Machine learning in the evaluation and prediction models of biochar application: A review

Sci Prog. 2023 Jan-Mar;106(1):368504221148842. doi: 10.1177/00368504221148842.

Abstract

This article reviews recent studies applying machine learning (ML) approaches to biochar applications. We first briefly introduce the general biochar production process. Various aspects are contained, including the biochar application in the elimination of heavy metals and/or organic compounds and the biochar application in environmental and economic scopes, for instance, food security, energy, and carbon emission. The utilization of ML methods, including ANN, RF, and NN, plays a vital role in evaluating and predicting the efficiency of biochar absorption. It has been proved that ML methods can validly predict the adsorption effectiveness of biochar for water heavy metals with higher accuracy. Moreover, the literature proposed a comprehensive data-driven model to forecast biochar yield and compositions under various biomass input feedstock and different pyrolysis criteria. They said a 12.7% improvement in prediction accuracy compared to the existing literature. However, it might need further optimization in this direction. In summary, this review concludes increasing studies that a well-trained ML method can sufficiently reduce the number of experiment trials and working times associated with higher prediction accuracy. Moreover, further studies on ML applications are needed to optimize the trade-off between biochar yield and its composition.

Keywords: Artificial intelligence; clean development; renewable energy.

Publication types

  • Review

MeSH terms

  • Carbon
  • Charcoal*
  • Machine Learning
  • Metals, Heavy*

Substances

  • biochar
  • Charcoal
  • Carbon
  • Metals, Heavy