Evaluation of multivariate statistical analyses for monitoring and prediction of processes in an seawater reverse osmosis desalination plant

被引:0
|
作者
Srinivas Sahan Kolluri
Iman Janghorban Esfahani
Prithvi Sai Nadh Garikiparthy
ChangKyoo Yoo
机构
[1] Kyung Hee University,Department of Environmental Science and Engineering, Center for Environmental Studies, College of Engineering
来源
关键词
MANOVA; PCA; PLS; Desalination Plant;
D O I
暂无
中图分类号
学科分类号
摘要
Our aim was to analyze, monitor, and predict the outcomes of processes in a full-scale seawater reverse osmosis (SWRO) desalination plant using multivariate statistical techniques. Multivariate analysis of variance (MANOVA) was used to investigate the performance and efficiencies of two SWRO processes, namely, pore controllable fiber filter-reverse osmosis (PCF-SWRO) and sand filtration-ultra filtration-reverse osmosis (SF-UF-SWRO). Principal component analysis (PCA) was applied to monitor the two SWRO processes. PCA monitoring revealed that the SF-UF-SWRO process could be analyzed reliably with a low number of outliers and disturbances. Partial least squares (PLS) analysis was then conducted to predict which of the seven input parameters of feed flow rate, PCF/SF-UF filtrate flow rate, temperature of feed water, turbidity feed, pH, reverse osmosis (RO)flow rate, and pressure had a significant effect on the outcome variables of permeate flow rate and concentration. Root mean squared errors (RMSEs) of the PLS models for permeate flow rates were 31.5 and 28.6 for the PCF-SWRO process and SF-UF-SWRO process, respectively, while RMSEs of permeate concentrations were 350.44 and 289.4, respectively. These results indicate that the SF-UF-SWRO process can be modeled more accurately than the PCF-SWRO process, because the RMSE values of permeate flowrate and concentration obtained using a PLS regression model of the SF-UF-SWRO process were lower than those obtained for the PCF-SWRO process.
引用
收藏
页码:1486 / 1497
页数:11
相关论文
共 50 条
  • [1] Evaluation of multivariate statistical analyses for monitoring and prediction of processes in an seawater reverse osmosis desalination plant
    Kolluri, Srinivas Sahan
    Esfahani, Iman Janghorban
    Garikiparthy, Prithvi Sai Nadh
    ChangKyooYoo
    KOREAN JOURNAL OF CHEMICAL ENGINEERING, 2015, 32 (08) : 1486 - 1497
  • [2] Thermodynamic and thermoeconomic analyses of seawater reverse osmosis desalination plant with energy recovery
    El-Emam, Rami Salah
    Dincer, Ibrahim
    Energy, 2014, 64 : 154 - 163
  • [3] Thermodynamic and thermoeconomic analyses of seawater reverse osmosis desalination plant with energy recovery
    El-Emam, Rami Salah
    Dincer, Ibrahim
    Energy, 2014, 64 : 154 - 163
  • [4] Thermodynamic and thermoeconomic analyses of seawater reverse osmosis desalination plant with energy recovery
    El-Emam, Rami Salah
    Dincer, Ibrahim
    ENERGY, 2014, 64 : 154 - 163
  • [5] Comparison between Forward Osmosis-Reverse Osmosis and Reverse Osmosis processes for seawater desalination
    Altaee, Ali
    Zaragoza, Guillermo
    van Tonningen, H. Rost
    DESALINATION, 2014, 336 : 50 - 57
  • [6] Coupling of electromembrane processes with reverse osmosis for seawater desalination: Pilot plant demonstration and testing
    Gurreri, Luigi
    La Cerva, Mariagiorgia
    Moreno, Jordi
    Goossens, Berry
    Trunz, Andrea
    Tamburini, Alessandro
    DESALINATION, 2022, 526
  • [7] Seawater Reverse Osmosis Desalination
    Kurihara, Masaru
    MEMBRANES, 2021, 11 (04)
  • [8] Optimization of seawater desalination processes with the ideal reverse osmosis equation
    Song, Lianfa
    DESALINATION, 2024, 576
  • [9] REVERSE-OSMOSIS SEAWATER DESALINATION FOR POWER-PLANT
    NOSHITA, M
    DESALINATION, 1994, 96 (1-3) : 359 - 368
  • [10] SEAWATER DESALINATION AND REVERSE-OSMOSIS PLANT-DESIGN
    POHLAND, HW
    DESALINATION, 1980, 32 (1-3) : 157 - 167