用于系统建模和测试的理想真值数据

Jeffrey D. Giovino
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引用次数: 0

摘要

空中交通管制(ATC)监控系统的建模和测试严重依赖于刺激数据。目前,刺激数据集是由重新编码的传感器测量数据或人工生成的场景生成的。两者都可能包含隐藏错误,从而导致系统的总误差。这些隐藏的错误表现为跳跃、不连续的位置、速度或加速度。重要的是要处理高阶项的不连续,而不仅仅是位置和速度。本文将讨论一种用于生成理想化真值数据的技术。理想真值数据使用原始数据作为指导,生成一个可实现的场景,该场景不包含位置、速度和加速度的不连续。理想化的真实数据不是原始的刺激数据过滤到完美的精度。所提出的方法使用常见的数学技术来消除原始刺激数据中速度和加速度的不连续,从而产生一个实际上没有误差的场景。虽然这些技术可能适用于许多系统,但提供了将这些技术应用于正在测试的飞机监视跟踪器的案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Idealized truth data for system modeling and testing
Modeling and testing Air Traffic Control (ATC) surveillance systems rely heavily on stimulus data. Currently, stimulus data sets are generated either from recoded sensor measurements or artificially generated scenarios. Both may contain hidden errors, contributing to the total error of the system. These hidden errors appear as jumpy, non-continuous positions, velocities, or accelerations. It is important to address the discontinuities in the higher order terms, not just position and velocity. This paper will discuss a technique used to generate idealized truth data. Idealized truth data uses the original data as a guide to generate an achievable scenario that does not contain discontinuities in position, velocity, and acceleration. Idealized truth data is not the original stimulus data filtered to perfect accuracy. The approach presented uses common mathematical techniques to eliminate discontinuities in velocity and acceleration from the original stimulus data, resulting in a scenario that could have happened with effectively no error. Though these techniques may be applicable to many systems, a case study applying these techniques to an aircraft surveillance tracker under test is provided.
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