Article ID Journal Published Year Pages File Type
559508 Mechanical Systems and Signal Processing 2012 11 Pages PDF
Abstract

Machine prognosis can be considered as the generation of long-term predictions that describe the evolution in time of a fault indicator, with the purpose of estimating the remaining useful life (RUL) of a failing component/subsystem so that timely maintenance can be performed to avoid catastrophic failures. This paper proposes an integrated RUL prediction method using adaptive neuro-fuzzy inference systems (ANFIS) and high-order particle filtering, which forecasts the time evolution of the fault indicator and estimates the probability density function (pdf) of RUL. The ANFIS is trained and integrated in a high-order particle filter as a model describing the fault progression. The high-order particle filter is used to estimate the current state and carry out p-step-ahead predictions via a set of particles. These predictions are used to estimate the RUL pdf. The performance of the proposed method is evaluated via the real-world data from a seeded fault test for a UH-60 helicopter planetary gear plate. The results demonstrate that it outperforms both the conventional ANFIS predictor and the particle-filter-based predictor where the fault growth model is a first-order model that is trained via the ANFIS.

► An adaptive neuro-fuzzy inference system (ANFIS) is used to model fault degradation. ► The ANFIS is expressed as a high-order hidden Markov model. ► A high-order particle filter uses the ANFIS to make long-term predictions. ► Probability density function of remaining useful life is achieved.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
Authors
, , ,