An IIoT machine model for achieving consistency in product quality in
manufacturing plants
- URL: http://arxiv.org/abs/2109.12964v1
- Date: Mon, 27 Sep 2021 11:42:17 GMT
- Title: An IIoT machine model for achieving consistency in product quality in
manufacturing plants
- Authors: Abhik Banerjee, Abdur Rahim Mohammad Forkan, Dimitrios Georgakopoulos,
Josip Karabotic Milovac, Prem Prakash Jayaraman
- Abstract summary: We present an Industrial Internet of Things (IIoT) machine model which enables effective monitoring and control of plant machinery.
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.
- Score: 0.5574339026647824
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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.
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