Inicio  /  Aerospace  /  Vol: 10 Par: 4 (2023)  /  Artículo
ARTÍCULO
TITULO

Towards Accurate Vortex Separation Simulations with RANS Using Improved k-kL Turbulence Model

Erdem Dikbas and Özgür Ugras Baran    

Resumen

In this study, we present our improved RANS results of the missile aerodynamic flow computation involving leading edge vortex separation. We have used our in-house tailored version of the open source finite volume solver FlowPsi. An ongoing study in the NATO STO Applied Vehicle Technologies Panel (AVT-316) has revealed that a highly maneuverable missile configuration (LK6E2) shows unusual rolling moment characteristics due to the vortex?surface interactions occurring during wing leading edge separation of vortices. We show the performance of the recently developed k-???? k L turbulence model for this test problem. This turbulence model is shown to have superior capabilities compared to other widely used turbulence models, such as Spalart?Allmaras and shear stress transport. With the k-???? k L turbulence model, it is possible to achieve more realistic computational results that agree better with the physical data. In addition, we propose improvements to this turbulence model to achieve even better predictions of rolling moment behavior. Modifications based on turbulence production terms in the k-???? k L turbulence model significantly improved the predicted rolling moment coefficient, in terms of accuracy and uncertainty.

 Artículos similares

       
 
George Kontakiotis, Assimina Antonarakou, Evangelia Besiou, Elisavet Skampa and Maria V. Triantaphyllou    
The late Quaternary is a key stratigraphic interval as it encompasses the Late Glacial to Holocene transition, which is characterized by a series of pronounced centennial climate oscillations and subsequent short-term events of paleoceanographic variabil... ver más

 
Lars M. Heijenrath and Wim J. C. Verhagen    
Accurate estimation of spare part demand is challenging in the case of intermittent or lumpy demand, characterised by infrequent demand occurrence and variability in demand size. While prior research has considered the effect of exogenous variables on sp... ver más
Revista: Aerospace

 
Raza Nowrozy, Khandakar Ahmed, Hua Wang and Timothy Mcintosh    
This paper proposed a novel privacy model for Electronic Health Records (EHR) systems utilizing a conceptual privacy ontology and Machine Learning (ML) methodologies. It underscores the challenges currently faced by EHR systems such as balancing privacy ... ver más
Revista: Informatics

 
Jaskaran Gill, Madhu Chetty, Suryani Lim and Jennifer Hallinan    
Relation extraction from biological publications plays a pivotal role in accelerating scientific discovery and advancing medical research. While vast amounts of this knowledge is stored within the published literature, extracting it manually from this co... ver más
Revista: Informatics

 
Tianyi Xie, Yaorong Ge, Qian Xu and Shi Chen    
Understanding different aspects of public concerns and sentiments during large health emergencies, such as the COVID-19 pandemic, is essential for public health agencies to develop effective communication strategies, deliver up-to-date and accurate healt... ver más
Revista: AI