Online dynamic scheduling for multi-compartment AGV and cobot in manufacturing systems via remaining processing time integration.
https://doi.org/10.1007/s00170-026-18281-5
#Jenetics #GeneticAlgorithm #EvolutionaryAlgorithm #SmartManufacturing #DigitalTwin #OnlineScheduling #MultiCompartmentAGV #CollaborativeRobot
Online dynamic scheduling for multi-compartment AGV and cobot in manufacturing systems via remaining processing time integration - The International Journal of Advanced Manufacturing Technology

This paper presents an online scheduling framework for a multi-compartment Automated Guided Vehicle (AGV) with optional onboard cobot, embedded in a Digital Twin environment that provides real-time machine-state data. The scheduler is a Genetic Algorithm (GA) with mission-index encoding and feasibility-by-construction initialization, generating valid sequences under capacity, traceability, and precedence constraints. To isolate the value of machine-state awareness, the GA operates in two modes: an RPT-blind baseline using logistics data only, and an RPT-aware extension that integrates machine Remaining Processing Time (RPT) into feasibility and fitness evaluation. Validation across eleven scenarios on a precision aerospace workshop reveals that the impact of RPT-awareness is regime-dependent. In non-saturated and capacity-constrained settings, readiness-driven synchronization reduces transport waste (Trip Time −34–51%, Empty Trip Time −54–70% vs. RPT-blind) but increases makespan by 5–11%, because conservative waiting can delay feeding of bottleneck resources. In coordination-sensitive and high-mix regimes, RPT-awareness improves both dimensions simultaneously, reducing makespan by up to 10% (810 $$\rightarrow$$ 728 min) alongside comparable logistics gains. Relative to the FIFO baseline representing current industrial practice, GA-based automation reduces Trip Time by 15–60% and Empty Trip Time by 15–77%. RPT-awareness also enables proactive cobot scheduling, completing all eligible inline missions (up to 29 per shift versus 4–9 in RPT-blind mode). The results indicate that RPT-aware scheduling is most effective where coordination complexity, rather than processing capacity, bounds system performance.

SpringerLink
In April, Claire chatted to Kat Thiel from Manchester Metropolitan University about collaborative robots, micro-factories, and fashion manufacturing: https://robottalk.org/2023/04/14/episode-44-kat-thiel/#Fashion #CollaborativeRobot
Episode 44 – Kat Thiel - Robot Talk

Claire chatted to Kat Thiel from Manchester Metropolitan University all about collaborative robots, micro-factories, and fashion manufacturing.

Robot Talk - The podcast exploring the exciting world of robotics, artificial intelligence and autonomous machines.