Hybrid Artificial Intelligence Optimization Technique

RFID technology as a gadget of IoT has been utilized in modern manufacturing to enable manufacturers to track and identify objects or parts to get the required data. Fulfillment of this purpose needs to equip objects with RFID tags and utilizes RFID antennas in certain places to enable readers to collect data of the objects. Some criteria such as the collision of these antennas, the coverage of network, and transmitted power in the network are calculated through a mathematical model. Calculating these criteria and calculating the number of required antennas for RFID network lead to concept of RFID Network Planning (RNP) and in the higher level concept of optimizing RNP.

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