Title

An experimental evaluation of the incidence of fitness-function/search-algorithm combinations on the classification performance of myoelectric control systems with iPCA tuning

DOI

https://doi.org/10.1186/1475-925X-12-133

Document Type

Article

Publication Date

12-27-2013

Publication Title

BioMedical Engineering Online

Abstract

Background: The information of electromyographic signals can be used by Myoelectric Control Systems (MCSs) to actuate prostheses. These devices allow the performing of movements that cannot be carried out by persons with amputated limbs. The state of the art in the development of MCSs is based on the use of individual principal component analysis (iPCA) as a stage of pre-processing of the classifiers. The iPCA pre-processing implies an optimization stage which has not yet been deeply explored.Methods: The present study considers two factors in the iPCA stage: namely A (the fitness function), and B (the search algorithm). The A factor comprises two levels, namely A (the classification error) and A (the correlation factor). Otherwise, the B factor has four levels, specifically B (the Sequential Forward Selection, SFS), B (the Sequential Floating Forward Selection, SFFS), B (Artificial Bee Colony, ABC), and B (Particle Swarm Optimization, PSO). This work evaluates the incidence of each one of the eight possible combinations between A and B factors over the classification error of the MCS.Results: A two factor ANOVA was performed on the computed classification errors and determined that: (1) the interactive effects over the classification error are not significative (F = 4.0659 > f = 0.09), (2) the levels of factor A have significative effects on the classification error (F = 5.0162 < f = 6.56), and (3) the levels of factor B over the classification error are not significative (F = 4.0659 > f = 0.08).Conclusions: Considering the classification performance we found a superiority of using the factor A in combination with any of the levels of factor B. With respect to the time performance the analysis suggests that the PSO algorithm is at least 14 percent better than its best competitor. The latter behavior has been observed for a particular configuration set of parameters in the search algorithms. Future works will investigate the effect of these parameters in the classification performance, such as length of the reduced size vector, number of particles and bees used during optimal search, the cognitive parameters in the PSO algorithm as well as the limit of cycles to improve a solution in the ABC algorithm. © 2013 Camacho et al.; licensee BioMed Central Ltd. 1 2 1 2 3 4 0.01,3,72 AB 0.02,1,72 A 0.01,3,72 B 2

Volume

12

Issue

1

PubMed ID

24369728

Identifier

SCOPUS_ID:84891586927

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