Prediction of Higher Heating Value HHV of Date Palm Biomass Fuel using Artificial Intelligence Method
Autor: | Sabrina Belaid, Ziani Mohamed, Said Midane, Hamid Oudjana Samir, Khadidja Sobhi, Bousdira Khalida |
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Předmět: |
Energy recovery
Moisture business.industry 020209 energy Biomass 02 engineering and technology Proximate Pulp and paper industry Renewable energy Mean absolute percentage error 020401 chemical engineering Multilayer perceptron 0202 electrical engineering electronic engineering information engineering Heat of combustion 0204 chemical engineering business Mathematics |
Zdroj: | Web of Science |
Popis: | Date palm biomass can be considered as an alternative to conventional energy combined with other renewable energy sources in the oasis. Its energy recovery requires a precise knowledge of its energy rate potential represented by its calorific value. Relationships of ultimate and proximate analysis of date palm biomass with higher heating value (HHV) have been investigated through artificial neural networks (ANNs) methods, especially, Multilayer Perceptron (MLP) model. Seven set of inputs including: (a) proximate analysis i.e. volatile matter (VM), ash (A) and moisture (M) and (b) ultimate analysis i.e carbon (C), hydrogen (H), oxygen (O) were identified and used for the prediction of (HHV) by ANNs. The adopted model allowed HHV prediction of phoenicicole biomass with a determination coefficient (R2) of up to 84% and a mean absolute percentage error (MAPE) of 2,61. (MLP) gives a good HHV prediction results for date palm biomass by taking into account hybrid variables (proximate and ultimate) especially carbon and oxygen. These input parameters were omnipresent in all the identified combinations and provided the optimum finding rates in association with volatile matter. |
Databáze: | OpenAIRE |
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