Data-Driven Spatio-Temporal Modelling and Optimal Sensor Placement for a Digital Twin Set-Up

Mandar V. Tabib, Kristoffer Skare, Endre Bruaset, A. Rasheed
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Abstract

: A computationally efficient predictive digital twin (DT) of a small-scale greenhouse needs an accurate and faster modelling of key variables such as the temperature field and flow field within the greenhouse. This involves : (a) optimally placing sensors in the experimental set-up and (b) developing fast predictive models. In this work, for a greenhouse set-up, the former requirement fulfilled first by identifying the optimal sensor locations for temperature measurements using the QR column pivoting on a tailored basis. Here, the tailored basis is the low-dimensional representation of hi-fidelity computational fluid dynamics (CFD) flow data, and these tailored basis are obtained using proper orthogonal decomposition (POD). To validate the method, the full temperature field inside the greenhouse is then reconstructed for an unseen parameter (inflow condition) using the temperature values from a few synthetic sensor locations in the CFD model. To reconstruct the flow-fields using a faster predictive model than the hi-fidelity CFD model, a long-short term memory (LSTM) method based on a reduced-order model (ROM) is used. The LSTM learns the temporal dynamics of coefficients associated with the POD-generated velocity basis modes. The LSTM-POD ROM model is used to predict the temporal evolution of velocity fields for our DT case, and the predictions are qualitatively similar to those obtained from hi-fidelity numerical models. Thus, the two data-driven tools have shown potential in enabling the forecasting and monitoring of key variables in a digital twin of a greenhouse. In future work, there is scope for improvements in the reconstruction accuracy by involving deep-learning-based corrective source term approaches.
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数据驱动的时空建模和数字孪生装置的最佳传感器放置
一个计算效率高的小型温室预测数字孪生(DT)需要对温室内的温度场和流场等关键变量进行准确和快速的建模。这包括:(a)在实验装置中最佳地放置传感器和(b)开发快速预测模型。在这项工作中,对于温室设置,首先通过在定制的基础上使用QR柱旋转确定温度测量的最佳传感器位置来满足前一个要求。这里,定制基是高保真计算流体动力学(CFD)流动数据的低维表示,这些定制基是通过适当的正交分解(POD)得到的。为了验证该方法,利用CFD模型中几个合成传感器位置的温度值,对温室内的整个温度场进行了重建,以获得一个未知参数(流入条件)。为了利用比高保真CFD模型更快的预测模型重建流场,采用了基于降阶模型(ROM)的长短期记忆(LSTM)方法。LSTM学习与pod生成的速度基模态相关的系数的时间动态。LSTM-POD ROM模型用于预测DT情况下速度场的时间演变,其预测结果与高保真数值模型的预测结果在质量上相似。因此,这两种数据驱动的工具显示出在温室数字孪生体中预测和监测关键变量的潜力。在未来的工作中,通过涉及基于深度学习的校正源项方法,可以提高重建精度。
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