Environment monitoring system for smart cities uses diverse kind of sensors which is used to accumulate the information for managing the resources efficiently. Environment monitoring system provides services such as automation of home, weather monitoring, air quality management and
prediction of pollution. This paper presents the customized design on environment monitoring the basic parameters are temperature, humidity and CO2. These sensed data need to be stored and processed. In previous system, sensed data are stored using cloud computing. In proposed system,
Fog computing is used to store the sensed data from smart environment monitoring system (SEMS) and transfer the data to the mobile app from the fog device which is more efficient than cloud computing.
Botnet is one of the most notorious threats to cybersecurity and cyberspace, providing a distributed platform for multiple illegal activities, such as DDoS, spamming, phishing, click fraud, identity theft, etc. Regardless of numerous methods have been proposed to detect botnets, botnet detection is still a challenging issue, as botmaster's are continuously improving bots to write them stealthier. Existing botnet detection mechanisms are not cope-up with the modern botnets. In this paper, we propose a novel approach to detect botnet based on network traffic flow behavior analysis using model based clustering called Gaussian Mixture Model (GMM). We have analyzed the botnet traffic flow statistical behaviors in a mananged environment. The proposed model effectively detects the bot irrespective of their structural properties. Our experimental evaluation based on real-world data shows that the proposed model can achieve high detection accuracy with a low false positive rate using traffic flow behaviors. We have compared the proposed model with traditional clustering techniques such as K-Means and X-Means clustering. Our model achieves the improved detection rate compared to the K-Means and X-Means clustering. Also we have compared our proposed model with existing botnet detection methods. Our model achieves the better detection rate with minimum number of features than the prevailing methods.
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