1,072 research outputs found

    Multipoint Optimal Minimum Entropy Deconvolution Adjusted for Automatic Fault Diagnosis of Hoist Bearing

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    Multipoint optimal minimum entropy deconvolution adjusted (MOMEDA) is a powerful method that can extract the periodic characteristics of signal effectively, but this method needs to evaluate the fault cycle a priori, and moreover, the results obtained in a complex environment are easily affected by noise. These drawbacks reduce the application of MOMEDA in engineering practice greatly. In order to avoid such problems, in this paper, we propose an adaptive fault diagnosis method composed of two parts: fault information integration and extracted feature evaluation. In the first part, a Teager energy spectrum amplitude factor (T-SAF) is proposed to select the intrinsic mode function (IMF) components decomposed by ensemble empirical mode decomposition (EEMD), and a combined mode function (CMF) is proposed to further reduce the mode mixing. In the second part, the particle swarm optimization (PSO) taking fractal dimension as the objective function is employed to choose the filter length of MOMEDA, and then the feature frequency is extracted by MOMEDA from the reconstructed signal. A cyclic recognition method is proposed to appraise the extracted feature frequency, and the evaluation system based on threshold and weight coefficient removes the wrong feature frequency. Finally, the feasibility of the method is verified by simulation data, experimental signals, and on-site signals. The results show that the proposed method can effectively identify the bearing state

    Active suspension control of electric vehicle with in-wheel motors

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    In-wheel motor (IWM) technology has attracted increasing research interests in recent years due to the numerous advantages it offers. However, the direct attachment of IWMs to the wheels can result in an increase in the vehicle unsprung mass and a significant drop in the suspension ride comfort performance and road holding stability. Other issues such as motor bearing wear motor vibration, air-gap eccentricity and residual unbalanced radial force can adversely influence the motor vibration, passenger comfort and vehicle rollover stability. Active suspension and optimized passive suspension are possible methods deployed to improve the ride comfort and safety of electric vehicles equipped with inwheel motor. The trade-off between ride comfort and handling stability is a major challenge in active suspension design. This thesis investigates the development of novel active suspension systems for successful implementation of IWM technology in electric cars. Towards such aim, several active suspension methods based on robust H∞ control methods are developed to achieve enhanced suspension performance by overcoming the conflicting requirement between ride comfort, suspension deflection and road holding. A novel fault-tolerant H∞ controller based on friction compensation is in the presence of system parameter uncertainties, actuator faults, as well as actuator time delay and system friction is proposed. A friction observer-based Takagi-Sugeno (T-S) fuzzy H∞ controller is developed for active suspension with sprung mass variation and system friction. This method is validated experimentally on a quarter car test rig. The experimental results demonstrate the effectiveness of proposed control methods in improving vehicle ride performance and road holding capability under different road profiles. Quarter car suspension model with suspended shaft-less direct-drive motors has the potential to improve the road holding capability and ride performance. Based on the quarter car suspension with dynamic vibration absorber (DVA) model, a multi-objective parameter optimization for active suspension of IWM mounted electric vehicle based on genetic algorithm (GA) is proposed to suppress the sprung mass vibration, motor vibration, motor bearing wear as well as improving ride comfort, suspension deflection and road holding stability. Then a fault-tolerant fuzzy H∞ control design approach for active suspension of IWM driven electric vehicles in the presence of sprung mass variation, actuator faults and control input constraints is proposed. The T-S fuzzy suspension model is used to cope with the possible sprung mass variation. The output feedback control problem for active suspension system of IWM driven electric vehicles with actuator faults and time delay is further investigated. The suspended motor parameters and vehicle suspension parameters are optimized based on the particle swarm optimization. A robust output feedback H∞ controller is designed to guarantee the system’s asymptotic stability and simultaneously satisfying the performance constraints. The proposed output feedback controller reveals much better performance than previous work when different actuator thrust losses and time delay occurs. The road surface roughness is coupled with in-wheel switched reluctance motor air-gap eccentricity and the unbalanced residual vertical force. Coupling effects between road excitation and in wheel switched reluctance motor (SRM) on electric vehicle ride comfort are also analysed in this thesis. A hybrid control method including output feedback controller and SRM controller are designed to suppress SRM vibration and to prolong the SRM lifespan, while at the same time improving vehicle ride comfort. Then a state feedback H∞ controller combined with SRM controller is designed for in-wheel SRM driven electric vehicle with DVA structure to enhance vehicle and SRM performance. Simulation results demonstrate the effectiveness of DVA structure based active suspension system with proposed control method its ability to significantly improve the road holding capability and ride performance, as well as motor performance

    Friction, Vibration and Dynamic Properties of Transmission System under Wear Progression

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    This reprint focuses on wear and fatigue analysis, the dynamic properties of coating surfaces in transmission systems, and non-destructive condition monitoring for the health management of transmission systems. Transmission systems play a vital role in various types of industrial structure, including wind turbines, vehicles, mining and material-handling equipment, offshore vessels, and aircrafts. Surface wear is an inevitable phenomenon during the service life of transmission systems (such as on gearboxes, bearings, and shafts), and wear propagation can reduce the durability of the contact coating surface. As a result, the performance of the transmission system can degrade significantly, which can cause sudden shutdown of the whole system and lead to unexpected economic loss and accidents. Therefore, to ensure adequate health management of the transmission system, it is necessary to investigate the friction, vibration, and dynamic properties of its contact coating surface and monitor its operating conditions

