项目来源
俄罗斯科学基金(RSF)
项目主持人
Ibryaeva Olga
项目受资助机构
Federal State Autonomous Educational Institution of Higher Education"South Ural State University"
立项年度
2025
立项时间
未公开
项目编号
25-29-00633
研究期限
未知 / 未知
项目级别
国家级
受资助金额
未知
学科
ENGINEERING SCIENCES-Integration and information processing in technical systems
学科代码
09-09-605
基金类别
未公开
мониторинг состояния ; диагностика неисправностей ; классификация дефектов ; искусственный интеллект ; машинное обучение ; нейронные сети ; смешанные входные данные ; выделение признаков ; Преобразование Гильберта-Хуанга ; вейвлет-преобразование ; GAF ; MTF ; RP ; аугментация данных ; condition monitoring ; fault diagnosis ; defect classification ; artificial intelligence ; machine learning ; neural networks ; mixed input data ; feature extraction ; Hilbert-Huang transform ; wavelet transform ; data augmentation
参与者
未公开
参与机构
未公开
项目标书摘要:nnotation:Minimizing unscheduled failures and equipment downtime is a key point in increasing the economic efficiency of industrial production.The induction motor ranks first among the types of electric machines used;most variable-frequency electric drives are built on the basis of induction motors.According to various estimates,10-15%of the entire motor fleet fails per year.The main causes of motor failures in electric drives are associated with increased loads and untimely maintenance.Fault detection methods developed to date show high efficiency in laboratory installations under stationary operating conditions.However,in industrial environments,motors often change speed and load,which leads to a significant deterioration in the accuracy of diagnostic models that are not adapted to unsteady operating conditions.Data corresponding to the operation of a defective motor is often unavailable or available in limited quantities.In addition,the installation of additional sensors and any interference in the technological process are,as a rule,unacceptable.Most suitable for industrial environments,diagnostics are based on current signals that can be easily and non-invasively collected from the motor.In this regard,this study is aimed at solving the problem of diagnosing the state of an induction motor using current signals under conditions of a limited set of data and non-stationary operating modes.It is necessary to develop methods capable of determining the condition of the motor when its operating conditions change,noise and the“masking”effect of the technological process,control using a frequency converter,as well as partial or complete absence of data on the defective state.The research will develop a new method for augmenting current signal data from the motor,taken at certain values of load and supply frequency,to other operating modes.The method will take into account the features of the spectra of current signals under different motor operating modes and use their artificial distortion.This expansion of the training set with synthetic data will further allow us to create a neural network diagnostic model capable of operating in a non-stationary mode.The model will be trained using images obtained from current signals,which is also an innovative approach.To develop a hybrid motor diagnostic model,a mixed input from a vector of numerical features and images will be used for the first time.Such simultaneous recording of different types of data by the network will ensure its greater accuracy.The project team has a scientific background in methods of obtaining and processing information(the team’s experience in the field of signal processing is more than 10 years),as well as successful projects in the field of technical diagnostics and measuring equipment(RFBR,UMNIK program,state task of the Ministry of Education,Priority-2030 program,in within the framework of the strategic project“Intelligent Manufacturing”),successful R&D under the agreement with PJSC MMK.Expected results:During the work on the project the following results will be obtained:1)Features of the spectra of current signals corresponding to different states and operating modes of the induction motor have been identified.2)A new method has been developed for augmenting current signals from the motor,obtained at certain values of load and supply frequency,to other operating modes using spectrum distortion.3)Methods for converting synthetic and real current signals into GAF,MTF,RP,HHT,WT images have been studied.4)An intelligent method for diagnosing faults in an induction motor has been developed based on a convolutional neural network and a limited set of training data corresponding to the case of operation of a defective motor,including in the complete absence of such data.5)Informative numerical statistical features from current signals are identified.6)A hybrid motor diagnostic model has been developed with mixed input from different types of data:images and numerical features extracted from signals from the motor.The scientific result of the project will be the development of methods for obtaining and processing data,methods for identifying informative features,artificial intelligence methods for solving the problem of detecting a defect and its type.
Application Abstract: Annotation:Minimizing unscheduled failures and equipment downtime is a key point in increasing the economic efficiency of industrial production.The induction motor ranks first among the types of electric machines used;most variable-frequency electric drives are built on the basis of induction motors.According to various estimates,10-15%of the entire motor fleet fails per year.The main causes of motor failures in electric drives are associated with increased loads and untimely maintenance.Fault detection methods developed to date show high efficiency in laboratory installations under stationary operating conditions.However,in industrial environments,motors often change speed and load,which leads to a significant deterioration in the accuracy of diagnostic models that are not adapted to unsteady operating conditions.Data corresponding to the operation of a defective motor is often unavailable or available in limited quantities.In addition,the installation of additional sensors and any interference in the technological process are,as a rule,unacceptable.Most suitable for industrial environments,diagnostics are based on current signals that can be easily and non-invasively collected from the motor.In this regard,this study is aimed at solving the problem of diagnosing the state of an induction motor using current signals under conditions of a limited set of data and non-stationary operating modes.It is necessary to develop methods capable of determining the condition of the motor when its operating conditions change,noise and the“masking”effect of the technological process,control using a frequency converter,as well as partial or complete absence of data on the defective state.The research will develop a new method for augmenting current signal data from the motor,taken at certain values of load and supply frequency,to other operating modes.The method will take into account the features of the spectra of current signals under different motor operating modes and use their artificial distortion.This expansion of the training set with synthetic data will further allow us to create a neural network diagnostic model capable of operating in a non-stationary mode.The model will be trained using images obtained from current signals,which is also an innovative approach.To develop a hybrid motor diagnostic model,a mixed input from a vector of numerical features and images will be used for the first time.Such simultaneous recording of different types of data by the network will ensure its greater accuracy.The project team has a scientific background in methods of obtaining and processing information(the team’s experience in the field of signal processing is more than 10 years),as well as successful projects in the field of technical diagnostics and measuring equipment(RFBR,UMNIK program,state task of the Ministry of Education,Priority-2030 program,in within the framework of the strategic project“Intelligent Manufacturing”),successful R&D under the agreement with PJSC MMK.Expected results:During the work on the project the following results will be obtained:1)Features of the spectra of current signals corresponding to different states and operating modes of the induction motor have been identified.2)A new method has been developed for augmenting current signals from the motor,obtained at certain values of load and supply frequency,to other operating modes using spectrum distortion.3)Methods for converting synthetic and real current signals into GAF,MTF,RP,HHT,WT images have been studied.4)An intelligent method for diagnosing faults in an induction motor has been developed based on a convolutional neural network and a limited set of training data corresponding to the case of operation of a defective motor,including in the complete absence of such data.5)Informative numerical statistical features from current signals are identified.6)A hybrid motor diagnostic model has been developed with mixed input from different types of data:images and numerical features extracted from signals from the motor.The scientific result of the project will be the development of methods for obtaining and processing data,methods for identifying informative features,artificial intelligence methods for solving the problem of detecting a defect and its type.