河北大学学报(自然科学版) ›› 2026, Vol. 46 ›› Issue (3): 288-298.DOI: 10.3969/j.issn.1000-1565.2026.03.007
• • 上一篇
李艳坤1,胡春阳1,蒋晨帅2,曾祎程1,梁旭阳1
收稿日期:2025-05-21
发布日期:2026-05-15
作者简介:李艳坤(1977—),女,华北电力大学副教授,主要从事化学计量学、环境分析化学方向研究.基金资助:LI Yankun1, HU Chunyang1, JIANG Chenshuai2, ZENG Yicheng1, LIANG Xuyang1
Received:2025-05-21
Published:2026-05-15
摘要: 在水质监测中,水质特征分析与评价具有重要意义.为克服水质指数评价法难以精确、全面反映水质综合状况等局限性,近年来机器学习被引入,并广泛地应用于水质指标的预测和评价中.机器学习通过融合多源多指标水体数据、挖掘水质各因子与水质之间复杂的线性或非线性关系,为水质评价提供了更科学、高效的手段.本文首先总结了单因子指数法等水质指数评价法的原理、特点及其应用现状.综述了随机森林、神经网络等机器学习算法及其结合光谱构建的分析模型在水质评价中的具体应用,深入分析了各类方法用于水质评价的原理、特点与适用场景;介绍了水质指数评价法和机器学习算法联用在水质检测与评价中的应用;提出应用机器学习技术时所存在的问题及相应解决措施.旨在为基于机器学习、光谱分析模型的水质评价提供理论参考和实践借鉴,藉以推动水质检测、评价与预测的研究和应用发展.
中图分类号:
李艳坤,胡春阳,蒋晨帅,曾祎程,梁旭阳. 水质评价中机器学习与指数评价法的研究与应用[J]. 河北大学学报(自然科学版), 2026, 46(3): 288-298.
LI Yankun, HU Chunyang, JIANG Chenshuai, ZENG Yicheng, LIANG Xuyang. Research and application of machine learning and index evaluation method in water quality evaluation[J]. Journal of Hebei University(Natural Science Edition), 2026, 46(3): 288-298.
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