RSS Feed Source: Academic Keys

Job ID: 259623

INESC TEC | Post Doctoral Research Grant (AE2025-0274)
INESC TEC

Research Opportunities

Power Systems

Work description

Development of methodologies to explain the results of power grid optimization problems, combining operations research and artificial intelligence. Develop methodologies that combine physical models with data-driven machine learning methods. Validate the developed methodologies using real data. Disseminate the work in international journals and/or conferences.

Minimum profile required

Previous academic background in or electrical engineering or applied mathematics or computer science or informatics or similar

Preference factors

Past experience (or academic background) with machine learning. Academic background in energy systems. Programming knowledge in Python.

Maintenance stipend: € 1851.00, according to the table of monthly maintenance stipend for FCT grants , paid via bank transfer. Grant holders may be awarded

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RSS Feed Source: Academic Keys

Job ID: 259626

INESC TEC | Research Initiation Grant (AE2025-0276)
INESC TEC

Research Opportunities

Power Systems

Work description

Definition of requirements for viability of B2B and B2C customer participation in the aggregation case study, as well as flexible resources. Develop algorithms for the production of graphic results of case study simulations with customer data from Living Lab. Reports with case study simulations with customer data from Living Lab. Write the grant Activities Report.

Academic Qualifications

Electrical Engineering, Computer Engineering or related areas.

Minimum profile required

Student from the area of Electrical Engineering or Computer Science or related areas. English fluency (written and spoken). Basic knowledge in programming, preferably in python. Knowledge about energy systems and optimization.

Preference factors

Knowledge about the operation of electrical systems.

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RSS Feed Source: Academic Keys

Job ID: 259624

INESC TEC | Research Initiation Grant (AE2025-0275)
INESC TEC

Research Opportunities

Electrotechnical

Work description

The growing decentralization of energy systems and the emergence of prosumer-driven communities have brought new opportunities for integrating energy communities into ancillary service markets. However, effective participation requires innovative business models that address challenges such as market access, aggregation strategies, and regulatory requirements. To support this integration, it is essential to analyze the existing ecosystem and propose viable frameworks that align with both technical capabilities and economic incentives. Building on this context, the expected work in this area includes:

Conduct a comprehensive review of existing literature, regulatory frameworks, and technical reports related to the participation of energy communities in ancillary service markets. Identify barriers and opportunities for energy communities to act as aggregators or

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RSS Feed Source: Academic Keys

Job ID: 259625

INESC TEC | Research Initiation Grant (AE2025-0276)
INESC TEC

Research Opportunities

Power Systems

Work description

Definition of requirements for viability of B2B and B2C customer participation in the aggregation case study, as well as flexible resources. Develop algorithms for the production of graphic results of case study simulations with customer data from Living Lab. Reports with case study simulations with customer data from Living Lab. Write the grant Activities Report.

Academic Qualifications

Electrical Engineering, Computer Engineering or related areas.

Minimum profile required

Student from the area of Electrical Engineering or Computer Science or related areas. English fluency (written and spoken). Basic knowledge in programming, preferably in python. Knowledge about energy systems and optimization.

Preference factors

Knowledge about the operation of electrical systems.

Click this link to continue reading the article on the source website.