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A framework for failure prediction models of medical electron linear accelerators

机译:医用电子直线加速器故障预测模型的框架

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Among the available maintenance strategies, predictive maintenance seems to be the most promising for medical linear accelerators (linacs). Predictive maintenance predicts failures and allows timely reaction. Input data and model are important to implement predictive maintenance. The aim of this study is to provide a new framework including workflow, data and models that can be used for developing a predictive maintenance approach for medical linear accelerators. In this paper, 51 operational parameters and output performances data related to 15 systems of linacs, 8 environment data, processing data methods and 29 prediction models are identified. This work shows there is no standard failure prediction model apply to medical linacs.
机译:在可用的维护策略中,预测性维护似乎是医用线性加速器(直线加速器)最有前途的。预测性维护可预测故障并及时做出反应。输入数据和模型对于实施预测性维护很重要。这项研究的目的是提供一个包括工作流,数据和模型的新框架,可用于开发医疗线性加速器的预测性维护方法。本文确定了与15个直线加速器系统有关的51个运行参数和输出性能数据,8个环境数据,处理数据方法和29个预测模型。这项工作表明没有适用于医疗直线加速器的标准故障预测模型。

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