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http://dx.doi.org/10.17820/eri.2021.8.4.273

Analysis of the Correlation between Social Factors and the Use of Hydrophilic Facilities by Age Group - Case Study at the Samrak and Daejeo Ecological Park  

Choi, In-Ho (W-Center)
Lee, Min-Young (W-Center)
Yoon, Hee-Ra (W-Center)
Kim, Seong Jun (R&D Division, Korea Institute of Hydrological Survey)
Kim, Chang Sung (R&D Division, Korea Institute of Hydrological Survey)
Publication Information
Ecology and Resilient Infrastructure / v.8, no.4, 2021 , pp. 273-280 More about this Journal
Abstract
In the past, the government made a total of 357 hydrophilic districts into parks to create rest areas in the national river with the four major river projects. According to the results of the survey, 60 water-friendly districts with low utilization were lifted in January 2017, and 297 water-friendly districts are currently being managed. Local governments are in charge of the maintenance costs necessary to maintain these hydrophilic districts, which require considerable costs, so it is necessary to accurately grasp the characteristics and needs of local residents at the operation stage after designation. In this study, the characteristics of local residents in the hydrophilic district were analyzed by correlating social factors with river users, crawling social network data to analyze visit patterns, and derived related Keywords, and analyzed the characteristics of the hydrophilic district. The study target areas are Samrak and Daejeo Ecological Park, located downstream of the Nakdonggang River. Social factors analyzed real estate transaction price data, economic activity income, households, stress perception rate, and pet breeding status through public data provided by Statistics Korea, and analyzed user visit patterns and image keywords on weekends.
Keywords
Correlations; Public data; Social factors; Social networks; Water-friendly park;
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