FUZZY LOGIC BASED HYBRID RECOMMENDER OF MAXIMUM YIELD CROP USING SOIL, WEATHER AND COST
Journal: ICTACT Journal on Soft Computing (IJSC) (Vol.6, No. 4)Publication Date: 2016-07-01
Authors : U Aadithya; S Anushya; N Bala Lakshmi; Rajeswari Sridhar;
Page : 1261-1269
Keywords : Fuzzy; Agricultural NER; Crop Recommendation; Weather Prediction; ANN;
Abstract
Our system is designed to predict best suitable crops for the region of farmer. It also suggests farming strategies for the crops such as mixed cropping, spacing, irrigation, seed treatment, etc. along with fertilizer and pesticide suggestions. This is done based on the historic soil parameters of the region and by predicting cost of crops and weather. The system is based on fuzzy logic which gets input from an Artificial Neural Network (ANN) based weather prediction module. An Agricultural Named Entity Recognition (NER) module is developed using Conditional Random Field (CRF) to extract crop conditions data. Further, cost prediction is done based on Linear Regression equation to aid in ranking the crops recommended. Using this approach we achieved an F-Score of 54% with a precision of 77% thus accounting for the correctness of crop production.
Other Latest Articles
- STUDY OF AWARENESS LEVEL OF STUDENTS AND TEACHERS OF CURRICULUM OF HOME SCIENCE
- CHALLENGES BEFORE BETELVINE CULTIVATION
- PROFESSIONAL STATUS, ROLE ADJUSTMENT AND CONFLICT OF WORKING WOMAN: A STUDY OF SCHOOL TEACHESRS
- BLENDED INSTRUCTION: EXPLORING ITS POTENTIAL FOR ENGAGING STUDENTS IN LEARNING
- TRUSTWORTHY OPTIMIZED CLUSTERING BASED TARGET DETECTION AND TRACKING FOR WIRELESS SENSOR NETWORK
Last modified: 2016-09-15 15:54:58