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基于ANN的综放工作面产量与工效预测 被引量:1

Prediction research on output and work efficiency of fully mechanized sub-level caving face based on artificial neural network
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摘要 采煤工作面是整个矿井生产的核心,是实现矿井高产高效安全生产的关键。为了准确预测和提高综放工作面产量与工效,本文应用人工智能领域的人工神经网络方法,在系统分析影响综放工作面产量、工效的主要因素,并收集大量工程实例样本的基础上,构建了综放工作面产量与工效预测人工神经网络模型并加以实际应用。应用结果表明,该方法简便、可靠,且具有先进性。该方法的成功应用,为煤炭产量、工效预测研究探索了一条更加先进有效的途径。 Working face is the core for production of coal pits, and is the key to high output and work efficiency of coal pits. In the paper, for the sake of exact prediction and raising of output and work efficiency in fully mechanized sub-level caving face, based on systemic analysis of primary influencing factors of output and work efficiency in fully mechanized sub-level caving face, and also based on large numbers of collected case history samples, artificial neural network method which belongs to artificial intelligence field was used, and artificial neural network model for output and work efficiency prediction in fully mechanized sub-level caving face was constructed and applied. Application results show that this technique has the characteristics such as simplicity, credibility and superiority. The successful application of this technique has explored one more superior and effective path for prediction research on coal output and work efficiency.
出处 《辽宁工程技术大学学报(自然科学版)》 CAS 北大核心 2003年第6期850-852,共3页 Journal of Liaoning Technical University (Natural Science)
关键词 ANN 综放工作面 产量 工效 预测 采煤工作面 人工神经网络 综采放顶煤 artificial neural network prediction output and work efficiency fully mechanized sub-level caving face
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  • 1王新宇.综合机械化采煤设备选型研究:学位论文[M].济南:山东矿业学院,1998.. 被引量:1
  • 2王新宇,学位论文,1998年 被引量:1
  • 3冯夏庭,采矿工程智能系统,1994年 被引量:1
  • 4徐秉铮,神经网络理论与应用,1994年 被引量:1

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