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Multi Agent System for Machine Learning Under Uncertainty in Cyber Physical Manufacturing System

机译:网络体力制造系统不确定性下机器学习多功能系统

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Recent advancement 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 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.
机译:预测机器学习的最新进步导致其在制造中的各种用例中的应用。大多数研究专注于最大化预测准确性而不解决与其相关的不确定性。虽然准确性很重要,主要关注它造成了过度装备的危险,将制造商暴露在风险上,最终阻碍了采用这些技术。在本文中,我们确定机器学习中的不确定性源,并在网络 - 物理制造系统(CPMS)场景中的不确定度下运作机器学习系统的成功标准。然后,我们提出了一种多代理系统架构,该架构利用概率机器学习作为实现这些标准的手段。我们提出了我们的建筑有用的可能场景,并讨论将来的工作。在实验上,我们在公共数据集上实施贝叶斯神经网络,用于对液压系统的实时条件监测的公共数据集进行多项任务分类,并通过评估预测的预测概率来证明系统的有用性,鉴于其不确定性。我们使用我们提出的基于代理的框架部署这些模型,并集成了Web可视化以展示其实时可行性。

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