Publication: Prediction of activation energy for combustion and pyrolysis by means of machine learning
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© 2022 Elsevier LtdThermogravimetric analysis (TGA) is a widely used technique to determine the activation energy (Ea), which is an important parameter for thermochemical processes. Thus, researchers have recently developed computational methods to minimize the experimental effort. While there are some studies on estimating kinetic parameters such as Ea using artificial neural networks (ANN), these are insufficient for generalization because they involve only one or two operational parameters. Therefore, in this study, Ea estimation was performed by creating a realistic ANN model as a machine learning approach, including operating parameters that were not previously considered. TGA experiments were performed with biomass, coal, and blends under different operating conditions for the training and test data sets of the model. In order for the ANN to give a satisfactory result, the experimental results were enriched with the data from the literature. The dataset was analyzed using statistical tools like correlation map, feature importance etc. Then a feedforward neural network was developed using Levenberg-Marquardt optimization algorithm. As a result, by using an appropriate number of input variables and a sufficient amount of data, it was possible to conduct a reliable TGA simulation to calculate the Ea values, with R2 values greater than 0.96 and mean absolute percentage error values<20%. Furthermore, the results of the statistical analysis applied to the input parameters of the ANN model were found to be consistent with the scientific background. The initial and final temperatures of decomposition are the most significant parameters for the determination of Ea.
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Kimya Mühendisliği ve Teknolojisi, Mühendislik ve Teknoloji, Chemical Engineering and Technology, Engineering and Technology, Mühendislik, Bilişim ve Teknoloji (ENG), Mühendislik, MÜHENDİSLİK, KİMYASAL, Engineering, Computing & Technology (ENG), ENGINEERING, ENGINEERING, CHEMICAL, Kimyasal Sağlık ve Güvenlik, Akışkan Akışı ve Transfer İşlemleri, Kimya Mühendisliği (çeşitli), Genel Kimya Mühendisliği, Kolloid ve Yüzey Kimyası, Kataliz, Fizik Bilimleri, Chemical Health and Safety, Fluid Flow and Transfer Processes, Chemical Engineering (miscellaneous), General Chemical Engineering, Colloid and Surface Chemistry, Catalysis, Physical Sciences, Machine learning, ANN, Activation energy, Fuel properties, Pyrolysis, Combustion, ARTIFICIAL NEURAL-NETWORK, KINETIC-PARAMETERS, SEWAGE-SLUDGE, THERMAL-BEHAVIOR, BIOMASS, COCOMBUSTION, WASTES, GASIFICATION, TORREFACTION, EMISSIONS, Machine learning, ANN, Activation energy, Fuel properties, Pyrolysis, Combustion
Citation
Kartal F., Özveren U., "Prediction of activation energy for combustion and pyrolysis by means of machine learning", Thermal Science and Engineering Progress, cilt.33, 2022
