People Centred Intelligent Predict and Prevent (PCIPP) A novel approach to Remote Condition Monitoring

Author(s):  
A. Myers ◽  
D. Tickem ◽  
J. Evans
Author(s):  
Emran Md Amin ◽  
Nemai Chandra Karmakar

A novel approach for non-invasive radiometric Partial Discharge (PD) detection and localization of faulty power apparatuses in switchyards using Chipless Radio Frequency Identification (RFID) based sensor is presented. The sensor integrates temperature sensing together with PD detection to assist on-line automated condition monitoring of high voltage equipment. The sensor is a multi-resonator based passive circuit with two antennas for reception of PD signal from the source and transmission of the captured PD to the base station. The sensor captures PD signal, processes it with designated spectral signatures as identification data bits, incorporates temperature information, and retransmits the data with PD signals to the base station. Analyzing the PD signal in the base station, both the PD levels and temperature of a particular faulty source can be retrieved. The prototype sensor was designed, fabricated, and tested for performance analysis. Results verify that the sensor is capable of identifying different sources at the events of PD. The proposed low cost passive RFID based PD sensor has a major advantage over existing condition monitoring techniques due to its scalability to large substations for mass deployment.


Sensors ◽  
2020 ◽  
Vol 20 (16) ◽  
pp. 4493
Author(s):  
Rui Silva ◽  
António Araújo

Condition monitoring is a fundamental part of machining, as well as other manufacturing processes where, generally, there are parts that wear out and have to be replaced. Devising proper condition monitoring has been a concern of many researchers, but there is still a lack of robustness and efficiency, most often hindered by the system’s complexity or otherwise limited by the inherent noisy signals, a characteristic of industrial processes. The vast majority of condition monitoring approaches do not take into account the temporal sequence when modelling and hence lose an intrinsic part of the context of an actual time-dependent process, fundamental to processes such as cutting. The proposed system uses a multisensory approach to gather information from the cutting process, which is then modelled by a recurrent neural network, capturing the evolutive pattern of wear over time. The system was tested with realistic cutting conditions, and the results show great effectiveness and accuracy with just a few cutting tests. The use of recurrent neural networks demonstrates the potential of such an approach for other time-dependent industrial processes under noisy conditions.


Author(s):  
Wenrong Xiao ◽  
Yanyang Zi ◽  
Binqiang Chen ◽  
Bing Li ◽  
Zhengjia He

Author(s):  
Magnus Fast ◽  
Thomas Palme´ ◽  
Magnus Genrup

Investigation of a novel condition monitoring approach, combining artificial neural network (ANN) with a sequential analysis technique, has been reported in this paper. For this purpose operational data from a Siemens SGT600 gas turbine has been employed for the training of an ANN model. This ANN model is subsequently used for the prediction of performance parameters of the gas turbine. Simulated anomalies are introduced on two different sets of operational data, acquired one year apart, whereupon this data is compared with corresponding ANN predictions. The cumulative sum (CUSUM) technique is used to improve and facilitate the detection of such anomalies in the gas turbine’s performance. The results are promising, displaying fast detection of small changes and detection of changes even for a degraded gas turbine.


2018 ◽  
Vol 12 (3-4) ◽  
pp. 525-533 ◽  
Author(s):  
Dominik Kißkalt ◽  
Hans Fleischmann ◽  
Sven Kreitlein ◽  
Manuel Knott ◽  
Jörg Franke

Volume 2 ◽  
2004 ◽  
Author(s):  
Bilal Ashraf ◽  
Farbod Zorriassatine ◽  
R. M. Parkin ◽  
Joanne Coy

Automated Condition Monitoring (ACM) has become a necessity for complex modern day systems. The advent and ever increasing popularity of Internet has given a new dimension to ACM. Many Internet Based Condition Monitoring (IBCM) solutions have since been implemented. There are many types of Industrial Networks that are used in the industry to implement ACM. The protocols and information sent through these networks are very different from one another. Sharing information between industrial networks and presenting it for consolidated monitoring can be a daunting task. This paper describes a novel way for extracting sensor information from different industrial networks into a single standard format using Extensible Markup Language (XML). Implementation of the solution with an Industrial Network, Controller Area Network (CAN), is also shown. The results demonstrate that by using this approach communication between automated systems and mechatronic devices will become more integrated, more efficient and less complex.


Author(s):  
A. Al-Habaibeh ◽  
R. M. Parkin ◽  
J. Redgate

This paper describes a novel approach, named Initial Optimisation Procedure (IOP), which is implemented to design enhanced condition monitoring systems. The IOP method is designed to evaluate the most sensitive location for a sensor for the detection of machine or process faults. The vibration data of a milling process is used in an experimental work to demonstrate the suggested methodology. Fourier Transformation and Wavelet are used for data analysis. The results show that the suggested approach is most suitable for vibration and acoustic emission sensors to improve the reliability and the capability of condition monitoring systems.


Volume 3 ◽  
2004 ◽  
Author(s):  
Houssein F. El-Shtewi ◽  
Yuhua Li ◽  
Fengshou Gu ◽  
Andrew D. Ball

This paper describes the growing need for a novel approach to a Condition Monitoring Database Management System (CMDBMS). Through the study of a condition monitoring case and the examination of commonly used maintenance management systems, the needs of this system have been identified. From the case study, it has been found that to obtain maintenance information a CMDBMS requires capabilities including data organization, data processing and data collection information. However, existing systems, which are used in the maintenance community only have some of the capabilities and hence provide limited assistance for maintenance activity. Therefore, a novel approach to a CMDBMS has been suggested to meet the needs of condition monitoring data management.


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