Ramadan Suleiman Ahmed, Nehdi Moncef L
Department of Civil and Environmental Engineering, Western University, London, ON N6A 5B9, Canada.
Materials (Basel). 2017 Feb 7;10(2):135. doi: 10.3390/ma10020135.
This paper presents an approach to predicting the intrinsic self-healing in concrete using a hybrid genetic algorithm-artificial neural network (GA-ANN). A genetic algorithm was implemented in the network as a stochastic optimizing tool for the initial optimal weights and biases. This approach can assist the network in achieving a global optimum and avoid the possibility of the network getting trapped at local optima. The proposed model was trained and validated using an especially built database using various experimental studies retrieved from the open literature. The model inputs include the cement content, water-to-cement ratio (w/c), type and dosage of supplementary cementitious materials, bio-healing materials, and both expansive and crystalline additives. Self-healing indicated by means of crack width is the model output. The results showed that the proposed GA-ANN model is capable of capturing the complex effects of various self-healing agents (e.g., biochemical material, silica-based additive, expansive and crystalline components) on the self-healing performance in cement-based materials.
本文提出了一种使用混合遗传算法-人工神经网络(GA-ANN)预测混凝土内在自愈合性能的方法。在网络中实施遗传算法作为一种随机优化工具,用于确定初始最优权重和偏差。这种方法可以帮助网络实现全局最优,并避免网络陷入局部最优的可能性。所提出的模型使用从公开文献中检索到的各种实验研究特别构建的数据库进行训练和验证。模型输入包括水泥含量、水灰比(w/c)、辅助胶凝材料、生物愈合材料以及膨胀剂和结晶添加剂的类型和用量。以裂缝宽度表示的自愈合性能是模型输出。结果表明,所提出的GA-ANN模型能够捕捉各种自愈合剂(如生化材料、硅基添加剂、膨胀和结晶成分)对水泥基材料自愈合性能的复杂影响。