使用深度学习的连续电池生产步骤的多标准和实时控制

IF 3.9 Q2 ENGINEERING, INDUSTRIAL
Erik Rohkohl , Malte Schönemann , Yury Bodrov , Christoph Herrmann
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引用次数: 0

摘要

电池驱动的电动汽车是可持续移动领域的关键组成部分。不幸的是,电池生产仍然与各种负面的环境影响、关键原材料的使用和高制造成本有关。不断增长的电池需求迫使汽车原始设备制造商在未来几十年大幅提高其能力,同时满足经济和生态要求。与现有的批量生产工艺相比,连续生产技术具有更高的吞吐量,从而具有满足未来电池需求的潜力。由于生产过程的高参数空间和时间依赖性,在产品质量、制造成本和环境影响方面对连续电池生产步骤的控制和优化具有挑战性。因此,本研究开发了一种控制器,通过提出一组参数来实现实时优化,从而实现所需的质量、最小的成本和制造活动的影响。控制器采用深度学习模型,结合生产过程的顺序信息实现。连续混合过程与从电池中试线获得的数据被用来验证概述的控制器。因此,该用例的实现在所有可控参数上实现了7.63%的相对误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-criteria and real-time control of continuous battery cell production steps using deep learning

Electric vehicles driven by batteries are a key part of a sustainable mobility sector. Unfortunately, battery cell production is still associated with various negative environmental impacts, the use of critical raw materials and high manufacturing costs. The rising battery demand forces automotive original equipment manufacturers to drastically increase their capabilities over the next decades while fulfilling economical and ecological requirements. Continuous production technologies bear the potential to meet future battery cell demands by enabling higher throughputs compared to established batch processes. The control and optimization of continuous battery cell production steps with respect to product quality, manufacturing costs and environmental impacts is challenging due to high parameter spaces as well as temporal dependencies of production processes. Therefore, this study develops a controller that performs real-time optimization by proposing set parameters leading to desired quality, minimal costs and impacts of manufacturing activity. The controller is implemented using a deep learning model incorporating sequential information of the production process. A continuous mixing process with data acquired from a battery cell pilot line is used to validate the outlined controller. As result, the implementation for this use case achieves a relative error of 7.63% across all controllable parameters.

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来源期刊
Advances in Industrial and Manufacturing Engineering
Advances in Industrial and Manufacturing Engineering Engineering-Engineering (miscellaneous)
CiteScore
6.60
自引率
0.00%
发文量
31
审稿时长
18 days
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