Effective approach to assess higher heating value of biomass from ultimate and proximate analysis

Author:

Ghiasi Mohammad M.1,Mohammadzadeh Omid1,Zendehboudi Sohrab1ORCID,Fgaier Hedia2

Affiliation:

1. Faculty of Engineering and Applied Science, Memorial University St. John's Newfoundland and Labrador Canada

2. Department of Mathematics and Information Science, Full Sail University Winter Park Florida USA

Abstract

AbstractFor proper design and operation of biomass‐based energy systems, it is important to determine the higher heating value (HHV) of biomass. In this paper, two machine learning (ML) approaches, namely extra trees (ET) and least squares support vector machine (LSSVM), are used to predict the value of HHV associated with biofuels. The data required for HHV calculation, including proximate and ultimate analyses datasets, were collected from the literature. The performances of these two ML approaches for predicting biomass HHV were then compared with other smart models available in the literature. Even though the available empirical models can predict the biomass HHV with acceptable precision, it was found that our proposed ML techniques have a superior performance based on the error analysis; the proposed approaches also consider all key biomass characteristics in the developed models. In addition, the ET model proved to be slightly more accurate compared to the LSSVM model. Additionally, the developed proximate‐based ET model showed better performance compared to the ultimate‐based ET model. The most influential parameters in the developed ET models for the proximate and ultimate approaches were determined to be ash fraction and carbon fraction, respectively. Finally, it was concluded that the smart modelling techniques can be utilized as a robust and reliable alternative predictive methodology to replace direct laboratory measurement of the biomass HHV.

Publisher

Wiley

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