Title :
Time-domain optimal experimental design in human postural control testing
Author :
Cody Priess, M. ; Jongeun Choi ; Radcliffe, Clark ; Popovich, John M. ; Cholewicki, Janusz ; Reeves, N. Peter
Author_Institution :
Dept. of Mech. Eng., Michigan State Univ., East Lansing, MI, USA
Abstract :
We are developing a series of systems science-based clinical tools that will assist in modeling, diagnosing, and quantifying postural control deficits in human subjects. In line with this goal, we have designed and constructed an experimental device and associated experimental task for identification of the human postural control system. In this work, we present a Quadratic Programming (QP) technique for optimizing a time-domain experimental input signal for this device. The goal of this optimization is to maximize the information present in the experiment, and therefore its ability to produce accurate estimates of several desired postural control parameters. To achieve this, we formulate the problem as a non-convex QP and attempt to maximize a measure (T-optimality condition) of the experiment´s Fisher Information Matrix (FIM) under several constraints. These constraints include limits on the input amplitude, physiological output magnitude, subject control amplitude, and input signal autocorrelation. Because the autocorrelation constraint takes the form of a Quadratic Constraint (QC), we replace it with a conservative linear relaxation about a nominal point, which is iteratively updated during the course of optimization. We show that this iterative descent algorithm generates a convergent suboptimal solution that guarantees monotonic non-increasing of the cost function while satisfying all constraints during iterations. Finally, we present example experimental results using an optimized input sequence.
Keywords :
biomedical engineering; concave programming; optimal control; quadratic programming; time-domain analysis; FIM; Fisher information matrix; QP technique; T-optimality condition; conservative linear relaxation; human postural control testing; nonconvex QP; optimization; quadratic constraint; quadratic programming; science-based clinical tools; time-domain optimal experimental design; Correlation; Cost function; Robot sensing systems; Torque; Vectors; Estimation; Human-in-the-loop control; Identification;
Conference_Titel :
American Control Conference (ACC), 2014
Conference_Location :
Portland, OR
Print_ISBN :
978-1-4799-3272-6
DOI :
10.1109/ACC.2014.6858856