arXiv Open Access 2026

EBuddy: a workflow orchestrator for industrial human-machine collaboration

Michele Banfi Rocco Felici Stefano Baraldo Oliver Avram Anna Valente
Lihat Sumber

Abstrak

This paper presents EBuddy, a voice-guided workflow orchestrator for natural human-machine collaboration in industrial environments. EBuddy targets a recurrent bottleneck in tool-intensive workflows: expert know-how is effective but difficult to scale, and execution quality degrades when procedures are reconstructed ad hoc across operators and sessions. EBuddy operationalizes expert practice as a finite state machine (FSM) driven application that provides an interpretable decision frame at runtime (current state and admissible actions), so that spoken requests are interpreted within state-grounded constraints, while the system executes and monitors the corresponding tool interactions. Through modular workflow artifacts, EBuddy coordinates heterogeneous resources, including GUI-driven software and a collaborative robot, leveraging fully voice-based interaction through automatic speech recognition and intent understanding. An industrial pilot on impeller blade inspection and repair preparation for directed energy deposition (DED), realized by human-robot collaboration, shows substantial reductions in end-to-end process duration across onboarding, 3D scanning and processing, and repair program generation, while preserving repeatability and low operator burden.

Topik & Kata Kunci

Penulis (5)

M

Michele Banfi

R

Rocco Felici

S

Stefano Baraldo

O

Oliver Avram

A

Anna Valente

Format Sitasi

Banfi, M., Felici, R., Baraldo, S., Avram, O., Valente, A. (2026). EBuddy: a workflow orchestrator for industrial human-machine collaboration. https://arxiv.org/abs/2603.28579

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Tahun Terbit
2026
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en
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arXiv
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