Gases concentration estimation using heuristics and bio-inspired optimization models for experimental chemical electronic nose

@article{Zhang2011GasesCE,
  title={Gases concentration estimation using heuristics and bio-inspired optimization models for experimental chemical electronic nose},
  author={Lei Zhang and Fengchun Tian and Chaibou Kadri and Guangshu Pei and Hongjuan Li and Lina Pan},
  journal={Sensors and Actuators B-chemical},
  year={2011},
  volume={160},
  pages={760-770}
}

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