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首页> 外文期刊>Journal of Engineering for Gas Turbines and Power >Capability of the Bayesian Forecasting Method to Predict Field Time Series
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Capability of the Bayesian Forecasting Method to Predict Field Time Series

机译:贝叶斯预测方法预测现场时间序列的能力

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This paper addresses the challenge of forecasting the future values of gas turbine measureable quantities. The final aim is the simulation of "virtual sensors" capable of producing coherent measurements aimed at replacing anomalous observations discarded from the time series. Among the different available approaches, the Bayesian forecasting method (BEM) adopted in this paper uses the information held by a pool of observations as knowledge base to forecast the values at a future state. The BFM algorithm is applied in this paper to Siemens field data to assess its prediction capability, by considering two different approaches, i.e., single-step prediction (SSP) and multistep prediction (MSP). While SSP predicts the next observation by using true data as base of knowledge, MSP uses previously predicted data as base of knowledge to perform the prediction of future time steps. The results show that BEM single-step average prediction error can be very low, when filtered field data are analyzed. On the contrary, the average prediction error achieved in case of BFM multistep prediction is remarkably higher. To overcome this issue, the BFM single-step prediction scheme is also applied to clusters of time-wise averaged data. in this manner, an acceptable average prediction error can be achieved by considering clusters composed of 60 observations.
机译:本文解决了预测燃气轮机可计量数量未来价值的挑战。最终目标是模拟“虚拟传感器”,该虚拟传感器能够产生连贯的测量结果,以替代从时间序列中丢弃的异常观测值。在不同的可用方法中,本文采用的贝叶斯预测方法(BEM)使用一组观察值存储的信息作为知识库,以预测未来状态下的值。通过考虑两种不同的方法,即单步预测(SSP)和多步预测(MSP),将BFM算法应用于西门子现场数据以评估其预测能力。 SSP通过使用真实数据作为知识基础来预测下一个观测,而MSP使用先前预测的数据作为知识基础来执行对未来时间步长的预测。结果表明,在对滤波后的现场数据进行分析时,BEM单步平均预测误差可能非常低。相反,在BFM多步预测的情况下实现的平均预测误差明显更高。为克服此问题,BFM单步预测方案也应用于时间平均数据的群集。通过这种方式,可以通过考虑由60个观测值组成的聚类来获得可接受的平均预测误差。

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