Retrieval of aerosol size distribution using improved quantum-behaved particle swarm optimization on spectral extinction measurements_中国颗粒学会

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Partic. vol. 28 pp. 6-14 (October 2016)
doi: 10.1016/j.partic.2014.12.016

Retrieval of aerosol size distribution using improved quantum-behaved particle swarm optimization on spectral extinction measurements

Zhenzong He, Hong Qi*, Qin Chen, Liming Ruan

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qihong@hit.edu.cn

Highlights

    • Improved quantum-behaved particle swarm optimization (IQPSO) method was employed to determine ASD. • Size distributions of various aerosol types were estimated under dependent and independent models. • Four wavelengths and 50 particles were recommended to be optimization parameters for IQPSO. • The IQPSO showed higher convergence speed and accuracy than other PSO methods.

Abstract

An improved quantum-behaved particle swarm optimization (IQPSO) algorithm is employed to determine aerosol size distribution (ASD). The direct problem is solved using the anomalous diffraction approximation and Lambert–Beer's Law. Compared with the standard particle swarm optimization algorithm, the stochastic particle size optimization algorithm and the original QPSO, our IQPSO has faster convergence speed and higher accuracy within a smaller number of generations. Optimization parameters for the IQPSO were also evaluated; we recommend using four measurement wavelengths and 50 particles. Size distributions of various aerosol types were estimated using the IQPSO under dependent and independent models. Finally, experimental ASDs at different locations in Harbin were recovered using the IQPSO. All our results confirm that the IQPSO algorithm is an effective and reliable technique for estimating ASD.

Graphical abstract

Keywords

Quantum-behaved particle swarm optimization; Aerosol; Aerosol size distribution; Inverse problem