ZTE Communications ›› 2015, Vol. 13 ›› Issue (2): 1-2.

• Special Topic • Previous Articles     Next Articles

Using Artificial Intelligence in the Internet of Things

Fuji Ren1, Yu Gu2   

  1. 1. University of Tokushima, Japan;
    2. Hefei University of Technology, China
  • Online:2015-06-25 Published:2015-06-25
  • About author:Dr. Fuji Ren is a professor in the Faculty of Engineering, University of Tokushima, Japan. His research interests include information science, artificial intelligence, language understanding and communication, and affective computing. He is a member of IEICE, CAAI, IEEJ, IPSJ, JSAI, AAMT, and a senior member of IEEE. He is a fellow of the Japan Federation of Engineering Societies and president of the International Advanced Information Institute.
    Dr. Yu Gu is a professor in the School of Computer and Information, Hefei University of Technology, China. He has published more than 40 papers in international journals and conference proceedings, including IEEE Commun. Surveys and Tutorials, IEEE Trans. Parallel and Distributed Systems (TPDS), Ad Hoc Networks (Elsevier), and Wireless Commun. and Mobile Comput (Wiley). He received the Excellent Paper Award at IEEE Scalcom 2009. His research interests include information science, pervasive computing, and wireless networks, in particular, wireless sensor networks.

Abstract: The Internet of Things (IoT) has received much attention over the past decade. With the rapid increase in the use of smart devices, we are now able to collect big data on a daily basis. The data we are gathering (and related problems) are becoming more complex and uncertain. Researchers have therefore turned to artificial intelligence (AI) to efficiently deal with the problems created by big data.

This special issue deals with the technology and applications of AI in the IoT and is a forum for scientists, engineers, broadcasters, manufacturers, software developers, and other related professionals to discuss related issues. The topics addressed in this special issue include current research progress, real-world applications, and security issues related to AI in IoT. The call-for-papers attracted a number of excellent submissions. After two-round reviews, five papers were selected for publication. These papers are organized in three groups.

The first group comprises one overview paper that outlines the technical progress of IoT. The second group comprises two papers addressing security issues in IoT. The last group comprises two papers that present some interesting real-world applications that will benefit daily life. The first paper,“I2oT: Advanced Direction of the Internet of Things,”gives an excellent vision of how AI technologies can be combined with IoT. The author introduces the principle and conceptual model of intelligent IoT (I2oT in short), which results from the integration of AI and IoT and is the most promising version of IoT. In the final section of the paper, the author makes recommendations for further study and standardization.

The wireless sensor network (WSN) is a key enabler of IoT because of its great sensing ability and ability to generate and process big data. Using AI to handle big data in a WSN is a critical research topic and deserves much effort. The next two papers,“An Instance-Learning-Based Intrusion-Detection System for Wireless Sensor Networks”and“Forest Fire Detection Using Artificial Neural Network Algorithm Implemented in Wireless Sensor Networks”fall within this scope. The former addresses the intrusion-detection issue in WSNs and presents an instance-learningbased intrusion-detection system (IL-IDS) to protect the network from routing attacks. By mining historical data (instances), critical rules about attacks can be created to help build a routing mechanism that is more robust to malicious behaviour. The latter paper deals with a more specific application, i.e., forest fire detection using an artificial neural network algorithm in a WSN. Forest fires threaten forest resources, human lives, and surrounding environments. The authors build a forest fire detection system that takes advantage of the unique features of a WSN, such as easy deployment, efficient data collection and environmental monitoring. An artificial neural network algorithm is designed to improve multi - criteria detection, which helps decrease the possibility of false alarms the system cost.

The last group comprises two papers about real-world applications of IoT:“We Watch: An Application for Watching Video Access Two Mobile Devices”and“A Parameter-Detection Algorithm for Moving Ships.”With the rapid development of wireless communications and embedded computing, IoT is no longer a concept but is gradually becoming a reality. One of the consequences of this trend is that people are surrounded by smart devices, which are changing almost every aspect of daily life. The former paper explores the blossoming of smart devices for a better viewing experience. It presents a unified platform based on Android where different devices can share screens. For instance, it allows a video to be played simultaneously on two devices that are close to each other. It provides a better way of watching videos by putting the screens of the two devices close together. However, the distance between the two screens needs to be accurately measured. This paper discusses a distancemeasuring mechanism based on Wi-Fi signal decay. By mining training data, the system can adaptively improve the measurement accuracy.

The vision-based technique is a general AI technique that involves abstracting information from dynamic or static pictures. It is essential for the fast approach of IoT. In the latter paper, the authors propose an algorithm for detecting the parameters of a moving ship in an inland river. Numerous different vision-based parameter-detection approaches have been used in traffic monitoring systems; however, few have been applied to waterway transport because of complexities such as rippling water and lack of calibration objects. The authors discuss interactive calibration without a reference as well as detection of a moving ship using an optimized visual foregrounddetection algorithm. This reduces the likelihood of false detection in dynamic water-based scenarios and improves the detection of ship size, speed and flow. The traffic parameter detection algorithm has been trialled in the Beijing - Hangzhou Grand Canal and has an accuracy of more than 90% for all parameters.

We thank all authors for their valuable contributions and we express our sincere gratitude to all the reviewers for their timely and insightful expert reviews. It is hoped that the contents in this special issue are informative and useful from the aspects of technology, standardization, and implementation.

Key words: Artificial Intelligence, Internet of Things