TY - JOUR
T1 - Prediction of higher heating value of solid fuel produced by hydrothermal carbonization of empty fruit bunch and various biomass feedstock
AU - Putra, Herlian Eriska
AU - Permana, Dani
AU - Djaenudin,
N1 - Funding Information:
This work was supported by Research Center for Environmental and Clean Technology, the National Research and Innovation Agency of Republic of Indonesia (BRIN). The authors thank to Scribendi ( https://www.scribendi.com/ ) for editing a draft of this manuscript.
Publisher Copyright:
© 2022, Springer Japan KK, part of Springer Nature.
PY - 2022/11
Y1 - 2022/11
N2 - There are many influencing variables when it comes to designing a thermal conversion system for biomass and other fuels. One of the most important factors is the higher heating value (HHV). HHV is commonly measured using a bomb calorimeter; however, in order to reduce analysis costs, many correlation models have also been developed to estimate HHV. Various models have been proposed in existing literature to predict the HHV of biomass and other fuels based on proximate and ultimate analysis composition. Unfortunately, correlations for the prediction of the HHV of fuels using the hydrothermal carbonization process or hydrochar are still difficult to find in open literature. In this study, two new correlations based on proximate and ultimate analysis of biomass and hydrothermally carbonized biomass (hydrochar) used for the prediction of HHV are presented. The multiple linear regression method is used to generate correlations from data on biomass collected from open literature. It was found that the correlation derived from the ultimate analysis (HHV = 0.441 C − 0.043 O) is more accurate than that derived from proximate analysis, since the former has the lowest average absolute error and an average bias error below 1.
AB - There are many influencing variables when it comes to designing a thermal conversion system for biomass and other fuels. One of the most important factors is the higher heating value (HHV). HHV is commonly measured using a bomb calorimeter; however, in order to reduce analysis costs, many correlation models have also been developed to estimate HHV. Various models have been proposed in existing literature to predict the HHV of biomass and other fuels based on proximate and ultimate analysis composition. Unfortunately, correlations for the prediction of the HHV of fuels using the hydrothermal carbonization process or hydrochar are still difficult to find in open literature. In this study, two new correlations based on proximate and ultimate analysis of biomass and hydrothermally carbonized biomass (hydrochar) used for the prediction of HHV are presented. The multiple linear regression method is used to generate correlations from data on biomass collected from open literature. It was found that the correlation derived from the ultimate analysis (HHV = 0.441 C − 0.043 O) is more accurate than that derived from proximate analysis, since the former has the lowest average absolute error and an average bias error below 1.
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U2 - 10.1007/s10163-022-01463-0
DO - 10.1007/s10163-022-01463-0
M3 - Article
AN - SCOPUS:85135136949
SN - 1438-4957
VL - 24
SP - 2162
EP - 2171
JO - Journal of Material Cycles and Waste Management
JF - Journal of Material Cycles and Waste Management
IS - 6
ER -