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Selection of most relevant input parameters using WEKA for artificial neural network based concrete compressive strength prediction model

机译:基于人工神经网络的混凝土抗压强度预测模型的WEKA选择最相关的输入参数

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In this paper, a novel approach to predict concrete compressive strength (CCS) at high strength level using artificial neural network (ANN) is proposed. The proposed approach is implemented to train, test and validate using available real 1030 datasets of USI machine learning repository. Data sets utilized to predict CCS included with eight input variables (i.e., blast furnaces slag, cement, fly ash, superplasticizer, water, coarse aggregate, fine aggregate and age) to ANN model which affects the accuracy of CCS prediction. Therefore, the selection of the most relevant input variables to the ANN model is necessary. With this objective, InfoGain Attribute Evaluator with Ranker Search Method using WEKA (a data mining implementation) is applied to find the most relevant input variables. Identified 7 most relevant input variables are used as input to ANN model to predict the CCS. The results obtained validates that the combination of input variables selected through WEKA gives higher prediction accuracy than any other combination of input variables. This method is used to predict the CCS in high strength level.
机译:本文提出了一种使用人工神经网络(ANN)预测高强度混凝土抗压强度(CCS)的新方法。所提出的方法用于使用USI机器学习存储库的实际1030个可用数据集进行训练,测试和验证。用于预测CCS的数据集包含8个输入变量(即高炉矿渣,水泥,粉煤灰,高效减水剂,水,粗骨料,细骨料和年龄),这些数据集会影响CCS预测的准确性。因此,必须选择与ANN模型最相关的输入变量。为了实现这一目标,应用了使用WEKA(数据挖掘实现)的具有Ranker搜索方法的InfoGain属性评估器,以查找最相关的输入变量。确定的7个最相关的输入变量用作ANN模型的输入,以预测CCS。获得的结果验证了通过WEKA选择的输入变量组合比任何其他输入变量组合具有更高的预测精度。该方法用于预测高强度等级的CCS。

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