首页> 外文期刊>International Journal of Reliability, Quality and Safety Engineering >BASELINE-DIFFERENCING: A NOVEL APPROACH FOR BUILDING GENERALIZABLE OCEAN TURBINE RELIABILITY MODELS
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BASELINE-DIFFERENCING: A NOVEL APPROACH FOR BUILDING GENERALIZABLE OCEAN TURBINE RELIABILITY MODELS

机译:基准线差异化:建立通用海洋涡轮机可靠性模型的新方法

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摘要

Ocean turbines are a promising new source of clean energy, but their remote and inhospitable environment (the open ocean) poses reliability challenges. Machine condition monitoring/prognostic health monitoring (MCM/PHM) systems assure the reliability of these turbines by detecting and predicting machine state. These MCM/PHM systems use sensor data (such as vibration information) to determine whether or not the machine is operating properly. However, not all sensor data corresponds to the machine state: some portions of the sensor signal are influenced by certain environmental conditions which do not directly relate to machine health. Therefore, models must be built which can detect system state regardless of these environmental operating conditions. The proposed baseline-differencing approach permits this by creating a baseline for different conditions (such that each baseline represents what the normal, healthy machine state looks like while in that operating condition) and using the difference of the observed data and this baseline to train and evaluate models. We present two case studies, both conducted on data from a dynamometer representing an ocean turbine, to demonstrate the improved predictive capabilities of models which incorporate baseline-differencing, compared to the models which use the nonbaselined data. The results show that significantly more high-quality models can be built with baseline-differencing.
机译:海洋涡轮机是一种有前途的清洁能源新来源,但其偏远且荒凉的环境(开阔的海洋)提出了可靠性挑战。机器状态监视/预测性健康监视(MCM / PHM)系统通过检测和预测机器状态来确保这些涡轮机的可靠性。这些MCM / PHM系统使用传感器数据(例如振动信息)来确定机器是否正常运行。但是,并非所有传感器数据都与机器状态相对应:传感器信号的某些部分会受到某些与机器健康没有直接关系的环境条件的影响。因此,必须建立无论环境条件如何都可以检测系统状态的模型。所提出的基准线差异方法可通过为不同条件创建基准线(从而使每个基准线代表在该操作条件下正常,健康的机器状态是什么样的状态)并使用观察到的数据与该基准线的差异来训练和实现这一目的来实现的评估模型。我们提供了两个案例研究,均使用代表海洋涡轮的测功机的数据进行,以证明与使用非基准数据的模型相比,包含基线差异的模型的预测能力得到了提高。结果表明,使用基线差分可以建立更多高质量的模型。

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