DocumentCode
723827
Title
PM2.5 measuring method using RBF neural network combined with PSO algorithm
Author
Xu Lin ; Guan Tian-yi ; Li Yan-nong ; Zheng Wen-jing ; Guo Jing-yi
Author_Institution
Coll. of Inf. Sci. & Eng., Northeastern Univ., Shenyang, China
fYear
2015
fDate
23-25 May 2015
Firstpage
5616
Lastpage
5619
Abstract
Considering the disadvantage of PM2.5 detection devices, there are many problems such as the low automation, poor test repeatability, and dielectric material loss etc. This paper presents a new PM2.5 detection system using laser diffraction technique based Fraunhofer diffraction theory. The Radial Basis Function (RBF) neural network with the inputs of multiple laser diffraction signals is used to be the micro particles calculating model to improve the detecting precision. To tackle the problems in the training algorithms, the Particle Swarm Optimization (PSO) algorithm is employed to optimize the key parameters of the RBF neural network (RBFNN). The simulation and experiment results show that the new PM2.5 detection system satisfies the detection requirements with the high calculating precision, and effectively overcomes the problems in the conventional detection system.
Keywords
air pollution; environmental science computing; particle swarm optimisation; radial basis function networks; signal detection; Fraunhofer diffraction theory; PM2.5 detection system; PM2.5 measuring method; PSO algorithm; RBF neural network; laser diffraction signals; laser diffraction technique; particle swarm optimization; particulate matter; radial basis function method; Algorithm design and analysis; Atmospheric modeling; Clustering algorithms; Diffraction; Measurement by laser beam; Neural networks; Particle swarm optimization; Laser diffraction; PM2.5 detection; PSO algorithm; RBF neural network;
fLanguage
English
Publisher
ieee
Conference_Titel
Control and Decision Conference (CCDC), 2015 27th Chinese
Conference_Location
Qingdao
Print_ISBN
978-1-4799-7016-2
Type
conf
DOI
10.1109/CCDC.2015.7161801
Filename
7161801
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