TY - JOUR AU - Rego, Artur AU - Leite, Sibele AU - Leite, Brenno AU - Grillo, Alexandre V. AU - Santos, Brunno F. PY - 2019/05/31 Y2 - 2024/03/29 TI - Artificial Neural Network Modelling for Biogas Production in Biodigesters JF - Chemical Engineering Transactions VL - 74 SP - 25-30 SE - Research Articles DO - 10.3303/CET1974005 UR - https://www.cetjournal.it/index.php/cet/article/view/CET1974005 AB - The use of the biodigestion is considered promising for the energetic valorization of agriculture biomass such as swine farm sewage and lignocelulosic residues. The understanding of biodigesters operation and the control of their main operational variables are of great importance to improve the performance of anaerobic digestion process in order to increase biogas production. In this context, mathematical modelling can be used as a tool to increase process efficiency. This work presents the development of Artificial Neural Network (ANN) and Adaptive Neuro Fuzzy Inference System (ANFIS) to predict volume of biogas. The variables from process were temperature (ºC), pH, FOS/TAC ratio and type of biodigesters. A database was constructed with the information of the experiments, dividing them into groups of training (67 %) and test (33 %). The models were obtained using MATLAB R2018b toolbox. In the developed neural models, the data obtained from process were used as neurons in the input layer and the volume of biogas was used as the only neuron in the output layer. The performance of the neural models was evaluated by determination coefficient (R²) and error index (RMSE). The model developed from ANN and ANFIS modelling were satisfactory, showing the R² value giving the system’s complexity. In addition, the RMSE values of both models were close to each other, showing agreement of the methods used. ER -