2021
Autores
Isakovic, H; Ferreira, LL; Okic, I; Dukkon, A; Tucakovic, Z; Grosu, R;
Publicação
22nd IEEE International Conference on Industrial Technology, ICIT 2021, Valencia, Spain, March 10-12, 2021
Abstract
2022
Autores
Chaves, P; Fonseca, T; Ferreira, LL; Cabral, B; Sousa, O; Oliveira, A; Landeck, J;
Publicação
CoRR
Abstract
2022
Autores
Fonseca, T; Dias, T; Vitorino, J; Ferreira, LL; Praça, I;
Publicação
CoRR
Abstract
Modern organizations face numerous physical security threats, from fire hazards to more intricate concerns regarding surveillance and unauthorized personnel. Conventional standalone fire and intrusion detection solutions must be installed and maintained independently, which leads to high capital and operational costs. Nonetheless, due to recent developments in smart sensors, computer vision techniques, and wireless communication technologies, these solutions can be integrated in a modular and low-cost manner. This work introduces Integrated Physical Security System (IP2S), a multi-agent system capable of coordinating diverse Internet of Things (IoT) sensors and actuators for an efficient mitigation of multiple physical security events. The proposed system was tested in a live case study that combined fire and intrusion detection in an industrial shop floor environment with four different sectors, two surveillance cameras, and a firefighting robot. The experimental results demonstrate that the integration of several events in a single automated system can be advantageous for the security of smart buildings, reducing false alarms and delays. © 2024 Author(s).
2022
Autores
Chaves, P; Fonseca, T; Ferreira, LL; Cabral, B; Sousa, O; Oliveira, A; Landeck, J;
Publicação
IECON 2022 - 48th Annual Conference of the IEEE Industrial Electronics Society, Brussels, Belgium, October 17-20, 2022
Abstract
Billions of interconnected Internet of Things (IoT) sensors and devices collect tremendous amounts of data from real-world scenarios. Big data is generating increasing interest in a wide range of industries. Once data is analyzed through compute-intensive Machine Learning (ML) methods, it can derive critical business value for organizations. Powerful platforms are essential to handle and process such massive collections of information cost-effectively and conveniently. This work introduces a distributed and scalable platform architecture that can be deployed for efficient real-world big data collection and analytics. The proposed system was tested with a case study for Predictive Maintenance of Home Appliances, where current and vibration sensors with high acquisition frequency were connected to washing machines and refrigerators. The introduced platform was used to collect, store, and analyze the data. The experimental results demonstrated that the presented system could be advantageous for tackling real-world IoT scenarios in a cost-effective and local approach. © 2022 IEEE.
2024
Autores
Cabral, B; Fonseca, T; Sousa, C; Ferreira, LL;
Publicação
CoRR
Abstract
2024
Autores
Fonseca, T; Ferreira, LL; Cabral, B; Severino, R; Praça, I;
Publicação
CoRR
Abstract
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