Augmenting the space domain awareness ground architecture via decision analysis and multi-objective optimization

Q3 Decision Sciences
A. Vasso, R. Cobb, J. Colombi, Bryan D. Little, David W. Meyer
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引用次数: 3

Abstract

Purpose The US Government is challenged to maintain pace as the world’s de facto provider of space object cataloging data. Augmenting capabilities with nontraditional sensors present an expeditious and low-cost improvement. However, the large tradespace and unexplored system of systems performance requirements pose a challenge to successful capitalization. This paper aims to better define and assess the utility of augmentation via a multi-disiplinary study. Design/methodology/approach Hypothetical telescope architectures are modeled and simulated on two separate days, then evaluated against performance measures and constraints using multi-objective optimization in a heuristic algorithm. Decision analysis and Pareto optimality identifies a set of high-performing architectures while preserving decision-maker design flexibility. Findings Capacity, coverage and maximum time unobserved are recommended as key performance measures. A total of 187 out of 1017 architectures were identified as top performers. A total of 29% of the sensors considered are found in over 80% of the top architectures. Additional considerations further reduce the tradespace to 19 best choices which collect an average of 49–51 observations per space object with a 595–630 min average maximum time unobserved, providing redundant coverage of the Geosynchronous Orbit belt. This represents a three-fold increase in capacity and coverage and a 2 h (16%) decrease in the maximum time unobserved compared to the baseline government-only architecture as-modeled. Originality/value This study validates the utility of an augmented network concept using a physics-based model and modern analytical techniques. It objectively responds to policy mandating cataloging improvements without relying solely on expert-derived point solutions.
通过决策分析和多目标优化增强空间域感知地面体系结构
目的:美国政府面临的挑战是保持世界空间物体编目数据事实上的提供者的步伐。增强非传统传感器的能力是一种快速、低成本的改进。然而,巨大的交易空间和未开发的系统性能需求对成功资本化构成了挑战。本文旨在通过多学科研究来更好地定义和评估增强的效用。设计/方法/方法假设的望远镜架构在两天内建模和模拟,然后使用启发式算法中的多目标优化对性能指标和约束进行评估。决策分析和帕累托最优性确定了一组高性能架构,同时保留了决策者设计的灵活性。建议将容量、覆盖范围和最大未观察时间作为关键性能度量。在1017个架构中,共有187个被认为是表现最好的。总共有29%的传感器出现在超过80%的顶级架构中。额外的考虑进一步将交易空间减少到19个最佳选择,每个空间物体平均收集49-51个观测值,平均最大未观测时间为595-630分钟,提供对地球同步轨道带的冗余覆盖。这意味着容量和覆盖范围增加了三倍,与建模的仅限政府的基准架构相比,最长未观察时间减少了2小时(16%)。原创性/价值本研究使用基于物理的模型和现代分析技术验证了增强网络概念的实用性。它客观地响应强制编目改进的政策,而不仅仅依赖于专家派生的点解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
5
审稿时长
12 weeks
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