A regional vehicle density estimation method based on a dynamic sampling mechanism and an RBF neural network
A technology of vehicle density and neural network, which is applied in the field of regional vehicle density estimation based on dynamic sampling mechanism and RBF neural network, can solve the problems of not being able to reflect the traffic status in time, increasing computing costs, wasting computing resources of the estimation system, etc.
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[0069] The present invention provides a regional vehicle density estimation method based on a dynamic sampling mechanism and RBF neural network. Firstly, according to the vehicle density sampling information of sampling points in the target area, a vehicle density database is preliminarily constructed, and relevant parameters are initialized; The estimated value of the secondary vehicle density, dynamically adjust the sampling interval, and update the sampling data; use the stored sampling data as the input variable of the RBF neural network, define a set of activation functions and design an estimation model based on the RBF neural network; for the noise in the sampling data Influence, use the Kalman filter algorithm as the learning algorithm of the neural network, update the weight of the RBF neural network while filtering out the sampling noise; then, according to the weight coefficient of each neuron network and the correlation function of the vehicle density in the target a...
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