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Records with Keyword: Fault Detection
140. LAPSE:2018.1051
Open Fault Detection and Tolerant Control for a Five Phase Inverter Driving System
November 27, 2018 (v1)
Subject: Process Monitoring
Keywords: Fault Detection, fault-tolerant control, five-phase induction machine, five-phase induction motor (IM), five-phase inverter
This paper proposes a fault detection and the improved fault-tolerant control for an open fault in the five-phase inverter driving system. The five-phase induction machine has a merit of fault-tolerant control due to its increased number of phases. This paper analyzes an open fault pattern of one switch and proposes an effective fault detection method based upon this analysis. The proposed fault detection method using the analyzed patterns is applied in the power inverter. In addition, when the open fault occurs in the one switch of the induction machine driving system, the proposed fault-tolerant control method is used to operate the induction machine using the remaining healthy phases, after performing the fault detection method. Simulation and experiment results are provided to validate the proposed technique.
141. LAPSE:2018.0746
Wind Turbine Fault Detection through Principal Component Analysis and Statistical Hypothesis Testing
October 22, 2018 (v1)
Subject: Process Monitoring
Keywords: FAST (Fatigue, Aerodynamics, Structures and Turbulence), Fault Detection, principal component analysis, statistical hypothesis testing, wind turbine
This paper addresses the problem of online fault detection of an advanced wind turbine benchmark under actuators (pitch and torque) and sensors (pitch angle measurement) faults of different type: fixed value, gain factor, offset and changed dynamics. The fault detection scheme starts by computing the baseline principal component analysis (PCA) model from the healthy or undamaged wind turbine. Subsequently, when the structure is inspected or supervised, new measurements are obtained are projected into the baseline PCA model. When both sets of data—the baseline and the data from the current wind turbine—are compared, a statistical hypothesis testing is used to make a decision on whether or not the wind turbine presents some damage, fault or misbehavior. The effectiveness of the proposed fault-detection scheme is illustrated by numerical simulations on a well-known large offshore wind turbine in the presence of wind turbulence and realistic fault scenarios. The obtained results demonstrat... [more]
142. LAPSE:2018.0670
Fault Detection for Gas Turbine Hot Components Based on a Convolutional Neural Network
September 21, 2018 (v1)
Subject: Intelligent Systems
Keywords: convolutional neural network (CNN), exhaust gas temperature (EGT), Fault Detection, gas turbine, hot component
Gas turbine hot component failures often cause catastrophic consequences. Fault detection can improve the availability and economy of hot components. The exhaust gas temperature (EGT) profile is usually used to monitor the performance of the hot components. The EGT profile is uniform when the hot component is healthy, whereas hot component faults lead to large temperature differences between different EGT values. The EGT profile swirl under different operating and ambient conditions also cause temperature differences. Therefore, the influence of EGT profile swirl on EGT values must be eliminated. To improve the detection sensitivity, this paper develops a fault detection method for hot components based on a convolutional neural network (CNN). This paper demonstrates that a CNN can extract the information between adjacent EGT values and consider the impact of the EGT profile swirl. This paper reveals, in principle, that a CNN is a viable solution for dealing with fault detection for hot... [more]
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