Abstract

The latest research on smart city technologies mainly focuses on utilizing cities’ resources to improve the quality of the lives of citizens. Diverse kinds of control signals from massive systems and devices such as adaptive traffic light systems in smart cities can be collected and utilized. Unfortunately, it is difficult to collect a massive dataset of control signals as doing so in the real-world requires significant effort and time. This paper proposes a deep generative model which integrates a long short-term memory model with generative adversarial network (LSTM-GAN) to generate agent control signals based on the words extracted from newspaper articles to solve the problem of collecting massive signals. The discriminatory network in the LSTM-GAN takes continuous word embedding vectors as inputs generated by a pre-trained Word2Vec model. The agent control signals of sequential actions are simultaneously predicted by the LSTM-GAN in real time. Specifically, to collect the training data of smart city simulations, the LSTM-GAN is trained based on the Corpus of Contemporary American English (COCA) newspaper dataset, which contains 5,317,731 sentences, for a total of 93,626,203 word tokens, from written texts. To verify the proposed method, agent control signals were generated and validated. In the training of the LSTM-GAN, the accuracy of the discriminator converged to 50%. In addition, the losses of the discriminator and the generator converged from 4527.04 and 4527.94 to 2.97 and 1.87, respectively.

Highlights

  • Information and communication technologies (ICTs) play an important role in the development of smart and sustainable cities, which is an encompassing framework that includes physical infrastructure, and human and social factors [1]

  • This paper proposed a method for generating agent control signals based on words extracted from newspaper articles

  • The extracted control signals were embedded using the Word2Vec model to express the relationships between the words in the signals, and the embedded control signals were in turn applied to deep learning models

Read more

Summary

Introduction

Information and communication technologies (ICTs) play an important role in the development of smart and sustainable cities, which is an encompassing framework that includes physical infrastructure, and human and social factors [1]. Smart cities are one of the main research topics based on Internet of Things (IoT) technology [2, 3]. The applications of smart cities require various integrated algorithms [4]. The diverse resources of smart cities are analyzed and utilized through technologies such as IoT, big data, social networks, and cloud computing, which improve the quality of the lives of citizens [5]. The development of smart cities currently involves the design and implementation of transportation, energy, traffic control, security, and other areas.

Results
Discussion
Conclusion
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