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多维输出模型集成验证方法研究
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作者 李浩 唐硕 闫晓东 《系统仿真学报》 CAS CSCD 北大核心 2013年第5期882-886,共5页
基于经典假设检验和多元数理统计方法,提出了三种多维输出模型集成验证的度量,能够在多维输出模型的验证工作中考虑输出变量之间的隐含相关信息进行集成验证,避免忽略这些隐含信息而对模型的可信性做出错误判断。研究了Box-Cox等非正态... 基于经典假设检验和多元数理统计方法,提出了三种多维输出模型集成验证的度量,能够在多维输出模型的验证工作中考虑输出变量之间的隐含相关信息进行集成验证,避免忽略这些隐含信息而对模型的可信性做出错误判断。研究了Box-Cox等非正态数据转换方法,目的是满足各种假设检验基于正态分布假设的要求,扩大所提出的模型集成验证方法的工程应用范围。最后,数值算例说明对多维输出模型进行集成验证能够得到比单变量验证更准确的结果,并将所提方法应用到某飞行器三自由度运动学模型的验证工作中,说明其具有一定的工程意义。 展开更多
关键词 模型验证 Box-Cox变换 可信度评估 假设检验 多维输出模型
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Solar Sail Transfers under Uncertainties:A Deep Reinforcement Learning Approach
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作者 Christian Bianchi Lorenzo Niccolai Giovanni Mengali 《Space(Science & Technology)》 2025年第1期533-545,共13页
A deep reinforcement learning approach is used to analyze the optimal 3-dimensional interplanetary transfers of a solar sail,accounting for various sources of uncertainty.The propulsive acceleration of the sail is des... A deep reinforcement learning approach is used to analyze the optimal 3-dimensional interplanetary transfers of a solar sail,accounting for various sources of uncertainty.The propulsive acceleration of the sail is described using an optical thrust model,with nominal optical coefficients derived from recently published experimental measurements.Two primary sources of uncertainty in the solar sail are considered:the imprecise knowledge of the sail’s optical properties,which impacts both the magnitude and direction of the propulsive acceleration,and the presence of wrinkles on the sail due to the folding(prior to launch)and unfolding(after release on orbit)of the ultrathin membrane.The study begins with a minimum-time interplanetary trajectory obtained using an indirect optimization technique in an unperturbed scenario,serving as the reference trajectory for the sail in the presence of model uncertainties.To account for these uncertainties,a proximal policy optimization algorithm is used to train an agent that learns a control policy associating any orbital state with the corresponding sail attitude,minimizing deviations from the reference trajectory.Two distinct scenarios are analyzed,each incorporating the aforementioned sources of uncertainty.The trained control policies are then tested through Monte Carlo simulations to evaluate their effectiveness and robustness.As a case study,a 3-dimensional transfer from Earth’s orbit to Venus’orbit is examined,demonstrating that the control policy derived from reinforcement learning is capable of guiding the sail to its target with good accuracy,providing real-time control with relatively low computational effort. 展开更多
关键词 propulsive acceleration solar sail optical thrust modelwith deep reinforcement learning interplanetary transfers nominal optical coefficients deep reinforcement learning approach solar sailaccounting
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