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Prediction Models for the Plant Coverage Percentage of a Vertical Green Wall System: Regression Models and Artificial Neural Network Models

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dc.contributor.author Chiruță, Ciprian
dc.contributor.author Stoleriu, Iulian
dc.contributor.author Cojocariu, Mirela
dc.date.accessioned 2024-03-15T15:10:11Z
dc.date.available 2024-03-15T15:10:11Z
dc.date.issued 2023-03-23
dc.identifier.citation Chiruţă, Ciprian, Iulian Stoleriu, and Mirela Cojocariu. 2023. "Prediction Models for the Plant Coverage Percentage of a Vertical Green Wall System: Regression Models and Artificial Neural Network Models" Horticulturae 9, no. 4: 419. https://doi.org/10.3390/horticulturae9040419 en_US
dc.identifier.issn 2311-7524
dc.identifier.uri https://www.mdpi.com/2311-7524/9/4/419
dc.identifier.uri https://repository.iuls.ro/xmlui/handle/20.500.12811/3679
dc.description.abstract (1) Background: The expansion that most cities have been showing for more than half a century has also brought with it an increase in the density of buildings, most of the time at the expense of green areas. This has led to negative effects, such as overpopulation of cities, rising urban temperatures, pollution of water, air, soil, and others, affecting daily urban life. As a result, specialists from different fields form multidisciplinary teams are looking for solutions to counteract these effects. The subject of visible facades has registered an increased interest among researchers in recent years because they can represent a viable solution that can contribute to increasing the degree of urban comfort. However, for such a system to be effective, it is necessary that the plants used grow and develop harmoniously and ensure the best possible coverage of the facade. The aim of this research is to find an adequate mathematical model that can predict, with a high degree of accuracy, the percentage of plant coverage of a green wall system, which is positioned in the city of Iasi, northeastern Romania. (2) Methods: The models used for this purpose were a multiple linear regression model (MLR) and a model based on a feed-forward artificial neural network (ANN). Four independent variables (soil temperature, soil moisture, week of the year, and cardinal wall orientation) and the interaction between two variables (soil temperature and week of the year) were used for the multiple linear regression model. Artificial neural networks were also trained to estimate the percentage of plant coverage in the analyzed system, and the network with the best mean squared error performance was chosen in doing predictions. For both MLR and ANN models, we constructed confidence intervals for the degree of plant coverage of the system (PCP) for a set of observed values. In the case of the ANN model, the confidence interval was derived via the bootstrap method, which is a resampling with replacement technique used to generate new samples from the original dataset. To the best of our knowledge, the derivation of confidence intervals using a combination of neural networks with the bootstrap method has not been used before, at least for predictions in horticulture. (3) Results: The ANN employed here consisted of one input layer with four neurons, one hidden layer with five neurons, and one output layer with one neuron. The comparison showed that the confidence interval obtained using ANN has a shorter length (and thus it is more accurate) than that obtained by the multiple linear regression model. The choice of the experimental module façade had a significant influence (of magnitude 1.9073) on the plant coverage percentage. An increase of one unit in soil humidity will determine an increase of almost 5.1% in plant coverage percentage, and an increase of 1 °C in soil temperature will determine a decrease of almost 1.21% in plant coverage percentage. The choice of the experimental module façade had a significant influence (of magnitude 1.9073) on the plant coverage percentage. (4) Conclusions: Although both methods showed to be useful in making predictions, the ANN method showed better predictive capabilities, at least when the performance is measured by the mean squared error. This fact may be useful when predicting the percentage of plant coverage of a green wall system with a higher degree of accuracy, in the case of organizing outdoor exhibitions or other similar projects. en_US
dc.language.iso en en_US
dc.publisher MDPI en_US
dc.rights Attribution 4.0 International
dc.rights.uri https://creativecommons.org/licenses/by/4.0/deed.ro
dc.subject artificial neural networks en_US
dc.subject plant coverage percentage en_US
dc.subject multiple regression model en_US
dc.subject prediction en_US
dc.subject green wall system en_US
dc.title Prediction Models for the Plant Coverage Percentage of a Vertical Green Wall System: Regression Models and Artificial Neural Network Models en_US
dc.type Article en_US
dc.author.affiliation Ciprian Chiruță, Mirela Cojocariu, Faculty of Horticulture, “Ion Ionescu de la Brad” Iasi University of Life Sciences, Aleea Mihail Sadoveanu nr.3, 700490 Ias,i, Romania
dc.author.affiliation Iulian Stoleriu, Faculty of Mathematics, “Alexandru Ioan Cuza” University, Bulevardul Carol I 11, 700506 Ias,i, Romania
dc.publicationName Horticulturae
dc.volume 9
dc.issue 4
dc.publicationDate 2023
dc.identifier.doi https://doi.org/10.3390/horticulturae9040419


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Attribution 4.0 International Except where otherwise noted, this item's license is described as Attribution 4.0 International