Extreme learning machine based meta-heuristic algorithms for parameter extraction of solid oxide fuel cells
暂无分享,去创建一个
Hongchun Shu | Zhengxun Guo | Rui Zhang | Bo Yang | Tao Yu | Yijun Chen | Xiaoshun Zhang | Yi Yang | Keyi Su | Bo Yang | H. Shu | Tao Yu | Xiaoshun Zhang | Yijun Chen | Zhengxun Guo | Yi Yang | R. Zhang | Keyi Su
[1] Zhen Wu,et al. Thermo-economic modeling and analysis of an NG-fueled SOFC-WGS-TSA-PEMFC hybrid energy conversion system for stationary electricity power generation , 2020 .
[2] Jarosław Milewski,et al. Modeling electrical behavior of solid oxide electrolyzer cells by using artificial neural network , 2015 .
[3] Jie Yang,et al. Parameter optimization for tubular solid oxide fuel cell stack based on the dynamic model and an imp , 2011 .
[4] Lin Chen,et al. Battery state-of-health estimation based on a metabolic extreme learning machine combining degradation state model and error compensation , 2021 .
[5] Jie Yang,et al. Parameter identification of an SOFC model with an efficient, adaptive differential evolution algorithm , 2014 .
[6] Lei Zhang,et al. A parametric model for solid oxide fuel cells based on measurements made on cell materials and components , 2015 .
[7] Ahmed Fathy,et al. Maximizing SOFC performance through optimal parameters identification by modern optimization algorithms , 2019, Renewable Energy.
[8] Weihong Wang,et al. Nonlinear Hammerstein model identification of SOFC using improved GEO algorithm , 2010, 2010 8th World Congress on Intelligent Control and Automation.
[9] M. Tucker. Personal Power Using Metal-Supported Solid Oxide Fuel Cells Operated in a Camping Stove Flame , 2018 .
[10] Xuesong Yan,et al. Parameter extraction of different fuel cell models with transferred adaptive differential evolution , 2015 .
[11] M. H. Nehrir,et al. A Physically Based Dynamic Model for Solid Oxide Fuel Cells , 2007 .
[12] Jiakun Fang,et al. Dynamic modeling and small signal stability analysis of distributed photovoltaic grid-connected system with large scale of panel level DC optimizers , 2020 .
[13] Pragasen Pillay,et al. Electrochemical Modeling and Equivalent Circuit Representation of a Microphotosynthetic Power Cell , 2017, IEEE Transactions on Industrial Electronics.
[14] Ranjan Das,et al. Estimation of operating parameters of a SOFC integrated combined power cycle using differential evolution based inverse method , 2017 .
[15] G. Lim,et al. Stimulating sustainable energy at maritime ports by hybrid economic incentives: A bilevel optimization approach , 2020 .
[16] Hany M. Hasanien,et al. Parameters identification of solid oxide fuel cell for static and dynamic simulation using comprehensive learning dynamic multi-swarm marine predators algorithm , 2021 .
[17] Mohsen Hamedi,et al. Modeling and Optimization of Anode‐Supported Solid Oxide Fuel Cells on Cell Parameters via Artificial Neural Network and Genetic Algorithm , 2012 .
[18] Chengshi Tian,et al. A novel two-stage forecasting model based on error factor and ensemble method for multi-step wind power forecasting , 2019, Applied Energy.
[19] Abhik Banerjee,et al. Stability enhancement of wind energy integrated hybrid system with the help of static synchronous compensator and symbiosis organisms search algorithm , 2020 .
[20] Tao Yu,et al. Passivity-based sliding-mode control design for optimal power extraction of a PMSG based variable speed wind turbine , 2018 .
[21] Hongchun Shu,et al. A state-of-the-art survey of solid oxide fuel cell parameter identification: Modelling, methodology, and perspectives , 2020 .
[22] Dongyuan Shi,et al. A simplified competitive swarm optimizer for parameter identification of solid oxide fuel cells , 2020 .
[23] Pravat Kumar Rout,et al. Seeker optimization approach to dynamic PI based virtual impedance drooping for economic load sharing between PV and SOFC in an islanded microgrid , 2018 .
[24] Vijaya Lakshmi A.S.V,et al. Design of a robust PID-PSS for an uncertain power system with simplified stability conditions , 2020 .
[25] Dongyuan Shi,et al. Optimal identification of solid oxide fuel cell parameters using a competitive hybrid differential evolution and Jaya algorithm , 2020 .
