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題名: An Expert System Using RBF Neural Network for Estimating Vehicle Speed Based on Length of Skid Mark
作者: Tseng, Wen-Kung;Liao, Shih-Syong
貢獻者: 車輛科技研究所
關鍵詞: ABS;An expert system;Neural network;Radial basis function;Skid mark
日期: 2011
上傳時間: 2013-05-06T04:45:04Z
出版者: IEEE
摘要: This paper presents an expert system to estimate the relationship between the vehicle pre-braking speed and the length of the skid mark. Since the length of the skid mark varies with many factors, there is no a single formula or equation which can represent the relationship between the vehicle pre-braking speed and the length of the skid mark. Therefore in this paper an expert system is built to estimate the relationship between the vehicle pre-braking speed and the length of the skid mark. The radial basis function (RBF) neural network is used for the expert system due to its shorter training time and higher accuracy. There are many factors affecting the skid mark. In this paper we choose 7 factors, i.e. brand of vehicle, vehicle displacement, year of manufacture, vehicle weight, vehicles with and without ABS, roadway surface, and vehicle speed for the training in the RBF neural network. The total number of the training data for the RBF neural network is 2619. The results showed that high accuracy is obtained for estimating the relationship between the vehicle pre-braking speed and the length of the skid mark. Thus the expert system proposed in this paper is demonstrated to be a suitable system for estimating the relationship between the vehicle pre-braking speed and the length of the skid mark.
關聯: Proceedings - 2011 7th International Conference on Natural Computation, ICNC 2011, 2: 631-635
顯示於類別:[車輛科技研究所] 會議論文

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