医疗设备故障精细生命周期预测系统设计

Haowei Ma, Cheng Xu, J. Yang
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引用次数: 0

摘要

传统医疗设备维修管理的查询过程复杂,严重影响了医疗设备维修管理的效率和准确性,造成了大量的人力物力浪费。为了准确预测医疗设备的故障,设计了医疗设备故障生命周期的准确预测系统。系统分为四个模块:全生命周期管理模块从前期、中期、后期管理三部分构建医疗器械生命周期数据集;状态检测模块通过全生命周期管理模块中相关敏感数据的正常值来监控医疗器械部件的主要运行数据;故障诊断模块的主要功能是基于医疗设备全生命周期管理模块。通过推理机对设备运行数据进行诊断;故障预测模块构建了基于最小二乘支持向量机算法的精细预测系统,利用AFS ABC算法对模型进行优化,得到具有正则化参数和宽度参数的最优模型,并将最优模型用于医疗设备故障预测。为了验证设计系统的有效性,设计了对比实验进行验证。结果表明,所设计的系统能够准确预测心电图诊断仪和培养箱的故障,具有较高的支持度和可靠性。与比较系统相比,设计系统的预测误差最小,程序运行时间最短。因此,设计系统可以准确预测医疗器械的不同失效类型和原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of Fine Life Cycle Prediction System for Failure of Medical Equipment
The inquiry process of traditional medical equipment maintenance management is complicated, which seriously affects the efficiency and accuracy of medical equipment maintenance management, and causes a lot of waste of manpower and materials. In order to accurately predict the failure of medical equipment, an accurate prediction system for failure life cycle of medical equipment was designed. The system is divided into four modules: the whole life cycle management module constructs the life cycle data set of medical devices from the three parts of the management in the early stage, the middle and the later stage; the status detection module monitors the main operation data of the medical device components through the normal value of the relevant sensitive data in the whole life cycle management module; the main function of the fault diagnosis module is based on the medical equipment whole life cycle management module. The operation data of equipment is diagnosed by inference machine; the fault prediction module builds a fine prediction system based on least square support vector machine algorithm, and uses AFS ABC algorithm to optimize the model to obtain the optimal model with the regularized parameters and width parameters, and the optimal model is used to predict the medical equipment failure. In order to verify the effectiveness of the design system, comparative experiments are designed to verify. The results show that the designed system can accurately predict the failure of electrocardiogram diagnostic instrument and incubator, and has high support and reliability. Compared with the comparison system, the prediction error of the design system is the smallest and the program running time is the shortest. Therefore, the design system can accurately predict the different failure types and causes of medical devices.  
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