An application of evolutionary system identification algorithm in modelling of energy production system
Created by W.Langdon from
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- @Article{HUANG:2018:Measurement,
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author = "Yuhao Huang and Liang Gao and Zhang Yi and
Kang Tai and P. Kalita and Paweena Prapainainar and Akhil Garg",
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title = "An application of evolutionary system identification
algorithm in modelling of energy production system",
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journal = "Measurement",
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volume = "114",
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pages = "122--131",
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year = "2018",
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keywords = "genetic algorithms, genetic programming, System
identification, Modelling methods, Fuel cell, Energy
system",
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ISSN = "0263-2241",
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DOI = "doi:10.1016/j.measurement.2017.09.009",
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URL = "http://www.sciencedirect.com/science/article/pii/S0263224117305742",
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abstract = "The present work introduces the literature review on
System Identification (SI) by classifying it into
several fields. The review summarizes the need of
evolutionary SI method that automates the model
structure selection and its parameter evaluation based
on only the system data. In this context, the
evolutionary SI approach of genetic programming (GP) is
applied in modelling and optimization of cleaner energy
system such as direct methanol fuel cell. The
functional response of the power density of the fuel
cell with respect to input conditions is selected based
on the minimum training error. Further, an experimental
data is used to validate the robustness of the
formulated GP model. The analysis based on 2-D and 3-D
parametric procedure is further conducted to reveals
insights into functioning of the fuel cell. The Pareto
front obtained from optimization of model reveals that
the operating temperature of 64.5 degree C, methanol
flow rate of 28.04mL/min and methanol concentration of
0.29M are the optimum settings for achieving the
maximum power density of 7.36mW/cm2 for DMFC",
- }
Genetic Programming entries for
Yuhao Huang
Liang Gao
Zhang Yi
Kang Tai
P Kalita
Paweena Prapainainar
Akhil Garg
Citations