EMERGING 2012, the Fourth International Conference on Emerging Network Intelligence

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EMERGING 2012, the Fourth International Conference on Emerging Network Intelligence EMERGING 2012 The Fourth International Conference on Emerging Network Intelligence ISBN: 978-1-61208-239-4 September 23-28, 2012 Barcelona, Spain EMERGING 2012 Editors Michael D. Logothetis, University of Patras, Greece Tulin Atmaca, IT/Telecom&Management SudParis, France 1 / 84 EMERGING 2012 Forward The Fourth International Conference on Emerging Network Intelligence (EMERGING 2012) held on September 23-28, 2012 in Barcelona, Spain, constituted a stage to present and evaluate the advances in emerging solutions for next-generation architectures, devices, and communications protocols. Particular focus was aimed at optimization, quality, discovery, protection, and user profile requirements supported by special approaches such as network coding, configurable protocols, context-aware optimization, ambient systems, anomaly discovery, and adaptive mechanisms. Next-generation large distributed networks and systems require substantial reconsideration of existing ‘de facto’ approaches and mechanisms to sustain an increasing demand on speed, scale, bandwidth, topology and flow changes, user complex behavior, security threats, and service and user ubiquity. As a result, growing research and industrial forces are focusing on new approaches for advanced communications considering new devices and protocols, advanced discovery mechanisms, and programmability techniques to express, measure, and control the service quality, security, environmental and user requirements. We take here the opportunity to warmly thank all the members of the EMERGING 2012 technical program committee as well as the numerous reviewers. The creation of such a broad and high quality conference program would not have been possible without their involvement. We also kindly thank all the authors that dedicated much of their time and efforts to contribute to the EMERGING 2012. We truly believe that thanks to all these efforts, the final conference program consists of top quality contributions. This event could also not have been a reality without the support of many individuals, organizations and sponsors. We also gratefully thank the members of the EMERGING 2012 organizing committee for their help in handling the logistics and for their work that is making this professional meeting a success. We gratefully appreciate to the technical program committee co-chairs that contributed to identify the appropriate groups to submit contributions. We hope the EMERGING 2012 was a successful international forum for the exchange of ideas and results between academia and industry and to promote further progress in emerging technologies. We hope Barcelona provided a pleasant environment during the conference and everyone saved some time for exploring this beautiful city. EMERGING 2012 Chairs 2 / 84 EMERGING Advisory Chairs Raj Jain, Washington University in St. Louis, USA Michael D. Logothetis, University of Patras, Greece Tulin Atmaca, IT/Telecom&Management SudParis, France Phuoc Tran-Gia, University of Wuerzburg, Germany Nuno M. Garcia, Universidade Lusófonas de Humanidades e Tecnologias, Lisboa, Portugal EMERGING Industry Liaison Chairs Krishna Murthy, Global IT Solutions at Quintiles - Raleigh, USA Tadashi Araragi, Nippon Telegraph and Telephone Corporation – Kyoto, Japan Robert Foster, Edgemount Solutions - Plano, USA EMERGING Research Chairs David Carrera, Barcelona Supercomputing Center (BSC) / Universitat Politecnica de Catalunya (UPC), Spain Daniel Scheibli, SAP Research, Germany 3 / 84 EMERGING 2012 Committee EMERGING Advisory Chairs Raj Jain, Washington University in St. Louis, USA Michael D. Logothetis, University of Patras, Greece Tulin Atmaca, IT/Telecom&Management SudParis, France Phuoc Tran-Gia, University of Wuerzburg, Germany Nuno M. Garcia, Universidade Lusófonas de Humanidades e Tecnologias, Lisboa, Portugal EMERGING 2012 Industry Liaison Chairs Krishna Murthy, Global IT Solutions at Quintiles - Raleigh, USA Tadashi Araragi, Nippon Telegraph and Telephone Corporation – Kyoto, Japan Robert Foster, Edgemount