基于改进启发式算法和级联深度学习网络的新型作物推荐系统的智能机制分析

Yaganteeswarudu Akkem;Saroj Kumar Biswas
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引用次数: 0

摘要

本文介绍了一种创新的作物推荐系统,该系统利用了基于注意力的级联深度学习网络(AACNet),该网络由改进的迁移算法(IMA)优化。该系统旨在解决传统作物推荐方法效率低下的问题,根据天气、土壤类型和时间等特定农业因素提供精确、实时的建议。AACNet采用循环神经网络(RNN)和门控循环单元(GRU)来分析时间敏感的农业因素,如天气模式和土壤条件,而注意力机制则优先考虑最重要的特征,以进行准确的作物推荐。IMA优化了深度学习网络,提高了系统的准确率、精密度、召回率和执行时间。实验结果表明,该系统优于传统方法,标志着精准农业的重大进步。该系统有可能通过优化资源配置、降低成本和提高作物产量来彻底改变农业决策过程,这凸显了它在全球农业挑战中的重要性。这项研究代表着向知情、高效和可持续的农业实践迈出了革命性的一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of An Intellectual Mechanism of a Novel Crop Recommendation System Using Improved Heuristic Algorithm-Based Attention and Cascaded Deep Learning Network
This article introduces an innovative crop recommendation system that leverages an attention-based cascaded deep learning network (AACNet) optimized by an improved migration algorithm (IMA). The system is designed to address the inefficiencies of traditional crop recommendation methods by providing precise, real-time suggestions tailored to specific agricultural factors such as weather, soil type, and time. The AACNet employs recurrent neural networks (RNN) and gated recurrent units (GRU) to analyze time-sensitive agricultural factors, such as weather patterns and soil conditions, while the attention mechanism prioritizes the most significant features for accurate crop recommendations. The IMA optimizes the deep learning network, enhancing the system’s accuracy, precision, recall, and execution time. Experimental results demonstrate that the proposed system outperforms traditional methods, marking a significant advancement in precision agriculture. The system’s potential to revolutionize farming decision-making processes by optimizing resource allocation, reducing costs, and increasing crop yields underscores its importance in global agricultural challenges. This research represents a transformative step towards informed, efficient, and sustainable farming practices.
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