首页> 外文会议>IEEE Aerospace Conference >State-of-health analysis applied to spacecraft telemetry based on a new projection to latent structure discriminant analysis algorithm
【24h】

State-of-health analysis applied to spacecraft telemetry based on a new projection to latent structure discriminant analysis algorithm

机译:基于对潜在结构判别分析算法的新投影,将健康状态分析应用于航天器遥测

获取原文

摘要

The potential for space mission operations and the supporting ground infrastructure is growing dramatically, fueled by new technologies, but with that growth comes increased complexity, and daunting reliability and security challenges. And like most complex endeavors, space operations are being asked to do more with less. In order to deliver cost-effective space operations services, researchers must explore novel ways to build and operate systems under study. Innovation is the engine that drives progress in today's high-tech global economy. Statistical multivariate latent techniques are one of the vital learning tools that are used to tackle the aforementioned problem coherently. There has been a tremendous increase in the volume of telemetry data over the last decade from contemporary spacecrafts. All these datasets need to be analyzed for finding interesting patterns or for searching for both moderate and significant outliers. Information extraction from such rich data sources using advanced statistical methodologies is a challenging task due to the massive volume of data. To solve this problem, in this paper, we present a novel supervised learning algorithm based on projection to latent structure discriminant analysis technique (PLS-DA). The algorithm is particularly uses to model, analyze, classify telemetry data and identify key contributors to anomalous events while simultaneously measuring several predictors and response variables. The performance of the algorithm using the telemetry acquired from of attitude determination and control system (ADCS) of actual remote sensing spacecraft was presented. In addition, a critical compression between the analysis results obtained by the algorithm and the multivariate statistical analysis software Simca-P developed by Umetrics was presented. Finally, the algorithm provides competent information in modelling, classifying, diagnosis and prediction as well as adding more insight and physical interpretation to the ADCS s- ate of health (SOH).
机译:在新技术的推动下,太空飞行任务和地面支持基础设施的潜力正在急剧增长,但随之而来的是复杂性的增加,可靠性和安全性挑战的艰巨性。像大多数复杂的工作一样,人们要求太空操作事半功倍。为了提供具有成本效益的太空运行服务,研究人员必须探索构建和运行正在研究的系统的新颖方法。创新是推动当今高科技全球经济进步的引擎。统计多元潜在技术是用于连贯解决上述问题的重要学习工具之一。在过去的十年中,来自现代航天器的遥测数据量有了巨大的增长。需要分析所有这些数据集以找到有趣的模式或搜索中度和显着的异常值。由于海量数据,使用高级统计方法从如此丰富的数据源中提取信息是一项艰巨的任务。为了解决这个问题,在本文中,我们提出了一种基于投影到潜在结构判别分析技术(PLS-DA)的新型监督学习算法。该算法特别用于建模,分析,分类遥测数据并识别异常事件的关键因素,同时测量多个预测变量和响应变量。提出了从实际遥感航天器姿态确定与控制系统(ADCS)获取的遥测算法的性能。此外,提出了在算法获得的分析结果与Umetrics开发的多元统计分析软件Simca-P之间的临界压缩。最后,该算法在建模,分类,诊断和预测方面提供了有力的信息,并为ADCS健康状况(SOH)添加了更多的见解和物理解释。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号