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Region of Convergence01:17

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The z-transform is a powerful mathematical tool used in the analysis of discrete-time signals and systems. It is a crucial tool in the analysis of discrete-time systems, but its convergence is limited to specific values of the complex variable z. This range of values, known as the Region of Convergence (ROC), is fundamental in determining the behavior and stability of a system or signal. The ROC defines the region in the complex plane where the z-transform converges, which can take various...
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Prediction and Early Warning of Regional Coordinated Development Based on Convolution Neural Network Algorithm.

Xue Wen1

  • 1Xinhua College of Ningxia University, Yinchuan 750021, China.

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Summary
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This study developed a prediction model for Western China

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Area of Science:

  • Regional economics
  • Urban development
  • Data science

Background:

  • Coordinated regional development is crucial for national strategy.
  • Western China's urban agglomerations require development analysis.
  • Existing models lack predictive accuracy for regional coordination.

Purpose of the Study:

  • To analyze the current situation and forecast the development trend of coordinated urban agglomeration in Western China.
  • To establish a regional coordination degree evaluation model.
  • To enhance prediction capabilities using big data analysis.

Main Methods:

  • Established a regional coordination degree evaluation model using the 3E system.
  • Introduced an ellipsoid model for enhanced coordination degree evaluation.
  • Utilized a convolution neural network for big data analysis and prediction.

Main Results:

  • Western China's urban agglomeration coordination was weak in 2015.
  • Coordination degree is projected to reach 147.35 by 2020.
  • The overall coordination trend shows gradual improvement, albeit at a slow pace.

Conclusions:

  • The developed prediction model demonstrates strong practicality and accuracy.
  • The model's results align with the current development situation.
  • The model provides valuable decision-making suggestions for regional development.