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Neural Networks for Location Prediction in Mobile Networks in AES Techniques

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Figure

Fig. 2. SubBytes acts on every byte in theSubBytes acts on every byte in the state
Fig. 3: Proposed beam former ShiftRows() cyclically shifts the lastFig. 3: Proposed beam former ShiftRows() cyclically shifts the last threerows in the State
Fig. 6: Reconfigurable FPGA structure
Fig. 8: Global architecture for self-reconfigurable system
+3

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