基于集成学习网络的带式输送机剩余使用寿命预测

Junhyung Jo, Zeu Kim, Y. Suh
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引用次数: 0

摘要

带式输送机系统因其比人力成本更低,并且可以多种方式使用而广泛应用于生产和分销行业。带式输送机系统的预测是维持效率的主要活动。系统性能不足通常是一种错误,即系统不再能够满足期望的性能,从而导致整个系统损坏,并可能发生致命的工业事故。本文提出了一种预测带式输送机系统关键部件头轮剩余使用寿命的模型。基于集成学习的预测模型由基于深度学习的表示模型和提升模型组成。该模型采用分类与回归相结合的方法进行训练,而不是简单的回归来预测剩余使用寿命。用于训练模型的数据是通过直接建立一个类似于带式输送机系统环境的试验台来收集的。
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Remaining Useful Life Prediction Using an Ensemble Learning-Based Network for a Belt Conveyor System
The belt conveyor system is widely used in production and distribution industries because it is more cost-effective than manpower and can be used in a variety of ways. Prognostics of the belt conveyor system is the main activity to maintain efficiency. Lack of performance of the system is most often an error in which the system is no longer available to meet the desired performance which arises the entire system can be damaged and fatal industrial accidents may occur. In this paper, we present a model that predicts the remaining useful life of the head pulley, a key part of the belt conveyor system. The ensemble learning-based model to predict is composed of a deep learning-based representation model and boosting model. The model is trained using a combination of classification and regression rather than simple regression to predict the remaining useful life. The data used to train the model was collected by directly building a test bed with an environment similar to a belt conveyor system.
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