Paper Title
Continuous Monitoring and Control of a Production Process using Predictive Analytics

Abstract
Keeping a running production process in a proper working state requires continuous monitoring, anticipating potential problems in advance, looking for possible solutions to avoid these problems and selecting the most cost-effective solution among the choices. This work shows a solution approach, to the mentioned requirements using Machine Learning techniques, composed of three phases: a learning phase, a knowledge generation phase and a monitoring and control phase. Our approach, which is based on using a well-trained composite Machine Learning model to generate a sufficiently large database of precomputed prediction values, provides a method to reduce product defects, unplanned downtimes, energy consumption, CO2 emissions, and to increase the production speed and precision. Index Terms - Casting, Machine Learning, Metal forming, Predictive Analytics