Application and Semi-physical Verification of Artificial Neural Network in RFID Multi-tag Distribution Optimization

Physical anti-collision technology is proposed for the optimization of RFID multi-tag system, however, the learning and self-adaptation ability of the system are the key to the application of physical anti-collision Technology.

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