On Virtual Clearance Monitoring of Steam Turbine by Using Model Order Reduction

2021 ◽  
Author(s):  
Hiroshi Ito ◽  
Shoichiro Hosomi ◽  
Norikazu Tezuka ◽  
Tomohiro Ishida

Abstract With the increasing need for flexible operation (shorter startup time and higher load change rate etc.), clearance monitoring between the rotor and the stationary components in steam turbines is becoming more important. This is because as load change rate increases, minimum radial and axial clearances during operation tend to be smaller due to thermal deformation of steam turbines, and the risk of contact between the rotor and the stationary components becomes higher. This situation has accelerated development of clearance sensors. However, it is still difficult to monitor all possible points of contact only with physical sensors due to limited installation location and short lifetime in high temperature environment. From the above background, we have been developing a virtual clearance monitoring (VCM) technique based on a novel data fusion approach that utilizes both physical and data-driven models. Specifically, a reduced order model (ROM) is used as physical model in order to enable real-time prediction with an accuracy similar to that of finite element analysis (FEA). Then, the prediction error of the physical model is corrected by using a residual model built by machine learning from the past clearance sensor values and the corresponding physical model-based prediction results. As will be explained in this report, this technique has an advantage that the clearances can be predicted in real-time based only on operating data such as steam conditions at inlet and outlet, and some temperatures in the parts not modeled in the ROM. Therefore, the virtual sensor based on this technique can be used as a replacement for the physical sensor after it has failed. Furthermore, this technique can also be used to preliminarily study unsteady clearance behavior for inexperienced operating conditions. This paper describes how to build the ROM from a finite element model for thermal-structural analysis of an entire steam turbine by model order reduction (MOR), and the detail of the VCM technique, and a VCM system installed in a measurement room of a state-of-the-art GTCC power plant manufactured by Mitsubishi Power. In addition, the verification results of the VCM system are presented. In this research, the ROM and the residual model were built using the data obtained from four operations with different start-up modes each other. Then, VCM was performed for 12 operating cases. As a result, this survey revealed the followings: (1) This system is capable of real-time prediction with output intervals of roughly 2 seconds. (2) As for radial clearance prediction error during rotor rotating, the RMSEs and the absolute values of minimum value errors are less than or equal to 7.2 % and 7.0 % respectively relative to an initial radial clearance value during the steam turbine stopping. From the above results, we conclude that this VCM technique based on data fusion approach is effective in terms of computational speed and prediction accuracy. This means that if a physical clearance sensor fails, the radial clearance can be continuously monitored by a virtual clearance sensor with a residual model built using the data when the sensor was working normally. In the future, we plan to further improve the accuracy of this technique through improvement in physical modeling.

2020 ◽  
Vol 53 (2) ◽  
pp. 11132-11137
Author(s):  
Tobias Frank ◽  
Henrik Zeipel ◽  
Mark Wielitzka ◽  
Steffen Bosselmann ◽  
Tobias Ortmaier

2017 ◽  
Vol 326 ◽  
pp. 679-693 ◽  
Author(s):  
David González ◽  
Alberto Badías ◽  
Icíar Alfaro ◽  
Francisco Chinesta ◽  
Elías Cueto

2021 ◽  
Author(s):  
Nikolaos Tsokanas ◽  
Thomas Simpson ◽  
Roland Pastorino ◽  
Eleni Chatzi ◽  
Bozidar Stojadinovic

Hybrid simulation is a method used to investigate the dynamic response of a system subjected to a realistic loading scenario by combining numerical and physical substructures. To ensure high fidelity of the simulation results, it is often necessary to conduct hybrid simulation in real-time. One of the challenges arising in real-time hybrid simulation originates from high-dimensional nonlinear numerical substructures and, in particular, from the computational cost linked to the computation of their dynamic responses with sufficient accuracy. It is often the case that the simulation time-step must be decreased to capture the dynamic behavior of numerical substructures, thus resulting in longer computation. When such computation takes longer than the actual simulation time, time delays are introduced and the simulation timescale becomes distorted. In such a case, the only viable solution for doing hybrid simulation in real-time is to reduce the order of such complex numerical substructures.In this study, a model order reduction framework is proposed for real-time hybrid simulation, based on polynomial chaos expansion and feedforward neural networks. A parametric case study encompassing a virtual hybrid model is used to validate the framework. Selected numerical substructures are substituted with their respective reduced-order models. To determine the robustness of the framework, parameter sets are defined to cover the design space of interest. A comparison between the full- and reduced-order hybrid model response is delivered. The attained results demonstrate the performance of the proposed framework.


Author(s):  
Icíar Alfaro ◽  
David González ◽  
Sergio Zlotnik ◽  
Pedro Díez ◽  
Elías Cueto ◽  
...  

2020 ◽  
Author(s):  
Arash Moaven ◽  
Thierry J. Massart ◽  
Sergio Zlotnik

<div><strong>Keywords:</strong> Thermo Hydro-Mechanical (THM), Model Order Reduction (MOR), Parametric solutions, Real time simulations.</div><div> </div><div>Radioactive waste is a by-product of nuclear power generation. It is hazardous to all forms of life and the environment. Its radioactive activity naturally decays over time, so waste has to be isolated and confined in appropriate disposal facilities for a sufficient period until it no longer poses a threat. Deep geological repositories constitute one of the most promising options for isolating this type of waste from human and environmental interactions. The analysis and prediction of the behaviour of such systems relies on coupled THM models [1]. The coupled nature of the problem is explained as follows [2]: i) a thermal part including the heat released by the wastes; ii) the mechanical behavior of the canister holding the wastes, the isolation system and the underground host rock; and, iii) the flow of natural water present in any underground porous media.</div><div><br>A coupled THM problem depends on space, time, and on material parameters (for instance, elastic modulus (E), heat conductivity (κ) and hydraulic conductivity (K)) and geometric parameters (for instance, the distance between canisters). We seek for families of solutions depending on these parameters. We would like to provide a real time numerical simulation of the THM problem for any value of the parameters within a range. Real time here, means a solution provided in a few seconds (instead of several hours). Such a solution can be used within an inversion problem, to obtain an best fitting value of the parameters based on some observations, or even in a control situation, where the prediction of the simulation is used to take some decision in the field.</div><div> </div><div>Reduced Order Methods (ROM)  are a family of numerical methods able to provide such a solutions. In this work we will present several parametric problems, and show how ROM  [3] can provide real time solution to (simple) THM problems.</div><div> </div><div> <p><strong>REFERENCES:</strong></p> <p>[1] Toprak, E.; Mokni, N.; Olivella, S.; Pintado, X.: Thermo-Hydro-Mechanical Modelling of Buffer. Synthesis Report. August 2013.</p> <p>[2] Selvadurai, A.P.S; Suvorov, A.P.: Thermo-Poroelasticity and Geomechanics.CAMBRIDGE UNIVERSITY PRESS, 2017.</p> <p>[3] Diez, P.; Zlotnik, S.; Garcia-Gonzalez, A.; Huerta, A.: Encapsulated PGD algebraic toolbox operating with high-dimensional data. Accepted In Archives of Computational Methods in Engineering, 2019.</p> </div>


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