Statistical Modelling for Precision Agriculture: A Case Study in Optimal Environmental Schedules for Agaricus Bisporus Production via Variable Domain Functional Regression
- Author: mycolabadmin
- 2017-09-29
- View Source
Summary
Background
Modern agricultural production processes are evolving with sensor network technologies that improve monitoring of farming environments. While there is growing sensor network data available, there is a lack of statistical techniques accessible by the farming industry to combine this data with understanding of the farming process. Commercial mushroom cultivation has experienced explosive growth, increasing from 60,000 tons in 1978 to 25.7 million tons in 2011 to become a $24 billion industry. While research exists on growth substrate preparation, there has been limited research on identifying optimal environmental conditions for the growing process.
Objective
To develop and apply a variable-domain functional regression (VDFR) technique to quantify the effects of environmental factors like temperature, humidity, oxygen and CO2 levels on Agaricus Bisporus (button mushroom) yields across growing processes of different durations. The goal was to determine optimal environmental schedules that would maximize mushroom production yields.
Results
Conclusion
- Published in:PLOS One,
- Study Type:Observational Study,
- Source: 10.1371/journal.pone.0181921