Multi Agent System for Machine Learning Under Uncertainty in Cyber
Physical Manufacturing System
- URL: http://arxiv.org/abs/2107.13252v1
- Date: Wed, 28 Jul 2021 10:28:05 GMT
- Title: Multi Agent System for Machine Learning Under Uncertainty in Cyber
Physical Manufacturing System
- Authors: Bang Xiang Yong and Alexandra Brintrup
- Abstract summary: Recent advancements in predictive machine learning has led to its application in various use cases in manufacturing.
Most research focused on maximising predictive accuracy without addressing the uncertainty associated with it.
In this paper, we determine the sources of uncertainty in machine learning and establish the success criteria of a machine learning system to function well under uncertainty.
- Score: 78.60415450507706
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recent advancements in predictive machine learning has led to its application
in various use cases in manufacturing. Most research focused on maximising
predictive accuracy without addressing the uncertainty associated with it.
While accuracy is important, focusing primarily on it poses an overfitting
danger, exposing manufacturers to risk, ultimately hindering the adoption of
these techniques. In this paper, we determine the sources of uncertainty in
machine learning and establish the success criteria of a machine learning
system to function well under uncertainty in a cyber-physical manufacturing
system (CPMS) scenario. Then, we propose a multi-agent system architecture
which leverages probabilistic machine learning as a means of achieving such
criteria. We propose possible scenarios for which our proposed architecture is
useful and discuss future work. Experimentally, we implement Bayesian Neural
Networks for multi-tasks classification on a public dataset for the real-time
condition monitoring of a hydraulic system and demonstrate the usefulness of
the system by evaluating the probability of a prediction being accurate given
its uncertainty. We deploy these models using our proposed agent-based
framework and integrate web visualisation to demonstrate its real-time
feasibility.
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