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Dual Extended Kalman Filter for the Identification of Time-Varying Human Manual Control Behavior
by
Popovici, Alexandru
, Pool, Daan M
, Zaal, Peter M T
in
Computer simulation
/ Convergence
/ Covariance matrix
/ Divergence
/ Economic models
/ Equalization
/ Estimates
/ Extended Kalman filter
/ Haptic interfaces
/ Human behavior
/ Manual control
/ Noise measurement
/ Parameter estimation
/ Parameter identification
/ Parameter sensitivity
/ Random walk
/ Sensitivity analysis
/ Time lag
/ Tracking control
/ Tuning
2017
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Dual Extended Kalman Filter for the Identification of Time-Varying Human Manual Control Behavior
by
Popovici, Alexandru
, Pool, Daan M
, Zaal, Peter M T
in
Computer simulation
/ Convergence
/ Covariance matrix
/ Divergence
/ Economic models
/ Equalization
/ Estimates
/ Extended Kalman filter
/ Haptic interfaces
/ Human behavior
/ Manual control
/ Noise measurement
/ Parameter estimation
/ Parameter identification
/ Parameter sensitivity
/ Random walk
/ Sensitivity analysis
/ Time lag
/ Tracking control
/ Tuning
2017
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Do you wish to request the book?
Dual Extended Kalman Filter for the Identification of Time-Varying Human Manual Control Behavior
by
Popovici, Alexandru
, Pool, Daan M
, Zaal, Peter M T
in
Computer simulation
/ Convergence
/ Covariance matrix
/ Divergence
/ Economic models
/ Equalization
/ Estimates
/ Extended Kalman filter
/ Haptic interfaces
/ Human behavior
/ Manual control
/ Noise measurement
/ Parameter estimation
/ Parameter identification
/ Parameter sensitivity
/ Random walk
/ Sensitivity analysis
/ Time lag
/ Tracking control
/ Tuning
2017
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Dual Extended Kalman Filter for the Identification of Time-Varying Human Manual Control Behavior
Conference Proceeding
Dual Extended Kalman Filter for the Identification of Time-Varying Human Manual Control Behavior
2017
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Overview
A Dual Extended Kalman Filter was implemented for the identification of time-varying human manual control behavior. Two filters that run concurrently were used, a state filter that estimates the equalization dynamics, and a parameter filter that estimates the neuromuscular parameters and time delay. Time-varying parameters were modeled as a random walk. The filter successfully estimated time-varying human control behavior in both simulated and experimental data. Simple guidelines are proposed for the tuning of the process and measurement covariance matrices and the initial parameter estimates. The tuning was performed on simulation data, and when applied on experimental data, only an increase in measurement process noise power was required in order for the filter to converge and estimate all parameters. A sensitivity analysis to initial parameter estimates showed that the filter is more sensitive to poor initial choices of neuromuscular parameters than equalization parameters, and bad choices for initial parameters can result in divergence, slow convergence, or parameter estimates that do not have a real physical interpretation. The promising results when applied to experimental data, together with its simple tuning and low dimension of the state-space, make the use of the Dual Extended Kalman Filter a viable option for identifying time-varying human control parameters in manual tracking tasks, which could be used in real-time human state monitoring and adaptive human-vehicle haptic interfaces.
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