Modern Irrigation System Towards Fuzzy
#1

In the past few years, there has been an increasing interest in the application of the fuzzy set theory to many control problems. For many complex control systems, the construction of an ordinary model is difficult due to nonlinear and time varying nature of the system. Fuzzy Control has been applied in traditional control systems, which yields promising results, It is applied for the processes, which yields promising results, it is applied for the processes, which are too complex to be analyzed by conventional techniques or where the available information is uncertain. In fact, fuzzy logic controller (FLC) is easier to prototype, simple to describe and verify, can be maintained and also extended with grater accuracy in less time. These advantages make fuzzy logic technology to be used for irrigation system also.

NEED FOR MODERN IRRIGATION SYSTEM
Water and electricity should be optimally utilized in an agricultural like India. The development in the filed of science and technology should be appropriately used in the field of agriculture for better yields. Irrigation has traditionally resulted in excessive labour and nonuniformity in water application across the filed. Hence, an automatic irrigation system is required to reduce the labour cost and to give uniformity in water application across the field.

PHYSIOLOGICAL PROCESSING
In the irrigation system, plant take-varying quantities of water at different stages of plant growth. Unless adequate and timely supply of water is assured, the physiological activities taking place within the plant are bound to be adversely affected, thereby resulting in reduced yield of crop. The amount of water to be irrigated in an irrigation schedule depends upon the evapotranspiration(ET) from adjacent soil and from plant leaves at that specified time. The rate of ET of a given crop is influenced by its growth stages, environmental conditions and crop management. The consumptive use or evapotranspiration for a given crop at a given place may vary through out the day, through out the month and through out the crop period. Values of daily consumptive use or monthly consumptive use are determined for a given crop and at a given place. It also varies from crop to crop. There are several elimatological factors, which will influence and decide the rate of evaporation. Some of the important factors of elimate influencing the evaporation are radiation, temperature, humidity and wind speed. In this work, the input variables chosen for the system are evapotranspiration and rate of change of evapotranspiration called as error and the output variable is water amount.

FUZZIFICATION UNIT
It converts a crisp process state into a fuzzy state so that it is compatible with the fuzzy set representation of the process required by the inference unit.

KNOWLEDGE BASE
The Knowledge base consists of two components. A rule base, which describes the behaviour of control surfaces, which involves writing the rules that tie the input values to the output model properties. Rule formation can be framed by discussing with the experts. A database contains the definition of the fuzzy sets representing the linguistic terms used in the rules. The knowledge base is generally represented by a fuzzy associative memory.

INFERENCE UNIT
This unit is the core of the fuzzy controller. It generates fuzzy control actions applying the rules in the knowledge base to the current process state. It determines the degree to which each measured valued is a member of a given labeled group. A given measurement can be classified simultaneously as belonging to several linguistic groups. The degree of fulfillment (DOF) of each rule is determined by applying the rules of Boolean algebra to each linguistic group that is part of the rule. This is done for all the rules in the system. Finally the net control action is determined by weighting action associated with each rule by degree of fulfillment.
Reply
#2

[attachment=111]
[attachment=112]
a new irrigation system using fuzzy logic technique by mapping the knowledge and experience of a traditional farmer. Fuzzy logic control, which is similar to the human way of thinking, has emerged as the most active tool in automatic control. The purpose of fuzzy logic controller is to automatically achieve and maintain some desired state of a system and process by monitoring system variables as well as taking appropriate control action.The aim of this work is to develop an intelligent control using fuzzy logic approach for irrigation of agricultural field, which simulates or emulates the human beingâ„¢s intelligence. The status of any agricultural field, in terms of evapotranspiration and error may be assumed as input parameters and the decision is made to determine the amount of water required for the area to be irrigated, well in advance. This leads to use effective utilization of various resources like water and electricity and hence becomes a cost effective system for the expected yield.

