Citation: | GAO Puyang, ZHAO Zitong, YANG Yang. Study on Numerical Solutions to Hyperbolic Partial Differential Equations Based on the Convolutional Neural Network Model[J]. Applied Mathematics and Mechanics, 2021, 42(9): 932-947. doi: 10.21656/1000-0887.420050 |
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