4.6 Article

Importance of Meteorological Parameters and Airborne Conidia to Predict Risk of Alternaria on a Potato Crop Ambient Using Machine Learning Algorithms

Journal

SENSORS
Volume 22, Issue 18, Pages -

Publisher

MDPI
DOI: 10.3390/s22187063

Keywords

aerobiology; Solanum tuberosum; early blight; Alternaria spp; weather factors; machine learning; k-nearest neighbor; random forest; decision trees

Funding

  1. Ministry of Education, Culture, and Sports from Spain [FPU 17/00267]

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This study found that the hourly conidia concentration in the air is influenced by weather conditions, particularly relative humidity and solar radiation. The daily conidia production is most affected by the dew point temperature three days before. Improved prediction of Alternaria conidia level can be achieved by using machine learning algorithms and considering the conidia data from previous days.
Secondary infections of early blight during potato crop season are conditioned by aerial inoculum. However, although aerobiological studies have focused on understanding the key factors that influence the spore concentration in the air, less work has been carried out to predict when critical concentrations of conidia occur. Therefore, the goals of this study were to understand the key weather variables that affect the hourly and daily conidia dispersal of Alternaria solani and A. alternata in a potato field, and to use these weather factors in different machine learning (ML) algorithms to predict the daily conidia levels. This study showed that conidia per hour in a day is influenced by the weather conditions that characterize the hour, but not the hour of the day. Specifically, the relative humidity and solar radiation were the most relevant weather parameters influencing the conidia concentration in the air and both in a linear model explained 98% of the variation of this concentration per hour. Moreover, the dew point temperature three days before was the weather variable with the strongest effect on conidia per day. An improved prediction of Alternaria conidia level was achieved via ML algorithms when the conidia of previous days is considered in the analysis. Among the ML algorithms applied, the CART model with an accuracy of 86% were the best to predict daily conidia level.

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