The rapid adoption of electric mining trucks in open-pit mining faces a significant scheduling challenge: effectively coordinating transportation tasks with loading/unloading and battery swapping. To address this, we model the integrated operation process as a flow shop with battery swapping, enabling the coordination of these interdependent processes. Given the problem's computational intractability, we develop a three-stage customised ALNS algorithm with proactive battery management, featuring a novel two-dimensional encoding scheme and problem-specific destroy-repair operators. Extensive experiments demonstrate the superior performance of the proposed ALNS over commercial solvers and benchmark metaheuristics. A case study shows the approach can reduce carbon emissions by 31.97% under average grid conditions, translating to an annual reduction of approximately 11.7 thousand tonnes of CO (Formula presented.). This study provides a practical decision-making tool for achieving sustainable and continuous mining production.
Xin, J., Qu, D., D'Ariano, A., Xin, B. (2026). Battery-aware integrated scheduling of open-pit electric mining trucks: MIP model and three-stage adaptive large neighbourhood search. INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH, 1-25 [10.1080/00207543.2026.2644566].
Battery-aware integrated scheduling of open-pit electric mining trucks: MIP model and three-stage adaptive large neighbourhood search
D'Ariano, Andrea;
2026-01-01
Abstract
The rapid adoption of electric mining trucks in open-pit mining faces a significant scheduling challenge: effectively coordinating transportation tasks with loading/unloading and battery swapping. To address this, we model the integrated operation process as a flow shop with battery swapping, enabling the coordination of these interdependent processes. Given the problem's computational intractability, we develop a three-stage customised ALNS algorithm with proactive battery management, featuring a novel two-dimensional encoding scheme and problem-specific destroy-repair operators. Extensive experiments demonstrate the superior performance of the proposed ALNS over commercial solvers and benchmark metaheuristics. A case study shows the approach can reduce carbon emissions by 31.97% under average grid conditions, translating to an annual reduction of approximately 11.7 thousand tonnes of CO (Formula presented.). This study provides a practical decision-making tool for achieving sustainable and continuous mining production.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


