Author/Authors :
Nasir Mehranbod، نويسنده , , Masoud Soroush and Chanin Panjapornpon، نويسنده ,
Abstract :
A method of Bayesian belief network (BBN)-based sensor fault detection and identification is presented. It is applicable to processes
operating in transient or at steady-state. A single-sensor BBN model with adaptable nodes is used to handle cases in which
process is in transient. The single-sensor BBN model is used as a building block to develop a multi-stage BBN model for all sensors
in the process under consideration. In the context of BBN, conditional probability data represents correlation between process
measurable variables. For a multi-stage BBN model, the conditional probability data should be available at each time instant during
transient periods. This requires generating and processing a massive data bank that reduces computational efficiency. This paper
presents a method that reduces the size of the required conditional probability data to one set. The method improves the computational
efficiency without sacrificing detection and identification effectiveness. It is applicable to model- and data-driven techniques
of generating conditional probability data. Therefore, there is no limitation on the source of process information. Through real-time
operation and simulation of two processes, the application and performance of the proposed BBN method are shown. Detection and
identification of different sensor fault types (bias, drift and noise) are presented. For one process, a first-principles model is used to
generate the conditional probability data, while for the other, real-time process data (measurements) are used.