4.7 Article

The use of ELM-WT (extreme learning machine with wavelet transform algorithm) to predict exergetic performance of a DI diesel engine running on diesel/biodiesel blends containing polymer waste

Journal

ENERGY
Volume 94, Issue -, Pages 443-456

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.energy.2015.11.008

Keywords

Biodiesel; DI diesel engine; Exergetic performance parameters; Expanded polystyrene; Cost sensitivity analysis; Extreme learning machine-wavelet (ELM-WT)

Funding

  1. Biofuel Research Team (BRTeam)
  2. University of Tehran
  3. University of Malaya [UM.C/625/1/HIR/MOHE/FCSIT/15]
  4. Ministry of Science, Technology and Innovation (MOSTI), Malaysia

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In this study, a novel method based on Extreme Learning Machine with wavelet transform algorithm (ELM-WT) was designed and adapted to estimate the exergetic performance of a DI diesel engine. The exergetic information was obtained by calculating mass, energy, and exergy balance equations for the experimental trials conducted at various engine speeds and loads as well as different biodiesel and expanded polystyrene contents. Furthermore, estimation capability of the ELM-WT model was compared with that of the ELM, GP (genetic programming) and ANN (artificial neural network) models. The experimental results showed that an improvement in the exergetic performance modelling of the DI diesel engine could be achieved by the ELM-WT approach in comparison with the ELM, GP, and ANN methods. Furthermore, the results showed that the applied algorithm could learn thousands of times faster than the conventional popular learning algorithms. Obviously, the developed ELM-WT model could be used with a high degree of confidence for further work on formulating novel model predictive strategy for investigating exergetic performance of DI diesel engines running on various renewable and non-renewable fuels. (C) 2015 Elsevier Ltd. All rights reserved.

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