eCommons

 

FAULT DETECTION AND IDENTIFICATION IN A DEEP TROUGH HYDROPONIC SYSTEM USING ADAPTIVE NEURO-FUZZY ANALYSIS

Other Titles

Abstract

An early fault detection and identification system (FDI) can be an important part in any plant production system. A FDI can be used to avoid costly repairs and long disruptions in production. A hydroponic plant production system is a complex biological system that contains plants and microorganisms in its processes that are hard to model mathematically. A soft computing method called a neuro-fuzzy system is chosen to implement the FDI. A neuro-fuzzy system is a hybrid combination of a neural network and a fuzzy logic system that combines the best from both methods: knowledge based structure from fuzzy logic and a proven learning capability from a neural network. An adaptive neuro-fuzzy inference system (ANFIS) is developed to detect and identify actuator and sensor faults in the hydroponic plant production system. A separate system for exploring the ANFIS capability in detecting biological faults is also investigated. The novelty of the neuro-fuzzy FDI in this research used a single output to simultaneously detect and identify various faults in the system.

Journal / Series

Volume & Issue

Description

Sponsorship

Date Issued

2008-02-13T15:16:28Z

Publisher

Keywords

neuro-fuzzy; fault detection; deep trough hydroponic; fault identification

Location

Effective Date

Expiration Date

Sector

Employer

Union

Union Local

NAICS

Number of Workers

Committee Chair

Committee Co-Chair

Committee Member

Degree Discipline

Degree Name

Degree Level

Related Version

Related DOI

Related To

Related Part

Based on Related Item

Has Other Format(s)

Part of Related Item

Related To

Related Publication(s)

Link(s) to Related Publication(s)

References

Link(s) to Reference(s)

Previously Published As

Government Document

ISBN

ISMN

ISSN

Other Identifiers

Rights

Rights URI

Types

dissertation or thesis

Accessibility Feature

Accessibility Hazard

Accessibility Summary

Link(s) to Catalog Record