| Literature DB >> 28040905 |
Tingwei Gu1, Deren Kong1, Jian Jiang1, Fei Shang1, Jing Chen1.
Abstract
This paper applies back propagation neural network (BPNN) optimized by genetic algorithm (GA) for the prediction of pressure generated by a drop-weight device and the quasi-static calibration of piezoelectric high-pressure sensors for the measurement of propellant powder gas pressure. The method can effectively overcome the slow convergence and local minimum problems of BPNN. Based on test data of quasi-static comparison calibration method, a mathematical model between each parameter of drop-weight device and peak pressure and pulse width was established, through which the practical quasi-static calibration without continuously using expensive reference sensors could be realized. Compared with multiple linear regression method, the GA-BPNN model has higher prediction accuracy and stability. The percentages of prediction error of peak pressure and pulse width are less than 0.7% and 0.3%, respectively.Year: 2016 PMID: 28040905 DOI: 10.1063/1.4972826
Source DB: PubMed Journal: Rev Sci Instrum ISSN: 0034-6748 Impact factor: 1.523