Management strategy of granular sludge settleability in saline denitrification: Insights from machine learning

被引:2
|
作者
Jeon, Junbeom [1 ]
Choi, Minkyu [2 ]
Park, Suin [1 ]
Bae, Hyokwan [3 ,4 ]
机构
[1] Pusan Natl Univ, Dept Civil & Environm Engn, Busan 46241, South Korea
[2] Yeungnam Univ, Eco Ind Convergence & Open Sharing Ctr, 280 Daehak Ro, Gyongsan 38541, Gyeongbuk Do, South Korea
[3] Ulsan Natl Inst Sci & Technol, Dept Civil Urban Earth & Environm Engn, Ulsan 44919, South Korea
[4] Ulsan Natl Inst Sci & Technol, Grad Sch Carbon Neutral, Ulsan 44919, South Korea
基金
新加坡国家研究基金会;
关键词
Denitrifying granular sludge; Machine learning; Settleability index; Core control parameters; Optimization; BIOLOGICAL NUTRIENT REMOVAL; WASTE-WATER; MICROBIAL COMMUNITY; AEROBIC GRANULES; NITROGEN REMOVAL; SALT INHIBITION; CARBON SOURCE; PERFORMANCE; NITRITE; NITRIFICATION;
D O I
10.1016/j.cej.2024.152747
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The settleability of granular sludge is a crucial factor in maintaining an adequate amount of granules in the wastewater treatment process (WWTP). However, Accurate measurement of settleability is challenging due to the complex interactions in WWTP. To address this issue, an intelligent strategy for controlling the settleability of granular sludge is required. This study developed a machine learning (ML)-based model to predict the sludge volume index (SVI30). Three ML models, namely artificial neural networks (ANNs), random forest (RF), and support vector machine (SVM) models, were employed with an ANNs-based mixed liquor suspended solids (MLSS) soft sensor, which served as input data for predicting SVI30 using ML. The combination of the soft sensor's output and ANNs yielded the highest performance with R2 and mean absolute error (MAE) of 0.8946 and 5.5 mL/g, respectively. The Shapely Additive Explanations (SHAP) analysis revealed that MLSS, salinity, glucose loading rate, and pH were significant factors influencing SVI30. The surrogate model-based optimization strategy of SVI30 was conducted using core control parameters (CCPs), namely glucose loading rate, effluent pH, and salinity. It was suggested that a glucose loading rate over 3.0 kg-N/m3-d and an effluent pH exceeding 9.0 can deteriorate the SVI30. To the best of our knowledge, this is the first study on the surrogate model-based suggestion of the management strategy in the granular sludge process under saline denitrification conditions.
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Feast/famine ratio regulates the succession of heterotrophic nitrification-aerobic denitrification and autotrophic ammonia oxidizing bacteria in halophilic aerobic granular sludge treating saline wastewater
    Sui, Yuan
    Cui, You-Wei
    Huang, Ji-Lin
    Xu, Meng-Jiao
    BIORESOURCE TECHNOLOGY, 2024, 393
  • [32] Machine learning-assisted prediction and identification of key factors affecting nitrogen metabolism for aerobic granular sludge
    Li, Huiping
    Xie, Li
    Zhou, Baiqin
    Hu, Mengxian
    He, Yingying
    Huang, Runyao
    Yang, Haosheng
    Liu, Kailin
    Yuan, Jianhua
    Yang, Dianhai
    Pang, Weihai
    ENVIRONMENTAL RESEARCH, 2025, 273
  • [33] Survival analysis of surgical management options for goblet cell adenocarcinoma: Insights from machine learning clustering
    El Asmar, M. L.
    Mortagy, M.
    Chandrakumaran, K.
    Ramage, J.
    ANNALS OF ONCOLOGY, 2024, 35 : S476 - S477
  • [34] Formation of partial-denitrification (PD) granular sludge from low-strength nitrate wastewater: The influence of loading rates
    Du, Rui
    Cao, Shenbin
    Zhang, Hanyu
    Peng, Yongzhen
    JOURNAL OF HAZARDOUS MATERIALS, 2020, 384
  • [35] Prediction of hydrogen yield from supercritical gasification process of sewage sludge using machine learning and particle swarm hybrid strategy
    Khan, Muhammad Nouman Aslam
    Ul Haq, Zeeshan
    Ullah, Hafeez
    Naqvi, Salman Raza
    Ahmed, Usama
    Zaman, Muhammad
    Amin, Nor Aishah Sadina
    INTERNATIONAL JOURNAL OF HYDROGEN ENERGY, 2024, 54 : 512 - 525
  • [36] Deep insights into the population shift of n-DAMO and Anammox in granular sludge: From sidestream to mainstream
    Fan, Sheng-Qiang
    Wen, Wan-Ru
    Xie, Guo-Jun
    Lu, Yang
    Liu, Bing-Feng
    Xing, De-Feng
    Ma, Jun
    Ren, Nan-Qi
    WATER RESEARCH, 2023, 244
  • [37] The Big Data Newsvendor: Practical Insights from Machine Learning
    Ban, Gah-Yi
    Rudin, Cynthia
    OPERATIONS RESEARCH, 2019, 67 (01) : 90 - 108
  • [38] Insights into the origin of halo mass profiles from machine learning
    Lucie-Smith, Luisa
    Adhikari, Susmita
    Wechsler, Risa H.
    MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY, 2022, 515 (02) : 2164 - 2177
  • [39] Income distribution and economic development: Insights from machine learning
    Dutt, Pushan
    Tsetlin, Ilia
    ECONOMICS & POLITICS, 2021, 33 (01) : 1 - 36
  • [40] Insights into Amyotrophic Lateral Sclerosis from a Machine Learning Perspective
    Gordon, Jonathan
    Lerner, Boaz
    JOURNAL OF CLINICAL MEDICINE, 2019, 8 (10)