Abstract

This paper gives a technical solution to improve the efficiency in multi-sensor wireless network based estimation for distributed parameter systems. A complex structure based on some estimation algorithms, with regression and autoregression, implemented using linear estimators, neural estimators and ANFIS estimators, is developed for this purpose. The three kinds of estimators are working with precision on different parts of the phenomenon characteristic. A comparative study of three methods - linear and nonlinear based on neural networks and adaptive neuro-fuzzy inference system - to implement these algorithms is made. The intelligent wireless sensor networks are taken in consideration as an efficient tool for measurement, data acquisition and communication. They are seen as a “distributed sensor”, placed in the desired positions in the measuring field. The algorithms are based on regression using values from adjacent and also on auto-regression using past values from the same sensor. A modelling and simulation for a case study is presented. The quality of estimation is validated using a quadratic criterion. A practical implementation is made using virtual instrumentation. Applications of this complex estimation system are in fault detection and diagnosis of distributed parameter systems and discovery of malicious nodes in wireless sensor networks.

Highlights

  • The paper presents some theoretical and practical aspects of signal processing in the new and emerging technology of wireless sensor networks

  • The identification and malicious node detection in a distributed parameter system depends on sensor network interfacing with the real world

  • The paper has a technical contribution by implementing the scientific theory of distributed parameter systems with the linear and non-linear estimation techniques for a practical application using intelligent wireless sensor networks

Read more

Summary

Introduction

The paper presents some theoretical and practical aspects of signal processing in the new and emerging technology of wireless sensor networks. The paper presents the results of applied research and application of sensor networks as a new emerging type of “distributed sensor” for physical variables in engineering problems These kinds of applications are adequate for estimation, monitoring, fault detection and diagnosis in distributed parameter systems. In the paper [14] the state of the art algorithms for consensus-based distributed estimation using ad hoc wireless sensor networks, where sensors communicate over single-hop noisy links, are presented. Several estimation algorithms may be developed as follows, based on the discrete models of the partial derivative equations, taking account of the equations (11)

Estimation algorithms
Methods to implement the estimation algorithms
Neural estimator
Methodology validation for the estimation algorithms in application
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call