A Personalized Traffic Accident Risk Prediction and Recommendation Method Based on Deep Learning
A traffic accident and risk prediction technology, applied in the field of deep learning, can solve the problems of weak correlation, difficult to learn the high-dimensional nonlinear relationship of the causative factors of traffic accidents, lack of consideration of the strong correlation of traffic flow, etc., so as to improve the accuracy. Effect
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[0044] see figure 1 and figure 2 , the invention discloses a personalized traffic accident risk prediction and recommendation method based on deep learning, comprising the following steps:
[0045] S1. According to the distribution of urban roads, the city is divided into I×J grid areas (reference image 3 shown).
[0046] S2. According to the historical traffic accident data, calculate the grid coordinates corresponding to each traffic accident and the traffic accident data in each grid area and time period. Step S2 specifically includes:
[0047] S21. Extract the key fields {ID, E, τ, X, Y} in the historical traffic accident data, where ID represents the traffic accident number, E represents the description of the traffic accident, τ represents the alarm time, and X represents the longitude of the location of the traffic accident , Y represents the latitude of the location of the traffic accident.
[0048] S22. Preprocessing the historical traffic accident data to dele...
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