A Study on Gradient Boosting Algorithms for Development of AI Monitoring and Prediction Systems

Norshakirah Aziz, E. A. P. Akhir, I. Aziz, J. Jaafar, M. H. Hasan, Ahmad Naufal Che Abas
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引用次数: 13

Abstract

Data-driven predictive maintenance for the prediction of machine failure has been widely studied and performed to test machine failures. Predictive maintenance refers to the machine learning method, which utilizes data for identification of potential system malfunction and provides an alert when a system assessed to be prone to breakdown. The proposed work reveals a novel framework called Artificial Intelligence Monitoring 4.0 (AIM 4.0), which is capable of determining the current condition of equipment and provide a predicted mean time before failure occurs. AIM 4.0 utilizes three different ensemble machine learning methods, including Gradient Boost Machine (GBM), Light GBM, and XGBoost for prediction of machine failures. The machine learning methods stated are implemented to produce acceptable accuracy for the monitoring task as well as producing a prediction with a high confidence level.
面向AI监测与预测系统开发的梯度增强算法研究
基于数据驱动的机器故障预测维护已被广泛研究并用于机器故障检测。预测性维护是指机器学习方法,它利用数据识别潜在的系统故障,并在系统被评估为容易发生故障时提供警报。提出的工作揭示了一个名为人工智能监测4.0 (AIM 4.0)的新框架,它能够确定设备的当前状态,并提供故障发生前的预测平均时间。AIM 4.0采用三种不同的集成机器学习方法,包括梯度增强机(GBM)、轻型GBM和XGBoost,用于预测机器故障。所述的机器学习方法被实现为监测任务产生可接受的准确性,以及产生具有高置信度的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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