Optimal Design Method of Filter Based on Deep Learning Algorithm
An optimization design and deep learning technology, applied in the field of filters, can solve the problem of time-consuming, achieve the effect of fast and accurate design, avoid the frequency offset of the filter curve, and quickly iterate
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[0034] like figure 1Shown is the selected three-section microstrip parallel coupling filter, 1 is a parallel printed metal microstrip line, 2 and 3 are input or output taps, 4 is a dielectric board, and the material is Rogers RT5880. The four key structural parameters of the filter are L1, L2, g and t. Set a suitable range of structural parameters, within this range use electromagnetic simulation software to generate 1000 S11 curves, the frequency range of the S11 curve is 2.5GHz to 3.5GHz, and each curve has 251 data points within this frequency range. Make these 1000 samples into a data set, 900 as a training set, and 100 as a test set, respectively training such as image 3 The inverse neural network shown and as Figure 4 For the forward neural network shown, the loss function is the MSE mean square error function. A good result is obtained after training the reverse neural network for 500 epochs, and a good result is obtained after training the forward neural network fo...
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