Title :
Automotive recall probability forecast based on T-S fuzzy neural network evaluation model
Author :
Lian Lanxiang ; Yao Danya ; Huang Ling
Author_Institution :
Acad. of Autom., Tsinghua Univ., Beijing, China
Abstract :
The recalls of defective automotive are one of the effective ways of removing automotive defects and improving the safety of transportation. Using the American NHTSA large data which include complaints data, defects data and recall data, there will be analyzed the amount of complaints and the attributions of defects by severity are influenced factors of recall. Next the recall will be forecast by the information of complaints, crash, fire, injured and fatality. It will be opened by the quantitative forecast for recall of automotive, and it is a potent means for the government´s decision of car recalls.
Keywords :
automobiles; data analysis; fuzzy neural nets; probability; road safety; American NHTSA large data; T-S fuzzy neural network evaluation model; automotive defects; automotive recall probability forecast; complaints data analysis; defects data analysis; government decision; recall data analysis; transportation safety; Accidents; Automobiles; Automotive engineering; Fires; Fuzzy neural networks; Predictive models; ANN; Automotive recall; Evaluation; T-S model; forecast;
Conference_Titel :
Control Conference (CCC), 2013 32nd Chinese
Conference_Location :
Xi´an