|Table of Contents|

The Fluctuation Characteristics of Tourist Arrivals and Division of ScenicSpots Development Mode in Hangzhou West Lake Scenic Area(PDF)

南京师范大学学报(工程技术版)[ISSN:1006-6977/CN:61-1281/TN]

Issue:
2021年03期
Page:
77-85
Research Field:
管理科学与工程
Publishing date:

Info

Title:
The Fluctuation Characteristics of Tourist Arrivals and Division of ScenicSpots Development Mode in Hangzhou West Lake Scenic Area
Author(s):
Shao Haiyan1Jin Cheng1Zhong Yexi2Feng Xinghua2
(1.School of Geography,Nanjing Normal University,Nanjing 210023,China)(2.School of Geography and Environment,Jiangxi Normal University,Nanchang 330022,China)
Keywords:
fluctuation of tourist arrivalstypes divisionwavelet analysisHangzhou West Lake Scenic Area
PACS:
K901
DOI:
10.3969/j.issn.1672-1292.2021.03.011
Abstract:
Based on the monthly tourist arrivals data of major paid attractions in Hangzhou West Lake Scenic Area from 2009 to 2019,wavelet analysis,correlation analysis and cluster analysis are used to analyze the characteristics of tourist arrivals cycle fluctuation and the correlation of tourist arrivals among different scenic spots,and then the developmental modes are divided. The research fingdings are that:the tourist arrivals of main charging attractions are significantly different and present different peak structures; that under the influence of social factors such as tourists’ leisure time,golden week effect,folk culture and natural factors such as climate,the seasonal change of tourist arrivals is significant. There is a natural seasonal cycle on a scale from April to May and an institutional seasonal cycle on a scale of August in the evolution of tourist arrivals in Hangzhou West Lake Scenic Area; that the scale of 16-19 is an inter-annual cycle formed by the dual effects of natural and social factors; the scale of 57-61 monthly cycle may be affected by economics cycles and major events. According to the perception of attractions,types of attractions and the characteristics of tourist arrivals fluctuation,the developmental modes of major paid attractions are divided into four types:popularity-oriented,popular attractions radiation,characteristic culture-driven and“enclave-style”development mode.

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Last Update: 2021-09-30