管理数据的自适应压缩方案

Jan-Gerd Mess, R. Schmidt, G. Fey
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引用次数: 13

摘要

为了增加对航天器健康状况、环境和由此产生的机械应力以及航天器位置和方向等物理参数的可观测性,需要扩大对内务数据的监测。这意味着越来越多的机载传感器应用于各种物理量,如温度、振动、加速度、电压、电流等。这些传感器需要在时域上提供高分辨率和高精度。扩展的内务管理系统产生的数据量越来越重要。然而,对于客户来说,家政数据没有直接价值,因此在向地面分配带宽方面,它从属于科学有效载荷数据。为了优化给定带宽预算下的信息吞吐量,需要应用诸如熵编码和有损数据压缩之类的数据压缩。与此同时,对地面工程师来说,内务数据的准确性和允许误差的大小对其价值至关重要。因此,考虑到要处理的数据的性质,必须谨慎地应用有损数据压缩。在本文中,我们评估了基于变换的压缩技术,并分析了它们对内务数据的影响以及对后续机载航天器熵编码的适用性。为此,我们对发射器(ARIANE5)和卫星(AISat)收集的真实传感器数据进行了各种变换,并从数据质量、压缩比、计算效率和后续熵编码的有效性等方面分析了它们的性能。我们的研究结果表明,在数据序列的关键时间框架内不引入显著误差的情况下,快速振荡振动传感器的数据减少率为96.5%,慢速温度传感器的数据减少率为99.5%。
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Adaptive compression schemes for housekeeping data
Extended monitoring of housekeeping data is required to increase the observability of a spacecrafts health status, its environment and resulting mechanical stress as well as physical parameters like the spacecrafts position and orientation. This implies the application of an increasing number of onboard sensors for various physical quantities like temperature, vibration, acceleration, voltage, current and others. These sensors need to offer high resolution in the time domain and high accuracy. The amount of data produced by an extended housekeeping system proves increasingly significant. However, to customers, housekeeping data is not of direct value and has therefore been subordinated to scientific payload data in terms of the allocation of bandwidth towards ground. In order to optimize the information throughput for a given bandwidth budget, data compression such as entropy coding as well as lossy data compaction need to be applied. At the same time, the accuracy and the allowed magnitude of error of housekeeping data is crucial to its value for ground engineers. As a result, especially lossy data compaction has to be applied carefully taking into account the nature of the data to be processed. In this paper, we evaluate transform-based compression techniques and analyze their effect on housekeeping data and suitability for subsequent entropy coding on board spacecrafts. To do so, we apply a variety of transforms to real sensor data collected by launchers (ARIANE5) as well as satellites (AISat) and analyze their performance in terms of data quality, compression ratio, computing effciency and effectiveness of subsequent entropy coding. Our results show that a data reduction of 96.5% for quickly oscilatting vibration sensors and of 99.5% for slower temperature sensors can be achieved without introducing a significant error during critical time frames within data sequences.
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