
Practical Implementation of New Algorithm for Restricting Data Fusion in Cloud Computing with Use of Information Kalman Filtering
Author(s) -
Mohamadreza Mohamadzadeh
Publication year - 2021
Publication title -
international journal of energy and environment
Language(s) - English
Resource type - Journals
ISSN - 2308-1007
DOI - 10.46300/91012.2021.15.19
Subject(s) - cloud computing , kalman filter , computer science , login , filter (signal processing) , software , reliability (semiconductor) , resource (disambiguation) , distributed computing , real time computing , algorithm , data mining , computer security , artificial intelligence , computer network , operating system , computer vision , power (physics) , physics , quantum mechanics
These days’ lots of technologies migrate from traditional systems into cloud and similar technologies; also we should note that cloud can be used for military and civilian purposes [3]. On the other hand, in such a large scale networks we should consider the reliability and powerfulness of such networks in facing with events such as high amount of users that may login to their profiles simultaneously, or for example if we have the ability to predict about what times that we would have the most crowd in network, or even users prefer to use which part of the Cloud Computing more than other parts – which software or hardware configuration. With knowing such information, we can avoid accidental crashing or hanging of the network that may be cause by logging of too much users. In this paper we propose Kalman Filter that can be used for estimating the amounts of users and software’s that run on cloud computing or other similar platforms at a certain time. After introducing this filter, at the end of paper, we talk about some potentials of this filter in cloud computing platform. In this paper we demonstrate about how we can use Kalman filter in estimating and predicting of our target, by the means of several examples on Kalman filter. Also at the end of paper we propose information filter for estimation and prediction about cloud computing resources.