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Publicações

Publicações por Tiago Manuel Campelos

2023

Dynamic Parameterization of Metaheuristics Using a Multi-agent System for the Optimization of Electricity Market Participation

Autores
Carvalho, J; Pinto, T; Home Ortiz, JM; Teixeira, B; Vale, Z; Romero, R;

Publicação
Distributed Computing and Artificial Intelligence, Special Sessions I, 20th International Conference, Guimaraes, Portugal, 12-14 July 2023.

Abstract

2023

Distributed Computing and Artificial Intelligence, Special Sessions I, 20th International Conference, Guimaraes, Portugal, 12-14 July 2023

Autores
Mehmood, R; Alves, V; Praça, I; Wikarek, J; Domínguez, JP; Loukanova, R; Miguel, Id; Pinto, T; Nunes, R; Ricca, M;

Publicação
DCAI (2)

Abstract

2023

Editorial: Explainability in knowledge-based systems and machine learning models for smart grids

Autores
Santos, G; Pinto, T; Ramos, C; Corchado, JM;

Publicação
FRONTIERS IN ENERGY RESEARCH

Abstract
[No abstract available]

2023

Application of XAI-based framework for PV Energy Generation Forecasting

Autores
Teixeira, B; Carvalhais, L; Pinto, T; Vale, Z;

Publicação
2023 IEEE CONFERENCE ON ARTIFICIAL INTELLIGENCE, CAI

Abstract
The structural changes in the energy sector caused by renewable sources and digitization have resulted in an increased use of Artificial Intelligence (AI), including Machine Learning (ML) models. However, these models' black-box nature and complexity can create issues with transparency and trust, thereby hindering their interpretability. The use of Explainable AI (XAI) can offer a solution to these challenges. This paper explores the application of an XAI-based framework to analyze and evaluate a photovoltaic energy generation forecasting problem and contribute to the trustworthiness of ML solutions.

2023

Automated energy management and learning

Autores
Santos, G; Teixeira, B; Pinto, T; Vale, Z;

Publicação
2023 IEEE CONFERENCE ON ARTIFICIAL INTELLIGENCE, CAI

Abstract
Automatic energy management systems allow users' active participation in flexibility management while assuring their energy demands. We propose a transparent framework for automated energy management to increase trust and improve the learning process, combining machine learning, experts' knowledge, and semantic reasoning. A practical example of thermal comfort shows the advantages of the framework.

2023

Virtual Assistants in Industry 4.0: A Systematic Literature Review

Autores
Pereira, R; Lima, C; Pinto, T; Reis, A;

Publicação
ELECTRONICS

Abstract
Information and Communication Technologies are driving the improvement of industrial processes. According to the Industry 4.0 (I4.0) paradigm, digital systems provide real-time information to humans and machines, increasing flexibility and efficiency in production environments. Based on the I4.0 Design Principles concept, Virtual Assistants can play a vital role in processing production data and offer contextualized and real-time information to the workers in the production environment. This systematic review paper explored Virtual Assistant applications in the context of I4.0, discussing the Technical Assistance Design Principle and identifying the characteristics, services, and limitations regarding Virtual Assistant use in the production environments. The results showed that Virtual Assistants offer Physical and Virtual Assistance. Virtual Assistance provides real-time contextualized information mainly for support, while Physical Assistance is oriented toward task execution. Regarding services, the applications include integration with legacy systems and static information treatment. The limitations of the applications incorporate concerns about information security and adapting to noisy and unstable environments. It is possible to assume that the terminology of Virtual Assistants is not standardized and is mentioned as chatbots, robots, and others. Besides the worthy insights of this research, the small number of resulting papers did not allow for generalizations. Future research should focus on broadening the search scope to provide more-significant conclusions and research possibilities with new AI models and services, including the emergent Industry 5.0 concept.

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