|国家预印本平台
首页|A Comparative Study of Optimal Control and Neural Networks in Asteroid Rendezvous Mission Analysis

A Comparative Study of Optimal Control and Neural Networks in Asteroid Rendezvous Mission Analysis

A Comparative Study of Optimal Control and Neural Networks in Asteroid Rendezvous Mission Analysis

来源:Arxiv_logoArxiv
英文摘要

This paper presents a comparative study of the applicability and accuracy of optimal control methods and neural network-based estimators in the context of porkchop plots for preliminary asteroid rendezvous mission design. The scenario considered involves a deep-space CubeSat equipped with a low-thrust engine, departing from Earth and rendezvousing with a near-Earth asteroid within a three-year launch window. A low-thrust trajectory optimization model is formulated, incorporating variable specific impulse, maximum thrust, and path constraints. The optimal control problem is efficiently solved using Sequential Convex Programming (SCP) combined with a solution continuation strategy. The neural network framework consists of two models: one predicts the minimum fuel consumption ($Δv$), while the other estimates the minimum flight time ($Δt$) which is used to assess transfer feasibility. Case results demonstrate that, in simplified scenarios without path constraints, the neural network approach achieves low relative errors across most of the design space and successfully captures the main structural features of the porkchop plots. In cases where the SCP-based continuation method fails due to the presence of multiple local optima, the neural network still provides smooth and globally consistent predictions, significantly improving the efficiency of early-stage asteroid candidate screening. However, the deformation of the feasible region caused by path constraints leads to noticeable discrepancies in certain boundary regions, thereby limiting the applicability of the network in detailed mission design phases. Overall, the integration of neural networks with porkchop plot analysis offers a effective decision-making tool for mission designers and planetary scientists, with significant potential for engineering applications.

Zhong Zhang、Niccolò Michelotti、Gonçalo Oliveira Pinho、Francesco Topputo

航空航天技术航天

Zhong Zhang,Niccolò Michelotti,Gonçalo Oliveira Pinho,Francesco Topputo.A Comparative Study of Optimal Control and Neural Networks in Asteroid Rendezvous Mission Analysis[EB/OL].(2025-08-04)[2025-08-16].https://arxiv.org/abs/2508.02920.点此复制

评论