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Fluid temperature predictions of geothermal borefields using load estimations via state observers

机译:通过状态观察者使用负载估计的地热钻孔流体温度预测

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Fluid temperature predictions of geothermal borefields usually involve temporal superposition of its characteristic g-function, using load aggregation schemes to reduce computational times. Assuming that the ground has linear properties, it can be modelled as a linear state-space system where the states are the aggregated loads. However, the application and accuracy of these models is compromised when the borefield is already operating and its load history is not registered or there are gaps in the data. This paper assesses the performance of state observers to estimate the borefield load history to obtain accurate fluid predictions. Results show that both Time-Varying Kalman Filter (TVKF) and Moving Horizon Estimator (MHE) provide predictions with average and maximum errors below 0.1 degrees C and 1 degrees C, respectively. MHE outperforms TVKF in terms of n-step ahead output predictions and load history profile estimates at the expense of about five times more computational time.
机译:地热钻孔的流体温度预测通常涉及其特征G函数的时间叠加,使用负载聚合方案来减少计算时间。假设地面具有线性属性,它可以被建模为线性状态空间系统,其中态是聚合负载。然而,当Borefield已经运行时,这些模型的应用和准确性受到损害,并且其负载历史未注册或数据中存在间隙。本文评估了国家观察者的表现,以估计钻孔率荷载历史,以获得准确的流体预测。结果表明,时间变化的卡尔曼滤波器(TVKF)和移动地平线估计器(MHE)分别提供平均值和最大误差低于0.1°C和1摄氏度的预测。 MHE在N步骤前进输出预测和负载历史概述估计的估计的比较大约五倍的计算时间。

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