Predictive modelling of yellow stem borer population in rice using light trap: A comparative study of MLP and LSTM networks

IF 2.2 3区 农林科学 Q2 AGRICULTURE, MULTIDISCIPLINARY
Kiran Gandhi Bapatla, Basana Gowda Gadratagi, Naveenkumar B. Patil, Guru-Pirasanna Pandi Govindharaj, Lakshmi Narayana Thalluri, Bipin Bihari Panda
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引用次数: 0

Abstract

The yellow stem borer (YSB), Scirpophaga incertulas (Walker), is a major insect pest that significantly damages rice crop. This study investigates methods to predict YSB populations in rice fields, aiming to develop an early warning system. Traditionally, rice farmers rely on light traps to monitor YSB presence. However, this study goes beyond this approach by combining light-trap data with weather information (temperature, humidity, rainfall) and utilizing powerful artificial intelligence (AI) techniques to forecast future YSB populations. Two AI methods, multilayer perceptron (MLP) and long short-term memory (LSTM), were employed to estimate YSB populations and assess their performance. The results revealed that the LSTM model outperformed the MLP model based on statistical metrics like RMSE, MAE, and R2 values. Utilizing LSTM model with historical data, stakeholders in the Eastern Coastal Plains and Hills agro-climatic zone of India can gain a significant advantage in predicting YSB populations well in advance. This early warning system can alert stakeholders of potential YSB outbreaks, allowing them to take timely management actions and protect their rice crops from substantial yield losses.

利用光诱捕器建立水稻黄螟种群预测模型:MLP 和 LSTM 网络的比较研究
黄二化螟(YSB)--Scirpophaga incertulas (Walker) 是一种严重危害水稻作物的主要害虫。本研究调查了预测稻田中 YSB 数量的方法,旨在开发一种预警系统。传统上,稻农依靠灯光诱捕器来监测 YSB 的存在。然而,这项研究超越了这一方法,它将光诱捕器数据与气象信息(温度、湿度、降雨量)相结合,并利用强大的人工智能(AI)技术来预测未来 YSB 的种群数量。我们采用了多层感知器(MLP)和长短期记忆(LSTM)这两种人工智能方法来估计 YSB 种群数量并评估其性能。结果显示,根据 RMSE、MAE 和 R2 值等统计指标,LSTM 模型优于 MLP 模型。利用带有历史数据的 LSTM 模型,印度东部沿海平原和丘陵农业气候区的利益相关者可以在提前预测 YSB 种群数量方面获得显著优势。这一早期预警系统可提醒利益相关者注意潜在的 YSB 爆发,使他们能够及时采取管理措施,保护其水稻作物免受巨大的产量损失。
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来源期刊
Annals of Applied Biology
Annals of Applied Biology 生物-农业综合
CiteScore
5.50
自引率
0.00%
发文量
71
审稿时长
18-36 weeks
期刊介绍: Annals of Applied Biology is an international journal sponsored by the Association of Applied Biologists. The journal publishes original research papers on all aspects of applied research on crop production, crop protection and the cropping ecosystem. The journal is published both online and in six printed issues per year. Annals papers must contribute substantially to the advancement of knowledge and may, among others, encompass the scientific disciplines of: Agronomy Agrometeorology Agrienvironmental sciences Applied genomics Applied metabolomics Applied proteomics Biodiversity Biological control Climate change Crop ecology Entomology Genetic manipulation Molecular biology Mycology Nematology Pests Plant pathology Plant breeding & genetics Plant physiology Post harvest biology Soil science Statistics Virology Weed biology Annals also welcomes reviews of interest in these subject areas. Reviews should be critical surveys of the field and offer new insights. All papers are subject to peer review. Papers must usually contribute substantially to the advancement of knowledge in applied biology but short papers discussing techniques or substantiated results, and reviews of current knowledge of interest to applied biologists will be considered for publication. Papers or reviews must not be offered to any other journal for prior or simultaneous publication and normally average seven printed pages.
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