2023
DOI: 10.3390/e25020247
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Deep Spatio-Temporal Graph Network with Self-Optimization for Air Quality Prediction

Abstract: The environment and development are major issues of general concern. After much suffering from the harm of environmental pollution, human beings began to pay attention to environmental protection and started to carry out pollutant prediction research. A large number of air pollutant predictions have tried to predict pollutants by revealing their evolution patterns, emphasizing the fitting analysis of time series but ignoring the spatial transmission effect of adjacent areas, leading to low prediction accuracy.… Show more

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Cited by 38 publications
(10 citation statements)
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“…CNN is a brand-new network that combines convolutional operation with multilayer artifcial neural networks (NNs) [7,8]. It automatically instructs the computer to perform a convolution operation to extract the desired features from the image, resulting in more universal and natural-looking features.…”
Section: Introductionmentioning
confidence: 99%
“…CNN is a brand-new network that combines convolutional operation with multilayer artifcial neural networks (NNs) [7,8]. It automatically instructs the computer to perform a convolution operation to extract the desired features from the image, resulting in more universal and natural-looking features.…”
Section: Introductionmentioning
confidence: 99%
“…By means of the filtering identification idea, this paper investigates and presents a filtered auxiliary model (multi-innovation) generalized extended SG identification method, a filtered auxiliary model (multi-innovation) recursive generalized extended gradient identification method, and a filtered auxiliary model (multi-innovation) recursive generalized extended least squares identification method for equation-error autoregressive moving average systems (i.e., Box-Jenkins systems). The proposed filtered auxiliary model recursive identification methods can be generalized to other linear systems, bilinear systems and nonlinear multivariable stochastic systems with colored noises [102][103][104][105][106][107][108][109] and can be applied to some engineering dynamical systems with colored noises [110][111][112][113][114][115] such as signal modeling and communication networked systems.…”
Section: Discussionmentioning
confidence: 99%
“…The MIGI algorithm and the D-MIGI algorithm in this article can be extended to polynomial nonlinear models, rational models, switching models, and exponential autoregressive models. The proposed multi-innovation gradient-based iterative identification methods for feedback nonlinear systems by using the decomposition technique in this paper can combine other identification idea and methods [108][109][110][111][112][113][114][115][116][117] for develop new identification algorithms of dynamical stochastic linear and nonlinear systems [118][119][120][121][122][123][124][125][126] such as chemical process control systems, robot control systems, information processing systems [127][128][129][130][131][132][133][134][135] and so on.…”
Section: Discussionmentioning
confidence: 99%