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中国管理科学 ›› 2002, Vol. ›› Issue (1): 79-83.

• 论文 • 上一篇    下一篇

基于人工神经网络的三江平原土壤质量综合评价与预测模型

楼文高   

  1. 上海水产大学海洋学院农业资源与环境系 上海 200090
  • 收稿日期:2001-05-21 出版日期:2002-02-28 发布日期:2012-03-06
  • 基金资助:
    上海水产大学校长专项基金资助项目(SFU200105)

Evaluation and Prediction of Soil Quality based on Artificial Neural Network in the Sanjiang Plain

LOU Wen-gao   

  1. Department of Agricultural Resource and Environment, Ocean College, Shanghai Fisheries University, Shanghai 200090, China
  • Received:2001-05-21 Online:2002-02-28 Published:2012-03-06

摘要: 根据土壤质量定量评价指标分级体系生成足够多代表性好的神以网络训练和检验用的样本。建立神经网络模型时,利用删减或扩张准则确定神经网络最佳拓扑结构,避免“过拟合”现象,利用检验样本监控在训练过程中不发生“过学习”现象,使建立的土壤质量的综合评价与预测模型具有较好的泛化能力和预测能力。对三江平原地区主要耕作土壤质量的综合评价与预测结果表明,神经网络方法能较好地应用于土壤质量综合评价与预测,比加权综合指数法能更精细地评价与预测土壤的变化趋。

关键词: 神经网络方法, 土壤质量, 评价指标, 综合评价与预测

Abstract: The training,verification and testing data set enough for neural network training and verifying was generated according to the soil quality classification criteria The optimal neural network topology parameters were determined by step-elimination or step-increase criteria The verification data set was used to keep the training process out of over-learning,thus the comprechensive model for evaluation and prediction of soil quality with more generalized and robust was established in this paper The changing trends of soil quality after large area reclamation in the Sanjiang Plain were quantitatively evaluated and shown that the soil quality of the top soils of the main cultivated soils were decreased at various speed with different kind of soil after large area reclamation Furthermore,case study shown that the neural network-based model was more suitable for the soil quality evaluation and prediction than weighted comprehensive index method

Key words: artificial neural network, soil quality, evaluation index, comprehensive evaluation and prediction

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