A researcher from Skoltech and his German colleagues have developed a neural network-based classification algorithm that can use data from an apple orchard to predict how well apples will fare in long-term storage. The paper was published in Computers and Electronics in Agriculture.
Before the fruit and vegetables we all like end up on our tables, they have to be stored for quite some time, and during this time they can develop physiological disorders such as flesh browning or superficial scald (brown or black patches on the skin of the fruit). These disorders contribute to the loss of a substantial amount of product, and a lot of research effort is dedicated to the development of robust methods of disorder prediction – a notoriously difficult task due to the multitude of factors involved, both at the orchard and in the storage facility.
Skoltech Assistant Professor Pavel Osinenko (formerly at Automatic Control and System Dynamics Laboratory, Technische Universität Chemnitz) and his colleagues gathered three years’ worth of data on a Braeburn apple orchard in Germany, including weather data and information from non-destructive sensors such as visible and near-infrared spectroscopy. The information gathered included data on chlorophyll, anthocyanins, soluble solids and dry matter content. The team also used assessments of fruit quality post-storage (for instance, consumers like their apples nice and firm, so there is a metric for that).
“The experimental orchard was quite normal and the developed methodology can in fact be implemented in industry without much effort,” Osinenko says.
Read more at Skolkovo Institute of Science and Technology (Skoltech)
Image: Neural network uses orchard data to predict fruit quality after storage. (Credit: Pavel Odinev / Skoltech)