Title :
Optimal robot excitation and identification
Author :
Swevers, Jan ; Ganseman, Chris ; Tükel, Dilek Bilgin ; De Schutter, Joris ; Van Brussel, Hendrik
Author_Institution :
Dept. of Mech. Eng., Katholieke Univ., Leuven, Belgium
fDate :
10/1/1997 12:00:00 AM
Abstract :
This paper discusses experimental robot identification based on a statistical framework. It presents a new approach toward the design of optimal robot excitation trajectories, and formulates the maximum-likelihood estimation of dynamic robot model parameters. The differences between the new design approach and the existing approaches lie in the parameterization of the excitation trajectory and in the optimization criterion. The excitation trajectory for each joint is a finite Fourier series. This approach guarantees periodic excitation which is advantageous because it allows: 1) time-domain data averaging; 2) estimation of the characteristics of the measurement noise, which is valuable in the case of maximum-likelihood parameter estimation. In addition, the use of finite Fourier series allows calculation of the joint velocities and acceleration in an analytic way from the measured position response, and allows specification of the bandwidth of the excitation trajectories. The optimization criterion is the uncertainty on the estimated parameters or a lower bound for it, instead of the often used condition of the parameter estimation problem. Simulations show that this criterion yields parameter estimates with smaller uncertainty bounds than trajectories optimized according to the classical criterion. Experiments on an industrial robot show that the presented trajectory design and maximum-likelihood parameter estimation approaches complement each other to make a practicable robot identification technique which yields accurate robot models
Keywords :
Fourier series; design of experiments; industrial robots; noise; parameter estimation; robot dynamics; dynamic robot model parameters; excitation trajectories; experimental robot identification; finite Fourier series; lower bound; maximum-likelihood estimation; measurement noise; optimal robot excitation; optimization criterion; statistical framework; time-domain data averaging; uncertainty bounds; Acceleration; Accelerometers; Design optimization; Fourier series; Maximum likelihood estimation; Noise measurement; Parameter estimation; Position measurement; Service robots; Time domain analysis;
Journal_Title :
Robotics and Automation, IEEE Transactions on