Author/Authors :
Josinski, Henryk Silesian University of Technology - Akademicka - Gliwice, Poland , Switonski, Adam Silesian University of Technology - Akademicka - Gliwice, Poland , Michalczuk, Agnieszka Silesian University of Technology - Akademicka - Gliwice, Poland , Grabiec, Piotr Polish-Japanese Academy of Information Technology - Aleja Legionow - Bytom, Poland , Pawlyta, Magdalena Polish-Japanese Academy of Information Technology - Aleja Legionow - Bytom, Poland , Wojciechowski, Konrad Polish-Japanese Academy of Information Technology - Aleja Legionow - Bytom, Poland
Abstract :
The ability of the locomotor system to maintain continuous walking despite very small external or internal disturbances is called
local dynamic stability (LDS). The importance of the LDS requires constantly working on different aspects of its assessment
method which is based on the short-term largest Lyapunov exponent (LLE). A state space structure is a vital aspect of the LDS
assessment because the algorithm of the LLE computation for experimental data requires a reconstruction of a state space
trajectory. The gait kinematic data are usually one- or three-dimensional, which enables to construct a state space based on a unior multivariate time series. Furthermore, two variants of the short-term LLE are present in the literature which differ in length of
a time span, over which the short-term LLE is computed. Both a state space structure and the consistency of the observations based
on values of both short-term LLE variants were analyzed using time series representing the joint angles at ankle, knee, and hip
joints. The short-term LLE was computed for individual joints in three state spaces constructed on the basis of either univariate or
multivariate time series. Each state space revealed walkers’ locally unstable behavior as well as its attenuation in the current stride.
The corresponding conclusions made on the basis of both short-term LLE variants were consistent in ca. 59% of cases determined
by a joint and a state space. Moreover, the authors present an algorithm for estimation of the embedding dimension in the case of
a multivariate gait time series.
Keywords :
Local , Dynamic , Multivariate , LDS