Industrial Engineering Department, American University of Sharjah College of Engineering, Sharjah, 266666, United Arab Emirates.
Biomedical Engineering Department, American University of Sharjah College of Engineering, Sharjah, 266666, United Arab Emirates.
J Med Syst. 2020 Feb 20;44(4):72. doi: 10.1007/s10916-020-1534-8.
Technological advancements are the main drivers of the healthcare industry as it has a high impact on delivering the best patient care. Recent years witnessed unprecedented growth in the number of medical equipment manufactured to aid high-quality patient care at a fast pace. With this growth of medical equipment, hospitals need to adopt optimal maintenance strategies that enhance the performance of their equipment and attempt to reduce their maintenance costs and effort. In this work, a Predictive Maintenance (PdM) approach is presented to help in failure diagnosis for critical equipment with various and frequent failure mode(s). The proposed approach relies on the understanding of the physics of failure, real-time collection of the right parameters using the Internet of Things (IoT) technology, and utilization of machine learning tools to predict and classify healthy and faulty equipment status. Moreover, transforming traditional maintenance into PdM has to be supported by an economic analysis to prove the feasibility and efficiency of transformation. The applicability of the approach was demonstrated using a case study from a local hospital in the United Arab Emirates (UAE) where the Vitros-Immunoassay analyzer was selected based on maintenance events and criticality assessment as a good candidate for transforming maintenance from corrective to predictive. The dominant failure mode is metering arm belt slippage due to wear out of belt and movement of pulleys which can be predicted using vibration signals. Vibration real data is collected using wireless accelerometers and transferred to a signal analyzer located on a cloud or local computer. Features extracted and selected are analyzed using Support Vector Machine (SVM) to detect the faulty condition. In terms of economics, the proposed approach proved to provide significant diagnostic and repair cost savings that can reach up to 25% and an investment payback period of one year. The proposed approach is scalable and can be used across medical equipment in large medical centers.
技术进步是医疗行业的主要驱动力,因为它对提供最佳患者护理有很大的影响。近年来,制造的医疗设备数量空前增长,以快速提供高质量的患者护理。随着医疗设备的增长,医院需要采用最佳的维护策略,以提高设备的性能,并试图降低维护成本和工作量。在这项工作中,提出了一种预测性维护(PdM)方法,以帮助诊断具有各种和频繁故障模式的关键设备的故障。所提出的方法依赖于对失效物理的理解,使用物联网(IoT)技术实时收集正确的参数,以及利用机器学习工具来预测和分类健康和故障设备的状态。此外,将传统维护转变为 PdM 必须得到经济分析的支持,以证明转变的可行性和效率。该方法的适用性通过来自阿拉伯联合酋长国(阿联酋)当地一家医院的案例研究得到了证明,其中 Vitros-Immunoassay 分析仪根据维护事件和关键性评估被选为将维护从纠正性转变为预测性的良好候选者。主要的失效模式是由于皮带磨损和皮带轮移动导致计量臂皮带打滑,可以使用振动信号进行预测。使用无线加速度计收集振动实际数据,并将其传输到位于云或本地计算机上的信号分析仪。使用支持向量机(SVM)分析提取和选择的特征,以检测故障状态。在经济学方面,该方法证明可以提供显著的诊断和维修成本节约,最高可达 25%,投资回收期为一年。该方法是可扩展的,可以在大型医疗中心的医疗设备中使用。