Neural-Network-Based Prediction of Non-Burial Overwintering Material Covering Height for Wine Grapes

Grapevines in cold regions are prone to frost damage in winter. Due to its adverse effects on soil structure, plant damage, high operational costs, and limited mechanization feasibility, buried soil overwintering has been gradually replaced by no-burial overwintering techniques, which are now the pr...

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Bibliographic Details
Main Authors: Yunlong Ma, Jinyue Yang, Yibo Chen, Ping Wang, Qinming Sun
Format: Article
Language:English
Published: MDPI AG 2025-04-01
Series:Agronomy
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Online Access:https://www.mdpi.com/2073-4395/15/5/1060
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Summary:Grapevines in cold regions are prone to frost damage in winter. Due to its adverse effects on soil structure, plant damage, high operational costs, and limited mechanization feasibility, buried soil overwintering has been gradually replaced by no-burial overwintering techniques, which are now the primary focus for mitigating frost damage in wine grapes. While current research focuses on the selection of thermal insulation materials, less attention has been paid to the insulation mechanism of covering materials and covering methods. In this study, we investigated the insulation performance of two covering materials (tarpaulin and insulation blanket) combined with six height treatments (5–30 cm) to analyze the effect of insulation space volume on no-buried-soil overwintering. The results show that the thermal insulation performance of the insulation blanket is significantly better than that of the tarpaulin. The 5 cm height treatment under the tarpaulin cover and the 25 cm height treatment under the insulation blanket cover exhibited the best thermal insulation performance. Using a neural network machine learning approach, we constructed a model related to the height of the insulation material and facilitate the model’s accurate predictions, in which tarpaulin R<sup>2</sup><sub>branches</sub> = 0.92, R<sup>2</sup><sub>20 cm</sub> = 0.99, and R<sup>2</sup><sub>40 cm</sub> = 0.99 and insulation blanket R<sup>2</sup><sub>branches</sub> = 0.89, R<sup>2</sup><sub>20 cm</sub> = 0.98, and R<sup>2</sup><sub>40 cm</sub> = 0.99. The model predicted optimal insulation heights of 6 cm for the tarpaulin and 22 cm for the insulation blanket. Factors like solar radiation within the insulation space, ground radiation, airflow, and material thermal conductivity affect the optimal insulation height for different materials. This study used a neural network model to predict the optimal insulation heights for different materials, providing systematic theoretical guidance for the overwintering cultivation of wine grapes and aiding the safe development of the wine grape industry in cold regions.
ISSN:2073-4395