Learning from Data to Optimize Control in Precision Farming
- URL: http://arxiv.org/abs/2007.05493v1
- Date: Tue, 7 Jul 2020 12:44:17 GMT
- Title: Learning from Data to Optimize Control in Precision Farming
- Authors: Alexander Kocian and Luca Incrocci
- Abstract summary: Special issue presents the latest development in statistical inference, machine learning and optimum control for precision farming.
Satellite positioning and navigation followed by Internet-of-Things generate vast information that can be used to optimize farming processes in real-time.
- Score: 77.34726150561087
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Precision farming is one way of many to meet a 70 percent increase in global
demand for agricultural products on current agricultural land by 2050 at
reduced need of fertilizers and efficient use of water resources. The catalyst
for the emergence of precision farming has been satellite positioning and
navigation followed by Internet-of-Things, generating vast information that can
be used to optimize farming processes in real-time. Statistical tools from data
mining, predictive modeling, and machine learning analyze pattern in historical
data, to make predictions about future events as well as intelligent actions.
This special issue presents the latest development in statistical inference,
machine learning and optimum control for precision farming.
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