What is it about?
This study explores the use of a neural network model to optimize the production of biochar and syngas from biomass wastes through pyrolysis. The study investigates the effects of various operating parameters on the yield of biochar and syngas, and identifies the optimal neural network architecture for predicting these yields. The findings of this study have potential applications in various industries, including agriculture, energy, and waste management.
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Why is it important?
This work is unique in its application of a Bayesian optimized multilayer perceptron neural network to model the production of biochar and syngas from biomass wastes through pyrolysis. The study investigates the effects of various operating parameters on the yield of biochar and syngas, and identifies the optimal neural network architecture for predicting these yields. The findings of this study have potential applications in various industries, including agriculture, energy, and waste management. This work is timely as it addresses the growing need for sustainable and cost-effective methods of waste management and energy production. The findings of this study can help inform the development of more efficient and sustainable methods of biochar and syngas production, which can have significant environmental and economic benefits.
Read the Original
This page is a summary of: Bayesian optimized multilayer perceptron neural network modelling of biochar and syngas production from pyrolysis of biomass-derived wastes, Fuel, October 2023, Elsevier,
DOI: 10.1016/j.fuel.2023.128832.
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