Research on Diffluent Network Prediction Model of Ecotourim Scenic Spot Based on the Dynamic Fuzzy Control

نویسندگان

  • Peng Ge
  • Peiyu Ren
  • Maozhu Jin
  • Yanqing Qiu
  • Weimin Zheng
چکیده

The acute contradiction between tourism economic development and ecological environment protection is becoming increasingly serious in many natural scenic spots. It became the focus of both managers of scenic area and scholars that using advanced information technology to track the swath law of tourists and realizing real-time control of the time and space distribution of visitors in scenic area. This paper adopted the idea of fuzzy control, constructed a dynamic fuzzy feedback control forecast model based on the adaptive laws at first, then it proved two kinds of effects existed in this model. Finally, it simulated a single units attraction, and the result of comparative analysis with current state of experience based schedule proved the effectiveness of the system proposed in this paper. This formed the foundation for the real-time scheduling in future study.

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تاریخ انتشار 2013