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A Big Bang-Big Crunch Type-2 Fuzzy Logic System for Explainable Predictive Maintenance

机译:一个大爆炸式CRUNCY-2模糊逻辑系统,可解释预测性维护

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The role of maintenance in modern manufacturing systems is becoming a more significant contributor to organizational benefit. World-class enterprises are pushing forward with “predict-and prevent” maintenance instead of embracing the drawbacks of reactive maintenance (or a “fail-and fix” approach). The advancement towards Artificial Intelligence (AI), Internet of Things (IoT) and cloud computing has led to a shift in maintenance paradigms with the rising interest in Machine Learning (ML) and in particular deep learning. However, opaque box AI models are complex and difficult to understand and explain to the lay user. This limits the use of these models in predictive maintenance where it is crucial to understand and analyze the model before deployment and it is imperative to understand the logic behind any given decision. This paper introduces a Type-2 Fuzzy Logic System (FLS) optimized by the Big-Bang Big-Crunch algorithm that allows maximizing the interpretability of a model as well as its prediction accuracy for the faults which may occur in future. We tested the proposed type-2 FLS model on water pumps where data was collected in real-time by our proprietary hardware deployed at Aquatronic Group Management Plc. The observations indicate that the proposed system provides a highly interpretable and accurate model for predicting the faults in equipment for building services, process and water industries. The system predictions are used to understand why a particular fault may occur, leading to improved and better-informed service visits for the customers thus reducing the disruptions faced due to equipment failures.
机译:维护在现代制造系统中的作用正在成为组织利益的更重要的贡献者。世界级企业正在推动“预测和防止”维护,而不是拥抱反应性维护的缺点(或“失败和修复”方法)。对人工智能(AI),物联网(物联网)和云计算的进步导致维护范例的转变,利用机器学习(ML)的兴趣兴趣,特别是深度学习。但是,不透明的盒子AI模型很复杂,难以理解并向Lay用户解释。这限制了这些模型在预测维护中的使用,在部署之前理解和分析模型至关重要,并且必须了解任何给定的决定后面的逻辑。本文介绍了由BIG-BANG BIG-CRUNCE算法优化的2型模糊逻辑系统(FL),其允许最大化模型的可解释性以及其未来可能发生的故障的预测精度。我们在水泵上测试了拟议的2型FLS模型,其中通过我们在Aquatronic Group Management PLC部署的专有硬件实时收集数据。观察结果表明,该拟议的系统提供了一种高度可解释和准确的模型,可以预测建筑服务,工艺和水产品的设备故障。系统预测用于了解为什么可能发生特定故障的原因,导致客户的改进和更好的服务访问,从而减少了由于设备故障而面临的中断。

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