Solutions - Plano, USA EMERGING 2012 Research Chairs David Carrera, Barcelona Supercomputing Center (BSC) / Universitat Politecnica de Catalunya (UPC), Spain Daniel Scheibli, SAP Research, Germany EMERGING 2012 Technical Program Committee Mercedes Amor-Pinilla, University of Málaga, Spain Richard Anthony, University of Greenwich, UK Tadashi Araragi, NTT Communication Science Laboratories - Kyoto, Japan Tulin Atmaca, IT/Telecom&Management SudParis, France M. Ali Aydin, Istanbul University, Turkey Robert Bestak, Czech Technical University in Prague, Czech Republic Christian Blum, Universitat Politècnica de Catalunya - Barcelona, Spain Indranil Bose, Indian Institute of Management – Calcutta, India Mieczyslaw Brdys, University of Birmingham, UK Chin-Chen Chang, Feng Chia University - Taichung, Taiwan Chi-Hua Chen, National Chiao Tung University, Taiwan, R.O.C. David Chen, University of Bordeaux – Talence, France Dong Ho Cho, Korea Advanced Institute of Science and Technology (KAIST) - Daejeon, Republic of Korea Carl James Debono, University of Malta, Malta Frank Doelitzscher, Furtwangen University, Germany Rolf Drechsler, University of Bremen, Germany Jean-Michel Dricot, Université Libre de Bruxelles, Belgium Dimitris Drikakis, Cranfield University, UK Kamini Garg, University of Applied Sciences Southern Switzerland - Lugano, Switzerland 4 / 84 Christos Grecos, University of the West of Scotland - Paisley, UK Christophe Guéret, Vrije Universiteit Amsterdam, The Netherlands Jin Guohua, Advanced Micro Devices - Boxborough, USA Go Hasegawa, Osaka University, Japan Emilio Insfran, Universitat Politècnica de València, Spain Shareeful Islam, University of East London, UK Raj Jain, Washington University in St. Louis, USA Anne James, Coventry University, UK Rajgopal Kannan, Louisiana State University - Baton Rouge USA Henrik Karstoft, Aarhus University, Denmark Mark S. Leeson, University of Warwick - Coventry, UK Kuan-Ching Li, Providence University, Taiwan Haowei Liu, Intel Corp, USA Michael D. Logothetis, University of Patras, Greece Elsa María Macías López, University of Las Palmas de Gran Canaria, Spain Prabhat K. Mahanti, University of New Brunswick - Saint John, Canada Ahmed Mahdy, Texas A&M University-Corpus Christi, USA Moufida Maimour, Lorraine University - Nancy, France Zoubir Mammeri, IRIT - Toulouse, France Anna Harmatné Medve, University of Pannonia, Hungary Vojtech Merunka, Czech University of Life Sciences in Prague and Czech Technical University in Prague, Czech Republic Martin Molhanec, Czech Technical University in Prague, Czech Republic Juan Pedro Muñoz-Gea, Universidad Politécnica de Cartagena, Spain R. Muralishankar, CMR Institute of Technology - Bangalore, India Krishna Murthy, Quintiles, USA Yannick Naudet, Public Research Centre Henri Tudor (CRP Henri Tudor) - Luxembourg-Kirchberg, Luxembourg Euthimios (Thimios) Panagos, Applied Communication Sciences, USA Theodor D. Popescu, National Institute for Research & Development in Informatics - Bucharest, Romania Marina Resta, University of Genova, Italy Haja Mohamed Saleem, Universiti Tunku Abdul Rahman/Univrsiti Teknologi PETRONAS, Malaysia Patrick Senac, ISAE (Institut Supérieur de l'Aéronautique et de l'Espace) - Toulouse, France Dimitrios Serpanos, ISI/R.C. Athena & University of Patras, Greece Oyunchimeg Shagdar, INRIA Paris-Rocquencourt, France Yutaka Takahashi, Kyoto University, Japan Preetha Thulasiraman, Naval Postgraduate School - Monterey, USA Bal Virdee, London Metropolitan University, UK Zhihui Wang, Dalian University of Technology, China Maarten Wijnants, Hasselt University - Diepenbeek, Belgium Jelena Zdravkovic, Stockholm University, Sweden Xuechen Zhang, Wayne State University, USA Albert Y. Zomaya, The University of Sydney, Australia 5 / 84 Copyright Information For your reference, this is the text governing the copyright release for material published by IARIA. The copyright release is a transfer of publication rights, which allows IARIA and its partners to drive the dissemination of the published material. This allows IARIA to give articles increased visibility via distribution, inclusion in libraries, and arrangements for submission to indexes. 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