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Industrial Duct Fan Maintenance Predictive Approach Based on Random Forest

机译:基于随机林的工业风扇维护预测方法

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摘要

When manufacturers equipment encounters an unexpected failure, or undergo unnecessary maintenance pre-scheduled plan, which happens for a total of millions of hours worldwide annually, this is time-consuming and costly. Predictive maintenance can help with the use of modern sensing technology and sophisticated data analytics to predict the maintenance required for machinery and devices. The demands of modern maintenance solutions have never been greater. The constant pressure to demonstrate enhanced cost-effectiveness return on investment and improve the competitiveness of the organization is always combined with the pressure of improving equipment productivity and keep machines running at the maximum output. In this paper, we propose maintenance prediction approach based on a machine learning technique namely random forest algorithm. The main focus is on the industrial duct fans as it is one of the most common equipment in most manufacturing industries. The experimental results show the accuracy, reliability of proposed Predictive Maintenance approach.
机译:当制造商设备遇到意外故障时,或经过不必要的维护预定计划,每年在全球全球数百万小时内发生,这是耗时和昂贵的。预测维护可以帮助使用现代传感技术和复杂的数据分析来预测机械和设备所需的维护。现代维护解决方案的需求从未如此。持续的压力表明增强的成本效益投资回报和提高组织的竞争力总是与改善设备生产力的压力相结合,并将机器保持在最大输出。本文采用了基于机器学习技术的维护预测方法,即随机林算法。主要重点是工业风扇粉丝,因为它是大多数制造业中最常见的设备之一。实验结果表明了提出的预测维护方法的准确性,可靠性。

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