Gope Amit Kumar, Liao Yu-Shu, Kuo Chung-Feng Jeffrey
Department of Materials Science and Engineering, National Taiwan University of Science and Technology, Taipei 10607, Taiwan.
Polymers (Basel). 2022 Jul 4;14(13):2739. doi: 10.3390/polym14132739.
Melt spinning machines must be set up according to the process parameters that result in the best end product quality. In this study, artificial intelligence algorithms were employed to create a system that detects abnormal processing parameters and suggests strategies to improve quality. Polypropylene (PP) was selected as the experimental material, and the quality achieved by adjusting the melt spinning machine's processing parameter settings was used as the basis for judgement. The processing parameters included screw temperature, gear pump temperature, die head temperature, screw speed, gear pump speed, and take-up speed as the six control factors. The four quality characteristics included fineness, breaking strength, elongation at break, and elastic energy modulus. In the first part of our study, we applied fast deep-learning characteristic grid calculations on a 440-item historical data set to train a deep learning neural network and determine methods for multi-quality optimization. In the second part, with the best processing parameters as a benchmark, and given abnormal quality data derived from processing parameter settings deviating from these optimal values, several machine learning and deep learning methods were compared in their ability to find the settings responsible for the abnormal data, which was randomly split into a 210-item training data set and a 210-item verification data set. The random forest method proved to be the best at identifying responsible parameter settings, with accuracy rates of single and double identification classifications together of 100%, for single factor classification of 98.3%, and for double factor classification of 96.0%, thereby confirming that the diagnostic method proposed in this study can effectively predict product abnormality and find the parameter settings responsible for product abnormality.
熔纺机必须根据能产生最佳最终产品质量的工艺参数来设置。在本研究中,采用人工智能算法创建了一个系统,该系统可检测异常加工参数并提出提高质量的策略。选择聚丙烯(PP)作为实验材料,并将通过调整熔纺机加工参数设置所达到的质量作为判断依据。加工参数包括螺杆温度、齿轮泵温度、模头温度、螺杆速度、齿轮泵速度和卷取速度这六个控制因素。四个质量特性包括细度、断裂强度、断裂伸长率和弹性模量。在我们研究的第一部分,我们对一个包含440个项目的历史数据集应用快速深度学习特征网格计算,以训练深度学习神经网络并确定多质量优化方法。在第二部分中,以最佳加工参数为基准,给定因加工参数设置偏离这些最佳值而产生的异常质量数据,比较了几种机器学习和深度学习方法在找出导致异常数据的设置方面的能力,这些异常数据被随机分为一个包含210个项目的训练数据集和一个包含210个项目的验证数据集。随机森林方法在识别相关参数设置方面表现最佳,单因素分类的准确率为98.3%,双因素分类的准确率为96.0%,单重和双重识别分类的总准确率为100%,从而证实了本研究中提出的诊断方法能够有效预测产品异常并找出导致产品异常的参数设置。