Farhad Ramezani

Work place: Department of Computer Engineering, Sari Branch, Islamic Azad University, Sari, Iran

E-mail: ramezani.farhad@iausari.ac.ir

Website:

Research Interests: Computer systems and computational processes, Image Compression, Image Manipulation, Image Processing, Information Systems

Biography

Farhad Ramezani was born in 1982 in Babol, I.R.Iran. He studied computer Engineering at the Iran University of Science & Technology where he received the B.Sc. degree in 2006. He received the M.Sc. degree in artificial intelligence in 2010 under the direction of Prof. M. Yaghobi and Prof. A.A.Ghangherme with a thesis on Caspian Sea Level Prediction by Auto Fuzzy Regression from the Islamic Azad University Mashhad Branch, Mashhad. He is currently PhD Candidate at Islamic Azad University, Science and Research Branch, and Faculty Member of Computer Engineering Department of Islamic Azad University Sari Branch, Sari, Iran. His primary research interests include the area of intelligent systems, fuzzy set theory and Image processing.

Author Articles
Measuring of Software Maintainability Using Adaptive Fuzzy Neural Network

By Mohammad Zavvar Farhad Ramezani

DOI: https://doi.org/10.5815/ijmecs.2015.10.04, Pub. Date: 8 Oct. 2015

Software maintenance mainly refers to the process of correcting software after delivery. Maintenance process is usually a high percentage of Organizational effort to the whole process of software programs. As a result, the effectiveness of the entire production process and customer satisfaction is dependent on the effectiveness of maintenance activities. Because many factors including type of service, type of product and human factors is dependent on the maintenance process, And the imprecise nature of qualitative factors and sub-criteria leading software maintenance, accurate assessment can be maintained in order to measure the effectiveness of programs seem highly desirable. In this paper, using adaptive fuzzy neural network to provide a method for evaluating the capability of software maintenance conducted after the tests, the root mean square error of the proposed method was equal to 0.34331. The results show that the method is based on adaptive fuzzy neural, maintainability software performance evaluation is appropriate.

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Comparison of ANFIS with MLP ANN in Measuring the Reliability based on Aspect Oriented Software

By Mohammad Zavvar Farhad Ramezani

DOI: https://doi.org/10.5815/ijmecs.2015.09.04, Pub. Date: 8 Sep. 2015

In fact, Reliability as the qualities metric is the probability success or The probability that a system or set of tasks without failure for a specified constraints of time and space, as specified in the design and operating conditions specified temperature, humidity, vibration and action. A relatively new methodologies for developing complex software systems engineering is an aspect-oriented software systems, that provides the new methods for the separation of concerns multiple module configuration or intervention and automatic integration them with a system. In this paper, using MLP artificial neural networks and adaptive fuzzy neural network assess the reliability of the aspect oriented software and at the end, two methods were compared with each other. After examination, the root means square error method based on artificial neural networks, fuzzy neural network-based method of 0.024262 and 0.021874 to be adaptive. The results show that the method is based on adaptive fuzzy neural networks with low error in the estimation of reliability, performance is better than the MLP artificial neural network approach.

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