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Real-Time Adaptive Drag Minimization Wind Tunnel Investigation of a Flexible Wing with Variable Camber Continuous Trailing Edge Flap System

机译:可变弯度连续后缘襟翼系统的柔性机翼实时自适应风阻最小化风洞研究

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This paper reports the results of a recently completed real-time adaptive drag minimization wind tunnel investigation of a highly flexible wing wind tunnel model equipped with the Variable Camber Continuous Trailing Flap (VCCTEF) technology at the University of Washington Aeronautical Laboratory (UWAL). The wind tunnel investigation is funded by NASA SBIR Phase Ⅱ contract with Scientific Systems Company, Inc. (SSCI) and University of Washington (UW) as a subcontractor. The wind tunnel model is a sub-scale Common Research Model (CRM) wing constructed of foam core and fiberglass skin and is aeroelastically scaled to achieve a wing tip deflection of 10% of the wing semi-span which represents a typical wing tip deflection for a modern transport such as Boeing 787. The jig-shape twist of the CRM wing is optimized using a CART3D aero-structural model to achieve the minimum induced drag for the design cruise lift coefficient of 0.5. The wing is equipped with two chordwise cambered segments for each of the six spanwise flap sections for a total of 12 individual flap segments that comprise the VCCTEF system. Each of the 12 flap segments is actively controlled by an electric servo-actuator. The real-time adaptive drag optimization strategy includes an on-board aerodynamic model identification, a model excitation, and a real-time drag optimization. The on-board aerodynamic model is constructed para-metrically as a function of the angle of attack and flap positions to model the lift and drag coefficients of the wing. The lift coefficient models include a linear model and a second-order model. The drag coefficient models include a quadratic model and a higher-order up to 6th-order model to accurately model the drag coefficient at high angles of attack. The onboard aerodynamic model identification includes a recursive least-squares (RLS) algorithm and a batch least-squares (BLS) algorithm designed to estimate the model parameters. The model excitation method is designed to sample the input set that comprises the angle of attack and the flap positions. Three model excitation methods arc developed: random excitation method, sweep method, and iterative angle-of-attack seeking method. The real-time drag optimization includes a generic algorithm developed by SSCI and several optimization methods developed by NASA which include a second-order gradient Newton-Raphson optimization method, an iterative gradient optimization method, a pseudo-inverse optimization method, an analytical optimization method, and an iterative refinement optimization method. The first wind tunnel test entry took place in September 2017. This test revealed major hardware issues and required further redesign of the flap servo mechanisms. The second test entry took place in April 2018. However, the test was not successful due to the issues with the onboard aerodynamic model identification RLS algorithm which incorrectly identified model parameters. This test also provides an experimental comparison study between the VCCTEF and a variable camber discrete trailing edge flap (VCDTEF) without the elastomer transition mechanisms. The experimental result confirms the benefit of the VCCTEF which produces lower drag by 5% than the VCDTEF. The third and final test entry took place in June 2018 after the issues with the RLS algorithm have been identified and corrected. Additional improvements were implemented. These include the BLS algorithm, the iterative angle-of-attack seeking method, the iterative gradient optimization method, and the pseudo-inverse optimization method. The test objectives were successfully demonstrated as the real-time drag optimization identifies several optimal solutions at off-design lift coefficients. The iterative gradient optimization method is found to achieve up to 4.7% drag reduction for the off-design lift coefficient of 0.7. The pseudo-inverse optimization method which does not require the drag coefficient model is found to be quite effective in reducing drag. Up to 9.4% drag reduction for the off-design lift coefficient of 0.7 is achieved with the pseudo-inverse optimization method. The wind tunnel investigation demonstrates the potential of real-time drag optimization technology. Several new capabilities are developed that could enable future adaptive wing technologies for flexible wings equipped with drag control devices such as the VCCTEF.
机译:本文报告了华盛顿大学航空实验室(UWAL)最近完成的实时自适应阻力最小化风洞研究的结果,该研究是对配备有可变弧度连续尾翼(VCCTEF)技术的高柔性机翼风洞模型的研究。风洞调查是由NASA SBIRⅡ期合同资助的,该合同是与科学系统公司(SSCI)和华盛顿大学(UW)作为分包商进行的。风洞模型是由泡沫芯和玻璃纤维蒙皮构成的次尺度通用研究模型(CRM)机翼,并且进行了气动弹性缩放,以实现机翼半翼展度的10%的翼尖挠度,这代表了典型的翼尖挠度。像波音787这样的现代运输工具。使用CART3D航空结构模型对CRM机翼的夹具形状扭曲进行了优化,以使设计巡航升力系数为0.5时达到最小感应阻力。机翼为六个翼展襟翼部分的每一个配备了两个弦向弧形部分,总共构成了VCCTEF系统的12个单独的襟翼部分。 12个襟翼段中的每一个都由电动伺服执行器主动控制。实时自适应阻力优化策略包括机载空气动力学模型识别,模型激励和实时阻力优化。机上空气动力学模型是根据迎角和襟翼位置进行参数化构造的,以对机翼的升力和阻力系数进行建模。升力系数模型包括线性模型和二阶模型。阻力系数模型包括一个二次模型和一个高阶到6阶模型,以在高攻角下准确地建模阻力系数。机载空气动力学模型识别包括递归最小二乘(RLS)算法和设计用于估计模型参数的批量最小二乘(BLS)算法。模型激励方法旨在对包含攻角和襟翼位置的输入集进行采样。开发了三种模型激励方法:随机激励方法,扫描方法和迭代攻角搜索方法。实时阻力优化包括SSCI开发的通用算法和NASA开发的几种优化方法,包括二阶梯度Newton-Raphson优化方法,迭代梯度优化方法,伪逆优化方法,解析优化方法。 ,以及迭代优化优化方法。首次风洞测试于2017年9月进行。该测试揭示了主要的硬件问题,需要进一步重新设计襟翼伺服机构。第二次测试于2018年4月进行。但是,由于机载空气动力学模型识别RLS算法存在问题,该算法无法正确识别模型参数,因此该测试未成功。该测试还提供了在VCCTEF和不具有弹性体过渡机构的可变外倾离散后缘襟翼(VCDTEF)之间进行实验比较的研究。实验结果证实了VCCTEF的好处,它产生的阻力比VCDTEF低5%。在确定并纠正了RLS算法问题之后,第三次也是最后一次测试进入于2018年6月。实施了其他改进。其中包括BLS算法,迭代攻击角度寻找方法,迭代梯度优化方法和伪逆优化方法。实时阻力优化可在非设计升力系数下确定几种最佳解决方案,从而成功证明了测试目标。对于非设计升力系数0.7,发现迭代梯度优化方法可实现高达4.7%的阻力减小。发现不需要阻力系数模型的伪逆优化方法在减小阻力方面非常有效。使用拟逆优化方法,对于设计外提升系数为0.7的阻力减少高达9.4%。风洞调查证明了实时阻力优化技术的潜力。已开发出一些新功能,这些功能可能使将来的自适应机翼技术适用于配备了阻力控制装置(例如VCCTEF)的柔性机翼。

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