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Adaptive fault diagnosis of sucker rod pump systems based on optimal perceptron and simulation data 被引量:2
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作者 Xiao-Xiao Lv Han-Xiang Wang +2 位作者 Zhang Xin Yan-Xin Liu Peng-Cheng Zhao 《Petroleum Science》 SCIE CAS CSCD 2022年第2期743-760,共18页
A highly precise and timely diagnosis technology can help effectively monitor and adjust the sucker rod production system(SRPS)used in oil wells to ensure a safe and efficient production.The current diagnosis method i... A highly precise and timely diagnosis technology can help effectively monitor and adjust the sucker rod production system(SRPS)used in oil wells to ensure a safe and efficient production.The current diagnosis method is pattern recognition of a dynamometer card(DC)based on feature extraction and perceptron.The premise of this method is that the training and target data have the same distribution.However,the training data are collected from a field SRPS with different system parameters designed to adapt to production conditions,which may significantly affect the diagnostic accuracy.To address this issue,in this study,an improved model of the sucker rod string(SRS)is derived by adding faultparameter dimensions,with which DCs under 16 working conditions could be generated.Subsequently an adaptive diagnosis method is proposed by taking simulated DCs generated near the working point of the target SRPS as training data.Meanwhile,to further improve the accuracy of the proposed method,the DC features are improved by relative normalization and using additional features of the DC position to increase the distance between different types of samples.The parameters of the perceptron are optimized to promote its discriminability.Finally,the accuracy and real-time performance of the proposed adaptive diagnosis method are validated using field data. 展开更多
关键词 Sucker rod pump Dynamometer card Adaptive fault diagnosis Sucker rod dynamics Output metering
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Fault Diagnosis for Non-linear System Based On Adaptive Fuzzy System
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作者 Hu Changhua Chen XinhaiSection 302, Xian Research Inst.Of Hi-tech Xian, 710025, P.R.ChinaCollege of Astronautical, Northwestern Polytechnical University Xi’an, 710072, P.R.China 《International Journal of Plant Engineering and Management》 1998年第3期23-28,共6页
Although lots of valuable results for fault diagnosis based on model have been achieved in linear system, it is difficult to apply these results to non-linear system due to the difficulty of modeling the non-linear sy... Although lots of valuable results for fault diagnosis based on model have been achieved in linear system, it is difficult to apply these results to non-linear system due to the difficulty of modeling the non-linear system by analysis. Adaptive Fuzzy system provides a way for solving this problem because it can approximate any non-linear system at any accuracy. The key for adaptive Fuzzy system to solve problem is its learning ability, so the authors present a learning algorithm for Adaptive fuzzy system, which can build the system's model by learning from the measurement data as well as experience knowledge with high accuracy. Furthermore, the experiment using the learning algorithm to model a servo-mechanism and to construct the fault diagnosis system based on the model is carried out, the results is very good. 展开更多
关键词 fault diagnosis adaptive fuzzy system simulation annealing non-linear system
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