4.7 Article

Production of bio-oil from lychee-based biomass through pyrolysis and maximization of bio-oil yield with statistical and machine learning techniques

期刊

JOURNAL OF CLEANER PRODUCTION
卷 413, 期 -, 页码 -

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.jclepro.2023.137472

关键词

Bio-oil yield; Lychee; Artificial neural network; Generalized neural network; Response surface methodology

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The goal of this study is to maximize the yield of pyrolysis oil using lychee-based biomass for a quick pyrolysis process. Response surface methodology and artificial neural network with generalized neural network technique were used to optimize the bio-oil yield. A new prediction model combining the benefits of an auto-adaptive management technique with the rapid reaction of a generalized neural network was proposed. The results showed that the generalized neural network model provided superior accuracy in predicting bio-oil yield.
This study's goal is to maximize the yield of pyrolysis oil utilizing lychee-based biomass for a quick pyrolysis process. Response surface methodology (RSM) and artificial neural network with generalized neural network (GNN) technique were used to optimize the maximum bio-oil yield while considering temperature, heating rate, retention time, and argon gas flow rate as independent variables and bio-oil production as the response. Typical neural networks have constraints such as a long training time, a large number of neurons, and a large number of hidden layers. A generalized neural network (GNN) has been constructed to address these limitations and build a non-linear controller for acquiring access to bio-oil production output. To anticipate bio-oil yield, a new prediction model is proposed that combines the benefits of an auto-adaptive management technique with the rapid reaction of a GNN. Three measures (MSE, RMSE, and R2) are explored in depth to assess the performance efficacy of the models. Based on the finding, 350 degrees C temperature, 125 min of retention time, 120 degrees C/min heating rate and 110 mL/min argon flow rate was used to produce the highest bio-oil production (38.43%). Based on techniques, both models used in the study produce equally acceptable outcomes for projecting bio-oil yield. The greatest R2 value for the bio-oil yield ranges from 0.94 to 0.99, and all outcomes are classified as good regarding RMSE (all RMSE values are close to one). When all indicators are combined, GNN provides superior accuracy in predicting bio-oil yield in this investigation, followed by ANN.

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