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Scientific Article details

Title Machine Learning Applications on Agricultural Datasets for Smart Farm Enhancement
ID_Doc 67496
Authors Balducci, F; Impedovo, D; Pirlo, G
Title Machine Learning Applications on Agricultural Datasets for Smart Farm Enhancement
Year 2018
Published Machines, 6, 3
DOI 10.3390/machines6030038
Abstract This work aims to show how to manage heterogeneous information and data coming from real datasets that collect physical, biological, and sensory values. As productive companies-public or private, large or small-need increasing profitability with costs reduction, discovering appropriate ways to exploit data that are continuously recorded and made available can be the right choice to achieve these goals. The agricultural field is only apparently refractory to the digital technology and the "smart farm" model is increasingly widespread by exploiting the Internet of Things (IoT) paradigm applied to environmental and historical information through time-series. The focus of this study is the design and deployment of practical tasks, ranging from crop harvest forecasting to missing or wrong sensors data reconstruction, exploiting and comparing various machine learning techniques to suggest toward which direction to employ efforts and investments. The results show how there are ample margins for innovation while supporting requests and needs coming from companies that wish to employ a sustainable and optimized agriculture industrial business, investing not only in technology, but also in the knowledge and in skilled workforce required to take the best out of it.
Author Keywords machine learning; sensors; IoT; smart farms; agriculture; data analysis
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000445201900012
WoS Category Engineering, Electrical & Electronic; Engineering, Mechanical
Research Area Engineering
PDF https://www.mdpi.com/2075-1702/6/3/38/pdf?version=1535794309
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