Abstract

Predicting real-time spatial information from data collected by the mobile Internet of Things (IoT) devices is one solution to the social problems related to road traffic. The mobile IoT devices for real-time spatial information prediction generate an extremely high volume of data, making it impossible to collect all of it through mobile networks. Although some previous works have reduced the volume of transmitted data, the prediction accuracy of real-time spatial information is still not ensured. Therefore, this paper proposes an IoT device control system that reduces the amount of transmitted data used as input for real-time prediction while maintaining the prediction accuracy. The main contribution of this paper is that the proposed system controls data transmission from the mobile IoT devices based on the importance of data extracted from the machine learning model used for the prediction. Feature selection has been widely used for extracting the importance of data from the machine learning model. Feature selection methods were also used to reduce communication overhead in distributed learning. Unlike the conventional usage of feature selection methods, the proposed system uses them to control the data transmission of the mobile IoT devices with priority. In this paper, the proposed system is evaluated with a real-world vehicle mobility dataset in two practical scenarios using the random forest model, which is an extensively used machine learning model. The evaluation results show that the proposed system reduces the amount of transmitted input data for real-time prediction while achieving the same level of prediction accuracy as benchmark methods.

Highlights

  • The increasing impact of social problems related to road traffic is a major concern facing our future society

  • The importance of data extracted from the machine learning model using feature selection is a metric of how much the collected data by mobile sensors will contribute to the prediction accuracy of real-time spatial information

  • WORK To reduce the volume of transmitted data used as input for real-time spatial information prediction while maintaining the prediction accuracy, this paper proposed an Internet of Things (IoT) device control system that uses the importance of data extracted from the machine learning model used for prediction

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Summary

INTRODUCTION

The increasing impact of social problems related to road traffic is a major concern facing our future society. Predicting real-time spatial information from data collected by mobile Internet of Things (IoT) sensors is one solution to solve the social problems related to road traffic [3]. The data collected by mobile IoT devices are uploaded to edge servers, which process the uploaded data and apply machine learning techniques to predict real-time spatial information such as road-traffic volume, optimal travel path, and precise positions. These evaluations use a Random Forest regressor [14] as the machine learning model for prediction and the impurity method [15] and perturb method [16] as feature selection methods The results of these evaluations show that the proposed system reduces the volume of input data transmission for real-time prediction compared with benchmark methods while achieving the same prediction accuracy.

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