Joint state estimation of indoor thermal dynamics with unknown inputs using augmented fading memory Kalman filter
Joint state estimation of indoor thermal dynamics with unknown inputs using augmented fading memory Kalman filter
An intelligent and efficient utilization of a heating, ventilation, and air conditioning system can be instrumental to reduce the building energy consumption, which in turn, is expected to reduce the green-house gases. The energy profiling requires modelling and estimation of the building environment with uncertainties. This paper proposes a strategy to estimate indoor thermal dynamics at multiple walls using a forgetting factor-based fading memory Kalman filter (FMKF) in presence of unknown inputs. This work also proposes a joint state estimation scheme based on FMKF which considers augmentation of the unknown heating energy inputs along with the thermal parameters of the thermodynamic model developed for indoor environment. The contribution of unknown inputs in the process of state estimation have been studied in the context of measuring node distribution. The proposed scheme has been implemented for multiple real-life thermal scenarios and results outperformed the conventional Kalman filter-based estimation scheme.
Building energy model, fading memory Kalman filter, joint thermal state estimation, multi-sensor parameter estimation, RC network model
90-106
Das, Bed Prakash
59fade5c-f9c9-4eec-9b83-19a37357de06
Das Sharma, Kaushik
1267bc46-a2e4-4cf8-848d-11a56139ab52
Chatterjee, Amitava
8d542814-3acb-4b7d-8460-d024625ac778
Bera, Jitendranath
d0b4e4d5-9a1d-4e5c-afa4-b60666095f35
2023
Das, Bed Prakash
59fade5c-f9c9-4eec-9b83-19a37357de06
Das Sharma, Kaushik
1267bc46-a2e4-4cf8-848d-11a56139ab52
Chatterjee, Amitava
8d542814-3acb-4b7d-8460-d024625ac778
Bera, Jitendranath
d0b4e4d5-9a1d-4e5c-afa4-b60666095f35
Das, Bed Prakash, Das Sharma, Kaushik, Chatterjee, Amitava and Bera, Jitendranath
(2023)
Joint state estimation of indoor thermal dynamics with unknown inputs using augmented fading memory Kalman filter.
Journal of Building Performance Simulation, 16 (1), .
(doi:10.1080/19401493.2022.2111604).
Abstract
An intelligent and efficient utilization of a heating, ventilation, and air conditioning system can be instrumental to reduce the building energy consumption, which in turn, is expected to reduce the green-house gases. The energy profiling requires modelling and estimation of the building environment with uncertainties. This paper proposes a strategy to estimate indoor thermal dynamics at multiple walls using a forgetting factor-based fading memory Kalman filter (FMKF) in presence of unknown inputs. This work also proposes a joint state estimation scheme based on FMKF which considers augmentation of the unknown heating energy inputs along with the thermal parameters of the thermodynamic model developed for indoor environment. The contribution of unknown inputs in the process of state estimation have been studied in the context of measuring node distribution. The proposed scheme has been implemented for multiple real-life thermal scenarios and results outperformed the conventional Kalman filter-based estimation scheme.
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Accepted/In Press date: 5 August 2022
e-pub ahead of print date: 2 September 2022
Published date: 2023
Keywords:
Building energy model, fading memory Kalman filter, joint thermal state estimation, multi-sensor parameter estimation, RC network model
Identifiers
Local EPrints ID: 506936
URI: http://eprints.soton.ac.uk/id/eprint/506936
ISSN: 1940-1493
PURE UUID: 6dd995ef-e7b5-44f4-87ec-a23d12f9dca6
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Date deposited: 21 Nov 2025 17:38
Last modified: 22 Nov 2025 03:15
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Contributors
Author:
Bed Prakash Das
Author:
Kaushik Das Sharma
Author:
Amitava Chatterjee
Author:
Jitendranath Bera
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