ElMolouk Rehab Seif, El-Kharbotly Amin M K, Taha Raghda B
Department of Design and Production Engineering, Faculty of Engineering, Ain-Shams University, Cairo, Egypt.
College of International Transport and Logistics, Arab Academy for Science, Technology and Maritime Transport, Cairo, Egypt.
Sci Rep. 2025 Apr 17;15(1):13227. doi: 10.1038/s41598-025-94202-y.
Robotic assembly lines serve as a foundational element of modern manufacturing, facilitating the efficient production of high-quality goods. Reducing the energy consumption of robots in these assembly lines is essential to promoting greener manufacturing practices, lowering costs, and achieving global energy efficiency goals. This study seeks to create a model that optimizes robotic assembly line systems by minimizing cycle time and energy consumption, either independently or simultaneously. The research assumes an unlimited supply of various robot types, each with distinct variants, processing times, and energy demands for specific tasks. The problem is modeled using Integer Linear Programming (ILP) in the LINGO (21) solver. For multi-objective scenarios involving both cycle time and energy consumption, a weighted sum approach is applied to convert the problem into a single-objective format. To tackle large-scale problems more effectively, several concepts and rules are proposed to accelerate data processing. The results demonstrated improved performance compared to benchmark problems. The analysis indicated that reducing cycle time contributes to lower energy consumption, driven by an increase in the number of stations and robots. Additionally, the Pareto front analysis of cycle time and energy consumption revealed that energy usage remains nearly constant across a wide range of cycle times.
机器人装配线是现代制造业的基础要素,有助于高效生产高质量产品。降低这些装配线中机器人的能耗对于推广更环保的制造方式、降低成本以及实现全球能源效率目标至关重要。本研究旨在创建一个模型,通过独立或同时最小化周期时间和能耗来优化机器人装配线系统。该研究假设各种机器人类型的供应无限,每种机器人具有不同的变体、处理时间和特定任务的能源需求。该问题在LINGO(21)求解器中使用整数线性规划(ILP)进行建模。对于涉及周期时间和能耗的多目标场景,采用加权和方法将问题转换为单目标形式。为了更有效地处理大规模问题,提出了几个概念和规则以加速数据处理。结果表明与基准问题相比性能有所提高。分析表明,减少周期时间有助于降低能耗,这是由工作站和机器人数量的增加所推动的。此外,周期时间和能耗的帕累托前沿分析表明,在广泛的周期时间范围内,能源使用几乎保持不变。