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Publications

2023

MetroPT-3 Dataset

Authors
Davari, N; Veloso, B; Ribeiro, RP; Gama, J;

Publication

Abstract

2023

An Energy-optimized Embedded load balancing using DVFS computing in Cloud Data centers

Authors
Javadpour, A; Sangaiah, AK; Pinto, P; Ja'fari, F; Zhang, WZ; Abadi, AMH; Ahmadi, H;

Publication
COMPUTER COMMUNICATIONS

Abstract
Task scheduling is a significant challenge in the cloud environment as it affects the network's performance regarding the workload of the cloud machines. It also directly impacts the consumed energy, therefore the profit of the cloud provider. This paper proposed an algorithm that prioritizes the tasks regarding their execution deadline. We also categorize the physical machines considering their configuration status. Henceforth, the proposed method assigns the jobs to the physical machines with the same priority class close to the user. Furthermore, we reduce the consumed energy of the machines processing the low-priority tasks using the DVFS method. The proposed method migrates the jobs to maintain the workload balance, or if the machines' class changed according to their scores. We have evaluated and validated the proposed method in the CloudSim library. The simulation results demonstrate that the proposed method optimized energy consumption by 12% and power consumption by 20%.

2023

Symmetry-based regularization in deep breast cancer screening

Authors
Castro, E; Pereira, JC; Cardoso, JS;

Publication
MEDICAL IMAGE ANALYSIS

Abstract
Breast cancer is the most common and lethal form of cancer in women. Recent efforts have focused on developing accurate neural network-based computer-aided diagnosis systems for screening to help anticipate this disease. The ultimate goal is to reduce mortality and improve quality of life after treatment. Due to the difficulty in collecting and annotating data in this domain, data scarcity is - and will continue to be - a limiting factor. In this work, we present a unified view of different regularization methods that incorporate domain-known symmetries in the model. Three general strategies were followed: (i) data augmentation, (ii) invariance promotion in the loss function, and (iii) the use of equivariant architectures. Each of these strategies encodes different priors on the functions learned by the model and can be readily introduced in most settings. Empirically we show that the proposed symmetry-based regularization procedures improve generalization to unseen examples. This advantage is verified in different scenarios, datasets and model architectures. We hope that both the principle of symmetry-based regularization and the concrete methods presented can guide development towards more data-efficient methods for breast cancer screening as well as other medical imaging domains.

2023

Utility of Field Weakening and Field-Oriented Control in Permanent-Magnet Synchronous Motors: A Case Study

Authors
Medina, J; Gómez, C; Pozo, M; Chamorro, W; Tibanlombo, V;

Publication
XXXI Conference on Electrical and Electronic Engineering

Abstract

2023

Preventive maintenance policy in photovoltaic systems using Reinforcement Learning

Authors
Bacalhau, E; Casacio, L; Barbosa, F; Yamada, F; Guimarães, L;

Publication
Proc. of the 12th IMA International Conference on Modelling in Industrial Maintenance and Reliability

Abstract

2023

Side effects of European eco schemes and agri-environment-climate measures on endangered species conservation: Clues from a case study in mountain vineyard landscapes

Authors
Santos, M; Garces, C; Ferreira, A; Carvalho, D; Travassos, P; Bastos, R; Cunha, A; Cabecinha, E; Santos, J; Cabral, JA;

Publication
ECOLOGICAL INDICATORS

Abstract
In Europe, the Common Agricultural Policy (CAP) encouraged the specialisation of agriculture and forestry systems by supporting schemes that promoted productivity, despite the socio-ecological changes' detrimental effects on ecosystem services and biodiversity. In the case of mountain viticulture of southern Europe, the adoption of intensive management techniques triggered noticeable changes in farming systems, namely the removal of traditional stonewalls and semi-natural vegetation, partially compensated by eco schemes and agri-environment-climate measures. By combining fieldwork information with spatio-temporal modelling techniques, a novel hybrid framework is explained and implemented to predict the population trends of a critically en-dangered bird species in Portugal, the Black Wheatear (Oenanthe leucura), to the individual and/or combined effects of the removal of traditional stonewall terraced vineyards and the implementation of cover crops. The results obtained demonstrate the relevance of stonewall terraced vineyards (and the negative effects of their removal) for the conservation of Black Wheatear, namely during the breeding season when holes and crevices are used for nesting. Conversely, and in accordance with our simulations, the increase in the area occupied by vineyards with cover crops seems particularly detrimental for the species, by decreasing the quality of the feeding grounds. As cover crops, and possibly other eco schemes and agri-environment-climate measures, might not be the panacea for halting biodiversity loss in mountain viticulture, adaptation of measures to species' ecological requirements is urgent for a successful EU biodiversity strategy for 2030.

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