INESC TEC
INESC TEC
INESC TEC
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AI4PV

INESC TEC

About Project

Artificial Intelligence for Operation and Maintenance of PV Plants

The Paris Agreement have defined the necessary targets to limit the global warming to 1,5° with a massive contribution by renewable energy. Despite a decrease of around 90% of the solar panels cost the last 10 years and an exponential increase in PV installation, the global solar capacity that is required to reach COP21 goals is 4,500 GW above forecast by 2025. The panels efficiency has reached 21%, which is still reduced comparing with other energy sources. Finally, PV faces variability, by the daily cycles, but also because of clouds. To face these challenges the industry has been working to improve the overall performance of PV systems (increasing the scale of PV farms, using distributed inverters, solar trackers, etc.), but unsolved challenges remain concerning the reliability and numerous unforeseen outages and high operation and maintenance (O&M) costs, hindering a lean integration in the electrical grid. In this context, the main goals of the AI4PV project is to increase the operational performance of PV plants. The expected result is a set of tools for PV plant O&M and Asset Managers to: • Increase operational reliability and efficiency: high precision of early detection of failures and diagnosis. • Improve economic performance: downtime reduction and detecting performance problems that can affect energy production. To achieve these objectives, AI4PV will combine AI-based algorithms and physical modelling of components to build digital assets of the PV power plant, using different technologies such as: unsupervised learning (e.g., with neural networks), modelling and simulation with Monte Carlo, contextual bandit for predictive maintenance, data collection and interoperability. AI4PV consists in the design, development and validation (in real-scale PV plants) of a set of tools. It is an industry-led consortium with balanced roles between scientific and technological partners, with market footprint and real operation of PV plants capabilities.
Acronym

AI4PV

Responsible

Ricardo Jorge Gomes de Sousa Bento Bessa

Status

Closed

Start

January 1, 2021

End

January 30, 2023

Effective End

January 30, 2023

Global Budget

€257,449.00

Financing

€193,086.75

Website

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Associated Centres

Industrial Engineering and Management

The Centre for Industrial Engineering and Management (CEGI) is internationally recognised in the fields of decision science, optimisation, operations management and service engineering. The mission is to support organisations and communities in decision-making by harnessing the power of data to develop robust and sustainable solutions to complex problems. Research at CEGI focuses on real-world challenges like transport planning, supply chain management, healthcare service networks, industrial operations optimisation, disaster response and recovery, and the impact assessment of public policies. By resorting to Artificial Intelligence, data science and mathematical modelling, CEGI aims to understand system behaviours, improve process efficiency, increase organisational resilience, and anticipate the effects of decisions in uncertain contexts. CEGI operates across critical sectors including mobility, healthcare, retail, industry, energy, and services, focusing on digital transition and sustainability. We collaborate with academia, companies, municipal authorities, hospitals, and regulators, transforming scientific knowledge into applied solutions. We believe that evidence-based management is key to tackling the challenges of a constantly changing world.

Industrial Engineering and Management

Power and Energy Systems

INESC TEC’s main actor in the energy field is the Centre for Power and Energy Systems (CPES), which falls within the Cluster Energy Systems. We at CPES are internationally recognised for our expertise in the integration of renewable energy in power systems, distributed generation, storage, smart grids and areas traditionally associated with the planning and operation of power systems. The high level of expertise developed has allowed our experts at CPES to take on key roles in important EU projects as part of the successive framework programmes that led to notable scientific and technical advances with considerable impact on industry. This has led to contracts for development and consultancy with companies manufacturing equipment and with generation, transmission and distribution companies, regulators, government agencies and investors in Europe, South America, the United States of America and Africa. At CPES, we address the following main research areas: Decision Making, Optimisation and Computational Intelligence, Forecasting, Static and Dynamic analysis of Energy Grids, Reliability, Power Electronics.

Power and Energy Systems