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Sylvain Kubler

Possible papers associated with this exact author name in Arrow. This page groups case-insensitive exact name matches and is not a full identity disambiguation profile.

3 papers
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3

AAAI Conference 2026 Conference Paper

Counterfactual eXplainable AI (XAI) Method for Deep Learning-Based Multivariate Time Series Classification

  • Alan Gabriel Paredes Cetina
  • Kaouther Benguessoum
  • Raoni Lourenco
  • Sylvain Kubler

Recent advances in deep learning have improved multivariate time series (MTS) classification and regression by capturing complex patterns, but their lack of transparency hinders decision-making. Explainable AI (XAI) methods offer partial insights, yet often fall short of conveying the full decision space. Counterfactual Explanations (CE) provide a promising alternative, but current approaches typically prioritize either accuracy, proximity or sparsity -- rarely all -- limiting their practical value. To address this, we propose CONFETTI, a novel multi-objective CE method for MTS. CONFETTI identifies key MTS subsequences, locates a counterfactual target, and optimally modifies the time series to balance prediction confidence, proximity and sparsity. This method provides actionable insights with minimal changes, improving interpretability, and decision support. CONFETTI is evaluated on seven MTS datasets from the UEA archive, demonstrating its effectiveness in various domains. CONFETTI consistently outperforms state-of-the-art CE methods in its optimization objectives, and in six other metrics from the literature, achieving ≥ 10% higher confidence while improving sparsity in ≥ 40%.

EAAI Journal 2025 Journal Article

Evolutionary multi-objective multi-agent deep reinforcement learning for sustainable maintenance scheduling

  • Marcelo Luis Ruiz-Rodríguez
  • Sylvain Kubler
  • Jérémy Robert
  • Alexandre Voisin
  • Yves Le Traon

In recent years, sustainability has emerged as a major priority for businesses across various industries, and the manufacturing sector is no exception. Production and maintenance processes now need to be economically profitable while also adopting practices that adhere to the principles of environmental integrity and social responsibility. This article explores an innovative approach aimed at optimizing maintenance scheduling from an economic perspective (considering maintenance, breakdown, downtime costs), an environmental perspective (considering the carbon footprint produced during production) and a social perspective (considering the fatigue experienced by technicians during maintenance activities). To the best of our knowledge, this is the first study to propose a manufacturing scheduling approach that considers all three pillars of sustainability. Another significant contribution of this research is the innovative way in which the optimization problem is addressed. We propose an evolutionary multi-objective multi-agent Deep Q-network-based approach, where multiple agents explore the preference space to maximize the hypervolume of these sustainable objectives. Our methodology uses industrially representative data that incorporate realistic machine degradation signals, carbon intensity indicators, and technician constraints. The results demonstrate the trade-offs between these objectives when compared to traditional maintenance policies such as corrective and condition-based maintenance, as well as different Deep Q-network policies trained with various preferences. Our approach demonstrates superior performance compared to both baselines. Specifically, we observe an 11. 6% improvement in hypervolume over Deep Q-network and an 18. 9% improvement over Proximal Policy Optimization, resulting in significantly increased profitability within the system.

EAAI Journal 2012 Journal Article

Dual path communications over multiple spanning trees for networked control systems

  • Sylvain Kubler
  • Jérémy Robert
  • Jean-Philippe Georges
  • Éric Rondeau

The switched Ethernet networks are more and more deployed in industry. The Spanning Tree Protocol implemented in the switches enables management of the link connectivity. But the reconfiguration time of the Spanning Tree Protocol (STP) when link failure occurs is not adapted to satisfy industrial constraints. The objective of this paper is to propose a method based only on standard, mitigating the probability of disconnection between nodes having hard real-time properties. The approach developed in this paper consists of duplicating frames and of forwarding them on different paths. These paths are optimized and specified by using genetic algorithms. OPNET simulations show the interest of this proposal on a particular Networked Control System.