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CHARACTERIZATION OF FLOW REGIMES IN GAS-SOLID FLUIDIZED BEDS VIA A DATA DRIVEN FRAMEWORK

机译:通过数据驱动框架对气固流化床流动制度的特征

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Gas-solid fluidized beds are widely used in petroleum, chemical, mineral, pharmaceutical, and power plant applications. The performance of fluidized bed reactors strongly depends on the flow dynamics. Characterization of a particle-laden flow has been one of the challenging issues in fluidization research. The simulation of flow in such processes is challenging as the complex dynamic systems comprised of numerous particles and fluidizing gas confined in specific devices. Nonlinear particle-particle/wall and particle-gas interactions lead to complex flow behavior of the gas-solid flows. We used MFiX to simulate a gas-solid flow in fluidized beds. A data-driven framework is trained with the data from MFiX-PIC simulations. The trained and tested machine learning model is used to characterize the flow regimes in fluidized beds. In the present study, the void fraction is used to characterize the flow regimes. However, others in the literature have used pressure, temperature, heat transfer coefficient, acoustic emission, vibration, and electrostatic charge for the characterization of flow regimes.
机译:气固流化床广泛应用于石油,化学,矿物,制药和发电厂应用。流化床反应堆的性能强烈取决于流动动态。粒子载流的特征是流化研究中的挑战性问题之一。在这些过程中的流动模拟是具有挑战性的,因为该综合动态系统包括在特定装置中限制的许多颗粒和流化气体。非线性颗粒/壁和颗粒 - 气相导致气体固体流动的复杂流动。我们使用MFIX模拟流化床中的气体固体流动。数据驱动的框架是由MFIX-PIC仿真的数据培训。培训和测试的机器学习模型用于表征流化床中的流动状态。在本研究中,空隙部分用于表征流动制度。然而,文献中的其他人使用了压力,温度,传热系数,声发射,振动和静电电荷来表征流量制度。

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