Integrating Taguchi method and artificial neural network for predicting and maximizing biofuel production via torrefaction and pyrolysis
Autor: | Yashvir Singh, Arivalagan Pugazhendh, Wei Hsin Chen, Fan Chiang Yang, Ria Aniza |
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Rok vydání: | 2021 |
Předmět: |
Environmental Engineering
Artificial neural network Renewable Energy Sustainability and the Environment business.industry Bioengineering General Medicine Torrefaction Taguchi methods Biofuel Artificial Intelligence Yield (chemistry) Biofuels Linear regression Biochar Humans Neural Networks Computer Process engineering business Microwaves Waste Management and Disposal Pyrolysis Mathematics |
Zdroj: | Bioresource technology. 343 |
ISSN: | 1873-2976 |
Popis: | Artificial neural network (ANN) is one kind of artificial intelligence in the computing system that aims to process information as the way neurons in the human brain. In this study, the combination of the Taguchi method and ANN are used to maximize and predict biofuel yield from spent mushroom substrate torrefaction and pyrolysis via microwave irradiation. The Taguchi method is utilized to design the multiple factors (particle size, catalyst, power, and magnetic agent) and levels of experiment parameters. The highest total biofuel yield (biochar + bio-oil) is 99.42%, accomplished by a combination of 355 µm particle size, 300 mg·g-SMS-1 catalyst, 900 W power, and 300 mg·g-SMS-1 magnetic agent. ANN with one hidden layer shows the outstanding linear regression predictions for the highest biofuel yields (biochar 0.9999 and bio-oil 0.9998). This high linear regression indicates that ANN with a quick propagation algorithm is an appropriate approach for predicting biofuel conversion. |
Databáze: | OpenAIRE |
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