Abstract

As the complexity of a system increases, the use of sensor networks becomes more frequent and the network health management becomes more and more important. When sensor networks are applied to complex environments, they are influenced by the disturbance factors in engineering practice and observation data may be lost. This will decrease the accuracy of the health state assessment. Moreover, due to the disturbance factors and complexity of the system, observation data and system information cannot be adequately gathered. To deal with the above problems, a new health assessment model is developed based on belief rule base (BRB). The BRB model is one of the expert systems in which the quantitative data and qualitative knowledge can be aggregated simultaneously. In the new health assessment model for a sensor network, a new missing data compensation model based on BRB is constructed first, in which the historical data of the monitoring indicators are used. In addition, the expert knowledge for the historical working state of the sensor network is also applied in the constructed missing data compensation model. Then, based on the compensated data and the observation data of the sensor network, the health state can be estimated by the developed health assessment model based on BRB. Given the uncertainty of expert knowledge, the initial health assessment model cannot assess the health state of the sensor network in an actual working environment. Thus, in this paper, an optimization model is constructed based on the projection covariance matrix adaption evolution strategy (P-CMA-ES). To illustrate the effectiveness of the new proposed model, a practical case study of a sensor network in a laboratory environment is conducted.

Highlights

  • A sensor network is a kind of computer network composed of many automatic devices

  • A sensor network is an important means of monitoring a complex system state, and its health state directly correlates with its accuracy

  • In the health assessment of a sensor network, the lack of observation data, the complexity of the system and the data loss all affect the assessment accuracy. To solve these three problems and to estimate the health state accurately, a health assessment model for sensor network is constructed with two parts: the belief rule base (BRB)-based missing data compensation model and the BRB-based health assessment model

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Summary

INTRODUCTION

A sensor network is a kind of computer network composed of many automatic devices. These devices use sensors to gather complex system information (such as temperature, humidity, sound, vibration, pressure, motion or pollutants). Based on the above analysis of challenges in the health assessment for a sensor network, the lack of monitoring information, complex system influencing factors, and data loss could not be solved simultaneously in previous studies. In previous studies of health assessments based on BRB, data loss has not been considered and the observation data are assumed to be complete This decreases the estimation accuracy of sensor networks with environmental interference. The developed missing data compensation model can aggregate the historical data and expert knowledge simultaneously, dealing with the influence of the disturbance factors in an actual working environment that may cause irregular fluctuation of the observation data.

PROBLEM FORMULATION
BRB-BASED HEALTH ASSESSMENT MODEL FOR A SENSOR NETWORK
BRB-BASED HEALTH ASSEMENT MODEL FOR A SENSOR NETWORK
OPTIMIZATION MODEL FOR THE HEALTH
MODELLING PROCESS OF THE DEVELOPED HEALTH ASSESSMENT MODEL
PROBLEM FORMULATION FOR THE HEALTH ASSESSMENT OF A SENSOR NETWORK
CONSTRUCTION OF THE MISSING DATA COMPENSATION MODEL
CONCLUSION
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