In this paper, a novel hybrid structure is proposed for the development of health monitoring techniques of nonlinear systems by integration of model-based and computationally intelligent and data-driven techniques. In our proposed health monitoring framework, the well-known particle filtering method is utilized to estimate the states as well as the health parameters of the system. Simultaneously, the system observations are predicted through an observation forecasting scheme which is developed based on artificial neural networks to construct observation profiles for future time horizons. As a case study, the proposed approach is applied to predict the health condition of a gas turbine engine when it is affected by degradation damage. 20...
The field of prognostics has gained the attention of companies in effort to reduce costs or losses b...
In this paper, a novel method for a time-varying parameter estimation technique using particle filte...
Purpose The purpose of this paper is to propose and develop artificially intelligent methodologies ...
Health monitoring and prognosis of nonlinear systems is mainly concerned with system health tracking...
Health monitoring of nonlinear systems is broadly concerned with the system health tracking and its ...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...
Hybrid engines are becoming more and more widespread. Electric energy instead is a valid help to red...
Health monitoring of nonlinear systems is broadly concerned with the system health tracking and its ...
Gas turbine prognostics is a promising technology that is used in aircraft maintenance because of it...
In this paper an integrated heath monitoring platform is proposed and developed for performance anal...
Particle filters are well-known as powerful tools for accomplishing state and parameter estimation a...
rgao @ engr.uconn.edu This paper investigates a real-time fault detection and degradation prediction...
International audienceThis paper presents an approach of model-based diagnosis for the health monito...
The prognosis & health management (PHM) of aerospace components is a very complex system. A comp...
A method for the prediction of the residual life of a component subject to structural degradation wh...
The field of prognostics has gained the attention of companies in effort to reduce costs or losses b...
In this paper, a novel method for a time-varying parameter estimation technique using particle filte...
Purpose The purpose of this paper is to propose and develop artificially intelligent methodologies ...
Health monitoring and prognosis of nonlinear systems is mainly concerned with system health tracking...
Health monitoring of nonlinear systems is broadly concerned with the system health tracking and its ...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...
Hybrid engines are becoming more and more widespread. Electric energy instead is a valid help to red...
Health monitoring of nonlinear systems is broadly concerned with the system health tracking and its ...
Gas turbine prognostics is a promising technology that is used in aircraft maintenance because of it...
In this paper an integrated heath monitoring platform is proposed and developed for performance anal...
Particle filters are well-known as powerful tools for accomplishing state and parameter estimation a...
rgao @ engr.uconn.edu This paper investigates a real-time fault detection and degradation prediction...
International audienceThis paper presents an approach of model-based diagnosis for the health monito...
The prognosis & health management (PHM) of aerospace components is a very complex system. A comp...
A method for the prediction of the residual life of a component subject to structural degradation wh...
The field of prognostics has gained the attention of companies in effort to reduce costs or losses b...
In this paper, a novel method for a time-varying parameter estimation technique using particle filte...
Purpose The purpose of this paper is to propose and develop artificially intelligent methodologies ...