[26] Subrata K. Sarker,et al. A survey on control issues in renewable energy integration and microgrid , 2019, Protection and Control of Modern Power Systems.
[27] Xiaojuan Wu,et al. Optimal fault-tolerant control strategy of a solid oxide fuel cell system , 2017 .
[28] Xi Li,et al. Fault detection and assessment for solid oxide fuel cell system gas supply unit based on novel principal component analysis , 2019, Journal of Power Sources.
[29] Tao Yu,et al. Dynamic leader based collective intelligence for maximum power point tracking of PV systems affected by partial shading condition , 2019, Energy Conversion and Management.
[30] Moses O. Tadé,et al. Adaptive observer based approach for the fault diagnosis in solid oxide fuel cells , 2019 .
[31] Daniel Hissel,et al. A New Modeling Approach of Embedded Fuel-Cell Power Generators Based on Artificial Neural Network , 2008, IEEE Transactions on Industrial Electronics.
[32] Nanrun Zhou,et al. Prediction of photovoltaic power output based on similar day analysis, genetic algorithm and extreme learning machine , 2020, Energy.
[33] Jun Dong,et al. Robust sliding-mode control of wind energy conversion systems for optimal power extraction via nonlinear perturbation observers , 2018 .
[34] Masoud Soroush,et al. Mathematical Modeling, Steady-State and Dynamic Behavior, and Control of Fuel Cells: A Review† , 2010 .
[35] Haibo He,et al. Impact of Power Grid Strength and PLL Parameters on Stability of Grid-Connected DFIG Wind Farm , 2020, IEEE Transactions on Sustainable Energy.
[36] Lin Chen,et al. Novel battery state-of-health online estimation method using multiple health indicators and an extreme learning machine , 2018, Energy.
[37] Hongchun Shu,et al. Solid oxide fuel cell systems fault diagnosis: Critical summarization, classification, and perspectives , 2021 .
[38] Attia A. El-Fergany,et al. Optimized Parameters of SOFC for steady state and transient simulations using interior search algorithm , 2019, Energy.
[39] Liqun Shang,et al. An improved MPPT control strategy based on incremental conductance algorithm , 2020, Protection and Control of Modern Power Systems.
[40] W. Yao,et al. Comprehensive overview of meta-heuristic algorithm applications on PV cell parameter identification , 2020 .
[41] Chee Kheong Siew,et al. Extreme learning machine: Theory and applications , 2006, Neurocomputing.
[42] Satish Kumar Injeti,et al. Optimal integration of DGs into radial distribution network in the presence of plug-in electric vehicles to minimize daily active power losses and to improve the voltage profile of the system using bio-inspired optimization algorithms , 2020 .
[43] Gabriela Benveniste,et al. Life Cycle Assessment of microtubular solid oxide fuel cell based auxiliary power unit systems for recreational vehicles , 2017 .
[44] Liang Gao,et al. Fast and accurate parameter extraction for different types of fuel cells with decomposition and nature-inspired optimization method , 2018, Energy Conversion and Management.
[45] Dustin McLarty,et al. All-electric commercial aviation with solid oxide fuel cell-gas turbine-battery hybrids , 2020 .
[46] Xiaowei Fu,et al. Health state prediction and analysis of SOFC system based on the data-driven entire stage experiment , 2019, Applied Energy.
[47] Aun Haider,et al. Review of ocean tidal, wave and thermal energy technologies , 2017 .
[48] Tao Yu,et al. Novel bio-inspired memetic salp swarm algorithm and application to MPPT for PV systems considering partial shading condition , 2019, Journal of Cleaner Production.
[49] Konstantinos Moustakas,et al. Energy and resource recovery through integrated sustainable waste management , 2020 .
[50] Attia A. El-Fergany,et al. Steady-state and dynamic models of solid oxide fuel cells based on Satin Bowerbird Optimizer , 2018 .
[51] Jun Li,et al. Modeling of DIR-SOFC Based on Particle Swarm Optimization-Wavelet Network , 2012 .
[52] Bo Jiang,et al. Parameter identification for solid oxide fuel cells using cooperative barebone particle swarm optimization with hybrid learning , 2014 .
[53] Kari Tammi,et al. The role of solid oxide fuel cells in future ship energy systems , 2020 .
[54] Ya Wei,et al. Parameter identification of solid oxide fuel cell by Chaotic Binary Shark Smell Optimization method , 2019 .