A Data-Driven Gaussian Process Regression Model for Two-Chamber Microbial Fuel Cells

被引:12
作者
He, Y. -J. [1 ]
Ma, Z. -F. [1 ]
机构
[1] Shanghai Jiao Tong Univ, Dept Chem Engn, Shanghai Electrochem Energy Devices Res Ctr, Shanghai 200240, Peoples R China
基金
中国国家自然科学基金;
关键词
Gaussian Process Regression; Hyper-parameters; Microbial Fuel Cell; Online Learning Strategy; EFFICIENT SAMPLING TECHNIQUE; ELECTRICITY; OPTIMIZATION; TECHNOLOGY; BACTERIUM; ANODE;
D O I
10.1002/fuce.201500109
中图分类号
O646 [电化学、电解、磁化学];
学科分类号
081704 ;
摘要
Rapidly and accurately modeling of microbial fuel cells (MFCs) plays an important role not only in thorough understanding of the effects of operating conditions on system performance, but also in the successful implementation of real-time maximization of power output. Although the first principle electrochemical model has better generalization performance, it is often time-consuming for model construction and is hard to real-time application. In this study, a nonparametric Gaussian process regression (GPR) model is used to capture the nonlinear relationship between operating conditions and output voltage in the MFCs. A simple online learning strategy is proposed to recursively update the hyper-parameters of the GPR model. The applicability and effectiveness of the proposed method is validated by both the simulation and experimental datasets from the acetate and the glucose and glutamic acid two-chamber MFCs. The results illustrate that the online GPR model provides a promising method for capturing the complex nonlinearity phenomenon in MFCs, which can be greatly helpful for further real-time optimization of MFCs.
引用
收藏
页码:365 / 376
页数:12
相关论文
共 32 条
  • [1] Uncertainties of Yeast-Based Biofuel Cell Operational Characteristics
    Babanova, S.
    Hubenova, Y.
    Mitov, M.
    Mandjukov, P.
    [J]. FUEL CELLS, 2011, 11 (06) : 824 - 837
  • [2] Modeling and Optimization of Anode-Supported Solid Oxide Fuel Cells on Cell Parameters via Artificial Neural Network and Genetic Algorithm
    Bozorgmehri, S.
    Hamedi, M.
    [J]. FUEL CELLS, 2012, 12 (01) : 11 - 23
  • [3] Improvement of a microbial fuel cell performance as a BOD sensor using respiratory inhibitors
    Chang, IS
    Moon, H
    Jang, JK
    Kim, BH
    [J]. BIOSENSORS & BIOELECTRONICS, 2005, 20 (09) : 1856 - 1859
  • [4] Electricity generation by direct oxidation of glucose in mediatorless microbial fuel cells
    Chaudhuri, SK
    Lovley, DR
    [J]. NATURE BIOTECHNOLOGY, 2003, 21 (10) : 1229 - 1232
  • [5] Sparse on-line Gaussian processes
    Csató, L
    Opper, M
    [J]. NEURAL COMPUTATION, 2002, 14 (03) : 641 - 668
  • [6] On-Line PEMFC Control Using Parameterized Nonlinear Model-Based Predictive Control
    Damour, C.
    Benne, M.
    Kadjo, J. -J. A.
    Deseure, J.
    Grondin-Perez, B.
    [J]. FUEL CELLS, 2014, 14 (06) : 886 - 893
  • [7] Efficient sampling technique for optimization under uncertainty
    Diwekar, UM
    Kalagnanam, JR
    [J]. AICHE JOURNAL, 1997, 43 (02) : 440 - 447
  • [8] A state of the art review on microbial fuel cells: A promising technology for wastewater treatment and bioenergy
    Du, Zhuwei
    Li, Haoran
    Gu, Tingyue
    [J]. BIOTECHNOLOGY ADVANCES, 2007, 25 (05) : 464 - 482
  • [9] Robust Optimal Operation of Two-Chamber Microbial Fuel Cell System Under Uncertainty: A Stochastic Simulation Based Multi-Objective Genetic Algorithm Approach
    He, Y-J
    Ma, Z-F
    [J]. FUEL CELLS, 2013, 13 (03) : 321 - 335
  • [10] Recursive Gaussian process: On-line regression and learning
    Huber, Marco F.
    [J]. PATTERN RECOGNITION LETTERS, 2014, 45 : 85 - 91