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基于人工神经网络的高压水射流混凝土构件表面处理模型
引用本文:陈仲堂,刘永光,应力,艾洁. 基于人工神经网络的高压水射流混凝土构件表面处理模型[J]. 沈阳建筑工程学院学报(自然科学版), 2006, 22(6): 1047-1051
作者姓名:陈仲堂  刘永光  应力  艾洁
作者单位:[1]沈阳建筑大学理学院,辽宁沈阳110168 [2]沈阳建筑大学土木工程学院,辽宁沈阳110168
基金项目:建设部科技攻关项目;辽宁省教育厅资助项目
摘    要:目的应用高压水射流进行混凝土构件表面处理前确定机械的初始参数。实现对处理深度全面合理的控制.方法用AJP-E25135型高压泵,RG-2002HNDF型、口径为0.25mm七喷嘴旋转喷枪,对36组不同的初始参数、同批制作的砾石混凝土试块进行了高压水射流表面处理试验,并运用人工神经网络技术,对试验数据进行理论分析.结果建立了压力、靶距、口径、S/A(砂率)与处理深度关系的预测模型并把模型的预测结果与实验结果进行了比较,平均相对误差为0.0005.结论模型能够满足工程实际需要.可用于混凝土构件表面处理深度的估计与分析,以及特定处理深度条件下初始参数的预测.并可广泛应用于高压水表面处理深度模型的参数优化选择。智能化控制等领域.

关 键 词:高压水射流  神经网络  处理深度  靶距
文章编号:1671-2021(2006)06-1047-05
修稿时间:2006-08-01

Neural Network Parametric Model of High-Pressured Water-Jet in Surface Preparation
CHEN Zhongtang,LIU Yongguang,YING Li,AI Jie. Neural Network Parametric Model of High-Pressured Water-Jet in Surface Preparation[J]. Journal of Shenyang Archit Civil Eng Univ: Nat Sci, 2006, 22(6): 1047-1051
Authors:CHEN Zhongtang  LIU Yongguang  YING Li  AI Jie
Abstract:A parametric model of high-pressured water-jet cutting depth with water pressure,standoff-distance,caliber,S/A was established,using neural network analysis of experimental results.Using AJP-E25135 high-pressure pump,and RG-2002HNDF with 0.25?mm caliber rotating spraying gun carrying out the experiment of high-pressured water-jet in surface preparation.The experiment is to sprinkle water on 36 gravel concretes which are made at the same time.Then the article analyses the data by using the technology of artificial neural network.The article sets up the relationship among pressure,target distance,caliber,S/A and cutting depth,then compares the forecasting result with the experimental result,with the average error 0.000?5.The model meets the practical demand of project.It can be used to evaluate and analyze surface cutting depth of concrete,it can also be used to forecast initial parameter of a given cutting depth.So this model can be widely used in the fields of parametric model of high-pressured water-jet in surface preparation and intellectual control,etc.
Keywords:high-pressured water-jet  neural network  cutting depth  target distance
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