Deployment of interpretable machine learning in a water treatment device - feasibility exploration of performance enhancement

被引:2
|
作者
Li, Bowen [1 ,2 ]
Ma, Ruiyao [3 ]
Jiang, Jianwei [4 ]
Guo, Linfa [4 ]
Li, Kexun [1 ,2 ,5 ]
机构
[1] Nankai Univ, Coll Environm Sci & Engn, Tianjin 300350, Peoples R China
[2] Nankai Univ, MOE Key Lab Pollut Proc & Environm Criteria, Tianjin Key Lab Environm Remediat & Pollut Control, Tianjin Key Lab Environm Technol Complex Transmedi, Tianjin 300350, Peoples R China
[3] Nankai Univ, Coll Cyber Sci, Tianjin 300350, Peoples R China
[4] Tianjin Sino French Jieyuan Water Co Ltd, Tianjin 300121, Peoples R China
[5] 38 Tongyan Rd,Haihe Educ Pk, Tianjin 300350, Peoples R China
基金
中国国家自然科学基金;
关键词
Drinking water treatment; Machine learning; Bayesian optimization; Model deployment; Model interpretation; ARTIFICIAL NEURAL-NETWORKS; COAGULANT DOSAGE; PREDICTION; PARAMETERS; TIME;
D O I
10.1016/j.jwpe.2024.104781
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Machine learning (ML) provides a promising tool for predictive control and unattended operation of water treatment processes, especially in decentralized water supply due to its high variability of water quality and scarcity of manpower. However, model deployment after ML development is a challenge that hinders their implementation. Herein, this study constructed a novel electrocoagulation membrane cathode reactor (ECMCR) as an example of decentralized water treatment due to its highly integratable. Nine ML models were established to determine the ECMCR operational current density (CD) and the Bayesian technique was employed for adaptive hyperparameters tuning of each ML model. Light gradient boosting machine (LightGBM) with turbidity, humic acid (HA), pH, temperature and time as input performed best (R2 = 0.99, MSE = 0.0004) during training, whereas the random forest (RF) was effective and robust for test data (R2 = 0.98, MSE = 0.0056) with same inputs. The mean decrease impurity (MDI) and Shapley Additive exPlanation (SHAP) method indicated that the RF model made predictions based primarily on influent turbidity, which implied a correct "understanding" of the RF model. Finally, the model was deployed to the ECMCR to explore the regulation capability, and the HA removal and turbidity removal of the ECMCR increased by 23.68 % and 23.83 %, respectively. The results demonstrate that ML technology could assist in achieving the desired performance of drinking water treatment devices without manual involvement.
引用
收藏
页数:10
相关论文
共 50 条
  • [21] Machine Learning for Performance Enhancement in Fronthaul Links for IOT Applications
    Hadi, Muhammad Usman
    Basit, Abdul
    2021 INTERNATIONAL CONFERENCE ON DIGITAL FUTURES AND TRANSFORMATIVE TECHNOLOGIES (ICODT2), 2021,
  • [22] Machine learning approach for wart treatment selection: prominence on performance assessment
    Mishra, Abinash
    Reddy, U. Srinivasulu
    NETWORK MODELING AND ANALYSIS IN HEALTH INFORMATICS AND BIOINFORMATICS, 2020, 9 (01):
  • [23] Dielectric constant prediction of pure organic liquids and their mixtures with water based on interpretable machine learning
    Deng, Jiandong
    Jia, Guozhu
    FLUID PHASE EQUILIBRIA, 2022, 561
  • [24] Feasibility analysis of machine learning for performance-related attributional statements
    Berkin, Anil
    Aerts, Walter
    Van Caneghem, Tom
    INTERNATIONAL JOURNAL OF ACCOUNTING INFORMATION SYSTEMS, 2023, 48
  • [25] Interpretable machine learning for predicting and evaluating hydrogen production via supercritical water gasification of biomass
    Zhao, Sheng
    Li, Jian
    Chen, Chao
    Yan, Beibei
    Tao, Junyu
    Chen, Guanyi
    JOURNAL OF CLEANER PRODUCTION, 2021, 316
  • [26] Interpretable machine learning approaches for children's ADHD detection using clinical assessment data: an online web application deployment
    Qin, Han
    Zhang, Lili
    Wang, Jianhong
    Yan, Weiheng
    Wang, Xi
    Qu, Xia
    Peng, Nan
    Wang, Lin
    BMC PSYCHIATRY, 2025, 25 (01)
  • [27] Development and deployment of interpretable machine-learning model for predicting in-hospital mortality in elderly patients with acute kidney disease
    Li, Mingxia
    Zhuang, Qinghe
    Zhao, Shuangping
    Huang, Li
    Hu, Chenghuan
    Zhang, Buyao
    Hou, Qinlan
    RENAL FAILURE, 2022, 44 (01) : 1886 - 1896
  • [28] Predicting the compressive strength of high-performance concrete using an interpretable machine learning model
    Zhang, Yushuai
    Ren, Wangjun
    Chen, Yicun
    Mi, Yongtao
    Lei, Jiyong
    Sun, Licheng
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [29] Aerodynamic robustness optimization of aeroengine fan performance based on an interpretable dynamic machine learning method
    Cheng, Hongzhi
    Zhang, Ziqing
    Lu, Xingen
    Duan, Penghao
    Zhu, Junqiang
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2025, 254
  • [30] Prediction of medical device performance using machine learning techniques: infant incubator case study
    Živorad Kovačević
    Lejla Gurbeta Pokvić
    Lemana Spahić
    Almir Badnjević
    Health and Technology, 2020, 10 : 151 - 155