Consistency in product quality is of critical importance in manufacturing. However, achieving a target product quality typically involves balancing a large number of manufacturing attributes. Existing manufacturing practices for dealing with such complexity are driven largely based on human knowledge and experience. The prevalence of manual intervention makes it difficult to perfect manufacturing practices, underscoring the need for a data-driven solution. In this paper, we present an Industrial Internet of Things (IIoT) machine model which enables effective monitoring and control of plant machinery so as to achieve consistency in product quality. We present algorithms that can provide product quality prediction during production, and provide recommendations for machine control. Subsequently, we perform an experimental evaluation of the proposed solution using real data captured from a food processing plant. We show that the proposed algorithms can be used to predict product quality with a high degree of accuracy, thereby enabling effective production monitoring and control.
翻译:产品质量的一致性在制造业中至关重要,然而,实现目标产品质量通常需要平衡大量生产属性。处理这种复杂性的现有制造做法主要以人类知识和经验为基础。手工干预的流行使得难以完善制造做法,突出表明需要一种数据驱动的解决办法。在本文件中,我们展示了一种工业性Times(IIoT)网络机器模型,它能够有效监测和控制植物机械,从而实现产品质量的一致性。我们提出了能够提供生产期间产品质量预测的算法,并为机器控制提供了建议。随后,我们利用从食品加工厂获取的真实数据对拟议解决方案进行了实验性评估。我们表明,可以使用拟议的算法以高度准确的方式预测产品质量,从而能够进行有效的生产监测和控制。