Traffic accident prediction method based on space-time diagram convolutional network
A traffic accident, convolutional network technology, applied in instrumentation, design optimization/simulation, electrical digital data processing, etc., can solve problems such as work, inability to describe spatial dependencies, and achieve the effect of improving prediction performance
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[0044] Example: figure 1 As shown, a traffic accident prediction method based on a time-space graph convolutionary network is specifically:
[0045] Step 1. Get the original traffic data, based on different cities, the original data is classified, and the adjacent matrix and characteristic matrix are constructed by the traffic road network in different regions of each city.
[0046] Step 2, construct a traffic accident prediction model based on the time and space map convolution network, which combines the map volume network and the long short memory network, by using the map volume network for learning complex road topology, to obtain traffic The spatial correlation in the state is then used to learn the dynamic changes of traffic accident data to obtain time-dependent in the traffic state, and finally combine two networks to construct predictive models, based on this to traffic accidents predict.
[0047] In a traffic accident prediction model based on a time-space graph convolu...
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