Method and system for realizing water level prediction based on GRU network
A network implementation, water level technology, applied in prediction, neural learning method, biological neural network model, etc., can solve problems such as poor adaptability
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Embodiment 1
[0041] This embodiment provides a system for realizing water level prediction based on the GRU network, such as figure 1 As shown, comprising: a building block 11, a training module 12, a verification module 13;
[0042] The building block 11 is used to build a GRU-based GRU network model;
[0043] Described training module 12 is used for collecting water level and rainfall information, and the feature vector input corresponding to water level and rainfall information in the GRU network realizes the training of GRU network model;
[0044] The verification module 13 is configured to input test data into the trained GRU network model, and predict the height of the water level through the trained GRU network model.
[0045] In building block 11, build a GRU-based GRU network model.
[0046] In this embodiment, the GRU module of TensorFlow is used as a framework to form a GRU network model.
[0047] Among them, TensorFlow is a symbolic mathematical system based on dataflow prog...
Embodiment 2
[0077] This embodiment provides a method for realizing water level prediction based on the GRU network, including steps:
[0078] S1. Constructing a GRU network model based on GRU;
[0079] S2. Collect water level and rainfall information, and input the feature vector corresponding to water level and rainfall information into the GRU network to realize the training of the GRU network model;
[0080] S3. Input the test data into the trained GRU network model, and predict the height of the water level through the trained GRU network model.
[0081] Further, the step S2 includes:
[0082] S21. Collect water level and rainfall information, and perform characteristic statistics on the collected water level and rainfall information;
[0083] S22. Converting the statistical features of the water level and rainfall information into feature vectors;
[0084] S23. Using the feature vector as the input vector of the GRU network, the GRU network outputs the height of the predicted wate...
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