Recent Methods and Technologies for an Early Detection of Red Palm Weevil Infestation: A Review

The Planter Pub Date : 2022-01-31 DOI:10.56333/tp.2022.001
Muhammad Nurfaiz Abd Kharim, K. Krishnan
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引用次数: 1

Abstract

The red palm weevil (RPW) (Rhynchophorus ferrugineus) is one of the world’s most destructive pest of oil palm plantation as it can damage the entire palm and incur a total loss to the planters. Early detection of the RPW is difficult, and when the symptoms of infestation are discovered, usually the plant is not salvageable. The adult RPW lays the eggs inside the tree trunk and starts feeding on the tissue of the plant and remains inside until the tree dies. Intensive efforts have been explored to enhance the early detection process of RPW in the field. There are numerous detection methods for discovering the infected trees, such as manual visual inspection, acoustic detection, chemical odour/signal detection, canine detection, thermal sensing, remote sensing, Geographic Information System mapping (GIS), Internet of Things (IoT), cloud platform and data mining-based technology. In this article, the current methods and technologies used for the early detection of RPW are explored and discussed.
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红棕象甲早期检测方法与技术进展
红棕榈象甲(Rhynchophorus ferrugineus)是世界上对油棕种植园最具破坏性的害虫之一,因为它可以破坏整个棕榈并给种植者造成完全损失。早期发现RPW是困难的,当发现侵染症状时,通常植物是无法抢救的。成年RPW在树干内产卵,并开始以植物的组织为食,直到树木死亡才离开。为加强野外RPW的早期发现过程,已经进行了大量的探索工作。发现受感染树木的检测方法有很多,如人工目视检测、声学检测、化学气味/信号检测、犬类检测、热感测、遥感、地理信息系统测绘(GIS)、物联网(IoT)、云平台和基于数据挖掘的技术。本文对目前用于RPW早期检测的方法和技术进行了探讨和讨论。
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