The raw signals produced by internal gear pumps are susceptible to noises brought on by mechanical vibrations and the surrounding environment, and the sample count collected during the various operating periods is not distributed evenly. Accurately diagnosing faults in internal gear pumps is significantly complicated by these factors. In light of these issues, accelerated life testing was performed in order to collect signals from an internal gear pump during various operating periods. Based on the architecture of a convolutional auto-encoder network, preprocessing of the signals in the various operating periods was performed to suppress noise and enhance operating period-representing features. Thereafter, variational mode decomposition was utilized to decompose the preprocessed signal into multiple intrinsic mode functions, and the multi-scale permutation entropy value was extracted for each intrinsic mode function to form a feature set. The feature set was subsequently divided into a training set and a test set, with the training set being trained to utilize a particle swarm optimization-least squares support vector machine network. For pattern recognition, the test set samples were fed into the trained model. The results demonstrated a 99.2% diagnostic accuracy. Compared to other methods of fault diagnosis, the proposed method is more effective and accurate.
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http://dx.doi.org/10.3390/s22249841 | DOI Listing |
Infez Med
December 2024
Department of International Health, Berlin School of Business and Innovation, Berlin, Germany.
Historically, pandemics constitute a major nuisance to public health. They have a debilitating impact on global health with previous occurrences causing major mortalities worldwide. The adverse outcomes are not limited to health outcomes but ravage the social, economic, and political landscapes.
View Article and Find Full Text PDFSci Rep
November 2024
Key Laboratory of Advanced Manufacturing Technology for Automobile Parts, Ministry of Education, Chongqing University of Technology, Chongqing, 400054, China.
Chemosphere
December 2024
Silesian University of Technology, Faculty of Mechanical Engineering, Department of Theoretical and Applied Mechanics, Konarskiego 18A, 44-100, Gliwice, Poland.
The aim of this paper is to draw attention to the direct source of primary microplastics (MPs) that have been entirely neglected so far, namely by providing qualitative studies of the fishing ground baits with glitters. Among many microplastic sources already detected in fishing and angling gear and reported in the literature, the glitters in synthetic pastry are the only primary source (produced <5 mm; P-MPs), with MPs placed directly into the freshwater, during sports competitions and individual leisure activities, and were so far not discussed. Dozens of different fishbait pastry products available on the market containing glitters were funded to represent, from the material point of view, only three different classes studied further.
View Article and Find Full Text PDFContext: Equestrian sports continue to gain popularity in the United States and are associated with a high injury rate, especially involving the central nervous system and thorax. Due to this high rate of injury and the potential for long-term consequences associated with participation, an understanding of the unique risks of this sport is needed.
Objective: To describe severe injury in equestrian sports and review the role that protective gear plays in injury mitigation.
Objective: Aim: To determine the effectiveness of physical therapy on the functional state of law enforcement officers' knee joints after surgical intervention.
Patients And Methods: Materials and Methods: The research involved law enforcement officers from different units of the National Police of Ukraine (n = 56) who had suffered knee joint injuries in the line of duty, and underwent surgical intervention and rehabilitation procedures.
Results: Results: It was found that 78.
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