2017
Autores
Anjos, G; Castanheira, D; Silva, A; Gameiro, A; Gomes, M; Vilela, J;
Publicação
WIRELESS COMMUNICATIONS & MOBILE COMPUTING
Abstract
The exploration of the physical layer characteristics of the wireless channel is currently the object of intensive research in order to develop advanced secrecy schemes that can protect information against eavesdropping attacks. Following this line of work, in this manuscript we consider a massive MIMO system and jointly design the channel precoder and security scheme. By doing that we ensure that the precoding operation does not reduce the degree of secrecy provided by the security scheme. The fundamental working principle of the proposed technique is to apply selective random rotations in the transmitted signal at the antenna level in order to achieve a compromise between legitimate and eavesdropper channel capacities. These rotations use the phase of the reciprocal wireless channel as a common random source between the transmitter and the intended receiver. To assess the security performance, the proposed joint scheme is compared with a recently proposed approach for massive MIMO systems. The results show that, with the proposed joint design, the number of antenna elements does not influence the eavesdropper channel capacity, which is proved to be equal to zero, in contrast to previous approaches.
2017
Autores
Rokrok, E; Shafie khah, M; Siano, P; Catalao, JPS;
Publicação
ENERGIES
Abstract
Although a well-organized power system is less subject to blackouts, the existence of a proper restoration plan is nevertheless still essential. The goal of a restoration plan is to bring the power system back to its normal operating conditions in the shortest time after a blackout occurs and to minimize the impact of the blackout on society. This paper presents a decentralized multi-agent system (MAS)-based restoration method for a low voltage (LV) microgrid (MG). In the proposed method, the MG local controllers are assigned to the specific agents who interact with each other to achieve a common decision in the restoration procedure. The evaluation of the proposed decentralized technique using a benchmark low-voltage MG network demonstrates the effectiveness of the proposed restoration plan.
2017
Autores
de Carvalho, CV; Escudeiro, P; Coelho, A;
Publicação
SGAMES
Abstract
2017
Autores
Carnaz, Gonçalo; Nogueira, Vitor Beires; Antunes, Mário;
Publicação
Abstract
Criminal investigations face a deluge of structured and unstructured
data obtained from heterogeneous sources like forensic reports
or wiretap transcriptions. In these cases, finding relevant information can be a complex task. Ontologies have been successfully applied to several domains including legal, cyber crime and digital forensics. In this paper it is proposed a framework based on ontology engineering, that provides an unified approach to represent and reason with the criminal investigation data. Moreover, this framework is applied to the specific use case of money laundering.
2017
Autores
Muñoz, I; Garatea, J; Garatea, J; Muñoz, I; Ala, S; Cardoso, F; Paredes, H; Gelautz, M; Seitner, F; Kapeller, C; Brosch, N; Frydrychova, Z; Buresova, I; Bartosova, K; Huteckova, S; Huteckova, S; Buresová, I; Bartosova, K; Frydrychova, Z; Pires, M; Santos, V; Almeida, L; Santos, V; Neiva, H; Marques, M; Travassos, B; Marinho, D; Gil, MH; Marques, MC; Neiva, HP; Sousa, AC; Marinho, DA; Sousa, AC; Travassos, BF; Gil, MH; Neiva, HP; Marinho, DA; Marques, MC; Rocha, T; Reis, A; Paredes, H; Barroso, J; Saffoury, R; Blank, P; Sessner, J; Groh, B; Martindale, C; Dorschky, E; Franke, J; Eskofier, B; Barros, G; Melo, F; Oliveira, R; Borges, J; Reis, A; Santos, V; Barroso, J; Reis, A; Paulino, D; Paredes, H; Filipe, V; Barroso, J; Reis, A; Santos, V; Paredes, H; Filipe, V; Barroso, J; Ribeiro, J; Reis, A; Justino, E; Santos, V; Reis, A; Barroso, J; Amorim, V; Filipe, V; Paulino, D; Reis, A; Paredes, H; Barroso, J;
Publicação
BMC SPORTS SCIENCE MEDICINE AND REHABILITATION
Abstract
2017
Autores
Dalmazo, BL; Vilela, JP; Curado, M;
Publicação
JOURNAL OF NETWORK AND SYSTEMS MANAGEMENT
Abstract
Predicting the inherent traffic behaviour of a network is an essential task, which can be used for various purposes, such as monitoring and managing the network's infrastructure. However, the recent surge of dynamic environments, such as Internet of Things and Cloud Computing have hampered this task. This means that the traffic on these networks is even more complex, displaying a nonlinear behaviour with specific aperiodic characteristics during daily operation. Traditional network traffic predictors are usually based on large historical data bases which are used to train algorithms. This may not be suitable for these highly volatile environments, where the strength of the force exerted in the interaction between past and current values may change quickly with time. In light of this, a taxonomy for network traffic prediction models, including the review of state of the art, is presented here. In addition, an analysis mechanism, focused on providing a standardized approach for evaluating the best candidate predictor models for these environments, is proposed. These contributions favour the analysis of the efficacy and efficiency of network traffic prediction among several prediction models in terms of accuracy, historical dependency, running time and computational overhead. An evaluation of several prediction mechanisms is performed by assessing the Normalized Mean Square Error and Mean Absolute Percent Error of the values predicted by using traces taken from two real case studies in cloud computing.
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