Trend prediction method based on double hidden layer quantum circuit recurrent unit neural network
A cyclic unit, neural network technology, applied in the field of neural networks, can solve the problems of network learning and memory instability, difficult to obtain prediction results, slow learning convergence speed, etc.
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[0137] Such as figure 1 As shown, a trend prediction method based on double-hidden layer quantum circuit recurrent unit neural network includes the following steps:
[0138] S1: Collect the original operating data of the monitored object to construct a permutation entropy set;
[0139] S2: Input the permutation entropy set into the double hidden layer quantum circuit recurrent unit neural network for training and prediction, and obtain the predicted permutation entropy set;
[0140] S3: Calculate the error between the actual permutation entropy and the predicted permutation entropy at each time point, and construct a permutation entropy error set;
[0141] S4: After normalizing the permutation entropy error set, input the double hidden layer quantum circuit recurrent unit neural network for training and prediction, and obtain the predicted normalized permutation entropy error set;
[0142] S5: Denormalize the predicted normalized permutation entropy error set to obtain the f...
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