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Research on Multi-service Demand Path Planning Based on Continuous Hopfield Neural Network

机译:基于连续Hopfield神经网络的多服务需求路径规划研究

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In this paper, we focus on multi-vehicle and multiple types of dynamic vehicle routing problems. The introduction of dynamic traveling salesman problem (TSP) is to consider user's needs in many aspects. This paper uses the Hopfield neural network for solving the vehicle routing problem of "advanced request" to shorten the delivery path length and reduce the logistics cost. For "immediate request," we build the analytic hierarchy process model to analyze the final delivery order under a number of factors; use multi-type corresponds to multi-vehicles mixed queuing system model to obtain service indicators of the system, so as to improve the system efficiency compared with the single-delivery vehicle system. The combination of AHP and the Hopfield neural network algorithm is superior to the application of BP neural network classification and the Hopfield neural network.
机译:在本文中,我们专注于多车辆和多种类型的动态车辆路径问题。 动态旅行推销员问题(TSP)的引入是考虑用户在许多方面的需求。 本文采用了Hopfield神经网络来解决“高级请求”的车辆路由问题,以缩短交付路径长度并降低物流成本。 对于“立即请求”,我们构建了分析层次流程模型,以分析了许多因素下的最终交付订单; 使用多型对应于多车辆混合排队系统模型,以获得系统的服务指示器,以便与单输送车辆系统相比提高系统效率。 AHP和Hopfield神经网络算法的组合优于BP神经网络分类和Hopfield神经网络的应用。

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