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首页> 外文期刊>Journal of Cleaner Production >Multi-objective co-operative co-evolutionary algorithm for minimizing carbon footprint and maximizing line efficiency in robotic assembly line systems
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Multi-objective co-operative co-evolutionary algorithm for minimizing carbon footprint and maximizing line efficiency in robotic assembly line systems

机译:多目标协作协同进化算法,可最大程度地减少机器人装配线系统中的碳足迹并最大化生产线效率

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摘要

Methods for reducing the carbon footprint is receiving increasing attention from industry as they work to create sustainable products. Assembly line systems are widely utilized to assemble different types of products and in recent years, robots have become extensively utilized, replacing manual labor. This paper focuses on minimizing the carbon footprint for robotic assembly line systems, a topic that has received limited attention in academia. This paper is primarily focused on developing a mathematical model to simultaneously minimize the total carbon footprint and maximize the efficiency of robotic assembly line systems. Due to the NP-hard nature of the considered problem, a multi-objective co-operative co-evolutionary (MOCC) algorithm is developed to solve it. Several improvements are applied to enhance the performance of the MOCC for obtaining a strong local search capacity and faster search speed. The performance of the proposed MOCC algorithm is compared with three other high-performing multi objective methods. Computational and statistical results from the set of benchmark problems show that the proposed model can reduce the carbon footprint effectively. The proposed MOCC outperforms the other three methods by a significant margin as shown by utilizing one graphical and two quantitative Pareto compliant indicators. (C) 2017 Elsevier Ltd. All rights reserved.
机译:减少碳足迹的方法在致力于创造可持续产品的过程中越来越受到业界的关注。流水线系统被广泛用于组装不同类型的产品,并且近年来,机器人已被广泛使用,代替了体力劳动。本文着重于最大限度地减少机器人流水线系统的碳足迹,这是学术界很少关注的话题。本文主要侧重于开发数学模型,以同时最小化总碳足迹并最大化机器人装配线系统的效率。由于所考虑问题的NP难性,开发了一种多目标合作协作进化算法(MOCC)来解决该问题。为了获得强大的本地搜索能力和更快的搜索速度,已进行了一些改进以增强MOCC的性能。将所提出的MOCC算法的性能与其他三种高性能多目标方法进行了比较。一系列基准问题的计算和统计结果表明,该模型可以有效减少碳足迹。拟议的MOCC通过使用一个图形和两个定量的Pareto兼容指标显示出明显优于其他三种方法。 (C)2017 Elsevier Ltd.保留所有权利。

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