Cookies
O website necessita de alguns cookies e outros recursos semelhantes para funcionar. Caso o permita, o INESC TEC irá utilizar cookies para recolher dados sobre as suas visitas, contribuindo, assim, para estatísticas agregadas que permitem melhorar o nosso serviço. Ver mais
Aceitar Rejeitar
  • Menu
Publicações

Publicações por SYSTEM

2020

Preface

Autores
Novais, P; Lloret, J; Chamoso, P; Carneiro, D; Navarro, E; Omatu, S;

Publicação
Advances in Intelligent Systems and Computing

Abstract

2020

Optimizing Instance Selection Strategies in Interactive Machine Learning: An Application to Fraud Detection

Autores
Carneiro, D; Guimarães, M; Sousa, M;

Publicação
Hybrid Intelligent Systems - 20th International Conference on Hybrid Intelligent Systems (HIS 2020), Virtual Event, India, December 14-16, 2020

Abstract
Machine Learning systems are generally thought of as fully automatic. However, in recent years, interactive systems in which Human experts actively contribute towards the learning process have shown improved performance when compared to fully automated ones. This may be so in scenarios of Big Data, scenarios in which the input is a data stream, or when there is concept drift. In this paper we present a system for supporting auditors in the task of financial fraud detection. The system is interactive in the sense that the auditors can provide feedback regarding the instances of the data they use, or even suggest new variables. This feedback is incorporated into newly trained Machine Learning models which improve over time. In this paper we show that the order by which instances are evaluated by the auditors, and their feedback incorporated, influences the evolution of the performance of the system over time. The goal of this paper is to study of different instance selection strategies for Human evaluation and feedback can improve the learning speed. This information can then be used by the system to determine, at each moment, which instances would improve the system the most, so that these can be suggested to the users for validation. © 2021, The Author(s), under exclusive license to Springer Nature Switzerland AG.

2020

An Innovative Methodology to Optimize Aerospace Eco-efficiency Assembly Processes

Autores
Oliva, M; Mas, F; Eguia, I; del Valle, C; Lourenço, EJ; Baptista, AJ;

Publicação
IFIP Advances in Information and Communication Technology

Abstract
Sustainability and eco-efficiency have been researched in multiple scientific papers since the last years. However the literature is not so abundant when applying those concepts to industrial assembly processes. This paper presents an innovate methodology to optimize aerospace assembly processes. Authors propose the introduction of a new element, the eco-efficiency, along with the traditional criteria, cost and time, currently used for optimization. Using a large Aero-Structure as an industrial case of study, the methodology analyzes the eco-efficiency of an assembly process in connection with a Life Cycle Assessment (LCA) to compute the environmental impact. Results are shown in a dashboard along with the relevant Key Process Indicator (KPI) to help the engineers to select the best assembly process. © 2020, IFIP International Federation for Information Processing.

2020

The cutting stock problem with multiple manufacturing modes applied to a construction industry

Autores
Lemos, FK; Cherri, AC; de Araujo, SA;

Publicação
International Journal of Production Research

Abstract

2020

Integrated lot-sizing and one-dimensional cutting stock problem with usable leftovers

Autores
do Nascimento, DN; de Araujo, SA; Cherri, AC;

Publicação
Annals of Operations Research

Abstract

2019

Optimal design of additive manufacturing supply chains

Autores
Basto, J; Ferreira, JS; Alcalá, SGS; Frazzon, E; Moniz, S;

Publicação
Proceedings of the International Conference on Industrial Engineering and Operations Management

Abstract
Additive Manufacturing (AM) is one of the most trending production technologies, with a growing number of companies looking forward to implementing it in their processes. Producing through AM not only means that there are no supplier lead times needed to account for, but also enables production closer to the end customer, reducing then the delivery time. This is especially true for companies with a wide range of low and variable demand products. This paper proposes a mixed integer linear programming (MILP) model for the optimal design of supply chains facing the introduction of AM processes. In the addressed problem, the 3D printers allocation to distribution centers (DC), that will make or customize parts, and the Suppliers-DC-Customers connections for each product need to be defined. The model aims at minimizing the supply chain costs, exploring the trade-offs between safety stock and stockout costs, and between buying and 3D printing a part. The main relevant characteristics of this model are the introduction of stock service levels as decision variables and the use of a linearization of the cumulative distribution function to account for demand uncertainty. A real-world problem from a maintenance provider is solved, showing the applicability of the model. © 2019, IEOM Society International.

  • 163
  • 388