Elevator Traffic Flow Model Based On Dynamic Passenger Distribution

Elevator traffic flow is fundamental in elevator group control systems. Accurate elevator traffic flow model is crucial to the elevator system configuration and the dispatching of elevator group control systems, especially to the elevator system configuration in yet-to-be-commissioned new building. Based on dynamic passenger distribution of building, importing the overloading modulus of the passenger distribution capability of building, a new elevator traffic flow model is found and has a new form of origin vector and origin-destination matrix. The traffic flow data which based on the new traffic flow model shows that the new model is practical and useful. Simulation test also shows that the elevator traffic flow based on new model is more reasonable than the traditional elevator traffic flow model.

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