Title :
Novel pattern recognition-artificial neural networks applied to synthesis design of La3+-doped BaTiO3 nanosize polycrystals
Author :
Guohua, Liu ; Jingbo, Liu ; Hong, Bao ; Wenchao, Li
Author_Institution :
Dept. of Phys. & Chem., Beijing Univ. of Sci. & Technol., China
Abstract :
This paper examines a series of La3+-doped BaTiO3 (LBT) nanosize polycrystalline powders which have been synthesized by sol-gel process. The LBT crystalline size - which is affected by La3+ dopant content, drying temperature of quasi-gel and calicination temperature of dried gel - is the most essential factor that influences the humidity sensitivity and fabrication of the sensing element that composes the LBT polycrystals. The sensor, made of 15~25nm powders, displays consistent humidity sensitivity and feasibility of fabrication. Therefore, the samples are divided into two classes according to the crystalline size. Those with the crystalline size from 15nm to 25nm are considered as ideal, while those with the crystalline size less than 15nm and more than 25nm are inconclusive. In order to obtain parameters assuring preparation of the polycrystals with the crystalline size from 15 to 25nm, a combination of a novel pattern recognition (PR) and artificial neural networks (ANN) has been utilized to design the process parameters
Keywords :
barium compounds; ceramics; humidity sensors; lanthanum; nanostructured materials; neural nets; pattern recognition; powder technology; sol-gel processing; 15 to 25 nm; BaTiO3:La; La3+-doped BaTiO3 nanosize polycrystalline powder; artificial neural network; crystallite size; humidity sensor; pattern recognition; sol-gel method; synthesis design; Artificial neural networks; Crystallization; Displays; Fabrication; Humidity; Network synthesis; Neural networks; Pattern recognition; Powders; Temperature sensors;
Conference_Titel :
Nanotechnology, 2001. IEEE-NANO 2001. Proceedings of the 2001 1st IEEE Conference on
Conference_Location :
Maui, HI
Print_ISBN :
0-7803-7215-8
DOI :
10.1109/NANO.2001.966464