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Event-Triggered Unified Performance State Estimation for Neural Networks with Time-Varying Delays | IEEE Conference Publication | IEEE Xplore

Event-Triggered Unified Performance State Estimation for Neural Networks with Time-Varying Delays


Abstract:

This paper tackles the problem of event-triggered unified performance state estimation in neural networks with time-varying delays. A novel event-triggered methodology is...Show More

Abstract:

This paper tackles the problem of event-triggered unified performance state estimation in neural networks with time-varying delays. A novel event-triggered methodology is introduced, aiming to balance the performance of the state estimator and the network's communication bandwidth. The proposed method leverages a triggered-parameter-dependent integral inequality with matrices that consider the event-triggered mechanism, capturing the interplay between the time-varying delay and system states. This innovative approach guarantees the asymptotic stability of the estimation error system, thereby meeting the H ∞ performance criterion. The efficacy of the proposed condition is demonstrated by a numerical example.
Date of Conference: 06-10 October 2024
Date Added to IEEE Xplore: 20 January 2025
ISBN Information:
Conference Location: Kuching, Malaysia

Funding Agency:

References is not available for this document.

I. Introduction

Over the past few decades, the effective use of neural networks in areas such as signal processing, manipulator control, and pattern recognition has garnered significant interest [1]. Furthermore, due to constraints in information processing speed and hardware network parameters, time delays are an unavoidable aspect of practical implementation. Consequently, the study of delayed neural networks (DNN s) remains a vibrant area of research [2], [3].

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References

References is not available for this document.