INTRODUCTION

In the past few years, there has been an increasing interest in the application of the fuzzy set theory to many control problems. For many complex control systems, the construction of an ordinary model is difficult due to nonlinear and time varying nature of the system. Fuzzy Control has been applied in traditional control systems, which yields promising results, It is applied for the processes, which yields promising results, it is applied for the processes, which are too complex to be analyzed by conventional techniques or where the available information is uncertain. In fact, fuzzy logic controller (FLC) is easier to prototype, simple to describe and verify, can be maintained and also extended with grater accuracy in less time. These advantages make fuzzy logic technology to be used for irrigation system also.

NEED FOR MODERN IRRIGATION SYSTEM

Water and electricity should be optimally utilized in an agricultural like India. The development in the filed of science and technology should be appropriately used in the field of agriculture for better yields. Irrigation has traditionally resulted in excessive labour and nonuniformity in water application across the filed. Hence, an automatic irrigation system is required to reduce the labour cost and to give uniformity in water application across the field.

PHYSIOLOGICAL PROCESSING

In the irrigation system, plant take-varying quantities of water at different stages of plant growth. Unless adequate and timely supply of water is assured, the physiological activities taking place within the plant are bound to be adversely affected, thereby resulting in reduced yield of crop. The amount of water to be irrigated in an irrigation schedule depends upon the evapotranspiration(ET) from adjacent soil and from plant leaves at that specified time. The rate of ET of a given crop is influenced by its growth stages, environmental conditions and crop management. The consumptive use or evapotranspiration for a given crop at a given place may vary through out the day, through out the month and through out the crop period. Values of daily consumptive use or monthly consumptive use are determined for a given crop and at a given place. It also varies from crop to crop. There are several elimatological factors, which will influence and decide the rate of evaporation. Some of the important factors of elimate influencing the evaporation are radiation, temperature, humidity and wind speed. In this work, the input variables chosen for the system are evapotranspiration and rate of change of evapotranspiration called as error
Reply

Important Note..!

If you are not satisfied with above reply ,..Please

ASK HERE

So that we will collect data for you and will made reply to the request....OR try below "QUICK REPLY" box to add a reply to this page
Popular Searches: seminar topic in irrigation, development of irrigation using fuzzy networks, seminar topics on fuzzy system, bandhara irrigation, fuzzy steganography, sprinkler irrigation systems, fuzzy duenkel,

[-]
Quick Reply
Message
Type your reply to this message here.

Image Verification
Please enter the text contained within the image into the text box below it. This process is used to prevent automated spam bots.
Image Verification
(case insensitive)

Possibly Related Threads...
Thread Author Replies Views Last Post
  OPTIMIZATION OF UPFC USING FUZZY LOGIC projectsofme 2 9,077 05-04-2013, 11:42 AM
Last Post: computer topic
  MODERN TRENDS IN POWER TRANSMISSION Systems project topics 12 16,069 11-03-2013, 03:50 PM
Last Post: computer idea
  MODERN TRENDS IN FLEXIBLE A.C. TRANSMISSION project topics 10 8,463 29-11-2012, 01:09 PM
Last Post: seminar details
  PH Control Technique using Fuzzy Logic computer science crazy 1 3,690 16-03-2012, 10:23 AM
Last Post: seminar paper
  FUZZY LOGIC CONTROL OF A SWITCHED RELUCTANCE MOTOR projectsofme 1 2,419 29-02-2012, 10:16 AM
Last Post: seminar paper
  Induction Motor Speed Control using Fuzzy Logic Controller full report seminar topics 1 5,784 13-02-2012, 03:31 PM
Last Post: seminar paper
  Lightning and Surge Protection Of Modern Electronic Systems full report seminar topics 4 4,291 30-01-2012, 12:13 PM
Last Post: seminar addict
  Fuzzy - Based Representative Quality Power Factor for Unbalanced Three - Phase Sy Wifi 0 1,090 28-10-2010, 10:28 AM
Last Post: Wifi
  Dynamic Fuzzy-Neural Network Controller for Induction Motor Drive project report helper 0 903 13-10-2010, 03:02 PM
Last Post: project report helper
  A NOVAL APPROACH OF INDUCTION MOTOR TORQUE CONTROL USING FUZZY seminar surveyer 0 1,231 13-10-2010, 01:19 PM
Last Post: seminar surveyer

Forum Jump: