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interfaces (HMI), and industrial-grade communication protocols for automation in electric power systems.; • Develop and adapt a test network — a simulation model or a replica of a real network — for DIgSILENT
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; - Knowledge and experience in programming RP2040 microcontrollers (Raspberry Pi Pico) in C; - Experience in the development and integration of CAN (Controller Area Network) communication systems; - Ability
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Education Institutions. Preference factors: - Knowledge of fundamental concepts related to energy management and gas networks; - Knowledge of optimization and forecasting models; - Knowledge of Python
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operating scenarios for power networks with a high penetration of renewable energy—one of the services to be offered by the collaborative laboratory currently under development.; This research grant offers a
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smart power grids. If you aspire to be part of this transformation and leave your mark on the future of power networks, join us!; 3. BRIEF PRESENTATION OF THE WORK PROGRAMME AND TRAINING: Literature
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. The project seeks to transform existing submarine communication infrastructure into a large-scale sensor network for the detection and monitoring of geophysical phenomena. 4. REQUIRED PROFILE: Admission
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) The grant holder will benefit from health insurance, supported by INESC TEC. 2. OBJECTIVES: Development of novel Machine Learning techniques applied in systems/networks research, which includes, but is not
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-of-the-art deep neural networks for musical audio, with special focus on timbre analysis and manipulation.; - Identify and implement approaches for explainable ML models.; - Cooperate in writing scientific
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technologies for AC/DC hybrid power systems—alternating current networks that integrate DC networks—and the definition of functional requirements to ensure their performance and reliability. As part of
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distribution networks, considering solutions such as FL Energy's OperatorFabric.; - Study human-machine interaction methodologies that reduce the complexity of supervising multiple distribution networks