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Ficha de projeto

Nome

Assistant Researcher in railway infrastructure monitoring and performance prediction using data analytics

Valor total do projeto

246,79 mil €

Valor pago

0 €

Financiamento não reembolsável

246,79 mil €

Financiamento por empréstimos

0 €

Data de início

01.02.2025

Data de conclusão

31.03.2026

Dimensão

Resiliência

Componente

Qualificações e competências

Investimento

Ciência Mais Capacitação

Código de operação

02/C06-i06/2024.P2023.12335.TENURE.038

Sumário

1. TASKS TO BE ASSIGNED TO THE PROSPECTIVE EMPLOYEEThe prospective employee will be responsible for conducting advanced research studies concerning railway track monitoring, data acquisition and performance modelling for improved decisions concerning design and maintenance, including the following tasks:a) Smart Data Acquisition and Integration: Developing an intelligent data acquisition system, integrating data from diverse sources for comprehensive track monitoring.b) Big Data Analytics for Geometric Degradation: Utilising advanced data analytics techniques to detect long-term track geometry degradation patterns, enabling proactive maintenance.c) Railway Ballast Assessment and Predictive Maintenance: Employing big data analytics to assess ballast degradation and particle morphology, supported by machine learning algorithms.d) Data-Driven Numerical modelling Simulations: Leveraging data-driven numerical simulations using FEM and DEM to enhance track design and maintenance decisions.e) Intelligent Decision Support System: Developing an intelligent system integrating inspection records, simulations, and historical data for real-time track health monitoring.f) Dissemination and implementation of results.2. SCIENTIFIC PROFILE REQUIREDLNEC requires a researcher with experience in railway track design, monitoring, and performance evaluation, having also some experience in numerical modelling and data analytics. The researcher for this position must have a scientific profile with knowledge in transport infrastructures, structural health monitoring (SHM), and performance modelling.The researcher to be hired also needs to have clear interest and motivation to develop the identified tasks, and experience in joint research projects.3. RATIONALE TO HIRE FOR THE SCIENTIFIC AREAFollowing the major investments in the Portuguese railway network under the programme “Ferrovia 2020”, a significant expansion of this network is expected in years to come, according to the recently issued National Railway Plan.A high quality rail network is essential for sustainable mobility and represents a major asset that must be managed and preserved during its lifecycle, ensuring adequate conditions for the traffic while minimizing the costs associated.The proposed research will contribute to enhance the safety, efficiency, and longevity of railway networks, by harnessing the power of advanced analytics, predictive maintenance models, and real-time monitoring.4. RELEVANCE OF THE SCIENTIFIC PROFILE OF THE PROPOSED POSITION IN THE CONTEXT OF THE STATE-OF-THE-ARTThe current practice in railway track asset management and inspection underscores the need for advanced data-driven approaches. Traditional methods that rely on periodic inspections fall short in addressing the complexities involved in predicting the long-term track degradation and development of faults. Recent advances in data science, including machine learning algorithms, offer promising tools for analysing vast and diverse datasets generated by track monitoring systems, enabling the identification of nuanced patterns and trends.To benefit from these innovations, transport infrastructure management is advancing towards the development of intelligent decision support systems for SHM. While traditional methods have been primarily reactive, newer approaches are shifting towards proactive and predictive strategies. These systems are designed to continuously collect data from various sources, including inspection records, sensor networks, and simulation results, allowing for real-time monitoring and analysis of structural conditions.Recently there has been a growing emphasis on integrating data analytics, machine learning algorithms, and artificial intelligence into these decision support systems, enabling early detection of anomalies and potential issues and providing railway operators with valuable insights for informed decisions related to track maintenance and repairs. Such systems have the potential to enhance safety, reduce downtime, optimise maintenance costs for railway networks, and improve costumer experience.The full potential of intelligent decision support systems for SHM in railway infrastructures is yet to be realised. Challenges remain in integrating diverse data sources, ensuring data accuracy, and developing robust predictive models of the tracks behaviour, from a mechanistic point of view, and for the dynamic nature of railway operations. The research will address these challenges and push the boundaries of what is achievable in this field. By leveraging the latest advancements in data science, remote sensing, and numerical modelling, it seeks to create an intelligent decision support system for SHM of railway tracks, empowering railway operators with the tools needed to make proactive and data-driven decisions, ultimately enhancing the resilience and performance of railway infrastructures.

Beneficiários

No âmbito do Plano de Recuperação e Resiliência, existem duas tipologias de beneficiário que têm a responsabilidade de executar os projetos, aplicando o financiamento recebido. Dado o seu papel comum, a referência a estas duas tipologias de beneficiário foi simplificada e unificada no termo “Beneficiário”.
As duas tipologias são:
  • Beneficiários Diretos são aqueles cujos financiamento e projetos a executar constam do Plano de Recuperação e Resiliência negociado e aprovado pela União Europeia;
  • Beneficiários Finais são aqueles cujos financiamento e projetos a executar são aprovados após um processo de seleção, feito através de Avisos de Candidaturas.

Aviso de Candidaturas

Na realização dos Avisos de Candidaturas são solicitadas candidaturas para a escolha dos projetos e dos beneficiários finais a quem é atribuído o financiamento.

A avaliação do projeto é realizada com base na sua conformidade com os critérios de seleção definidos nos avisos de candidatura, podendo ser atribuída uma nota final, quando aplicável.

Nota final da avaliação

8,7
Nota importante

Poderá encontrar os componentes do cálculo da nota de avaliação no documento de critérios de seleção referenciado em baixo.

Critérios de seleção

Os critérios de seleção de financiamento a que este projeto e respetivo beneficiário final esteve sujeito e a sua classificação podem ser consultados em detalhe na plataforma Recuperar Portugal.

Beneficiários

Beneficiários intermediários

Beneficiários

Contratação pública

Os Beneficiários que sejam entidades públicas operacionalizam o seu projeto através da celebração de um ou mais contratos de fornecimento de bens ou serviços com entidades fornecedoras, através de procedimentos de contratação pública.

De forma a garantir e disponibilizar o máximo de transparência na contratação pública, é aqui disponibilizada a listagem dos contratos que foram celebrados ao abrigo deste projeto e respetivo detalhe que poderá consultar na plataforma Base.Gov. De realçar que de acordo com a legislação em vigor no momento da celebração do contrato, existem exceções que não exigem a sua publicação nesta plataforma, pelo que nesses casos, poderá não existir informação disponível.

Distribuição geográfica

246,79 mil €

Valor total do projeto

Onde foi aplicado o dinheiro

Por concelho

1 concelho financiado .

  • Lisboa 246,79 mil € ,
Fonte EMRP
10.02.2026
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