Exponentially extended dissipativity-based filtering of switched neural networks

  • Yufeng Tian
  • , Xiaojie Su
  • , Chao Shen
  • , Xiaoyu Ma

Research output: Contribution to journalArticlepeer-review

40 Scopus citations

Abstract

This paper considers the filtering problems for discrete-time switched neural networks with time delay. A unified performance index named as exponentially extended dissipativity is proposed, which combines some existing performance indices in literature such as the extended dissipativity, exponential H performance, exponential l2−l performance, and exponentially dissipativity. By introducing extra negative quadratic state terms, a vector Wirtinger-based summation inequality is proposed. Based on these ingredients, a unified filter existence criterion is presented to ensure the filtering error systems to be exponentially stable and exponentially extended dissipative. The desired exponentially extended dissipativity-based filters for switched neural networks are achieved by solving the proposed criterion. The advantages of the exponentially extended dissipativity-based filter design result are demonstrated by two illustrating examples.

Original languageEnglish
Article number111465
JournalAutomatica
Volume161
DOIs
StatePublished - Mar 2024

Keywords

  • Exponentially extended dissipativity
  • Switched neural networks
  • Unified filter
  • Vector Wirtinger-based summation inequality

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