Hybrid approach combining Bayesian network and rule-based systems for resource optimization in industrial cleaning processes

G. Shrestha, O. Niggemann
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引用次数: 2

Abstract

Probabilistic machine learning approaches has been successfully applied in various applications and is gaining more and more popularity. But the success of such approaches are based on the quality of the data. Getting quality data is the biggest challenge for most of the real-life applications and our application domain, i.e. industrial cleaning process, is no exception. In our application domain, the data collection is mostly performed manually without using any standards and is highly influenced by the expertise and interpretation of individual cleaning personnel. We have developed a Bayesain predictive assistance system (BPAS) that uses a real-life cleaning data to provide decision support to the cleaning personnel. In this paper, we extend our BPAS and propose a hybrid approach to develop an assistance system for resource optimization in industrial cleaning processes. The proposed approach, which combines Bayesian network and rule-based system, aims at increasing the robustness and the stability of the assistance system.
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结合贝叶斯网络和基于规则的系统的混合方法在工业清洗过程中的资源优化
概率机器学习方法已经成功地应用于各种应用中,并且越来越受欢迎。但是这些方法的成功是基于数据的质量。获得高质量的数据是大多数实际应用的最大挑战,我们的应用领域,即工业清洗过程,也不例外。在我们的应用领域中,数据收集主要是手动执行的,不使用任何标准,并且受到个人清洁人员的专业知识和解释的高度影响。我们开发了贝叶斯预测辅助系统(BPAS),该系统使用真实的清洁数据为清洁人员提供决策支持。在本文中,我们扩展了我们的bpa,并提出了一种混合方法来开发工业清洗过程中资源优化的辅助系统。该方法将贝叶斯网络与基于规则的系统相结合,旨在提高辅助系统的鲁棒性和稳定性。
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