应对发展智能农业推广平台的挑战/机遇:多媒体数据挖掘技术

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY
Josué Kpodo , A. Pouyan Nejadhashemi
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引用次数: 0

摘要

由于人工智能(AI)的快速发展,农业推广(AE)研究在产生相关和实用知识方面面临重大挑战。AE努力跟上这些进步的步伐,使可操作信息的开发复杂化。一个主要的挑战是缺乏能够实现有效信息检索和快速决策的智能平台。调查显示,缺乏人工智能辅助解决方案,既能在各种媒体格式中有效地使用声发射材料,又能保持科学准确性和上下文相关性。虽然主流人工智能系统可以潜在地降低决策风险,但它们的使用仍然有限。这种限制主要源于缺乏标准化的数据集和对用户数据隐私的担忧。对于标准化的AE数据集,它们必须满足四个关键标准:包含关键领域特定知识、专家管理、一致的结构和同行的接受度。解决数据隐私问题需要遵守开放获取原则,并执行严格的数据加密和匿名化标准。为了解决这些差距,引入了一个概念性框架。该框架超越了典型的面向用户的平台,并包含五个核心模块。它的特点是一个神经符号管道,将大型语言模型与基于物理的农业建模软件集成在一起,并通过人类反馈的强化学习进一步增强。该框架值得注意的方面包括一个专门的人在循环过程和一个由三个主要机构组成的治理结构,重点是数据标准化、道德和安全、问责制和透明度。总的来说,这项工作代表了农业知识系统的重大进步,可能会改变AE服务向农民和其他利益相关者提供关键信息的方式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Navigating challenges/opportunities in developing smart agricultural extension platforms: Multi-media data mining techniques
Agricultural Extension (AE) research faces significant challenges in producing relevant and practical knowledge due to rapid advancements in artificial intelligence (AI). AE struggles to keep pace with these advancements, complicating the development of actionable information. One major challenge is the absence of intelligent platforms that enable efficient information retrieval and quick decision-making. Investigations have shown a shortage of AI-assisted solutions that effectively use AE materials across various media formats while preserving scientific accuracy and contextual relevance. Although mainstream AI systems can potentially reduce decision-making risks, their usage remains limited. This limitation arises primarily from the lack of standardized datasets and concerns regarding user data privacy. For AE datasets to be standardized, they must satisfy four key criteria: inclusion of critical domain-specific knowledge, expert curation, consistent structure, and acceptance by peers. Addressing data privacy issues involves adhering to open-access principles and enforcing strict data encryption and anonymization standards. To address these gaps, a conceptual framework is introduced. This framework extends beyond typical user-oriented platforms and comprises five core modules. It features a neurosymbolic pipeline integrating large language models with physically based agricultural modeling software, further enhanced by Reinforcement Learning from Human Feedback. Notable aspects of the framework include a dedicated human-in-the-loop process and a governance structure consisting of three primary bodies focused on data standardization, ethics and security, and accountability and transparency. Overall, this work represents a significant advancement in agricultural knowledge systems, potentially transforming how AE services deliver critical information to farmers and other stakeholders.
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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