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Optimization of Low Reynolds Number Airfoils for Martian Rotor Applications Using an Evolutionary Algorithm

机译:应用进化算法优化火星转子应用的低雷诺数机翼

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The Mars Helicopter (MH) will be flying on the NASA Mars 2020 rover mission scheduled to launch in July of 2020. Research is being performed at the Jet Propulsion Laboratory (JPL) and NASA Ames Research Center to extend the current capabilities and develop the Mars Science Helicopter (MSH) as the next possible step for Martian rotorcraft. The low atmospheric density and the relatively small-scale rotors result in very low chord-based Reynolds number flows over the rotor airfoils. The low Reynolds number regime results in rapid performance degradation for conventional airfoils due to laminar separation without reattachment. Unconventional airfoil shapes with sharp leading edges are explored and optimized for aerodynamic performance at representative Reynolds-Mach combinations for a concept rotor. Sharp leading edges initiate immediate flow separation, and the occurrence of large-scale vortex shedding is found to contribute to the relative performance increase of the optimized airfoils, compared to conventional airfoil shapes. The oscillations are shown to occur independent from laminar-turbulent transition and therefore result in sustainable performance at lower Reynolds numbers. Comparisons are presented to conventional airfoil shapes and peak lift-to-drag ratio increases between 17% and 41% are observed for similar section lift.
机译:火星直升机(MH)将在计划于2020年7月发射的NASA 2020火星探测器飞行中飞行。喷气推进实验室(JPL)和NASA艾姆斯研究中心正在进行研究,以扩展当前的能力并发展火星科学直升机(MSH)是火星旋翼飞机下一步的发展方向。低大气密度和相对较小的旋翼导致旋翼上的基于弦的雷诺数非常低。由于层流分离而没有重新附接,低雷诺数制度导致常规机翼的性能快速下降。在概念雷诺的代表性雷诺-马赫组合中,探索并优化了具有锋利前缘的非常规翼型形状,以提高空气动力学性能。锋利的前缘开始立即进行流分离,并且发现与常规翼型相比,大规模涡旋脱落的发生有助于优化翼型的相对性能提高。振荡被证明独立于层流湍流的发生,因此在较低的雷诺数下可实现可持续的性能。比较了常规翼型的形状,对于相似的截面升力,峰值升阻比增加了17%到41%。

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