Document Type : Research Paper

Authors

1 Assistant Professor, Mathematics and Computer Science Dep, Kharazmi University, Tehran, Iran

2 Master of Computer Engineering (Software), Agricultural Research, Education and Extension Organization, Tehran, Iran

3 Assistant Professor, Knowledge and Information Science Department,, Allameh Tabataba'i University, Tehran, Iran

Abstract

The internet of things will change our life in future significantly and will make the impossible, possible. A large volume of big data which is produced or taken by Internet of Things (IOT) contains valuable and useful information. By the prevalence of the wireless apparatuses technology such as Bluetooth, detection of radio frequency (RFID), Wi-Fi and data services on telephone, sensor, actuators and nodes embedded in the equipment, Wireless Sensor Networks (WSN) the internet of things has already passed its primary stages and is in the threshold of changing the current static internet into a fully integrated internet. Data mining; too, with no doubt plays a large role in smartness of the system and subsequently, provides suitable services and environment in offering services. Also, data mining techniques are used to cluster nodes and determine cluster head, in wireless sensor networks. This paper introduces the internet of things, architecture and its applications.
 
 

Keywords

رمضانی، هادی، علیپور حافظی، مهدی و مؤمنی، عصمت. (1393). نقشه‌های علمی: فنون و روش‌ها. ترویج علم، 5(6)، 53- 84.
غفارزادگان، مریم. (1392). کشف ساختار درونی مطالعات خلاقیت به روش متن‌کاوی. پایان‌نامه کارشناسی ارشد علم اطلاعات و دانش‌شناسی، دانشگاه علامه طباطبائی، تهران.
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