PEMODELAN PREDIKSI KUAT TEKAN BETON UMUR MUDA MENGGUNAKAN H2O'S DEEP LEARNING

Stefanus Santosa, S. Suroso, Marchus Budi Utomo, M. Martono, Mawardi Mawardi
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引用次数: 1

Abstract

Artificial Neural Network (ANN) is a Machine Learning (ML) algorithm which learn by itself and organize its thinking to solve problems. Although the learning process involves many hidden layers (Deep Learning) this algorithm still has weaknesses when faced with high noise data. Concrete mixture design data has a high enough noise caused by many unidentified / measurable aspects such as planning, design, manufacture of test specimens, maintenance, testing, diversity of physical and chemical properties, mixed formulas, mixed design errors, environmental conditions, and testing process. Information needs about the compressive strength of early age concrete (under 28 days) are often needed while the construction process is still ongoing. ANN has been tried to predict the compressive strength of concrete, but the results are less than optimal. This study aims to improve the ANN prediction model using an H2O’s Deep Learning based on a multi-layer feedforward artificial neural network that is trained with stochastic gradient descent using backpropagation. The H2O’s Deep Learning best model is achieved by 2 hidden layers- 50 hidden neurons and ReLU activation function with a RMSE value of 6,801. This Machine Learning model can be used as an alternative/ substitute for conventional mix designs, which are environmentally friendly, economical, and accurate. Future work with regard to the concrete industry, this model can be applied to create an intelligent Batching and Mixing Plants.
强大的预测模型,利用H2O的深度学习
人工神经网络(Artificial Neural Network, ANN)是一种能够自我学习并组织思维来解决问题的机器学习算法。虽然学习过程涉及到许多隐藏层(深度学习),但该算法在面对高噪声数据时仍然存在弱点。混凝土配合料设计数据由于规划、设计、试件制造、维护、测试、理化性质的多样性、混合配方、混合设计错误、环境条件、测试过程等许多未识别/可测量的方面而产生足够高的噪声。早期龄期混凝土(28天以下)的抗压强度信息通常需要在施工过程中进行。人工神经网络已被用于预测混凝土抗压强度,但结果并不理想。本研究旨在利用基于H2O深度学习的多层前馈人工神经网络改进人工神经网络的预测模型,该网络采用反向传播随机梯度下降训练。H2O的深度学习最佳模型由2个隐藏层(50个隐藏神经元和RMSE值为6,801的ReLU激活函数)实现。这种机器学习模型可以作为传统混合设计的替代/替代,具有环保、经济和准确的特点。对于混凝土行业的未来工作,该模型可以应用于创建智能配料和搅拌站。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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