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Detection of Voltage Anomalies in Spacecraft Storage Batteries Based on a Deep Belief Network

机译:基于深信度网络的航天器储能电池电压异常检测

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摘要

For a spacecraft, its power system is vital to its normal operation and capacity to complete flight missions. The storage battery is an essential component of a power system. As a spacecraft spends more time in orbit and its storage battery undergoes charge/discharge cycles, the performance of its storage battery will gradually decline, resulting in abnormal multivariate correlations between the various parameters of the storage battery system. When these anomalies reach a certain level, battery failure will occur. Therefore, the detection of spacecraft storage battery anomalies in a timely and accurate fashion is of great importance to the in-orbit operation, maintenance and management of a spacecraft. Thus, in this study, based on storage battery-related telemetry parameter data (including charge/discharge currents, voltages, temperatures and times) downloaded from an in-orbit satellite, a voltage anomaly detection algorithm for spacecraft storage batteries based on a deep belief network (DBN) is proposed. By establishing a neural network (NN) model depicting the correlations between each of the variables of temperature, current, pressure and charge/discharge times and voltage, this algorithm supports the detection of anomalies in the state-of-health of a storage battery in a timely fashion. The proposed algorithm is subsequently applied to the storage battery of the aforementioned in-orbit satellite. The results show the following. The anomalies detected using the proposed algorithm are more reliable, effective and visual than those obtained using the conventional multivariate anomaly detection algorithms. Compared to the classic backpropagation NN-based algorithm, the DBN-based algorithm is notably advantageous in terms of the model training time and convergence.
机译:对于航天器而言,其动力系统对于其正常运行和完成飞行任务的能力至关重要。蓄电池是电源系统的重要组成部分。随着航天器在轨道上花费更多的时间,并且其蓄电池经历充电/放电循环,其蓄电池的性能将逐渐下降,从而导致蓄电池系统的各个参数之间出现异常的多元关联。当这些异常达到一定程度时,将发生电池故障。因此,及时准确地探测航天器蓄电池异常对航天器在轨运行,维护和管理具有重要意义。因此,在这项研究中,基于从在轨卫星下载的与蓄电池相关的遥测参数数据(包括充电/放电电流,电压,温度和时间),基于深层信念的航天器蓄电池电压异常检测算法网络(DBN)被提出。通过建立描述温度,电流,压力以及充/放电时间和电压各个变量之间的相关性的神经网络(NN)模型,该算法可支持检测电池中健康状态的异常。及时的时尚。所提出的算法随后被应用于上述在轨卫星的蓄电池。结果显示如下。与使用常规多元异常检测算法获得的异常相比,使用所提出算法检测的异常更加可靠,有效和直观。与经典的基于NN的反向传播算法相比,基于DBN的算法在模型训练时间和收敛性方面具有明显优势。

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