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Visitor Number Prediction for Daegwallyeong Forest Trail Using Machine Learning

Author

Listed:
  • Sungmin Ryu

    (Forest Human Service Division, National Institute of Forest Science, Seoul 02455, Republic of Korea)

  • Seong-Hoon Jung

    (Future City Strategy Division, Gumi City Hall, Gumi 39281, Republic of Korea)

  • Geun-Hyeon Kim

    (Legislation and Policy Team, Jeonju City Council, Jeonju 54994, Republic of Korea)

  • Sugwang Lee

    (Forest Human Service Division, National Institute of Forest Science, Seoul 02455, Republic of Korea)

Abstract

Predicting forest trail visitation is essential for sustainable management and policy development, including infrastructure planning, safety operations, and conservation. However, due to numerous informal access points and complex external influences, accurately monitoring visitor numbers remains challenging. This study applied random forest, gradient boosting, and LightGBM models with Bayesian optimization to predict daily visitor counts across six sections of the National Daegwallyeong Forest Trail, incorporating variables such as weather conditions, social media activity, COVID-19 case counts, tollgate traffic volume, and local festivals. SHAP analysis revealed that tollgate traffic volume and weekends consistently increased visitation across all sections. The impact of temperature varied by section: higher temperatures increased visitation in Kukmin Forest, whereas lower temperatures were associated with higher visitation at Seonjaryeong Peak. COVID-19 cases demonstrated negative effects across all sections. By integrating diverse variables and conducting section-level analysis, this study identified detailed visitation patterns and provided a practical basis for adaptive, section- and season-specific management strategies. These findings support flexible measures such as seasonal staffing, congestion mitigation, and real-time response systems and contribute to the advancement of data-driven regional tourism management frameworks in the context of evolving nature-based tourism demand.

Suggested Citation

  • Sungmin Ryu & Seong-Hoon Jung & Geun-Hyeon Kim & Sugwang Lee, 2025. "Visitor Number Prediction for Daegwallyeong Forest Trail Using Machine Learning," Sustainability, MDPI, vol. 17(13), pages 1-24, July.
  • Handle: RePEc:gam:jsusta:v:17:y:2025:i:13:p:6061-:d:1693078
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    References listed on IDEAS

    as
    1. Liu, Chengxi & Susilo, Yusak O. & Karlström, Anders, 2015. "Investigating the impacts of weather variability on individual’s daily activity–travel patterns: A comparison between commuters and non-commuters in Sweden," Transportation Research Part A: Policy and Practice, Elsevier, vol. 82(C), pages 47-64.
    2. Jessie Bravo & Roger Alarcón & Carlos Valdivia & Oscar Serquén, 2023. "Application of Machine Learning Techniques to Predict Visitors to the Tourist Attractions of the Moche Route in Peru," Sustainability, MDPI, vol. 15(11), pages 1-25, June.
    3. Abang Zainoren Abang Abdurahman & Wan Fairos Wan Yaacob & Syerina Azlin Md Nasir & Serah Jaya & Suhaili Mokhtar, 2022. "Using Machine Learning to Predict Visitors to Totally Protected Areas in Sarawak, Malaysia," Sustainability, MDPI, vol. 14(5), pages 1-16, February.
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