducing the nonparametric statistical approach for conducting off-line calibration. After that, we present the non-parametric statistical percentile method for establishing the confidence interval for a particular mapping function. Furthermore, we propose the first model-based on-line procedure for calibration. The calibration problem is formulated as an instance of nonlinear function minimization and solved using the standard conjugate gradient approach. A number of trade-offs between the effectiveness of calibration and noise level, latency, size of network and the complexity of phenomena are analyzed in a quantitative way. As a demonstration example, we use a system consisting of photovoltaic optical sensors.
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