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Enterprise Systems Engineering

At CESE, we use the knowledge generated in research to provide high value-added niche services to industrial enterprises in areas such as Manufacturing Systems Design, Manufacturing Systems Planning and Management, Collaborative Platforms, Supply Chain Strategy, Manufacturing Intelligence or Construction Information Management.

Our mission is to advance the scientific knowledge in enterprise systems engineering, fostering high impact management and ICT systems, and generating innovative services for industrial organisations.

We want to be recognised as a leading research centre in enterprise systems engineering and as a first choice in helping industrial organisations to achieve sustainable, high-performance levels.

Latest News
Systems Engineering and Management

Environmental and social challenges in supply chains under discussion in Porto - with contributions from INESC TEC

For the second year, INESC TEC is joining forces with Porto Business School (PBS) to organise the European Operations Management Association (EurOMA) event focused on sustainability. Abstract and workshop submissions are now open.

08th October 2025

Systems Engineering and Management

Second edition of the course “Shop floor digitalisation - making digitalisation happen in the Industry” starts in October

Applications are now open for the second edition of the course “Shop floor digitalisation – making digitalisation happen in the Industry”; this event is a partnership between INESC TEC and INEGI, and will take place on October 16. Registrations for this programme - designed to help companies address the challenges of digitalisation - are open until October 13.

15th September 2025

Systems Engineering and Management

INESC TEC leads project to facilitate the adoption of Generative AI in industry

INESC TEC is leading a project aimed at making Generative Artificial Intelligence (AI) more accessible, efficient, and applicable within industrial contexts.

27th May 2025

Systems Engineering and Management

Digitalisation in the agro-food sector: a key step towards decarbonisation

Digitalisation plays a vital role in decarbonisation, serving as an enabler of energy efficiency, process optimisation, and the transition to more sustainable operations. In a sector like agro-food, where energy consumption is often high, digital transformation allows for real-time monitoring and control of resource use, while supporting data-driven decision-making.This is where INESC TEC comes in. As part of the Roadmap for Decarbonising the Agro-Food Sector, the institute developed specific methodologies to support the digital transformation of companies within the sector; let’s take a closer look.

26th May 2025

How to create more “sustainable” logistics chains? This discussion will take place in Porto – with INESC TEC’s involvement

The EurOMA Sustainability forum will bring together researchers from all over the world to discuss and rethink the current linear model of supply and demand, and show how companies can adopt regenerative and restorative operations that have a positive environmental and social impact. Porto will host the event over the next two years.

17th October 2024

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Featured Projects

CIDERWISE

Inovação, gestão e sustentabilidade na fileira da maçã desperdiçada – Valorização de produtos relacionados e subprodutos

2025-2028

LOGin

Rethinking last-mile logistics: customizing integrated delivery strategies for a sustainable e-commerce

2025-2028

DTVIA

Análise de Maturidade Digital

2025-2025

DFence

Cercas Virtuais Dinâmicas - Controlo e monitorização remota de pastorício em regime livre através de sistema de orientação de animais não intrusivo

2025-2028

BIOFAB

BIOProducts FABrication Support - BIOFAB+ - Support the R&D technical proposal writing - Holland BioProducts’ New Factory in Portugal

2025-2025

ARQUITETURA_ITOT

Avaliação de Maturidade e Roadmap Estratégico para a Implementação de Gestão OT

2025-2025

GrapeUP

Grapes By-ProdUcts High-Value UPcycling

2025-2028

PF_CAP_DIGI

Aluguer de Espaço para Sessão de Capacitação - O Papel do Digital na Descarbonização da Indústria Agroalimentar

2025-2025

PFAI4_6eD

Programa de Formação Avançada Industria 4 - 6a edição

2025-2025

DT_NFSM_RPN

Reengenharia de Processos de Negócio e Deseho de Roadmap

2025-2025

InnoMatSyn

Innovative Materials Ecosystem to Gain Synergies of regional, national and EU Initiatives

2025-2028

DTACSMESCRM

Apoio técnico para diagnóstico e definição de ações corretivas ao nível da integração MES/Automação

2025-2025

DT_DNTRANS

Diagnóstico da Organização e Definição de um Plano Estratégico Tecnológico no Contexto da Transformação Digital

2025-2025

BolsasFCT_Gestao

Funding FCT PhD Grants - Management

2025-9999

PFAI4_5eD

Programa de Formação Avançada Industria 4 - 5a edição

2024-2024

FAIST

Fábrica Ágil Inteligente Sustentável e Tecnológica

2022-2026

SimIntra

2017-2017

Creative_Retail

2013-2015

Team
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Laboratories

Laboratory of Industrial Robotics and Automation

Publications

CESE Publications

View all Publications

2026

Machine Learning-Based Cost Estimation Approach for Furniture Manufacturing

Authors
Pereira, MTR; e Oliveira, EDM; Amaral, AM; Pereira, G;

Publication
IFIP Advances in Information and Communication Technology

Abstract
This project was developed to improve the cost estimation process of new products within the Product Development Department of a furniture manufacturer. This work involved developing a methodology using Machine Learning (ML) models trained on products’ existing data to predict the cost of new innovative ones based on similarities and given data. The ML models used were Linear Regression (LR), Light Gradient-Boosting Machine (LGBM), Random Forest (RF), and Support Vector Machine (SVM). The proposed methodology considers the estimation of the total cost of producing a product, which encompasses both material and operational costs. Throughout this project, several analyses were developed to identify and evaluate different independent variables that could explain the behaviour of these two cost components. The suitability of the different variables was studied by applying several ML models, and a set of functions that return an estimate of the cost as a function of these predictor variables was obtained. The proposed approach, which incorporates ML models into more complex variables to predict, resulted in a 19.29% reduction in estimation error. © 2025 Elsevier B.V., All rights reserved.

