Energy Requirement Modeling for Automated Guided Vehicles Considering Material Flow and Layout Data

Designs Pub Date : 2024-05-21 DOI:10.3390/designs8030048
Marvin Sperling, K. Furmans
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Abstract

Saving energy and resources has become increasingly important for industrial applications. Foremost, this requires knowledge about the energy requirement. For this purpose, this paper presents a state-based energy requirement model for mobile robots, e.g., automated guided vehicles or autonomous mobile robots, that determines the energy requirement by integrating the linearized power requirement parameters within each system state of the vehicle. The model and their respective system states were verified using a qualitative process analysis of 25 mobile robots from different manufacturers and validated by comparing simulated data with experimental data. For this purpose, power consumption measurements over 461 operating hours were performed in experiments with two different industrial mobile robots. System components of a mobile robot, which require energy, were classified and their power consumptions were measured individually. The parameters in the study consist of vehicle speed, load-handling duration, load, utilization, material flow and layout data, and charging infrastructure system frequency, yet these varied throughout the experiments. Validation of the model through real experiments shows that, in a 99% confidence interval, the relative deviation in the modeled power requirement for a small-scale vehicle is [−1.86%,−1.14%], whereas, for a mid-scale vehicle, it is [−0.73%,−0.31%]. This sets a benchmark for modeling the energy requirement of mobile robots with multiple influencing factors, allowing for an accurate estimation of the energy requirement of mobile robots.
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考虑材料流和布局数据的自动导引车能源需求建模
节约能源和资源对工业应用越来越重要。这首先需要了解能源需求。为此,本文提出了一种基于状态的移动机器人(如自动制导车辆或自主移动机器人)能源需求模型,该模型通过整合车辆各系统状态下的线性化功率需求参数来确定能源需求。通过对来自不同制造商的 25 个移动机器人进行定性过程分析,对模型及其各自的系统状态进行了验证,并将模拟数据与实验数据进行了比较。为此,对两个不同的工业移动机器人进行了 461 个工作小时的功耗测量。对移动机器人需要能源的系统组件进行了分类,并分别测量了它们的耗电量。研究中的参数包括车速、负载处理持续时间、负载、利用率、物料流和布局数据以及充电基础设施系统频率,但这些参数在整个实验过程中都会发生变化。通过实际实验对模型进行验证后发现,在 99% 的置信区间内,小型车辆的模型电力需求相对偏差为 [-1.86%,-1.14%],而中型车辆的模型电力需求相对偏差为 [-0.73%,-0.31%]。这为具有多种影响因素的移动机器人能量需求建模设定了基准,从而可以准确估算移动机器人的能量需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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