Publications

Journals

  • 34. Explainable machine learning for diagnosing ecological impairment in streams using reach-scale biological and environmental data

    Taeseung Park, Se-Rin Park, Jihoon Shin, Hyunji Kim, Kyung-A You, Sang-Woo Lee, YoonKyung Cha

    Ecological Informatics Volume 96, June 2026, 103852 Link

  • 33. System-level total nitrogen prediction in MLE wastewater treatment using a modular merged LSTM framework

    Taehyeon Kim, Jaegwan Park, Yoojin Oh, Haekeum Park, Jayong Koo, Mincheol Kim, Yoonkyung Cha

    Journal of Water Process Engineering Volume 81 Link

  • 32. Development of a self-supervised deep learning framework for chlorophyll-a retrieval in data-scarce inland waters

    Bongseok Jeong, Jihoon Shin, YoonKyung Cha

    Environmental Modelling & Software Volume 197, February 2026, 106817 Link

  • 31. A river network model using a weight-based merged LSTM for multi-source monitoring integration

    Jonggyu Jung, Taeseung Park, Jaegwan Park, Dogeon Lee, YoonKyung Cha

    Ecological Informatics Volume 90, December 2025, 103320 Link

  • 30. Generalizable deep learning forecasting of harmful algal blooms using transfer learning across river systems

    Jaegwan Park, Taeseung Park, Dogeon Lee, Jihoon Shin, Kyunghyun Kim, Jonggyu Jung, Hongtae Kim, Yoonkyung Cha

    Ecological Informatics Volume 92, December 2025, 103481 Link

  • 29. Deep learning-based prediction of exceeding the criteria for river chlorophyll a concentrations using high-frequency data from a sensor network

    Gunhyeong Lee, Jihoon Shin, Young Woo Kim, Eun Jin Han, Chung Seok Yu, Taeho Kim, YoonKyung Cha

    Environmental Engineering Research 2025; 30(5): 240302 Link

  • 28. A modular deep learning surrogate model for simulating harmful algal blooms in complex process-based systems

    Young Woo Kim, Yoonkyung Cha, Jihoon Shin

    Water Research Volume 285, 1 October 2025, 124059 Link

  • 27. Long-term spatiotemporal variability and regime classification of Chlorophyll-a concentrations in Lake Erie using satellite products

    Taeho Kim, HaeDeun Lee, SooHyun Yang, GunHyeong Lee, Jihoon Shin, YoonKyung Cha

    Harmful Algae, Volume 148, 102896 Link

  • 26. Modeling ecosystem-wide responses to environmental stressors: A multi-trophic hierarchical Bayesian network approach

    Taeseung Park, Jaegwan Park, Dogeon Lee, Jonggyu Jung, Geumbit Hwang, Jeongsuk Moon, Hyun-Han Kwon, YoonKyung Cha

    Journal of Environmental Management Volume 391, September 2025, 126480 Link

  • 25. Synthetic data-augmented machine learning approaches for tailor-made microbial conversion of methane to phytoene

    Chang Keun Kang, Jihoon Shin, Min Sun Kim, Min Sun Choi, YoonKyung Cha, Yong Jun Choi

    Bioresource Technology Volume 437, 133160 Link

  • 24. Spatiotemporal dynamics of summer chlorophyll-a concentrations under varying drought conditions in a hierarchical Bayesian model

    Pamela Sofia Fabian, YoonKyung Cha, Kyung-A You, Hyun-Han Kwon

    Chemical Engineering Journal Volume 514, 163074 Link

  • 23. The analysis of spatiotemporal effects of environmental factors on harmful algal blooms in a bloom-prone river using partial least squares structural equation modeling

    Bongseok Jeong, Hyunjoo Shin, Jihoon Shin, YoonKyung Cha

    Water Science & Technology Volume 91, 10, 1128-1140 Link

  • 22. 다변량 통계분석 기반 저서성 대형무척추동물지수 등급체계 평가

    이도건, 공동수, 박배경, 박성애, 차윤경

    한국물환경학회지 vol.41, no.1, pp. 18-29 (12 pages) Link

  • 21. Development of a deep learning–based feature stream network for forecasting riverine harmful algal blooms from a network perspective

    Jihoon Shin , YoonKyung Cha

    Water Research Volume 268, Part B, 1 January 2025, 122751 Link

  • 20. Generalizability evaluations of heterogeneous ensembles for river health predictions