2025

More than tools: video lecture capture as a step towards pedagogic differentiation

Authors
Veiga, A; Gomes, AM; Remiao, F;

Publication
JOURNAL OF APPLIED RESEARCH IN HIGHER EDUCATION

Abstract
PurposeThe present study aims to analyse the presumed relationship between VLC use and students' grades.Design/methodology/approachThe research strategy unfolds as a case study (Yin, 1994), framed by how undergraduate students of pharmaceutical sciences used video lecture capture (VLC) and the impact of VLC on pedagogic differentiation. Looking at the course of Mechanistic Toxicology (MecTox), the objective is to describe this case of pharmaceutical sciences in depth.FindingsThe findings reveal that over 90% of students engaged with VLC videos, with the average viewing time exceeding the total available video minutes, indicating strong student engagement. The study particularly highlights VLC's positive impact on students with lower academic performance (grades D and E), suggesting that VLC can help reduce the performance gap and support a more inclusive educational environment.Research limitations/implicationsThe findings may have limited generalisability beyond the specific context and sample used. However, this study allows the research findings to be compared with previous research (Remi & atilde;o et al., 2022), contributing to the debate on how pedagogic research can promote evidence-based decisions regarding innovative strategies. The meaning of educational inclusion processes and diversity is, thus, contingent on the institutionalisation of research as a practice of teaching and learning.Practical implicationsThe results of this study thus provide interesting insights for the design of strategic action, considering the diversity of students as seen in parents' academic qualifications and students' conditions (e.g. student-workers, living away from home, holding a grant of economic and social support).Social implicationsThe implications of research findings for society bring the issue of equity in education to the fore. By addressing the diverse needs of students, HEIs can contribute to greater educational equity.Originality/valueUsing VLC as a differentiated pedagogic device might give diversity real content insofar as institutional and national policies can mitigate the possible negative effects of parents' low academic qualifications and the students' conditions of living away from their residence area and holding a grant of economic and social support.

2025

Comparative Analysis of Simulated Annealing and Tabu Search for Parallel Machine Scheduling

Authors
Mota, A; Ávila, P; Bastos, J; Roque, AC; Pires, A;

Publication
Procedia Computer Science

Abstract
This paper compares the performance of Simulated Annealing and Tabu Search meta-heuristics in addressing a parallel machine scheduling problem aimed at minimizing weighted earliness, tardiness, total flowtime, and machine deterioration costs-a multi-objective optimization problem. The problem is transformed into a single-objective problem using weighting and weighting relative distance methods. Four scenarios, varying in the number of jobs and machines, are created to evaluate these metaheuristics. Computational experiments indicate that Simulated Annealing consistently yields superior solutions compared to Tabu Search in scenarios with lower dimensions despite longer run times. Conversely, Tabu Search performs better in higher-dimensional scenarios. Furthermore, it is observed that solutions generated by different weighting methods exhibit similar performance. © 2025 The Author(s).

2025

Boosting Governance-Centric Digital Product Passports Through Traceability in Footwear Industry

Authors
Moço, H; Sousa, C; Ferreira, R; Pinto, P; Pereira, C; Diogo, R;

Publication
INNOVATIVE INTELLIGENT INDUSTRIAL PRODUCTION AND LOGISTICS, IN4PL 2024, PT II

Abstract
Since supply chains have become complex and tracking a product's journey, from raw materials to the end of it's life has become more difficult. Consumers are demanding greater transparency about the materials origins and environmental impact of the products they buy. These new requirements, togeher with European Commission Green Deal strategy, lead to the concept of digital product passport (DPP). DPP could be seen as an instrument to boost circularity, however the DPP architecture and governance model still undefined and unclear. Data Governance in the context of the DPP acts as the backbone for ensuring accurate and reliable data within these passports or data models, leading to flawless traceability. This article approaches the DPPs and it's governance challenges, explaining how they function as digital repositories for a product's life cycle information and the concept of Data Governance. By understanding how these two concepts work together, we will explore a short use case within the footwear industry to show how DPP governance architecture might work in a distributed environment.

2025

Extensible Data Ingestion System for Industry 4.0

Authors
Oliveira, B; Oliveira, Ó; Peixoto, T; Ribeiro, F; Pereira, C;

Publication
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)

Abstract
Industry 4.0 promotes a paradigm shift in the orchestration, oversight, and optimization of value chains across product and service life cycles. For instance, leveraging large-scale data from sensors and devices, coupled with Machine Learning techniques can enhance decision-making and facilitate various improvements in industrial settings, including predictive maintenance. However, ensuring data quality remains a significant challenge. Malfunctions in sensors or external factors such as electromagnetic interference have the potential to compromise data accuracy, thereby undermining confidence in related systems. Neglecting data quality not only compromises system outputs but also contributes to the proliferation of bad data, such as data duplication, inconsistencies, or inaccuracies. To consider these problems is crucial to fully explore the potential of data in Industry 4.0. This paper introduces an extensible system designed to ingest, organize, and monitor data generated by various sources, focusing on industrial settings. This system can serve as a foundation for enhancing intelligent processes and optimizing operations in smart manufacturing environments. © The Author(s), under exclusive license to Springer Nature Switzerland AG 2025.

Facts & Figures

0Book Chapters

2020

4Academic Staff

2020

11Papers in indexed journals

2020