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Neural Network for Positioning Space Station Solar Arrays

机译:用于定位空间站太阳电池阵列的神经网络

摘要

As a shuttle approaches the Space Station Freedom for a rendezvous, the shuttle's reaction control jet firings pose a risk of excessive plume impingement loads on Freedom solar arrays. The current solution to this problem, in which the arrays are locked in a feathered position prior to the approach, may be neither accurate nor robust, and is also expensive. An alternative solution is proposed here: the active control of Freedom's beta gimbals during the approach, positioning the arrays dynamically in such a way that they remain feathered relative to the shuttle jet most likely to cause an impingement load. An artificial neural network is proposed as a means of determining the gimbal angles that would drive plume angle of attack to zero. Such a network would be both accurate and robust, and could be less expensive to implement than the current solution. A network was trained via backpropagation, and results, which compare favorably to the current solution as well as to some other alternatives, are presented. Other training options are currently being evaluated.
机译:当航天飞机接近太空站自由以集合点飞行时,航天飞机的反应控制射流可能会在自由太阳能阵列上产生过多的烟柱撞击负载。在该方法之前,将阵列锁定在平整位置上的该问题的当前解决方案可能既不准确也不稳固,并且价格昂贵。这里提出了一个替代解决方案:进近过程中对Freedom的β万向节的主动控制,动态定位阵列,使它们相对于最有可能引起冲击载荷的往复式喷气机保持顺滑。提出了一种人工神经网络作为确定可将羽流攻角驱动为零的万向节角的方法。这样的网络既准确又健壮,并且实现起来比当前解决方案便宜。通过反向传播对网络进行了训练,并给出了与当前解决方案以及某些其他替代方案相比较的结果。当前正在评估其他培训选项。

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