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Publications

Publications by HumanISE

2023

Preface

Authors
Abraham, A; Madureira, AM; Kahraman, C; Castillo, O; Bettencourt, N; Cebi, S; Forestiero, A;

Publication
Lecture Notes in Networks and Systems

Abstract
[No abstract available]

2023

Demonstration of Simulation Tools for Electricity Markets considering Power Flow Analysis

Authors
Veiga, B; Santos, G; Pinto, T; Faia, R; Ramos, C; Vale, Z;

Publication

Abstract

2023

Intelligent Data Mining and Analysis in Power and Energy Systems

Authors
Zita A. Vale; Tiago Pinto; Michael Negnevitsky; Ganesh Kumar Venayagamoorthy;

Publication

Abstract

2023

A Simulation of Market-based Non-frequency Ancillary Service Procurement Based on Demand Flexibility

Authors
Faia, R; Lezama, F; Pinto, T; Faria, P; Vale, Z; Terras, JM; Albuquerque, S;

Publication
JOURNAL OF MODERN POWER SYSTEMS AND CLEAN ENERGY

Abstract
This paper proposes a novel approach for the provision of non-frequency ancillary service (AS) by consumers connected to low-voltage distribution networks. The proposed approach considers an asymmetric pool-based local market for AS negotiation, allowing consumers to set a flexibility quantity and desired price to trade. A case study with 98 consumers illustrates the proposed market-based non-frequency AS provision approach. Also, three different strategies of consumers' participation are implemented and tested in a real low-voltage distribution network with radial topology. It is shown that consumers can make a profit from the sale of their flexibility while contributing to keeping the network power losses, voltage, and current within pre-defined limits. Ultimately, the results demonstrate the value of AS coming directly from end-users.

2023

Vision Transformers Applied to Indoor Room Classification

Authors
Veiga, B; Pinto, T; Teixeira, R; Ramos, C;

Publication
PROGRESS IN ARTIFICIAL INTELLIGENCE, EPIA 2023, PT II

Abstract
Real Estate Agents perform the tedious job of selecting and filtering pictures of houses manually on a daily basis, in order to choose the most suitable ones for their websites and provide a better description of the properties they are selling. However, this process consumes a lot of time, causing delays in the advertisement of homes and reception of proposals. In order to expedite and automate this task, Computer Vision solutions can be employed. Deep Learning, which is a subfield of Machine Learning, has been highly successful in solving image recognition problems, making it a promising solution for this particular context. Therefore, this paper proposes the application of Vision Transformers to indoor room classification. The study compares various image classification architectures, ranging from traditional Convolutional Neural Networks to the latest Vision Transformer architecture. Using a dataset based on well-known scene classification datasets, their performance is analyzed. The results demonstrate that Vision Transformers are one of the most effective architectures for indoor classification, with highly favorable outcomes in automating image recognition and selection in the Real Estate industry.

2023

Intelligent Energy Systems Ontology: Local flexibility market and power system co-simulation demonstration

Authors
Santos, G; Morais, H; Pinto, T; Corchado, JM; Vale, Z;

Publication

Abstract

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