Model-based imputation of sound level data at thoroughfare using computational intelligence
The aim of the paper was to present the methodology of imputation of the missing sound level data, for a period of several months, in many noise monitoring stations located at thoroughfares by applying one model which describes variability of sound level within the tested period. To build the model,...
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Online Access: | https://doi.org/10.1515/eng-2021-0051 |
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doaj-f54bdd5c1d3b4502bfad798e36b828b32021-10-03T07:42:30ZengDe GruyterOpen Engineering2391-54392021-03-0111151952710.1515/eng-2021-0051Model-based imputation of sound level data at thoroughfare using computational intelligenceKekez Michał0Faculty of Mechatronics and Mechanical Engineering, Kielce University of Technology, al. Tysiąclecia Państwa Polskiego 7, 25-314Kielce, PolandThe aim of the paper was to present the methodology of imputation of the missing sound level data, for a period of several months, in many noise monitoring stations located at thoroughfares by applying one model which describes variability of sound level within the tested period. To build the model, at first the proper set of input attributes was elaborated, and training dataset was prepared using recorded equivalent sound levels at one of thoroughfares. Sound level values in the training data were calculated separately for the following 24-hour sub-intervals: day (6–18), evening (18–22) and night (22–6). Next, a computational intelligence approach, called Random Forest was applied to build the model with the aid of Weka software. Later, the scaling functions were elaborated, and the obtained Random Forest model was used to impute data at two other locations in the same city, using these scaling functions. The statistical analysis of the sound levels at the abovementioned locations during the whole year, before and after imputation, was carried out.https://doi.org/10.1515/eng-2021-0051imputationmonitoring stationsound levelrandom forestscaling functions |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kekez Michał |
spellingShingle |
Kekez Michał Model-based imputation of sound level data at thoroughfare using computational intelligence Open Engineering imputation monitoring station sound level random forest scaling functions |
author_facet |
Kekez Michał |
author_sort |
Kekez Michał |
title |
Model-based imputation of sound level data at thoroughfare using computational intelligence |
title_short |
Model-based imputation of sound level data at thoroughfare using computational intelligence |
title_full |
Model-based imputation of sound level data at thoroughfare using computational intelligence |
title_fullStr |
Model-based imputation of sound level data at thoroughfare using computational intelligence |
title_full_unstemmed |
Model-based imputation of sound level data at thoroughfare using computational intelligence |
title_sort |
model-based imputation of sound level data at thoroughfare using computational intelligence |
publisher |
De Gruyter |
series |
Open Engineering |
issn |
2391-5439 |
publishDate |
2021-03-01 |
description |
The aim of the paper was to present the methodology of imputation of the missing sound level data, for a period of several months, in many noise monitoring stations located at thoroughfares by applying one model which describes variability of sound level within the tested period. To build the model, at first the proper set of input attributes was elaborated, and training dataset was prepared using recorded equivalent sound levels at one of thoroughfares. Sound level values in the training data were calculated separately for the following 24-hour sub-intervals: day (6–18), evening (18–22) and night (22–6). Next, a computational intelligence approach, called Random Forest was applied to build the model with the aid of Weka software. Later, the scaling functions were elaborated, and the obtained Random Forest model was used to impute data at two other locations in the same city, using these scaling functions. The statistical analysis of the sound levels at the abovementioned locations during the whole year, before and after imputation, was carried out. |
topic |
imputation monitoring station sound level random forest scaling functions |
url |
https://doi.org/10.1515/eng-2021-0051 |
work_keys_str_mv |
AT kekezmichał modelbasedimputationofsoundleveldataatthoroughfareusingcomputationalintelligence |
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1716846153505439744 |