    A global condition monitoring system for wind turbines

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    Acquisition and processing of new data sources for improved condition monitoring of mechanical systems

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    190 p.Este trabajo está centrado en el desarrollo de nuevas formas de monitorización en línea del estado de salud de sistemas mecánicos mediante tecnologías poco utilizadas hasta ahora en este campo. En particular, se han investigado el uso de la monitorización de la viscosidad del aceite lubricante y la tecnología de análisis de las características de la corriente que alimenta el motor para obtener conocimiento sobre el estado de las cajas de engranajes. Por un lado, se presenta una nueva solución basada en materiales magnetoelásticos para la monitorización de la viscosidad del aceite lubricante. Por el otro, el análisis de la corriente alimentación del motor (MCSA por sus siglas en inglés) se presenta como alternativa de los acelerómetros tradicionales para la monitorización de anomalías mecánicas.En particular, se ha desarrollado un sensor magnetoelástico de viscosidad cinemática para mediciones en línea. La principal ventaja del sensor propuesto es su capacidad de medir en una amplia gama de valores de viscosidad (desde 32 cSt hasta 320 cSt). No se conoce ningún otro sensor equivalente comercialmente disponible con un rango similar.Con respecto al análisis de las características de la corriente de alimentación del motor (MCSA), el objetivo de la Tesis es poder diseñar un sistema para monitorizar una caja de engranajes en funcionamiento normal. En este sentido, se ha abordado el análisis de transitorios de velocidad, manteniendo la carga fija. Se ha utilizado un banco de pruebas de cajas de engranajes para reproducir diferentes fallos y adquirir datos en diferentes condiciones de operación

    Acquisition and processing of new data sources for improved condition monitoring of mechanical systems

    Get PDF
    190 p.Este trabajo está centrado en el desarrollo de nuevas formas de monitorización en línea del estado de salud de sistemas mecánicos mediante tecnologías poco utilizadas hasta ahora en este campo. En particular, se han investigado el uso de la monitorización de la viscosidad del aceite lubricante y la tecnología de análisis de las características de la corriente que alimenta el motor para obtener conocimiento sobre el estado de las cajas de engranajes. Por un lado, se presenta una nueva solución basada en materiales magnetoelásticos para la monitorización de la viscosidad del aceite lubricante. Por el otro, el análisis de la corriente alimentación del motor (MCSA por sus siglas en inglés) se presenta como alternativa de los acelerómetros tradicionales para la monitorización de anomalías mecánicas.En particular, se ha desarrollado un sensor magnetoelástico de viscosidad cinemática para mediciones en línea. La principal ventaja del sensor propuesto es su capacidad de medir en una amplia gama de valores de viscosidad (desde 32 cSt hasta 320 cSt). No se conoce ningún otro sensor equivalente comercialmente disponible con un rango similar.Con respecto al análisis de las características de la corriente de alimentación del motor (MCSA), el objetivo de la Tesis es poder diseñar un sistema para monitorizar una caja de engranajes en funcionamiento normal. En este sentido, se ha abordado el análisis de transitorios de velocidad, manteniendo la carga fija. Se ha utilizado un banco de pruebas de cajas de engranajes para reproducir diferentes fallos y adquirir datos en diferentes condiciones de operación

    Condition Monitoring and Fault Detection of Blade Damage in Small Wind Turbines Using Time-series and Frequency Analyses

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    Condition monitoring systems are critical for autonomous detection of damage when operating remote wind turbines. These systems continually monitor the turbine’s operating parameters and detect damage before the turbine fails. Although common in utility-scale turbines, these systems are mostly undeveloped in distributed, small-scale turbines due to their high cost and need for specialized equipment. The Cal Poly Wind Power Research Center is developing a low-cost, modular solution known as the LifeLine system. The previous version contained monitoring equipment, but lacked decision-making capabilities. The present work builds on the LifeLine by developing software-based detection of blade damage. Detection is done by monitoring of tower vibrations, rotor speed, and generator power output. First, testing is completed to inform algorithm design: the tower vibrational response is recorded, and blade damage is simulated by adding a mass imbalance to one blade. From these results, several algorithms are developed, and their performance is analyzed in a cross-validation study. The time-series method known as the Nonlinear State Estimation Technique and Sequential Probability Ratio Test (NSET+SPRT) is implemented first. This algorithm is highly successful, with a 93.3% rate of correct damage detection; however, it occasionally raises false alarms during normal operation. A custom-built algorithm known as the Adaptive Fast Fourier Transform (AFFT) is also built; its strength lies in its elimination of false alarms. The final system utilizes a joint monitoring approach, combining the benefits of the NSET+SPRT and AFFT. The final algorithm is successful, correctly categorizing 95.5% of data when operating above 120RPM, and raising no false alarms in normal operation. This version is then implemented for live monitoring on the Cal Poly Wind Turbine, allowing for robust and autonomous detection of blade damage

    Planning and Operation of Hybrid Renewable Energy Systems

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