解读人工智能在害虫管理中的应用

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-01 DOI:10.1016/j.atech.2024.100517
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引用次数: 0

摘要

据联合国粮农组织统计,虫害每年在全球造成 30% 至 40% 的损失。害虫的识别、分类和管理对于避免重大损失非常重要。采用人工方法来完成上述工作既费时,效果又差。传统方法往往无法应对害虫的动态行为,导致作物损失和化学品用量增加。因此,在害虫识别和管理中采用人工智能(AI)技术是一种很好的替代方法,它既能应对害虫数量不断变化带来的挑战,又能满足人们对可持续农业实践的需求。人工智能利用先进的算法分析来自传感器和图像等众多来源的复杂数据模式,提供了一种变革性的方法。这样就能准确识别害虫、及早发现害虫并建立预测模型,通过最大限度地减少滥施杀虫剂和优化干预措施,加强害虫控制决策。人工智能不仅能减少经济损失,还能促进生态友好型战略,实现高效、有弹性的害虫管理系统。本综述试图解释人工智能在害虫管理方面的相互融合和未来发展空间。
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Unravelling the use of artificial intelligence in management of insect pests

As per the FAO, the insect pest causes 30 to 40 percent loss every year across the globe. The identification, classification and management of insect pest is very important to avoid significant loss. Practicing the above process by adopting manual methods are time consuming and less effective to achieve the task. The traditional methods often fall short in addressing dynamic pest behaviours, resulting in crop losses and increased chemical usage. Therefore, adoption of the Artificial Intelligence (AI) techniques in pest identification and management act as a good substitute that arises from the challenges posed by evolving pest populations and the desire for sustainable agricultural practices. AI offers a transformative approach by utilizing advanced algorithms to analyse intricate data patterns from numerous sources like sensors and imagery. This enables accurate pest identification, early detection, and predictive modelling, enhancing decision-making for pest control, by minimizing indiscriminate pesticide application and optimizing interventions. AI not only reduces economic losses but also promotes eco-friendly strategies for efficient and resilient pest management systems. The present review is an endeavour to explain the intermingling and future scope of AI in insect pest management.

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