An Intelligent Malfunction Detection System for Ammunition Loading and Feeding Systems of Ammunition Carrier

Article Preview

Abstract:

According to the malfunction detection difficulties of the ammunition loading and feeding systems of ammunition carrier in transport, an intelligent malfunction detection system for the ammunition loading and feeding systems of ammunition carrier is designed, so that the automatic and efficient detection on the malfunction of the ammunition loading and feeding systems of ammunition carrier is realized. In this paper, using fuzzy expert system as the basic method of solving fuzzy problems, the overall structure design and hardware design are expounded, and the system is divided into analog signal input module, modulus conversion module, and digital signal input/output module according to the characteristics of input and output signals, and also the design on the software core (fuzzy expert system) of the system is specifically introduced. The results show that the intelligent malfunction detection system for the ammunition loading and feeding systems of ammunition carrier not only can effectively detect the malfunction of the ammunition loading and feeding systems of ammunition carrier, but also can provide an effective method for the precise malfunction diagnosis of the ammunition loading and feeding systems of ammunition carrier, and therefore it owns a wide military application prospect.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

349-353

Citation:

Online since:

June 2013

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Bo Wu, Yuxiang Ma. Expert System . Beijing: Beijing Institute of Technology Press, 2001.

Google Scholar

[2] Xingyan Niu, Songhua Shen, Shiliang Dong. Fuzzy Fault Diagnosis Expert System in Aircraft Power System . Electronic Measurement Technology, 2007, (12): 59-62.

Google Scholar

[3] Yang Q S.Model-based and Data Driven Fault Diagnosis Methods with Applications to Process Monitoring .Case Western Reserve University (Ph.D), 2004.

Google Scholar

[4] Jikai Yi, Yuanbin Hou. Intelligent Control Technology . Beijing: Beijing Industrial University Press, 1999.

Google Scholar

[5] Liping Peng, Zaiwen Liu. Elevator Remote Monitor and Fault Diagnosis Expert System . Journal of Beijing Institute of Light Industry, 1999, 17(1): 59-64.

Google Scholar

[6] Rongwen Sun, Xiqing Zhang. Knowledge Base and Reasoning Machine of Expert System . Metallurgy Medical Information, 1990, 7(4).

Google Scholar

[7] Hongjun Suo. An Inference Engine Designing and Analysis of Fault Diagnosis Expert System . Value Engineering, 2011, 30 (1).

Google Scholar

[8] Meng Cui. The Core Design of the Reasoning Machine of Expert System . China High Technology Enterprises, 2008, (22).

Google Scholar