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Mehdi Tavakoli

Iran University of Medical Sciences

Publishes on Microgrid Control and Optimization, Wind Turbine Control Systems, Frequency Control in Power Systems. 7 papers and 413 citations.

7Publications
413Total Citations

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Top publicationsby citations

Payload Attribution via Character Dependent Multi-Bloom Filters
Mohammad Hashem Haghighat, Mehdi Tavakoli, Mehdi Kharrazi|IEEE Transactions on Information Forensics and Security|2013
Cited by 12

Network forensic analysts employ payload attribution systems (PAS) as an investigative tool, which enables them to store and summarize large amounts of network traffic, including full packet payload. Hence an investigator could query the system for a specific string and check whether any of the packets transmitted previously in the network contained that specific string. As a shortcoming, the previously proposed techniques are unable to support wildcard queries. Wildcards are an important type of query that allow the investigator to locate strings in the payload when only part of the string is known. In this paper, a new data structure for payload attribution, named Character Dependent Multi-Bloom Filters, will be presented which, in addition to improving the previously proposed techniques, is able to support wildcard queries as well. To this end, a theoretical study of the proposed method was conducted in order to evaluate its false positive when responding to queries and subsequently the theoretical analysis is verified through a number of experiments. Furthermore, comparisons are made between the proposed method and the state-of-the-art attribution techniques presented in the literature. The results suggest that, using the Character Dependent Multi-Bloom Filters, one can obtain a data reduction ratio of about 265 : 1 opposed to 210 : 1 as obtained by the previously proposed state-of-the-art techniques assuming a similar false-positive rate. More importantly, the results indicate that a wildcard query with seven unknown characters would take approximately less than 1 second to process, using the proposed method; while given the previous techniques, as an exhaustive search is required, the same query takes about 4500 years to process.

Improving load frequency control through PV contribution in a hybrid generation grid
Cited by 8

Photovoltaic systems cause problems for the power network because of uncertainty of their output power. One solution to eliminate these problems is to increase reserve power of conventional power plants in the network, which increases system cost and imposes more stress on power plants. Nowadays, the focus in photovoltaic systems is to extract the maximum power from photovoltaic modules. This action prevents these systems from participating in frequency control. This paper introduces a scheme to involve photovoltaic system in frequency control by considering a fraction of Photovoltaic generated power as reservation. For simulation, a system comprising of thermal, hydro and photovoltaic units is considered to investigate the performance of proposed method. This simulation is done in MATLAB Simulink. Moreover, a modified objective function is designed in order to satisfy desired specifications such as lower overshoot, fast settling time and smaller steady-state error. Out coming Results from simulation revealed that photovoltaic contribution in frequency control can improve network frequency noticeably.