Seed Assessment Using Fuzzy Logic and Gas Discharge Visualization Data
Michael ArkhipovAgrophysical Research Institute, St. PetersburgElena KruegerInsight Global, Greenwood Village, CODmitry KurtenerEuropean Agrophysical Institute, AmriswilN. S. PriyatkinAgrophysical Research Institute, St. PetersburgAndrey BondarenkoSaint-Petersburg Forestry Research Institute, St. Petersburg
ABI
Abstract
Assessment of sowing material is a significant concern in seed science. A promising tool for assessing seed material is Corona Discharge Photography or Gas Discharge Visualization (GDV). In this study, this tool was applied to determine relationships between sowing material characteristics and GDV parameters; an Adaptive Neuro-Fuzzy Inference System (ANFIS) was utilized to interpret the experimental data. By using ANFIS, a three input fuzzy inference system was constructed to define the contiguous relations between GDV parameters (i.e., glow area and shape factor) and root length.
Topics
Identifiers
Citations and references
Metrics — AkademScholar · Coming soon