Abstract

Internet of Things will play a vital role in the public transport systems to achieve the concepts of smart cities, urban brains, etc., by mining continuously generated data from sensors deployed in public transportation. In this sense, smart cities applied artificial intelligence techniques to offload data for social governance. Bicycle sharing is the last mile of urban transport. The number of the bike in the sharing stations, to be rented in future periods, is predicted to get the vehicles ready for deployment. It is an important tool for the implementation of smart cities using artificial intelligence technologies. We propose a DBSCAN-TCN model for predicting the number of rentals at shared bicycle stations. The proposed model first clusters all shared bicycle stations using the DBSCAN clustering algorithm. Based on the results of the clustering, the data on the number of shared bicycle rentals are fed into a TCN neural network. The TCN neural network structure is optimized. The effects of convolution kernel size and Dropout rate on the model performance are discussed. Finally, the proposed DBSCAN-TCN model is compared with the LSTM model, Kalman filtering model, and autoregressive moving average model. Through experimental validation, the proposed DBSCAN-TCN model outperforms the traditional three models in terms of two metrics, root mean squared logarithmic error, and error rate, in terms of prediction performance.

Highlights

  • Smart cities employ technology and data to increase efficiencies, economic development, sustainability, and life quality for citizens in urban areas

  • The Internet of Things (IoTs) enable a smart city to power and monitor multiple geographically distributed nodes to support a range of applications across various domains such as energy and resource management, intelligent transport systems, and E-health to name a few [16]

  • A Density-Based Spatial Clustering with Noise Applications (DBSCAN)-temporal convolutional network (TCN) model is proposed to forecast the amount of bike-sharing rentals

Read more

Summary

Introduction

Smart cities employ technology and data to increase efficiencies, economic development, sustainability, and life quality for citizens in urban areas. Clean technologies promote smart city development including energy, transportation, and health [1,2,3]. The IoTs enable a smart city to power and monitor multiple geographically distributed nodes to support a range of applications across various domains such as energy and resource management, intelligent transport systems, and E-health to name a few [16]. In a variety of smart cities, AI has been widely deployed, yielding numbers of revolutionary applications and services that are primarily driven by techniques for data offloading for urban IoT [18, 19]. The DBSCAN is more commonly used in text clustering and WEB data mining

Related Work
Analytical Model of DBSCAN-TCN
Numerical Evaluation and Discussion
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call