| Literature DB >> 28319760 |
Harun Uzun1, Zeynep Yıldız1, Jillian L Goldfarb2, Selim Ceylan3.
Abstract
As biomass becomes more integrated into our energy feedstocks, the ability to predict its combustion enthalpies from routine data such as carbon, ash, and moisture content enables rapid decisions about utilization. The present work constructs a novel artificial neural network model with a 3-3-1 tangent sigmoid architecture to predict biomasses' higher heating values from only their proximate analyses, requiring minimal specificity as compared to models based on elemental composition. The model presented has a considerably higher correlation coefficient (0.963) and lower root mean square (0.375), mean absolute (0.328), and mean bias errors (0.010) than other models presented in the literature which, at least when applied to the present data set, tend to under-predict the combustion enthalpy.Entities:
Keywords: Artificial neural network; Biomass; Higher heating value; Proximate analysis
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Year: 2017 PMID: 28319760 DOI: 10.1016/j.biortech.2017.03.015
Source DB: PubMed Journal: Bioresour Technol ISSN: 0960-8524 Impact factor: 9.642