Alsamia Shaymaa, Koch Edina
Department of Structural and Geotechnical Engineering, Széchenyi István University, Győr , 9026, Hungary.
Faculty of Engineering, University of Kufa, Kufa, Iraq.
Sci Rep. 2024 Nov 20;14(1):28750. doi: 10.1038/s41598-024-79983-y.
This paper introduces a novel approach using Clustered Artificial Neural Networks (CLANN) to address the challenge of developing predictive models for multimodal dataset with extreme parameter values. The CLANN method strategically decomposes the dataset, derived from Finite Element Analysis (FEA), into clusters, each representing distinct diffusion behaviors, and applies specialized neural networks within these clusters. The CLANN model was rigorously evaluated and demonstrated superior accuracy and consistency compared to traditional methods such as the Adaptive Neuro-Fuzzy Inference System (ANFIS) and fuzzy expert systems. While these conventional models struggled to capture the full range of diffusion dynamics, particularly under extreme conditions, CLANN consistently provided predictions that closely aligned with the actual FEA data across all scenarios. The versatility of the CLANN approach extends beyond its application to soil contamination. Its ability to handle complex, multimodal datasets suggests that this methodology can be generalized to a wide range of scientific and engineering problems characterized by similar data structures. This makes CLANN not only a powerful tool for geotechnical engineers but also a promising framework for broader applications where traditional models fall short. The findings of this study pave the way for more accurate, reliable, and adaptable predictive modeling in diverse domains, enhancing our ability to manage and mitigate environmental and engineering challenges.
本文介绍了一种使用聚类人工神经网络(CLANN)的新方法,以应对为具有极端参数值的多模态数据集开发预测模型的挑战。CLANN方法将源自有限元分析(FEA)的数据集策略性地分解为多个聚类,每个聚类代表不同的扩散行为,并在这些聚类中应用专门的神经网络。与自适应神经模糊推理系统(ANFIS)和模糊专家系统等传统方法相比,CLANN模型经过了严格评估,并展现出更高的准确性和一致性。虽然这些传统模型难以捕捉整个扩散动力学范围,尤其是在极端条件下,但CLANN在所有情况下始终能提供与实际FEA数据紧密匹配的预测。CLANN方法的通用性不仅体现在其对土壤污染的应用上。它处理复杂多模态数据集的能力表明,这种方法可以推广到广泛的具有相似数据结构的科学和工程问题中。这使得CLANN不仅成为岩土工程师的强大工具,也为传统模型不足的更广泛应用提供了一个有前景的框架。本研究结果为不同领域中更准确、可靠和适应性更强的预测建模铺平了道路,增强了我们管理和缓解环境及工程挑战的能力。