In the process of high-speed movement of multiple unit trains, the train wireless communication delay has a very important impact on driving safety. If the delay is too long, the train will not be able to control, traction and brake normally. Therefore, a wireless delay prediction model based on Singular Spectrum Analysis (SSA)-Quantum Particle Swarm Optimization (QPSO) to optimize Least Squares Support Vector Machine (LSSVM) is proposed. Firstly, to lower the complexity of the sequence, the measured time series is broken down into components corresponding to different eigenvalues after singular value processing. During the decomposition process, the window length is selected using the Cao method. Secondly, each sub sequence is trained by QPSO-LSSVM model to determine the optimal parameters of LSSVM. Finally, each predicted subsequence is superimposed to get the final predicted results. The simulation results show that the proposed method has higher prediction accuracy and minimum prediction error compared to SSA-PSOLSSVM, EMD-QPSO-LSSVM, and QPSO-LSSSVM methods.
KEYWORDS: Video, Education and training, Feature extraction, Video compression, Deep learning, Video processing, Video acceleration, Data modeling, Databases, Neural networks
This article proposes a no reference video quality assessment method based on deep learning, aiming to simulate human perception of video quality and evaluate videos. This method evaluates the quality of videos by learning effective feature representations in the spatiotemporal domain. First, in the spatial domain, 2D-CNN is used to extract the spatial quality of video frames. Then, in the temporal domain, Recurrent neural network (RNN) and pyramid feature aggregation (PFA) module are used to model the temporal domain and aggregate the frame level feature quality. The experiment shows that the method proposed in this paper has good performance on the KoNViD-1k and CVD2014 datasets, and also indicates that the method has high generalization ability.
In this paper, a neural network time delay prediction method based on phase space reconstruction is presented. This method reconstructs one-dimensional chaotic time series in phase space according to the internal law through phase space reconstruction, and uses BP neural network algorithm to predict the time delay. Simulation experiments show that this method has good prediction performance.
A time delay prediction method of train network based on wireless transmission is proposed. EMD is used to decompose the time delay series. The decomposed components with large sample entropy are DWT to form new components, in order to reduce the complexity of prediction. The components with similar sample entropy are combined into new components to reduce the amount of model calculation. Finally, each data component is predicted by particle swarm optimization LSSVM model. The simulation results show that the proposed method has high prediction accuracy.
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