TY - JOUR PY - 2020// TI - Traffic accident prediction based on LSTM-GBRT model JO - Journal of control science and engineering (Cairo) A1 - Zhang, Zhihao A1 - Yang, Wenzhong A1 - Wushour, Silamu SP - e4206919 EP - e4206919 VL - 2020 IS - N2 - Road traffic accidents are a concrete manifestation of road traffic safety levels. The current traffic accident prediction has a problem of low accuracy. In order to provide traffic management departments with more accurate forecast data, it can be applied in the traffic management system to help make scientific decisions. This paper establishes a traffic accident prediction model based on LSTM-GBRT (long short-term memory, gradient boosted regression trees) and predicts traffic accident safety level indicators by training traffic accident-related data. Compared with various regression models and neural network models, the experimental results show that the LSTM-GBRT model has a good fitting effect and robustness. The LSTM-GBRT model can accurately predict the safety level of traffic accidents, so that the traffic management department can better grasp the situation of traffic safety levels.

Language: en

LA - en SN - 1687-5249 UR - http://dx.doi.org/10.1155/2020/4206919 ID - ref1 ER -