• DocumentCode
    50063
  • Title

    Domain Adaptation Extreme Learning Machines for Drift Compensation in E-Nose Systems

  • Author

    Lei Zhang ; Zhang, David

  • Author_Institution
    Coll. of Comput. Sci., Chongqing Univ., Chongqing, China
  • Volume
    64
  • Issue
    7
  • fYear
    2015
  • fDate
    Jul-15
  • Firstpage
    1790
  • Lastpage
    1801
  • Abstract
    This paper addresses an important issue known as sensor drift, which exhibits a nonlinear dynamic property in electronic nose (E-nose), from the viewpoint of machine learning. Traditional methods for drift compensation are laborious and costly owing to the frequent acquisition and labeling process for gas samples´ recalibration. Extreme learning machines (ELMs) have been confirmed to be efficient and effective learning techniques for pattern recognition and regression. However, ELMs primarily focus on the supervised, semisupervised, and unsupervised learning problems in single domain (i.e., source domain). To our best knowledge, ELM with cross-domain learning capability has never been studied. This paper proposes a unified framework called domain adaptation extreme learning machine (DAELM), which learns a robust classifier by leveraging a limited number of labeled data from target domain for drift compensation as well as gas recognition in E-nose systems, without losing the computational efficiency and learning ability of traditional ELM. In the unified framework, two algorithms called source DAELM (DAELM-S) and target DAELM (DAELM-T) are proposed in this paper. In order to perceive the differences among ELM, DAELM-S, and DAELM-T, two remarks are provided. Experiments on the popular sensor drift data with multiple batches collected using E-nose system clearly demonstrate that the proposed DAELM significantly outperforms existing drift-compensation methods without cumbersome measures, and also bring new perspectives for ELM.
  • Keywords
    electronic noses; error compensation; learning (artificial intelligence); measurement errors; pattern classification; DAELM-S; DAELM-T; E-nose systems; domain adaptation extreme learning machines; drift compensation; electronic nose systems; gas recognition; gas sample recalibration; machine learning; nonlinear dynamic property; sensor drift; source DAELM; target DAELM; Communities; Electronic noses; Optimization; Pattern recognition; Target recognition; Training; Vectors; Domain adaptation (DA); drift compensation; electronic nose (E-nose); extreme learning machine (ELM); transfer learning; transfer learning.;
  • fLanguage
    English
  • Journal_Title
    Instrumentation and Measurement, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9456
  • Type

    jour

  • DOI
    10.1109/TIM.2014.2367775
  • Filename
    6963383