797 research outputs found
Synchronizabilities of Networks: A New index
The random matrix theory is used to bridge the network structures and the
dynamical processes defined on them. We propose a possible dynamical mechanism
for the enhancement effect of network structures on synchronization processes,
based upon which a dynamic-based index of the synchronizability is introduced
in the present paper.Comment: 4pages, 2figure
ISBDD model for classification of hyperspectral remote sensing imagery
The diverse density (DD) algorithm was proposed to handle the problem of low classification accuracy when training samples contain interference such as mixed pixels. The DD algorithm can learn a feature vector from training bags, which comprise instances (pixels). However, the feature vector learned by the DD algorithm cannot always effectively represent one type of ground cover. To handle this problem, an instance space-based diverse density (ISBDD) model that employs a novel training strategy is proposed in this paper. In the ISBDD model, DD values of each pixel are computed instead of learning a feature vector, and as a result, the pixel can be classified according to its DD values. Airborne hyperspectral data collected by the Airborne Visible/Infrared Imaging Spectrometer (AVIRIS) sensor and the Push-broom Hyperspectral Imager (PHI) are applied to evaluate the performance of the proposed model. Results show that the overall classification accuracy of ISBDD model on the AVIRIS and PHI images is up to 97.65% and 89.02%, respectively, while the kappa coefficient is up to 0.97 and 0.88, respectively
Application of a Dense Fusion Attention Network in Fault Diagnosis of Centrifugal Fan
Although the deep learning recognition model has been widely used in the
condition monitoring of rotating machinery. However, it is still a challenge to
understand the correspondence between the structure and function of the model
and the diagnosis process. Therefore, this paper discusses embedding
distributed attention modules into dense connections instead of traditional
dense cascading operations. It not only decouples the influence of space and
channel on fault feature adaptive recalibration feature weights, but also forms
a fusion attention function. The proposed dense fusion focuses on the
visualization of the network diagnosis process, which increases the
interpretability of model diagnosis. How to continuously and effectively
integrate different functions to enhance the ability to extract fault features
and the ability to resist noise is answered. Centrifugal fan fault data is used
to verify this network. Experimental results show that the network has stronger
diagnostic performance than other advanced fault diagnostic models
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