Modeling the prediction of hydrogen production by co-gasification of plastic and rubber wastes using machine learning algorithms
Chemical activation; Gasification; Learning algorithms; Machine learning; Multilayer neural networks; Neurons; Plastics industry; Predictive analytics; Rubber; Rubber industry; Activation functions; MLP neural networks; Model architecture; Multi layer perceptron; Neural network algorithm; Optimized...
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Main Authors: | Ayodele B.V., Mustapa S.I., Kanthasamy R., Zwawi M., Cheng C.K. |
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Other Authors: | 56862160400 |
Format: | Article |
Published: |
John Wiley and Sons Ltd
2023
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