194144

Satellite battery sensor values prediction using Bayesian ridge regression models

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Last updated: 04 Jan 2025

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Abstract

Proper mission control plays a key role in the lifetime of space mission operation, as it ensures that all resources are efficiently utilized when achieving mission goals. Ground control station operation mainly depends on received telemetry together with models simulating spacecraft`s subsystems. Created models help in raising the level of autonomy of MCC (Mission Control Center). Data driven models describe the actual state of the subsystem in real operation situations rather than theoretical costly physical models. This paper proposes data driven models for satellite battery subsystem based on Bayesian ridge regression algorithm. The ridge coefficients minimize a penalized residual sum of squares Thirty models of all thirty battery variables (capacitance, voltage, pressure and temperature) are built from normal operation data. Sensor reading value can be predicted from an observation of all other 29 values. Faults present in sensors or in system can be detected if predicted values are not equal to actual downloaded data from satellite. Bayesian ridge regression models are validated in terms of slope, intercept, R2-value, Q2 -value P-value and standard error.

DOI

10.1088/1757-899X/610/1/012012

Authors

First Name

Mohamed

Last Name

Galal

MiddleName

A

Affiliation

Department of Electrical Engineering, Military Technical College, 11766, Cairo, Egypt.

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First Name

Wessam

Last Name

Hussein

MiddleName

M

Affiliation

Department of Mechatronic Engineering, Military Technical College, 11766, Cairo, Egypt.

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First Name

Ezz El-din

Last Name

Abdelkawy

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-

Affiliation

Department of Electrical Engineering, Military Technical College, 11766, Cairo, Egypt.

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Volume

18

Article Issue

18

Related Issue

27598

Issue Date

2019-04-01

Receive Date

2021-09-12

Publish Date

2019-04-01

Page Start

1

Page End

6

Print ISSN

2090-0678

Online ISSN

2636-364X

Link

https://asat.journals.ekb.eg/article_194144.html

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https://asat.journals.ekb.eg/service?article_code=194144

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14

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Original Article

Type Code

737

Publication Type

Journal

Publication Title

International Conference on Aerospace Sciences and Aviation Technology

Publication Link

https://asat.journals.ekb.eg/

MainTitle

Satellite battery sensor values prediction using Bayesian ridge regression models

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Article

Created At

22 Jan 2023