

系统工程与电子技术 ›› 2026, Vol. 48 ›› Issue (3): 883-893.doi: 10.12305/j.issn.1001-506X.2026.03.15
• 系统工程 • 上一篇
焦鹏博, 罗志浩, 范长俊, 石建迈
收稿日期:2023-10-25
出版日期:2026-03-25
发布日期:2026-04-13
通讯作者:
石建迈
作者简介:焦鹏博(1996—),男,博士研究生,主要研究方向为智能推荐基金资助:Pengbo JIAO, Zhihao LUO, Changjun FAN, Jianmai SHI
Received:2023-10-25
Online:2026-03-25
Published:2026-04-13
Contact:
Jianmai SHI
摘要:
为了更好地推进作战方案智能推荐技术的研究,整理了近年作战方案智能推荐的主要研究文献,并进行了系统综述。主要从传统方法与人工智能方法两个角度,分析当前主流的智能推荐方法。在传统方法方面,对涉及的主要定性定量方法进行了介绍;在人工智能方法方面,重点围绕基于搜索、基于推理和基于学习的智能推荐方法进行了梳理。此外,对4种方法的特点进行了阐述,并总结了各方法的优缺点以及适用场景。最后,分析总结了作战方案智能推荐方法的发展趋势。
中图分类号:
焦鹏博, 罗志浩, 范长俊, 石建迈. 作战方案智能推荐方法综述[J]. 系统工程与电子技术, 2026, 48(3): 883-893.
Pengbo JIAO, Zhihao LUO, Changjun FAN, Jianmai SHI. Review of intelligent recommendation methods for operational scheme[J]. Systems Engineering and Electronics, 2026, 48(3): 883-893.
表1
主要推荐方法特点"
| 方法 | 优点 | 缺点 | 适用场景 |
| 传统方法 | 原理与结构简单,便于理解和使用; 理论性与客观性较强, 推导过程明确可见 | 过于依赖假设条件和专家判断因素,难以揭示作战 方案内部关联关系;数学公式的建立与推导 需通过人工完成,复杂的关系会导致公式难以建立 | 评估指标体系完备,对人为判断因素不敏感,具有确定备选方案;对象间的关系较为明确,易于使用公式描述,静态环境下的问题 |
| 基于搜索的 方法 | 具有较强的通用性且速度快,易于 理解和实现,可对带有约束限制的 潜在方案进行搜索优化 | 难以将不确定性因素与动态场景考虑在内, 效率与问题复杂程度相关,求解结果质量不稳定, 只能逼近到全局最优解 | 考虑作战约束与目标,具有潜在可搜索作战方案,静态环境下的确定性问题 |
| 基于推理的 方法 | 灵活性强且执行效率高,能够处理 不确定性因素的影响 | 规则制定需要大量人力与领域知识,且规则合理性 影响到结果质量,样本数据不足难以发挥其优势 | 考虑多属性、多目标的方案特征,规则较为完备且具有足够的样本数量 |
| 基于学习的 方法 | 具有灵活的结构以及良好的非线性 表达能力,改善了人为假设和 主观因素对结果的影响,推荐过程可 自动化完成 | 模型构建与训练过程需要大量时间,对训练样本 数据的完备性和充足性要求较高,算法的性能 高度依赖算力 | 作战规则明确、样本数据充足且完备,对时效性要求高的动态问题 |
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