Travel time prediction method for optimizing LSTM neural network through particle swarm optimization algorithm
A particle swarm algorithm and neural network technology, applied in the field of particle swarm optimization optimization of travel time prediction of LSTM neural network, can solve problems such as large consumption of computing resources, inability to find the optimal parameter combination of LSTM neural network, poor prediction performance, etc. Achieving good prediction performance, reducing the amount of calculation, and reducing the root mean square error
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[0053] The present invention will be further described below in conjunction with examples, and the described embodiments are intended to facilitate the understanding of the present invention, but have no limiting effect on it.
[0054] Such as figure 1 As shown, a particle swarm algorithm optimizes the travel time prediction method of the LSTM neural network, including the following steps:
[0055] Step S1: Travel time data collection, and data normalization preprocessing, divided into training data set and test data set;
[0056] The travel time data comes from vehicle information collected by expressway tollbooths, and the time difference between entering and leaving the tollbooth is obtained. The time interval can be formulated according to actual forecast requirements. The present invention uses sample data at two intervals of 30 minutes and 60 minutes. Read and obtain the original travel time data, and use the min-max normalization method to normalize the data:
[0057]...
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