Abstract

In this framework, the crop diseases have been identified using three types of methods, fuzzy-c as a clustering algorithm, runway scheduling trains like classification algorithm, and logistic regression as prediction algorithm. These techniques are meaningful solutions for losses in yields and the quantity of agriculture production. In this work, crop disease and corresponding fertilizers are predicted based on pattern scalability by the above algorithms. It proposes a Sensor Calibration and Feed Back Method (SCFM) with RWSA for better agriculture crop maintenance with automation and Fuzzy-c, Logistic regressions are helpful in studying the datasets of the crops for classifying the disease. This research tries to identify the leaf color, leaf size, disease of plant, and fertilizer for the illness of crops. In this context, RWSA-Agriculture gives the solution for current problems and improves the F1-Score. The data collected from local sensors and remote station is estimated with the dataset, these sensor based L.R., and Fuzzy-c controls disease prediction system in SCFM and RWSA. This technique accurately regulates the dispensing of water as well as chemicals; fertilizers for crop monitor and prevent the diseases of crops. This investigation gives performance metrics values i.e PSNR=44.18dB, SSIM = 0.9943, BPP =1.46, Tp=0.945 and CR = 5.25.

Highlights

  • This framework introduced an Internet of Things (IoT) based sensor calibration technique with the Runway Scheduling algorithm

  • The conventional agriculture method serves intensified results because Health monitoring of crops and disease detection is a critical task. Because of this reason, increasing the in-depth research regarding plants for the rising of the production rate is the need of the hour, which can be changed with the help of traditional methods like IoT, Machine Learning, and Artificial Intelligence

  • This paper offers the advent of the image processing method used for plant disorder detection

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Summary

INTRODUCTION

This framework introduced an IoT based sensor calibration technique with the Runway Scheduling algorithm. Crop maintenance and disease detection for a plant is a crucial task in agriculture; it is complex to recognize the plant disorders manually It requires tremendous work and maintenance, along with more processing time, export suggestions. There are more than five methods in which IoT can improve agriculture: data, tons of details collected by smart farming sensors, e.g., weather conditions, soil quality, the advancement of crop growth, or cattle health. This information could be used to monitor your crop's specific status as well as personnel appearance, machinery effectiveness, etc. This estimation of the process is to perform with the SCFM mechanism

Automation of Crops Condition
Crop Monitoring System
PARALLEL RESEARCH
Parameters Related to 3D Communication
IoT Agriculture Monitoring with Multi-Cameras
Offline Preparation Stage
Logistic Regression
AND DISCUSSION
Method
Findings
CONCLUSION
Full Text
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