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Multi-objective optimization of costs and energy efficiency associated with autonomous industrial processes for sustainable growth

机译:与可持续增长的自主工业流程相关成本和能源的多目标优化

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Digital technologies are transforming the industrial landscape and disrupting traditional business models. New business opportunities related to Industry 4.0 are emerging, so companies must adapt to the new environment. This work puts forward a multi-objective optimization algorithm to improve productivity and reduce the costs and energy consumption of autonomous industrial processes with the aim of achieving sustainable growth. The processes analyzed encompass an assembly line production with robotic cells and the subsequent material handling systems (MHS) using autonomous guided vehicles (AGVs) for indoor transport. An efficient algorithm has been implemented to integrate and minimize industrial robot arm working times, AGVs travel times and their trajectory, and the energy consumed in industrial processes while maximizing global business profits when manufacturing different products in an indoor industrial environment. Furthermore, this is carried out by considering the kinematics and dynamics of autonomous industrial processes and sustainable strategies to ensure compliance with government policies on environmental issues. These objectives are in line with the European Union (EU) guidelines on reducing greenhouse gas (GHG) emissions, renewable energy share, and improvements in energy efficiency for climate change mitigation and adaptation policies. Based on the difference in energy consumption between optimized and unoptimized industrial processes, the economic benefits can be quantified in terms of GHG emission quotas, volume of fuel consumed, and the indirect benefits with respect to improving corporate brand image. The methodology presented here has been successfully applied to several real case studies covering different manufacturing processes, robotic operations, and products. The results show that higher profits and sustainable growth are achieved when this methodology is used. It helps design Flexible Manufacturing Systems (FMS) and leads to shorter working times and higher energy efficiency and annual profits. In addition, Pareto frontiers show the trade-off between profits and product manufacturing times for different case studies.
机译:数字技术正在改变工业景观和破坏传统商业模式。与行业4.0相关的新商机正在出现,因此公司必须适应新环境。这项工作提出了一种多目标优化算法,提高生产力,降低自主工业流程的成本和能源消耗,以实现可持续增长。分析的过程包括利用机器人电池和随后的材料处理系统(MHS)的装配线生产,使用自主引导车辆(AGV)进行室内运输。已经实施了一种有效的算法来集成和最大限度地减少工业机器人ARM工作时间,AGV旅行时间及其轨迹,以及工业过程中消耗的能量,同时在室内工业环境中制造不同产品时最大化全球业务利润。此外,这是通过考虑自主工业流程和可持续战略的运动学和动态来进行,以确保遵守政府对环境问题的政策。这些目标符合欧盟(欧盟)关于减少温室气体(GHG)排放,可再生能源份额的准则,以及气候变化缓解和适应政策的能源效率的改进。基于优化和未优化的工业流程之间的能耗差异,可以根据温室气体排放配额,消耗的燃料量和改善企业品牌形象的间接效益来量化经济效益。这里呈现的方法已成功应用于涵盖不同制造过程,机器人操作和产品的几项实际案例研究。结果表明,当使用该方法时,实现了更高的利润和可持续增长。它有助于设计灵活的制造系统(FMS),并导致工作时间更短,能效率更高和年度利润。此外,帕累托前沿显示利润与产品制造时间之间的权衡,以进行不同案例研究。

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