Abstract

Accurate tourist flow prediction is key to ensuring the normal operation of popular scenic spots. However, one single model cannot effectively grasp the characteristics of the data and make accurate predictions because of the strong nonlinear characteristics of daily tourist flow data. Accordingly, this study predicts daily tourist flow in Huangshan Scenic Spot in China. A prediction method (GA-CNN-LSTM) which combines convolutional neural network (CNN) and long-short-term memory network (LSTM) and optimized by genetic algorithm (GA) is established. First, network search data, meteorological data, and other data are constructed into continuous feature maps. Then, feature vectors are extracted by convolutional neural network (CNN). Finally, the feature vectors are input into long-short-term memory network (LSTM) in time series for prediction. Moreover, GA is used to scientifically select the number of neurons in the CNN-LSTM model. Data is preprocessed and normalized before prediction. The accuracy of GA-CNN-LSTM is evaluated using mean absolute percentage error (MAPE), mean absolute error (MAE), Pearson correlation coefficient and index of agreement (IA). For a fair comparison, GA-CNN-LSTM model is compared with CNN-LSTM, LSTM, CNN and the back propagation neural network (BP). The experimental results show that GA-CNN-LSTM model is approximately 8.22% higher than CNN-LSTM on the performance of MAPE.

Highlights

  • The deepening of the reform and opening and the rapid development of the national economy has simultaneously seen the improvement of the economic capacity and living standard of the Chinese people

  • Based on the genetic algorithm (GA)-convolutional neural network (CNN)-long-short-term memory network (LSTM) model, this study proposes a complete modeling process to make predictions and evaluate the corresponding performance

  • The results of CNN-LSTM, CNN, LSTM, and back propagation neural network (BP) will be compared with the experimental results of GA-CNN-LSTM

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Summary

Introduction

The deepening of the reform and opening and the rapid development of the national economy has simultaneously seen the improvement of the economic capacity and living standard of the Chinese people. An increasing number of Chinese people focus on better quality of life and higher levels of spiritual pursuit. According to the 2018 report published by the National Tourist Bureau of China on the development of culture and tourism in 2018, the domestic tourism market maintained its steady growth; inbound tourism market grew slowly and steadily, whereas the outbound tourism market developed rapidly. The total number of domestic tourists was 5.539 billion, inbound tourists was 141.2 million, outbound tourists was 149.72 million, and the total tourism revenue was 5.97 trillion yuan. In 2018, the total number of tourists was 6.024 billion of the 11,924 A-level scenic spots in China. The total tourism revenue of all A-level scenic spots had an increase of 7.8% over the previous year [1]

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