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Institution

Information Technology University

EducationLahore, Pakistan
About: Information Technology University is a education organization based out in Lahore, Pakistan. It is known for research contribution in the topics: Cloud computing & Computer science. The organization has 9260 authors who have published 13001 publications receiving 236419 citations. The organization is also known as: ITU.


Papers
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Journal ArticleDOI
TL;DR: This paper reviews some works on the application of MAs to well-known combinatorial optimization problems, and places them in a framework defined by a general syntactic model, which provides them with a classification scheme based on a computable index D, which facilitates algorithmic comparisons and suggests areas for future research.
Abstract: The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (Moscato, 1989). These methods are inspired by models of natural systems that combine the evolutionary adaptation of a population with individual learning within the lifetimes of its members. Additionally, MAs are inspired by Richard Dawkin's concept of a meme, which represents a unit of cultural evolution that can exhibit local refinement (Dawkins, 1976). In the case of MA's, "memes" refer to the strategies (e.g., local refinement, perturbation, or constructive methods, etc.) that are employed to improve individuals. In this paper, we review some works on the application of MAs to well-known combinatorial optimization problems, and place them in a framework defined by a general syntactic model. This model provides us with a classification scheme based on a computable index D, which facilitates algorithmic comparisons and suggests areas for future research. Also, by having an abstract model for this class of metaheuristics, it is possible to explore their design space and better understand their behavior from a theoretical standpoint. We illustrate the theoretical and practical relevance of this model and taxonomy for MAs in the context of a discussion of important design issues that must be addressed to produce effective and efficient MAs.

719 citations

Journal ArticleDOI
TL;DR: A taxonomy for vehicular cloud is presented in which special attention has been devoted to the extensive applications, cloud formations, key management, inter cloud communication systems, and broad aspects of privacy and security issues, which found that VCC is a technologically feasible and economically viable technological shifting paradigm for converging intelligent vehicular networks towards autonomous traffic, vehicle control and perception systems.

711 citations

Journal ArticleDOI
TL;DR: This paper combines rule-based classification, supervised learning and machine learning into a new combined method, and proposes a semi-automatic, complementary approach in which each classifier can contribute to other classifiers to achieve a good level of effectiveness.

700 citations

Journal ArticleDOI
TL;DR: The state-of-the-art research efforts directed toward big IoT data analytics are investigated, the relationship between big data analytics and IoT is explained, and several opportunities brought by data analytics in IoT paradigm are discussed.
Abstract: Voluminous amounts of data have been produced, since the past decade as the miniaturization of Internet of things (IoT) devices increases. However, such data are not useful without analytic power. Numerous big data, IoT, and analytics solutions have enabled people to obtain valuable insight into large data generated by IoT devices. However, these solutions are still in their infancy, and the domain lacks a comprehensive survey. This paper investigates the state-of-the-art research efforts directed toward big IoT data analytics. The relationship between big data analytics and IoT is explained. Moreover, this paper adds value by proposing a new architecture for big IoT data analytics. Furthermore, big IoT data analytic types, methods, and technologies for big data mining are discussed. Numerous notable use cases are also presented. Several opportunities brought by data analytics in IoT paradigm are then discussed. Finally, open research challenges, such as privacy, big data mining, visualization, and integration, are presented as future research directions.

697 citations

Journal ArticleDOI
TL;DR: In this paper, a comprehensive and systematic review of the direct forecasting of PV power generation is presented, where the importance of the correlation of the input-output data and the preprocessing of model input data are discussed.
Abstract: To mitigate the impact of climate change and global warming, the use of renewable energies is increasing day by day significantly. A considerable amount of electricity is generated from renewable energy sources since the last decade. Among the potential renewable energies, photovoltaic (PV) has experienced enormous growth in electricity generation. A large number of PV systems have been installed in on-grid and off-grid systems in the last few years. The number of PV systems will increase rapidly in the future due to the policies of the government and international organizations, and the advantages of PV technology. However, the variability of PV power generation creates different negative impacts on the electric grid system, such as the stability, reliability, and planning of the operation, aside from the economic benefits. Therefore, accurate forecasting of PV power generation is significantly important to stabilize and secure grid operation and promote large-scale PV power integration. A good number of research has been conducted to forecast PV power generation in different perspectives. This paper made a comprehensive and systematic review of the direct forecasting of PV power generation. The importance of the correlation of the input-output data and the preprocessing of model input data are discussed. This review covers the performance analysis of several PV power forecasting models based on different classifications. The critical analysis of recent works, including statistical and machine-learning models based on historical data, is also presented. Moreover, the strengths and weaknesses of the different forecasting models, including hybrid models, and performance matrices in evaluating the forecasting model, are considered in this research. In addition, the potential benefits of model optimization are also discussed.

626 citations


Authors

Showing all 9271 results

NameH-indexPapersCitations
Dacheng Tao133136268263
Jian-Guo Bian128121980964
Josef Hammer12063160840
David I. Stuart11359449733
Xuemin Shen106122144959
Hung T. Nguyen102101147693
Petre Stoica10175254266
Jürgen Schmidhuber99539122453
Biswajeet Pradhan9873532900
Shuzhi Sam Ge9788340865
Jun Ma97133839643
Jing Zhang95127142163
Arun Kumar9344139938
Roel Baets91115834593
Ravi Naidu8983034739
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20236
202255
20211,080
20201,104
20191,082
2018976