Author_Institution :
NASA Ames Res. Center, SGT Inc., Moffett Field, CA, USA
Abstract :
Current-Pressure (I/P) transducers are effective pressure regulators that can vary the output pressure depending on the supplied electrical current signal, and are commonly used in pneumatic actuators and valves. Faults in current-pressure transducers have a significant impact on the regulation mechanism; therefore, it is important to perform diagnosis to identify such faults and estimate their effect on the remaining useful life of the transducer. However, there are different sources of uncertainty that significantly affect the diagnostics procedure, and therefore, it may not be possible to perform fault diagnosis and prognosis accurately, with complete confidence. These sources of uncertainty include natural variability, sensor errors (gain, bias, noise), model uncertainty, etc. This paper presents a computational methodology to quantify the uncertainty and thereby estimate the confidence in the fault diagnosis of a current-pressure transducer. Further, the effect of diagnostic uncertainty on prognostics and remaining useful life prediction are also quantified. First, experiments are conducted to study the nominal and off-nominal behavior of the I/P transducer; however, sensor measurements are not fast enough to capture brief transient states that are indicative of wear, and hence, steady-state measurements are directly used for fault diagnosis. Second, the results of these experiments are used to train a Gaussian process model using machine learning principles. Finally, a Bayesian inference methodology is developed to quantify the uncertainty in fault diagnosis by systematically accounting for the aforementioned sources of uncertainty, and in turn, the uncertainty in prognostics is also estimated.
Keywords :
Bayes methods; Gaussian processes; electric current measurement; electric sensing devices; estimation theory; fault diagnosis; inference mechanisms; learning (artificial intelligence); pressure sensors; pressure transducers; Bayesian inference methodology; Gaussian process model; I-P transducer; computational methodology; current-pressure transducer; fault diagnosis; fault prognosis; machine learning principle; pneumatic actuator; pressure regulator; remaining useful life prediction; sensor measurement; valve; Current measurement; Estimation; Noise; Predictive models; Pressure measurement; Transducers; Uncertainty;