ICEFS 2023
Conference Management System
Main Site
Submission Guide
Register
Login
User List | Statistics
Abstract List | Statistics
Poster List
Paper List
Reviewer List
Presentation Video
Online Q&A Forum
Access Mode
Ifory System
:: Abstract ::

<< back

The leaf rust disease development of hybrid corn on shaded agroecosystem
Raden Heru Praptana (a*), Sodiq Jauhari (a), Samijan (a), Meinarti Norma Setiapermas (a)

(a) Research Center for Food Crops, Research Organization for Agriculture and Food, National Research and Innovation Agency, Cibinong Science Center, Jl. Raya Jakarta-Bogor, KM 46, Cibinong, Bogor, West Java 16911, Indonesia


Abstract

The research objective was to determine the development of hybrid corn leaf rust disease in shaded agro-ecosystems. The research was carried out in the albasia forest area of Kalices Village, Patehan District, Kendal Regency, Central Java, Indonesia in March-September 2020. Three hybrid corn varieties, namely JH 37, Nasa 29 and Bisi 18, were used as treatments, as well as three levels of shade density, namely 0, 20 and 40%. Observations were made on the incidence and intensity of leaf rust disease at the age of 40, 60 and 80 days after planting (HST). The incidence and intensity of leaf rust disease were observed by scoring according to the modified 2012 DMRI method. The results showed that all three varieties had been attacked by leaf rust disease since 40 HST with an incidence of 13.33-56.67% and disease intensity between 12.59-17.41% at all levels of shade density. The leaf rust disease continues to develop in all varieties with an intensity of around 30.00-56.67%. The highest incidence and intensity of leaf rust disease occurred in JH 37 variety at all levels of shade density. The development of leaf rust disease is more influenced by the genetic characteristics of each variety

Keywords: Leaf rust disease, hybrid maize, shaded land, disease incidence, disease intensity

Topic: Agriculture Productivity

Plain Format | Corresponding Author (Raden Heru Praptana)

Share Link

Share your abstract link to your social media or profile page

ICEFS 2023 - Conference Management System

Powered By Konfrenzi Ultimate 1.832M-Build6 © 2007-2026 All Rights Reserved