    Taeseung Park, Jihoon Shin, Baekyung Park, Jeongsuk Moon, Yoonkyung Cha

    Ecological Informatics Volume 82, September 2024, 102719 Link

2026

  • Explainable machine learning for diagnosing ecological impairment in streams using reach-scale biological and environmental data

    Taeseung Park, Se-Rin Park, Jihoon Shin, Hyunji Kim, Kyung-A You, Sang-Woo Lee, YoonKyung Cha

    Ecological Informatics Volume 96, June 2026, 103852 Link

  • System-level total nitrogen prediction in MLE wastewater treatment using a modular merged LSTM framework

    Taehyeon Kim, Jaegwan Park, Yoojin Oh, Haekeum Park, Jayong Koo, Mincheol Kim, Yoonkyung Cha

    Journal of Water Process Engineering Volume 81 Link

2025

  • Development of a self-supervised deep learning framework for chlorophyll-a retrieval in data-scarce inland waters

    Bongseok Jeong, Jihoon Shin, YoonKyung Cha

    Environmental Modelling & Software Volume 197, February 2026, 106817 Link

  • A river network model using a weight-based merged LSTM for multi-source monitoring integration

    Jonggyu Jung, Taeseung Park, Jaegwan Park, Dogeon Lee, YoonKyung Cha

    Ecological Informatics Volume 90, December 2025, 103320 Link

  • Generalizable deep learning forecasting of harmful algal blooms using transfer learning across river systems

    Jaegwan Park, Taeseung Park, Dogeon Lee, Jihoon Shin, Kyunghyun Kim, Jonggyu Jung, Hongtae Kim, Yoonkyung Cha

    Ecological Informatics Volume 92, December 2025, 103481 Link

  • Deep learning-based prediction of exceeding the criteria for river chlorophyll a concentrations using high-frequency data from a sensor network

    Gunhyeong Lee, Jihoon Shin, Young Woo Kim, Eun Jin Han, Chung Seok Yu, Taeho Kim, YoonKyung Cha

    Environmental Engineering Research 2025; 30(5): 240302 Link

  • A modular deep learning surrogate model for simulating harmful algal blooms in complex process-based systems

    Young Woo Kim, Yoonkyung Cha, Jihoon Shin

    Water Research Volume 285, 1 October 2025, 124059 Link

  • Long-term spatiotemporal variability and regime classification of Chlorophyll-a concentrations in Lake Erie using satellite products

    Taeho Kim, HaeDeun Lee, SooHyun Yang, GunHyeong Lee, Jihoon Shin, YoonKyung Cha

    Harmful Algae, Volume 148, 102896 Link

  • Modeling ecosystem-wide responses to environmental stressors: A multi-trophic hierarchical Bayesian network approach

    Taeseung Park, Jaegwan Park, Dogeon Lee, Jonggyu Jung, Geumbit Hwang, Jeongsuk Moon, Hyun-Han Kwon, YoonKyung Cha

    Journal of Environmental Management Volume 391, September 2025, 126480 Link

  • Synthetic data-augmented machine learning approaches for tailor-made microbial conversion of methane to phytoene

    Chang Keun Kang, Jihoon Shin, Min Sun Kim, Min Sun Choi, YoonKyung Cha, Yong Jun Choi

    Bioresource Technology Volume 437, 133160 Link

  • Spatiotemporal dynamics of summer chlorophyll-a concentrations under varying drought conditions in a hierarchical Bayesian model

    Pamela Sofia Fabian, YoonKyung Cha, Kyung-A You, Hyun-Han Kwon

    Chemical Engineering Journal Volume 514, 163074 Link

  • The analysis of spatiotemporal effects of environmental factors on harmful algal blooms in a bloom-prone river using partial least squares structural equation modeling

    Bongseok Jeong, Hyunjoo Shin, Jihoon Shin, YoonKyung Cha

    Water Science & Technology Volume 91, 10, 1128-1140 Link

  • 다변량 통계분석 기반 저서성 대형무척추동물지수 등급체계 평가

    이도건, 공동수, 박배경, 박성애, 차윤경

    한국물환경학회지 vol.41, no.1, pp. 18-29 (12 pages) Link

  • Development of a deep learning–based feature stream network for forecasting riverine harmful algal blooms from a network perspective

    Jihoon Shin , YoonKyung Cha

    Water Research Volume 268, Part B, 1 January 2025, 122751 Link

2024

  • Generalizability evaluations of heterogeneous ensembles for river health predictions

    Taeseung Park, Jihoon Shin, Baekyung Park, Jeongsuk Moon, Yoonkyung Cha

    Ecological Informatics Volume 82, September 2024, 102719 Link