Predictive Maintenance Of Pumps Using Condition Monitoring


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Predictive Maintenance of Pumps Using Condition Monitoring


Predictive Maintenance of Pumps Using Condition Monitoring

Author: Raymond S Beebe

language: en

Publisher: Elsevier

Release Date: 2004-04-16


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Condition monitoring and its part in maintenance, pump performance and the effect of water, performance analysis and testing of pumps for condition conitoring, performance analysis and its application to optimise time for overhaul, other methods of performance analysis for pump condition monitoring, vibration anaysis of pumps -- basic, vibration analysis of pumps -- advanced methos, other uses of condition monitoring information, other condition monitoring methods, positive displacement pumps, case studies in condition monitoring of pumps.

Soft Computing in Condition Monitoring and Diagnostics of Electrical and Mechanical Systems


Soft Computing in Condition Monitoring and Diagnostics of Electrical and Mechanical Systems

Author: Hasmat Malik

language: en

Publisher: Springer Nature

Release Date: 2020-01-17


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This book addresses a range of complex issues associated with condition monitoring (CM), fault diagnosis and detection (FDD) in smart buildings, wide area monitoring (WAM), wind energy conversion systems (WECSs), photovoltaic (PV) systems, structures, electrical systems, mechanical systems, smart grids, etc. The book’s goal is to develop and combine all advanced nonintrusive CMFD approaches on a common platform. To do so, it explores the main components of various systems used for CMFD purposes. The content is divided into three main parts, the first of which provides a brief introduction, before focusing on the state of the art and major research gaps in the area of CMFD. The second part covers the step-by-step implementation of novel soft computing applications in CMFD for electrical and mechanical systems. In the third and final part, the simulation codes for each chapter are included in an extensive appendix to support newcomers to the field.

Design of an Intelligent Embedded System for Condition Monitoring of an Industrial Robot


Design of an Intelligent Embedded System for Condition Monitoring of an Industrial Robot

Author: Alaa Abdulhady Jaber

language: en

Publisher: Springer

Release Date: 2016-09-08


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This thesis introduces a successfully designed and commissioned intelligent health monitoring system, specifically for use on any industrial robot, which is able to predict the onset of faults in the joints of the geared transmissions. However the developed embedded wireless condition monitoring system leads itself very well for applications on any power transmission equipment in which the loads and speeds are not constant, and access is restricted. As such this provides significant scope for future development. Three significant achievements are presented in this thesis. First, the development of a condition monitoring algorithm based on vibration analysis of an industrial robot for fault detection and diagnosis. The combined use of a statistical control chart with time-domain signal analysis for detecting a fault via an arm-mounted wireless processor system represents the first stage of fault detection. Second, the design and development of a sophisticated embedded microprocessor base station for online implementation of the intelligent condition monitoring algorithm, and third, the implementation of a discrete wavelet transform, using an artificial neural network, with statistical feature extraction for robot fault diagnosis in which the vibration signals are first decomposed into eight levels of wavelet coefficients.