Performance analysis of in situ ion selective electrodes with estimation filter

College

College of Computer Studies

Department/Unit

Computer Technology

Document Type

Dissertation

Publication Date

4-7-2011

Abstract

In situ environmental sensors for agriculture are still under development and have been proven to be quite expensive for most agricultural applications. Low-cost sensors exists however, they are much more sensitive to drift and other ex­ternal interferences thus producing erroneous results. Very few researchers have used Estimation Filters to address these sensor limitations and to improve the accuracy. The experiments were done under laboratory conditions however with varying environmental conditions the results may differ. This study aims to use estimation filters, such as a Bayes or a Kalman filters, to improve on low-cost in situ environmental sensors such as Ion-Selective Electrodes (ISE).

html

Disciplines

Computer Sciences

Keywords

Multisensor data fusion; Data logging; Kalman filtering

Upload File

wf_no

This document is currently not available here.

Share

COinS