A FCM-clustered neuro-fuzzy model for estimating the methane fraction of biogas in an industrial-scale bio-digester
暂无分享,去创建一个
[1] O. Adeleke,et al. Application of machine learning models to investigate the performance of concrete reinforced with oil palm empty fruit brunch (OPEFB) fibers , 2022, Asian Journal of Civil Engineering.
[2] Ademola Oyejide Adebayo,et al. Performance evaluation of ANFIS and RSM modeling in predicting biogas and methane yields from Arachis hypogea shells pretreated with size reduction , 2022, Renewable Energy.
[3] T. Jen,et al. A machine learning approach for investigating the impact of seasonal variation on physical composition of municipal solid waste , 2022, Journal of Reliable Intelligent Environments.
[4] T. Jen,et al. Evolutionary-based neuro-fuzzy modelling of combustion enthalpy of municipal solid waste , 2022, Neural Comput. Appl..
[5] R. Mudi,et al. Adaptive neighbor constrained deviation sparse variant fuzzy c-means clustering for brain MRI of AD subject , 2021, Vis. Informatics.
[6] José M. Merigó,et al. A new QoS prediction model using hybrid IOWA-ANFIS with fuzzy C-means, subtractive clustering and grid partitioning , 2021, Inf. Sci..
[7] Jinyan Pan,et al. A new robust fuzzy c-means clustering method based on adaptive elastic distance , 2021, Knowl. Based Syst..
[8] Wei Sun,et al. PR-FCM: A polynomial regression-based fuzzy C-means algorithm for attribute-associated data , 2021, Inf. Sci..
[9] K. Cho,et al. Prediction of biogas production in anaerobic co-digestion of organic wastes using deep learning models. , 2021, Water research.
[10] T. Jen,et al. Sustainable utilization of energy from waste: A review of potentials and challenges of Waste-to-energy in South Africa , 2021 .
[11] T. Jen,et al. Application of artificial neural networks for predicting the physical composition of municipal solid waste: An assessment of the impact of seasonal variation , 2021, Waste management & research : the journal of the International Solid Wastes and Public Cleansing Association, ISWA.
[12] T. Jen,et al. Prediction of the heating value of municipal solid waste: a case study of the city of Johannesburg , 2020, International Journal of Ambient Energy.
[13] Tien-Chien Jen,et al. Prediction of municipal solid waste generation: an investigation of the effect of clustering techniques and parameters on ANFIS model performance , 2020, Environmental technology.
[14] Paul A. Adedeji,et al. Wind turbine power output very short-term forecast: A comparative study of data clustering techniques in a PSO-ANFIS model , 2020 .
[15] A. Olabi,et al. Application of artificial intelligence to maximize methane production from waste paper , 2020, International Journal of Energy Research.
[16] Atul Kumar,et al. Performance evaluation of anaerobic digestion technology for energy recovery from organic fraction of municipal solid waste: A review , 2020 .
[17] Paul A. Adedeji,et al. Estimation of Municipal Solid Waste (MSW) combustion enthalpy for energy recovery , 2019, EAI Endorsed Trans. Energy Web.
[18] Shanlin Yang,et al. Effect of cluster size distribution on clustering: a comparative study of k-means and fuzzy c-means clustering , 2019, Pattern Analysis and Applications.
[19] Bahman Najafi,et al. Application of ANFIS, ANN, and logistic methods in estimating biogas production from spent mushroom compost (SMC) , 2018, Resources, Conservation and Recycling.
[20] Keith Scott,et al. Bioelectrochemical conversion of waste to energy using microbial fuel cell technology , 2017 .
[21] Mohd Wazir Mustafa,et al. Correlation and Wavelet-based Short-Term Load Forecasting using Anfis , 2016 .
[22] Mortaza Aghbashlo,et al. Exergy-based sustainability assessment of continuous photobiological hydrogen production using anaerobic bacterium Rhodospirillum rubrum , 2016 .
[23] Ajay S. Kalamdhad,et al. Pre-treatment and anaerobic digestion of food waste for high rate methane production – A review , 2014 .
[24] Halimatun Saadiah Hafid,et al. Optimization of Methane Gas Production From Co-Digestion of Food Waste and Poultry Manure Using Artificial Neural Network and Response Surface Methodology , 2014 .
[25] T. Jen,et al. Predicting the Effect of Seasonal Variation on the Physical Composition of Municipal Solid Waste: A Case Study of the City of Johannesburg , 2020 .
[26] Artur S. C. Regoa,et al. Artificial Neural Network Modelling for Biogas Production in Biodigesters , 2019 .