Abstract

Timely and efficient analysis of big data collected from various gateways installed in a smart city is an intractable problem and requires immediate priority. Given the stochastic and massive nature of big data, the existing literature often relies on artificial intelligence techniques based on information theory. As a new approach, this paper presents a knowledge extraction method based on an analysis of Seoul Metro's 'untraceable' ridership big data. Without identification information, the untraceable ridership data only shows the hourly accumulation of station entry and exit information. To reconstruct the missing information in the data set, this study proposes a fluid dynamics model and adopts a heuristic genetic algorithm based on optimization theory as the problem solver. The result of our model presents the distribution of the elapsed time defined on an hourly basis taken until a passenger returns to the station they departed from. To validate our model, we acquired subway ridership data with passengers' identification with permission from Seoul Metro. This paper presents two novel aspects of subway ridership, namely the dependency on departure time and the discrepancy between weekend and weekday traffic. Our analytical approach contributes to solving the problem of extracting hidden knowledge from big collection of data missing critical information, e.g., constantly and autonomously gathered data fragments from numerous gateways in smart cities.

Highlights

  • A subway system is one of the most important infrastructures of a smart city and subway operations generate big data continuously and massively from the numerous sensor-equipped gateways

  • The harmony search algorithm is adopted to generate and find the best fitting to satisfy the optimization problem formulated in Eq

  • DISCUSSIONS AND CONCLUSION Efficient and effective subway systems play a crucial role in the development of smart cities, as they are expected to constitute the major transportation systems of mega cities

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Summary

Introduction

A subway system is one of the most important infrastructures of a smart city and subway operations generate big data continuously and massively from the numerous sensor-equipped gateways. Most of the existing research regarding subways has focused on analyzing the number of passengers using a particular subway station or subway line. Through this type of analysis, policy data on the facilities and staffing of subway stations or subway lines can be derived. The ultimate goal of smart city implementation is to improve the quality of life of the citizens living in such cities [3]. To this end, as Lytas et al insist, big data analysis requires a different perspective [4]

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