Abstract

Currently, long-distance freight transport is shifting towards multimodal transport, the combination of multiple freight transport modes. Multimodal transport enables enterprises with the same logistics function to operate on the same level of the supply chain. Through horizontal cooperation, these enterprises can give play to their advantages, make up their deficiencies, improve service levels, reduce cost input, and thereby enhance market status. Therefore, multimodal transport is an intensive development model that promotes the alliance between giants. The reasonable path design and planning (PDP) and investment and construction mode (ICM) of the multimodal transport network help freight demanders, as well as multimodal freight transport platforms, obtain the maximum profit. Therefore, this paper explores the PDP and ICM of the multimodal transport network based on big data analysis. Firstly, the influencing factors and behavioral features of multimodal transport were deeply examined, drawing on the logit model and the big data on multiple freight services, namely, railway transport, highway transport, waterway transport, and airway transport. After classifying the freights, the authors analyzed the modeling and decision-making of path design and optimization (PDO) for multimodal transport network. The proposed model was proved effective through experiments. This paper theoretically explores the goals, principles, and needs of path selection in the modern transportation industry. In a realistic sense, the research findings help decision-makers optimize their decisions on the multimodal transport network and operate the network at the minimum transport cost.

Highlights

  • Introduction e rapid development of theChinese economy is mirrored by the burgeoning freight transport and logistics

  • Multimodal transport enables enterprises with the same logistics function to operate on the same level of the supply chain. Rough horizontal cooperation, these enterprises can give play to their advantages, make up their deficiencies, improve service levels, reduce cost input, and thereby enhance market status. erefore, multimodal transport is an intensive development model that promotes the alliance between giants. e reasonable path design and planning (PDP) and investment and construction mode (ICM) of the multimodal transport network help freight demanders, as well as multimodal freight transport platforms, obtain the maximum profit. erefore, this paper explores the PDP and ICM of the multimodal transport network based on big data analysis

  • As an important means of improving logistics efficiency, the reasonable path design and planning (PDP) and investment and construction mode (ICM) of multimodal transport networks, which rely on the integration of valuable big data on freight services, can reduce the economic and time costs of freight transport to the maximum degree, and help freight demanders, as well as multimodal freight transport platforms, obtain the maximal profit

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Summary

Introduction

Introduction e rapid development of theChinese economy is mirrored by the burgeoning freight transport and logistics. Long-distance freight transport is shifting towards multimodal transport, the combination of multiple freight transport modes [9–13]. Multimodal transport can effectively enhance transport efficiency, reduce freight losses, lower transport costs, and ease traffic congestion [14–24]. As an important means of improving logistics efficiency, the reasonable path design and planning (PDP) and investment and construction mode (ICM) of multimodal transport networks, which rely on the integration of valuable big data on freight services, can reduce the economic and time costs of freight transport to the maximum degree, and help freight demanders, as well as multimodal freight transport platforms, obtain the maximal profit. Zhao et al [20] improved the pulse coupling neural network for real-time collision-free path planning of multimodal transport in static and dynamic environments. Lammel et al [25] discussed the application of hybrid simulation in large-scale multimodal transport and the evacuation by Discrete Dynamics in Nature and Society multimodal transport and evaluated the feasibility of using multimodal transport to evacuate some areas in Hamburg, Germany, which are hit by a storm tide

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