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Hybrid-based Deep Belief Network Model for Cement Compressive Strength Prediction

机译:基于混合的水泥抗压强度预测的深度信仰网络模型

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摘要

Compressive strength is one of the most important qualities of concrete, and most of the conventional regression models for predicting the concrete strength could not achieve an expected result due to the unstructured factors. Moreover, the utilization of machine learning and statistical approaches playing its vital role in predicting the concrete compressive strength based on mixture proportions accounting to its industrial importance as well. In this manner, this paper attempts to introduce a new deep learning-based prediction model that makes the prediction more accurate, hence Deep Belief Network (DBN) is used. Moreover, to make the prediction more precise, it is planned to have the fine-tuning of activation function and weights of DBN, which makes the model efficient in its performance. For this purpose, an improved optimization concept is introduced called Lion Algorithm with new Rate Evaluation, which is the modified Lion Algorithm (LA). Finally, the performance of the proposed model is evaluated over other state-of-the-art models concerning certain error analysis.
机译:抗压强度是混凝土中最重要的品质之一,而且大多数用于预测混凝土强度的传统回归模型无法达到由于非结构化因素而达到预期的结果。此外,利用机器学习和统计方法在预测基于混合比例的基于其工业重要性的混合比例的情况下,对其实现至关重要的作用。以这种方式,本文试图介绍一种新的基于深度学习的预测模型,使得预测更准确,因此使用深度信念网络(DBN)。此外,为了使预测更精确,计划具有激活功能的微调和DBN的重量,这使得模型在其性能中有效。为此目的,引入了一种改进的优化概念,称为狮子算法,具有新的速率评估,即改进的狮子算法(LA)。最后,在一些关于某些错误分析的其他最先进的模型中评估所提出的模型的性能。

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