Article information

2021 , Volume 26, ¹ 2, p.88-97

Voskoboinikov M.L., Fedorov R.K., Rugnikov G.M.

Automatic definition of web service call zones based on the classification of context of the mobile device

Most IoT devices provide an application programming interface such as web service that allows controlling these IoT devices over Internet using a mobile phone. Activation of IoT devices is performed according to the status of user behavior. Both user behavior and activation of IoT devices are periodical. An activation of IoT device is often related with a user geolocation which can be defined by sensors of the mobile device. A method for automated activation of IoT devices based on classification of geolocation of mobile device is proposed. The method implements a supervised learning that simplifies automate activation of IoT devices for the end users. Existing methods demand appropriate end user qualification and require long time to automate activation. For indoor geolocation of the mobile device information from Wi-Fi access points and geolocation GPS sensor is utilized. Data of Wi-Fi and GPS sensors is used to form context of a mobile device. Based on context examples of invoking/not invoking web services the spatial areas are formed. When the mobile device context is within the web service invocation area, the web service is invoked and the associated IoT device is activated. To implement the method, an Android application was developed. The method was tested on a training set that contained 100 training examples of calling two web services: opening an electromechanical door lock and opening a barrier. As a result of testing, the accuracy of classifying the context of a mobile device was 98 percent. The results obtained can be used in the development of smart home and smart city systems

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Keywords: web service, smart home, Internet of things, Wi-Fi, mobile device context, mobile device context classification, use-case clustering

doi: 10.25743/ICT.2021.26.2.007

Author(s):
Voskoboinikov Mikhail Leontevich
Position: Research Scientist
Office: Institute for System Dynamics and Control Theory Siberian Branch of RAS, Irkutsk Scientific Center of Siberian Branch of Russian Academy of Sciences
Address: 664033, Russia, Irkutsk
Phone Office: (3952) 45-30-17
E-mail: mikev1988@mail.ru
SPIN-code: 3417-0258

Fedorov Roman Konstantinovich
PhD.
Position: Leading research officer
Office: Institute for System Dynamics and Control Theory, Siberian Branch of RAS, Irkutsk Scientific Center of Siberian Branch of Russian Academy of Sciences
Address: 664033, Russia, Irkutsk
Phone Office: (3952) 453108
E-mail: fedorov@icc.ru
SPIN-code: 5344-2226

Rugnikov Gennady Mikhailovich
Dr. , Senior Scientist
Position: Head of Departament
Office: Institute for System Dynamics and Control Theory Siberian Branch of RAS, Irkutsk Scientific Center of Siberian Branch of Russian Academy of Sciences
Address: 664033, Russia, Irkutsk
Phone Office: (3952) 45-30-06
E-mail: rugnikov@icc.ru
SPIN-code: 2947-8443

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Bibliography link:
Voskoboinikov M.L., Fedorov R.K., Rugnikov G.M. Automatic definition of web service call zones based on the classification of context of the mobile device // Computational technologies. 2021. V. 26. ¹ 2. P. 88-97
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