Feasibility of Artificial Neural Networks and Fuzzy Logic Models for Prediction of NO Concentrations in Nonthermal Plasma-Treated Diesel Exhaust

High-voltage discharge-based nonthermal plasma (NTP) treatment for diesel exhaust is a laboratorial proven efficient technique. A prophecy of the treatment results based on the knowledge of its parameters would be a step forward toward bringing it into real-time applications of pollution control. In...

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Veröffentlicht in:IEEE transactions on plasma science 2019-05, Vol.47 (5), p.2637-2644
Hauptverfasser: Allamsetty, Srikanth, Mohapatro, Sankarsan
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Sprache:eng
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Zusammenfassung:High-voltage discharge-based nonthermal plasma (NTP) treatment for diesel exhaust is a laboratorial proven efficient technique. A prophecy of the treatment results based on the knowledge of its parameters would be a step forward toward bringing it into real-time applications of pollution control. In this paper, artificial neural networks (ANNs) and fuzzy logic model (FLM) have been used to model the NO _{ X } (sum of NO and NO 2 ) concentrations as a function of parameters of the NTP process. A data set of 4032 input-output pairs has been collected by conducting experiments, in which 70% of the data are used for the training of the models derived. The performances of all the considered models have been evaluated by testing them for the remaining 30% of the data, which is novel for the models. Furthermore, a comparison of the models has been made based on the root-mean-square error (RMSE) and mean relative error (MRE), where the FLM has been found to be the better compared to the ANN-based models, i.e., ANN, multilayer perceptrons (MLP), and functional link ANN (FLANN). The RMSE of FLM is 2.53 ppm for a test data of 1210 sets. It can be said from these results that the NO _{ X } concentrations can be predicted using FLM with a good accuracy.
ISSN:0093-3813
1939-9375
DOI:10.1109/TPS.2019.2907313