Application Specific Electronic Nose (ASEN) for Ganoderma boninense detection using artificial neural network

A. Abdullah, A. Shakaff, A. Zakaria, F. Saad, S. A. Abdul Shukor, A. Mat
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引用次数: 8

Abstract

Oil palm has many usages and mainly is used in food, detergent and medical products. However, the crop is susceptible to diseases where one of them, the Basal Stem Rot (BSR) disease, is affecting oil palm plantations in Malaysia and Indonesia. Currently, most of the detection techniques in treating the disease require detailed operating procedures and some are still not fully tested. In this paper, the Application Specific Electronic Nose (ASEN) is proposed to be used in Ganoderma boninense detection which is the basidiomycetes fungi of BSR disease. The specific sensor arrays will increase the instrument performance while reducing the cost, processing time and noise. The instrument data processing uses Artificial Neural Network (MLP, PNN and RBF) classification model. Initial results show that the instrument was able to detect the fungus. The instrument provides an effective low cost non-destructive method for the disease detection. This indicates that the instrument can be used as a detection system for plant disease monitoring.
应用专用电子鼻(ASEN)进行人工神经网络检测灵芝
油棕有许多用途,主要用于食品、洗涤剂和医疗产品。然而,这种作物容易受到病害的影响,其中一种病,即基底茎腐病(BSR),正在影响马来西亚和印度尼西亚的油棕种植园。目前,治疗该疾病的大多数检测技术需要详细的操作程序,有些仍未完全测试。本文提出了应用特异性电子鼻(ASEN)技术在牛灵芝(Ganoderma boninense)检测中的应用。特定的传感器阵列将提高仪器性能,同时降低成本,处理时间和噪音。仪器数据处理采用人工神经网络(MLP、PNN和RBF)分类模型。初步结果表明,该仪器能够检测出真菌。该仪器为疾病检测提供了一种低成本、无损的有效方法。这表明该仪器可作为植物病害监测的检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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