GENERAL INDUSTRIAL PROCESS OPTIMIZATION METHOD TO LEVERAGE MACHINE
LEARNING APPLIED TO INJECTION MOLDING
Abstract
:30.0 The development of machine learning technologies are
broadly changing how humans interact with their environments across all
sectors. In industrial settings, this is referred to as the fourth
industrial revolution, Industry 4.0, and encompasses several
technologies that are pushing the boundaries of industrial automation.
In this study, a general industrial process optimization (GIPO)
methodology is formulated in the context of Industry 4.0 and tested on
an industrial Injection Molding Machine (IMM). GIPO aims to encourage
the practical inclusion of industrial artificial intelligence at all
levels of the manufacturing process while enabling industrial equipment
to adapt to a changing processing environment. Special attention is
given to the generality of the methodology so that it can be extended to
other applications. In the example case study presented here, GIPO
combines nearest neighbors classification and nearest neighbors
optimization methods to effectively optimize an Injection molding
process. Practical implementation conducted on the IMM demonstrates a
novel methodology to leverage data mining and machine learning methods
in a real-world setting to improve the overall performance regarding
production time, energy cost, and production quality.